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  <front>
    <journal-meta>
      <journal-id journal-id-type="publisher-id">JMU</journal-id>
      <journal-id journal-id-type="nlm-ta">JMIR Mhealth Uhealth</journal-id>
      <journal-title>JMIR mHealth and uHealth</journal-title>
      <issn pub-type="epub">2291-5222</issn>
      <publisher>
        <publisher-name>JMIR Publications</publisher-name>
        <publisher-loc>Toronto, Canada</publisher-loc>
      </publisher>
    </journal-meta>
    <article-meta>
      <article-id pub-id-type="publisher-id">v12i1e59587</article-id>
      <article-id pub-id-type="pmid">38626290</article-id>
      <article-id pub-id-type="doi">10.2196/59587</article-id>
      <article-categories>
        <subj-group subj-group-type="heading">
          <subject>Review</subject>
        </subj-group>
        <subj-group subj-group-type="article-type">
          <subject>Review</subject>
        </subj-group>
      </article-categories>
      <title-group>
        <article-title>Data Preprocessing Techniques for AI and Machine Learning Readiness: Scoping Review of Wearable Sensor Data in Cancer Care</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="editor">
          <name>
            <surname>Buis</surname>
            <given-names>Lorraine</given-names>
          </name>
        </contrib>
      </contrib-group>
      <contrib-group>
        <contrib contrib-type="reviewer">
          <name>
            <surname>Matovu</surname>
            <given-names>Richard</given-names>
          </name>
        </contrib>
        <contrib contrib-type="reviewer">
          <name>
            <surname>Guo</surname>
            <given-names>Lei</given-names>
          </name>
        </contrib>
      </contrib-group>
      <contrib-group>
        <contrib id="contrib1" contrib-type="author" equal-contrib="yes">
          <name name-style="western">
            <surname>Ortiz</surname>
            <given-names>Bengie L</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-8484-5902</ext-link>
        </contrib>
        <contrib id="contrib2" contrib-type="author" corresp="yes" equal-contrib="yes">
          <name name-style="western">
            <surname>Gupta</surname>
            <given-names>Vibhuti</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff2" ref-type="aff">2</xref>
          <address>
            <institution>School of Applied Computational Sciences, Meharry Medical College</institution>
            <addr-line>3401 West End Ave #260</addr-line>
            <addr-line>Nashville, TN, 37208</addr-line>
            <country>United States</country>
            <phone>1 (615) 327 567</phone>
            <email>vgupta@mmc.edu</email>
          </address>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-6221-4712</ext-link>
        </contrib>
        <contrib id="contrib3" contrib-type="author">
          <name name-style="western">
            <surname>Kumar</surname>
            <given-names>Rajnish</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0009-0002-2611-7330</ext-link>
        </contrib>
        <contrib id="contrib4" contrib-type="author" equal-contrib="yes">
          <name name-style="western">
            <surname>Jalin</surname>
            <given-names>Aditya</given-names>
          </name>
          <degrees>BTECH, MRES</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0009-0007-5535-4200</ext-link>
        </contrib>
        <contrib id="contrib5" contrib-type="author">
          <name name-style="western">
            <surname>Cao</surname>
            <given-names>Xiao</given-names>
          </name>
          <degrees>MS</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0009-0004-8227-5098</ext-link>
        </contrib>
        <contrib id="contrib6" contrib-type="author">
          <name name-style="western">
            <surname>Ziegenbein</surname>
            <given-names>Charles</given-names>
          </name>
          <degrees>MS</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <xref rid="aff3" ref-type="aff">3</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0009-0002-0583-2837</ext-link>
        </contrib>
        <contrib id="contrib7" contrib-type="author">
          <name name-style="western">
            <surname>Singhal</surname>
            <given-names>Ashutosh</given-names>
          </name>
          <degrees>PhD</degrees>
          <xref rid="aff2" ref-type="aff">2</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-9172-1916</ext-link>
        </contrib>
        <contrib id="contrib8" contrib-type="author">
          <name name-style="western">
            <surname>Tewari</surname>
            <given-names>Muneesh</given-names>
          </name>
          <degrees>MD, PhD</degrees>
          <xref rid="aff4" ref-type="aff">4</xref>
          <xref rid="aff5" ref-type="aff">5</xref>
          <xref rid="aff6" ref-type="aff">6</xref>
          <xref rid="aff7" ref-type="aff">7</xref>
          <xref rid="aff8" ref-type="aff">8</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-7781-3152</ext-link>
        </contrib>
        <contrib id="contrib9" contrib-type="author" equal-contrib="yes">
          <name name-style="western">
            <surname>Choi</surname>
            <given-names>Sung Won</given-names>
          </name>
          <degrees>MD, MS</degrees>
          <xref rid="aff1" ref-type="aff">1</xref>
          <xref rid="aff5" ref-type="aff">5</xref>
          <ext-link ext-link-type="orcid">https://orcid.org/0000-0002-6321-3834</ext-link>
        </contrib>
      </contrib-group>
      <aff id="aff1">
        <label>1</label>
        <institution>Department of Pediatrics, Hematology and Oncology Division, Michigan Medicine, University of Michigan Health System</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff2">
        <label>2</label>
        <institution>School of Applied Computational Sciences, Meharry Medical College</institution>
        <addr-line>Nashville, TN</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff3">
        <label>3</label>
        <institution>Autonomous Systems Research Department, Peraton Labs</institution>
        <addr-line>Basking Ridge, NJ</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff4">
        <label>4</label>
        <institution>Department of Biomedical Engineering, College of Engineering, University of Michigan</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff5">
        <label>5</label>
        <institution>Rogel Comprehensive Cancer Center, University of Michigan</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff6">
        <label>6</label>
        <institution>VA Ann Arbor Healthcare System</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff7">
        <label>7</label>
        <institution>Center for Computational Medicine and Bioinformatics, University of Michigan</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <aff id="aff8">
        <label>8</label>
        <institution>Department of Internal Medicine, University of Michigan</institution>
        <addr-line>Ann Arbor, MI</addr-line>
        <country>United States</country>
      </aff>
      <author-notes>
        <corresp>Corresponding Author: Vibhuti Gupta <email>vgupta@mmc.edu</email></corresp>
      </author-notes>
      <pub-date pub-type="collection">
        <year>2024</year>
      </pub-date>
      <pub-date pub-type="epub">
        <day>27</day>
        <month>9</month>
        <year>2024</year>
      </pub-date>
      <volume>12</volume>
      <elocation-id>e59587</elocation-id>
      <history>
        <date date-type="received">
          <day>16</day>
          <month>4</month>
          <year>2024</year>
        </date>
        <date date-type="rev-request">
          <day>17</day>
          <month>5</month>
          <year>2024</year>
        </date>
        <date date-type="rev-recd">
          <day>12</day>
          <month>6</month>
          <year>2024</year>
        </date>
        <date date-type="accepted">
          <day>27</day>
          <month>8</month>
          <year>2024</year>
        </date>
      </history>
      <copyright-statement>©Bengie L Ortiz, Vibhuti Gupta, Rajnish Kumar, Aditya Jalin, Xiao Cao, Charles Ziegenbein, Ashutosh Singhal, Muneesh Tewari, Sung Won Choi. Originally published in JMIR mHealth and uHealth (https://mhealth.jmir.org), 27.09.2024.</copyright-statement>
      <copyright-year>2024</copyright-year>
      <license license-type="open-access" xlink:href="https://creativecommons.org/licenses/by/4.0/">
        <p>This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR mHealth and uHealth, is properly cited. The complete bibliographic information, a link to the original publication on https://mhealth.jmir.org/, as well as this copyright and license information must be included.</p>
      </license>
      <self-uri xlink:href="https://mhealth.jmir.org/2024/1/e59587" xlink:type="simple"/>
      <abstract>
        <sec sec-type="background">
          <title>Background</title>
          <p>Wearable sensors are increasingly being explored in health care, including in cancer care, for their potential in continuously monitoring patients. Despite their growing adoption, significant challenges remain in the quality and consistency of data collected from wearable sensors. Moreover, preprocessing pipelines to clean, transform, normalize, and standardize raw data have not yet been fully optimized.</p>
        </sec>
        <sec sec-type="objective">
          <title>Objective</title>
          <p>This study aims to conduct a scoping review of preprocessing techniques used on raw wearable sensor data in cancer care, specifically focusing on methods implemented to ensure their readiness for artificial intelligence and machine learning (AI/ML) applications. We sought to understand the current landscape of approaches for handling issues, such as noise, missing values, normalization or standardization, and transformation, as well as techniques for extracting meaningful features from raw sensor outputs and converting them into usable formats for subsequent AI/ML analysis.</p>
        </sec>
        <sec sec-type="methods">
          <title>Methods</title>
          <p>We systematically searched IEEE Xplore, PubMed, Embase, and Scopus to identify potentially relevant studies for this review. The eligibility criteria included (1) mobile health and wearable sensor studies in cancer, (2) written and published in English, (3) published between January 2018 and December 2023, (4) full text available rather than abstracts, and (5) original studies published in peer-reviewed journals or conferences.</p>
        </sec>
        <sec sec-type="results">
          <title>Results</title>
          <p>The initial search yielded 2147 articles, of which 20 (0.93%) met the inclusion criteria. Three major categories of preprocessing techniques were identified: data transformation (used in 12/20, 60% of selected studies), data normalization and standardization (used in 8/20, 40% of the selected studies), and data cleaning (used in 8/20, 40% of the selected studies). Transformation methods aimed to convert raw data into more informative formats for analysis, such as by segmenting sensor streams or extracting statistical features. Normalization and standardization techniques usually normalize the range of features to improve comparability and model convergence. Cleaning methods focused on enhancing data reliability by handling artifacts like missing values, outliers, and inconsistencies.</p>
        </sec>
        <sec sec-type="conclusions">
          <title>Conclusions</title>
          <p>While wearable sensors are gaining traction in cancer care, realizing their full potential hinges on the ability to reliably translate raw outputs into high-quality data suitable for AI/ML applications. This review found that researchers are using various preprocessing techniques to address this challenge, but there remains a lack of standardized best practices. Our findings suggest a pressing need to develop and adopt uniform data quality and preprocessing workflows of wearable sensor data that can support the breadth of cancer research and varied patient populations. Given the diverse preprocessing techniques identified in the literature, there is an urgency for a framework that can guide researchers and clinicians in preparing wearable sensor data for AI/ML applications. For the scoping review as well as our research, we propose a general framework for preprocessing wearable sensor data, designed to be adaptable across different disease settings, moving beyond cancer care.</p>
        </sec>
      </abstract>
      <kwd-group>
        <kwd>machine learning</kwd>
        <kwd>artificial intelligence</kwd>
        <kwd>preprocessing</kwd>
        <kwd>wearables</kwd>
        <kwd>mobile phone</kwd>
        <kwd>cancer care</kwd>
      </kwd-group>
    </article-meta>
  </front>
  <body>
    <sec sec-type="introduction">
      <title>Introduction</title>
      <sec>
        <title>Background</title>
        <p>According to the US Food and Drug Administration, digital health is categorized as <italic>mobile health</italic> (mHealth), health information technology, wearable devices, telehealth, personalized medicine, and telemedicine [<xref ref-type="bibr" rid="ref1">1</xref>]. Digital health has revolutionized health care by offering the potential for continuous and noninvasive monitoring of human physiological parameters, such as heart rate, sleep, and activity levels, to facilitate the early detection and prevention of life-threatening diseases [<xref ref-type="bibr" rid="ref2">2</xref>]. Digital health consists of collecting, analyzing, storing, and sharing health care data by harnessing the power of technology, including smartphone apps, wearable sensors, telemedicine, the Internet of Medical Things, etc [<xref ref-type="bibr" rid="ref3">3</xref>]. Due to the widespread use of mHealth technologies and routine use of wearable sensors (eg, smartwatches), the person-generated health data have become promising data sources for biomedical research [<xref ref-type="bibr" rid="ref4">4</xref>].</p>
        <p>Indeed, the integration of wearable sensors into cancer care has opened new pathways for remote monitoring, enabling health care providers to gather a wealth of real-time data from patients [<xref ref-type="bibr" rid="ref5">5</xref>-<xref ref-type="bibr" rid="ref7">7</xref>]. These wearables capture an array of physiological parameters, including skin temperature [<xref ref-type="bibr" rid="ref8">8</xref>], offering insights into the patient’s response to cancer treatment, quality of life, and overall well-being [<xref ref-type="bibr" rid="ref9">9</xref>]. These continuous streams of data have the potential to transform cancer care by providing an improved understanding of patient conditions outside of the hospital setting, potentially improving clinical outcomes. Nevertheless, transforming raw data into meaningful analysis and insights presents numerous challenges, making standardized workflows for data preprocessing essential.</p>
        <p>Data preprocessing involves a series of steps designed to clean and refine data to ensure its reliability and suitability for analysis using artificial intelligence and machine learning (AI/ML) techniques. The preprocessing steps help transform raw sensor data, which can be noisy and inconsistent, into a clean, structured format suitable for AI/ML models to process [<xref ref-type="bibr" rid="ref10">10</xref>-<xref ref-type="bibr" rid="ref12">12</xref>]. Without standardization in these procedures, there is a risk that subsequent data analysis might be based on flawed information, leading to uninterpretable data, a lack of generalizability, and erroneous conclusions. Typical preprocessing steps to make sensor data AI/ML ready include data cleaning (eg, noise reduction, outlier detection, and handling missing data) [<xref ref-type="bibr" rid="ref13">13</xref>,<xref ref-type="bibr" rid="ref14">14</xref>], data integration (eg, combining data sources and aligning time stamps), data transformation (eg, windowing and normalization) [<xref ref-type="bibr" rid="ref15">15</xref>], dimensionality reduction (eg, feature selection), and data labeling (eg, annotating).</p>
        <p>AI/ML’s scope has become an amazing supportive tool for digital health [<xref ref-type="bibr" rid="ref16">16</xref>,<xref ref-type="bibr" rid="ref17">17</xref>] since its potential evolution to exploit meaningful relationships in biomedical data sets that can be used for diagnosis, prediction, and treatments [<xref ref-type="bibr" rid="ref18">18</xref>-<xref ref-type="bibr" rid="ref21">21</xref>]. AI/ML techniques have become popular in biometrics extraction mobile apps smart systems, such as eye disease detection [<xref ref-type="bibr" rid="ref22">22</xref>-<xref ref-type="bibr" rid="ref24">24</xref>], atrial fibrillation [<xref ref-type="bibr" rid="ref25">25</xref>], heart rate monitoring [<xref ref-type="bibr" rid="ref26">26</xref>], etc. In addition, a summary of the actual cancer statistics and its future directions is provided in the study by Moher et al [<xref ref-type="bibr" rid="ref27">27</xref>].</p>
        <p>Within the integration of electronic health record technology [<xref ref-type="bibr" rid="ref26">26</xref>] in digital medicine, wearable monitoring devices have earned an important and crucial role for all people in the biomedical area (eg, patients, medical staff, and biomedical researchers). Oncology divisions have ultimately contemplated the importance of incorporating mHealth monitoring while conducting clinical cancer trials [<xref ref-type="bibr" rid="ref1">1</xref>]. Moreover, multiple types of cancer disease detection using AI/ML techniques are a crucial factor considering its alarming impact rates on the population [<xref ref-type="bibr" rid="ref27">27</xref>]. The mHealth integration on cancer applications for the development of AI/ML solutions has become popular in recent years [<xref ref-type="bibr" rid="ref28">28</xref>]. However, the importance of data quality has not been highlighted while considering the design and development of prediction models. Building high-quality data is a critical step while applying AI/ML algorithms in mHealth and wearable studies; however, the emphasis on enriching the data quality is very limited in these studies, especially in oncology. Misclassifications, misdiagnoses, and wrong predictions can be avoided, and the whole mHealth system feasibility can be improved by enriching the data quality.</p>
      </sec>
      <sec>
        <title>Goals of Our Review</title>
        <p>This study aims to explore the use of wearable sensors for continuous monitoring of key physiological parameters in cancer care. We systematically reviewed the literature by identifying and assessing preprocessing workflows that are essential for transforming raw, noisy, and often inconsistent wearable sensor data into reliable and structured formats suitable for subsequent AI/ML modeling. By examining the current landscape of these practices, our research aims to improve wearable sensor data quality, specifically for cancer care, ensuring that downstream data analyses and interpretations are rigorous and reproducible. Given the diverse preprocessing techniques identified in the literature, there is an urgency for a framework that can guide researchers and clinicians in preparing wearable sensor data for AI/ML applications. This paper proposes a framework designed to be adaptable across different continuous monitoring applications.</p>
      </sec>
    </sec>
    <sec sec-type="methods">
      <title>Methods</title>
      <sec>
        <title>Search Strategy</title>
        <p>We conducted a scoping review of articles written in English using the following literature databases: IEEE Xplore, PubMed, Embase, and Scopus, while following the PRISMA-ScR (Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews) guidelines [<xref ref-type="bibr" rid="ref29">29</xref>]. We have used Covidence (Veritas Health Innovation Ltd) [<xref ref-type="bibr" rid="ref30">30</xref>] for identification and screening stages. The search was performed on December 31, 2023, using the search queries shown in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref>. We selected full peer-reviewed publications from the last 5 years (from January 2018 to December 2023), focusing on preprocessing techniques used on wearable sensor data to ensure their readiness for AI/ML applications for different cancer populations. Searches were developed using 3 key concepts: wearable devices, AI/ML, and cancer. Controlled vocabulary and keywords were selected for the specific databases.</p>
        <p><xref rid="figure1" ref-type="fig">Figure 1</xref> shows an illustration of the study selection process for this paper. The identified studies meeting the inclusion criteria were subsequently organized based on the major themes identified.</p>
        <fig id="figure1" position="float">
          <label>Figure 1</label>
          <caption>
            <p>Illustration of the study selection process. AI/ML: artificial intelligence and machine learning; mHealth: mobile health.</p>
          </caption>
          <graphic xlink:href="mhealth_v12i1e59587_fig1.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
      </sec>
      <sec>
        <title>Inclusion Criteria</title>
        <p>Our results with the search query presented in <xref ref-type="supplementary-material" rid="app1">Multimedia Appendix 1</xref> were first imported into Covidence for screening. The title and abstracts of the resulting studies were screened to identify the studies related to preprocessing techniques for wearable sensor data in cancer. After identifying the eligible studies, additional inclusion exclusion criteria were applied to retrieve the primary studies of our review (<xref rid="figure2" ref-type="fig">Figure 2</xref> in the <italic>Results</italic> section). Studies were eligible if they fulfilled the following inclusion criteria in our review: (1) mHealth and wearable sensor studies in cancer, (2) written and published in English, (3) published between January 2018 and December 2023, (4) full text available rather than abstracts, and (5) original studies published in peer-reviewed journals or appeared in conference proceedings. PRISMA-ScR checklist is provided in <xref ref-type="supplementary-material" rid="app2">Multimedia Appendix 2</xref>.</p>
      </sec>
      <sec>
        <title>Exclusion Criteria</title>
        <p>Studies were not eligible if they fulfilled the following exclusion criteria in our review: (1) review articles rather than primary research, (2) mHealth and wearable sensor studies for other disease conditions except cancer, (3) articles published in other languages except English, and (4) conducted statistical analysis instead of AI/ML.</p>
      </sec>
      <sec>
        <title>Data Extraction and Evaluation</title>
        <p>The data were extracted from all studies meeting our inclusion criteria for the review and organized into tables containing each study’s information (eg, authors’ name, title, and year of publication), wearable sensor data collected in cancer studies (eg, activity data, physiological parameters, including steps, sleep, heart rate, blood oxygen saturation, and temperature), preprocessing techniques (eg, time segmentation, data filtering, data transformation, and imputation), wearable devices (eg, Fitbit [Google LLC], Empatica [Empatica Inc, and Actigraphy), type of AI/ML methods applied (eg, neural networks, decision trees, K-Nearest Neighbors, Supporting Vector Machine, and regressors), sample size (eg, number of participants; <xref ref-type="table" rid="table1">Table 1</xref>). The data for all selected studies were extracted independently by 3 authors (BLO, VG, and SWC) by mutual agreement, and discrepancies were resolved by discussion with other coauthors (RK, AJ, XC, and CZ). The outcomes from the data extraction part were finally evaluated independently by each author.</p>
        <table-wrap position="float" id="table1">
          <label>Table 1</label>
          <caption>
            <p>Summary of eligible studies.</p>
          </caption>
          <table width="1000" cellpadding="5" cellspacing="0" border="1" rules="groups" frame="hsides">
            <col width="90"/>
            <col width="110"/>
            <col width="70"/>
            <col width="110"/>
            <col width="210"/>
            <col width="150"/>
            <col width="140"/>
            <col width="120"/>
            <thead>
              <tr valign="top">
                <td>Reference</td>
                <td>Cancer type</td>
                <td>Sample size, N</td>
                <td>Wearable sensor</td>
                <td>Physiological parameter</td>
                <td>Preprocessing procedure</td>
                <td>Preprocessing category</td>
                <td>AI/ML<sup>a</sup> techniques</td>
              </tr>
            </thead>
            <tbody>
              <tr valign="top">
                <td>Liu et al [<xref ref-type="bibr" rid="ref30">30</xref>], 2023</td>
                <td>Terminal cancer</td>
                <td>40</td>
                <td>Garmin VivoSmart 4</td>
                <td>Steps, HR<sup>b</sup>, sleep status, and blood oxygen saturation (measured during sleep time)</td>
                <td>Missing data imputation</td>
                <td>Data cleaning</td>
                <td>LR<sup>c</sup>, SVM<sup>d</sup>, DT<sup>e</sup>, RF<sup>f</sup>, KNN<sup>g</sup>, AdaBoost<sup>h</sup>, and XGBoost<sup>i</sup></td>
              </tr>
              <tr valign="top">
                <td>Zhao et al [<xref ref-type="bibr" rid="ref31">31</xref>], 2022</td>
                <td>Breast cancer</td>
                <td>4</td>
                <td>Fuschia Band prototype</td>
                <td>Accelerometer and gyroscope readings</td>
                <td>Peak detection and fast Fourier transform</td>
                <td>Data transformation</td>
                <td>KNN</td>
              </tr>
              <tr valign="top">
                <td>Moscato et al [<xref ref-type="bibr" rid="ref32">32</xref>], 2022</td>
                <td>Multiple types of cancer</td>
                <td>21</td>
                <td>Empatica E4 wristband</td>
                <td>Photoplethysmography signals, skin temperature, accelerometer readings, and electrodermal activity</td>
                <td>Different- order Butterworth filtering with different cutoff frequencies and data normalization</td>
                <td>Data cleaning and normalization and standardization</td>
                <td>SVM, RF, MLP<sup>j</sup>, log, and AdaBoost</td>
              </tr>
              <tr valign="top">
                <td>Yang et al [<xref ref-type="bibr" rid="ref33">33</xref>], 2021</td>
                <td>Terminal cancer</td>
                <td>60</td>
                <td>Actigraphy device XB40ACT</td>
                <td>Activity level, angle, and spin</td>
                <td>Zero padding and shortening the time series</td>
                <td>Data transformation</td>
                <td>LSTM<sup>k</sup></td>
              </tr>
              <tr valign="top">
                <td>Huang et al [<xref ref-type="bibr" rid="ref34">34</xref>], 2023</td>
                <td>Terminal cancer</td>
                <td>78</td>
                <td>Actigraphy device XB40ACT</td>
                <td>Activity level, angle, and spin</td>
                <td>Time Segmentation and zero padding</td>
                <td>Data transformation</td>
                <td>LSTM, bidirectional-LSTM, transformer, and GRU<sup>l</sup></td>
              </tr>
              <tr valign="top">
                <td>Cos et al [<xref ref-type="bibr" rid="ref35">35</xref>], 2021</td>
                <td>Pancreatic cancer</td>
                <td>28</td>
                <td>Fitbit inspire HR</td>
                <td>Step count, HR, and sleep time–series data</td>
                <td>One-hot encoding standardization and dimensionality reduction</td>
                <td>Data transformation</td>
                <td>RF, GBT<sup>m</sup>, KNN, SVM with linear kernel, and LR with L1 penalty</td>
              </tr>
              <tr valign="top">
                <td>Davoudi et al [<xref ref-type="bibr" rid="ref36">36</xref>], 2021</td>
                <td>Multiple types of cancer</td>
                <td>27</td>
                <td>ActiGraph GT3X</td>
                <td>Accelerometer Readings and oxygen consumption</td>
                <td>Bias reduction, data localization, and vector magnitude calculation</td>
                <td>Data cleaning and transformation</td>
                <td>RF, GBT, KNN, SVM with linear kernel, and LR with L1 penalty</td>
              </tr>
              <tr valign="top">
                <td>Liu et al [<xref ref-type="bibr" rid="ref37">37</xref>], 2020</td>
                <td>Multiple types of cancer</td>
                <td>3</td>
                <td>Fitbit Alta</td>
                <td>HR data and activity data</td>
                <td>Missing data imputation and data standardization</td>
                <td>Data cleaning and normalization and standardization</td>
                <td>Hidden Markov models</td>
              </tr>
              <tr valign="top">
                <td>Tedesco et al [<xref ref-type="bibr" rid="ref38">38</xref>], 2021</td>
                <td>Multiple types of cancer</td>
                <td>2291</td>
                <td>ActiGraph GT3X+</td>
                <td>Steps taken, time in light, sedentary, moderate, vigorous activities, energy expenditure, etc.</td>
                <td>Data standardization and missing data imputation</td>
                <td>Data cleaning and normalization and standardization</td>
                <td>AdaBoost</td>
              </tr>
              <tr valign="top">
                <td>Dong et al [<xref ref-type="bibr" rid="ref39">39</xref>], 2021</td>
                <td>Pancreatic cancer</td>
                <td>10</td>
                <td>ActiGraph devices</td>
                <td>Accelerometer, light, and inclinometer</td>
                <td>Time window segmentation</td>
                <td>Data transformation</td>
                <td>GRL<sup>n</sup></td>
              </tr>
              <tr valign="top">
                <td>Patel et al [<xref ref-type="bibr" rid="ref40">40</xref>], 2023</td>
                <td>Multiple types of cancer</td>
                <td>50</td>
                <td>Actiwatch</td>
                <td>Rest-activity, sleep, and routine clinical variables</td>
                <td>Missing data imputation with averaging technique</td>
                <td>Data cleaning</td>
                <td>Penalized (regularized) regression models</td>
              </tr>
              <tr valign="top">
                <td>Asghari [<xref ref-type="bibr" rid="ref41">41</xref>], 2021</td>
                <td>Colorectal cancer</td>
                <td>400</td>
                <td>IoMT<sup>o</sup> smart devices</td>
                <td>Vital signs that were sensed through biomedical sensors</td>
                <td>Cleaning inconsistencies and noise and Dimensionality reduction</td>
                <td>Data cleaning and transformation</td>
                <td>J48, SMO<sup>p</sup>, MLP, and NB<sup>q</sup> methods</td>
              </tr>
              <tr valign="top">
                <td>Rossi et al [<xref ref-type="bibr" rid="ref42">42</xref>], 2021</td>
                <td>Multiple types of cancer</td>
                <td>52</td>
                <td>PGHD<sup>r</sup> (VivoFit)</td>
                <td>Daily steps</td>
                <td>Temporal segmentations</td>
                <td>Data transformation</td>
                <td>LR</td>
              </tr>
              <tr valign="top">
                <td>Vets et al [<xref ref-type="bibr" rid="ref43">43</xref>], 2023</td>
                <td>Breast cancer</td>
                <td>10</td>
                <td>ActiGraph wGT3X-BT</td>
                <td>Accelerometer readings</td>
                <td>Counts threshold and data normalization</td>
                <td>Data transformation and normalization and standardization</td>
                <td>Pretrained MLM<sup>s</sup></td>
              </tr>
              <tr valign="top">
                <td>Feng et al [<xref ref-type="bibr" rid="ref44">44</xref>], 2023</td>
                <td>Prostate cancer</td>
                <td>47</td>
                <td>Google health, Fitbit, or Apple health</td>
                <td>Step counts</td>
                <td>Time window segmentation</td>
                <td>Data transformation</td>
                <td>LR</td>
              </tr>
              <tr valign="top">
                <td>van den Eijnden et al [<xref ref-type="bibr" rid="ref45">45</xref>], 2023</td>
                <td>Multiple types of cancer</td>
                <td>125</td>
                <td>Elan sensor (wristband)</td>
                <td>Activity features, activity counts, acceleration data, as well photoplethysmography signal</td>
                <td>Features calculation, data dimensionality reduction and numerical to categorical data transformation, and standardization</td>
                <td>Data transformation and normalization and standardization</td>
                <td>LR, KNN, DT, RF, support vector regression, and XGBoost</td>
              </tr>
              <tr valign="top">
                <td>S et al [<xref ref-type="bibr" rid="ref46">46</xref>], 2020</td>
                <td>Breast cancer</td>
                <td>201</td>
                <td>Cyrcadia breast monitor</td>
                <td>Temperature readings</td>
                <td>Removing outliers and missing data, duplicates removal, and data normalization</td>
                <td>Data cleaning and normalization and standardization</td>
                <td>DT, SVM, RF, and back propagation NN<sup>t</sup></td>
              </tr>
              <tr valign="top">
                <td>Barber et al [<xref ref-type="bibr" rid="ref47">47</xref>], 2022</td>
                <td>Gynecologic cancer</td>
                <td>34</td>
                <td>Fitbit Alta HR</td>
                <td>Steps, HR, and intensity of physical activity</td>
                <td>Data standardization and normalization</td>
                <td>Data normalization and standardization</td>
                <td>LR, RF, GBT, and XGBoost</td>
              </tr>
              <tr valign="top">
                <td>Jacobsen et al [<xref ref-type="bibr" rid="ref48">48</xref>], 2023</td>
                <td>Blood cancer</td>
                <td>79</td>
                <td>Wearable-based RPM<sup>u</sup></td>
                <td>Time-series data recorded from biosensors</td>
                <td>Dimensionality reduction</td>
                <td>Data transformation</td>
                <td>NN</td>
              </tr>
              <tr valign="top">
                <td>Li et al [<xref ref-type="bibr" rid="ref49">49</xref>], 2023</td>
                <td>Multiple types of cancer</td>
                <td>201</td>
                <td>IMU<sup>v</sup> sensor nodes, and Heal Force PC-60NW</td>
                <td>HR and inertial measurements</td>
                <td>Interval scaling method and z score standardization</td>
                <td>Data normalization and standardization</td>
                <td>MMDF<sup>w</sup>, XGBoost, LGBM<sup>x</sup>, RF, AdaBoost, and GBT</td>
              </tr>
            </tbody>
          </table>
          <table-wrap-foot>
            <fn id="table1fn1">
              <p><sup>a</sup>AI/ML: artificial intelligence and machine learning.</p>
            </fn>
            <fn id="table1fn2">
              <p><sup>b</sup>HR: heart rate.</p>
            </fn>
            <fn id="table1fn3">
              <p><sup>c</sup>LR: logistic regression.</p>
            </fn>
            <fn id="table1fn4">
              <p><sup>d</sup>SVM: support vector machine.</p>
            </fn>
            <fn id="table1fn5">
              <p><sup>e</sup>DT: decision tree.</p>
            </fn>
            <fn id="table1fn6">
              <p><sup>f</sup>RF: random forest.</p>
            </fn>
            <fn id="table1fn7">
              <p><sup>g</sup>KNN: k-nearest neighbors.</p>
            </fn>
            <fn id="table1fn8">
              <p><sup>h</sup>AdaBoost: adaptive boosting trees.</p>
            </fn>
            <fn id="table1fn9">
              <p><sup>i</sup>XGBoost: extreme gradient boosting trees.</p>
            </fn>
            <fn id="table1fn10">
              <p><sup>j</sup>MLP: multilayer perceptron.</p>
            </fn>
            <fn id="table1fn11">
              <p><sup>k</sup>LSTM: long short-term memory.</p>
            </fn>
            <fn id="table1fn12">
              <p><sup>l</sup>GRU: gated recurrent unit.</p>
            </fn>
            <fn id="table1fn13">
              <p><sup>m</sup>GBT: gradient boosted trees.</p>
            </fn>
            <fn id="table1fn14">
              <p><sup>n</sup>GRL: graph representation learning.</p>
            </fn>
            <fn id="table1fn15">
              <p><sup>o</sup>IoMT: Internet of Medical Things.</p>
            </fn>
            <fn id="table1fn16">
              <p><sup>p</sup>SMO: sequential minimal optimization.</p>
            </fn>
            <fn id="table1fn17">
              <p><sup>q</sup>NB: naïve Bayes.</p>
            </fn>
            <fn id="table1fn18">
              <p><sup>r</sup>PGHD: patient-generated health data.</p>
            </fn>
            <fn id="table1fn19">
              <p><sup>s</sup>MLM: machine learning model.</p>
            </fn>
            <fn id="table1fn20">
              <p><sup>t</sup>NN: neural network.</p>
            </fn>
            <fn id="table1fn21">
              <p><sup>u</sup>RPM: remote patient monitoring.</p>
            </fn>
            <fn id="table1fn22">
              <p><sup>v</sup>IMU: inertial measurement unit.</p>
            </fn>
            <fn id="table1fn23">
              <p><sup>w</sup>MMDF: multimodel decision fusion.</p>
            </fn>
            <fn id="table1fn24">
              <p><sup>x</sup>LGBM: light gradient boosting machine.</p>
            </fn>
          </table-wrap-foot>
        </table-wrap>
      </sec>
    </sec>
    <sec sec-type="results">
      <title>Results</title>
      <sec>
        <title>Overview</title>
        <p>We identified 2147 studies in the initial extraction phase (n=248, 11.55% from PubMed; n=428, 19.93% from Scopus; n=996, 46.39% from IEEE Xplore; and n=475, 22.12% for Embase, including Embase, Embase Classic, MEDLINE, and PubMed-not-MEDLINE). A total of 173 (8.06%) duplicate articles were removed to produce 1974 (91.94%) for title and abstract screening. We conducted a thorough screening of titles and abstracts, which resulted in the exclusion of 1820 (92.2%) articles that did not meet the inclusion criteria. Following this screening, we identified 154 (7.8%) articles for which we performed a full-text review to assess their eligibility for inclusion in our study in more detail. In the final screening, 20 (13%) of these 154 articles met our inclusion criteria and were considered for this scoping review, as shown in <xref rid="figure2" ref-type="fig">Figure 2</xref>. The workflow diagram for the systematic identification of scientific literature is shown in <xref rid="figure2" ref-type="fig">Figure 2</xref>. The geographical distribution of these studies is mapped in <xref rid="figure3" ref-type="fig">Figure 3</xref>, highlighting most research from the United States. These constituted 35% (7/20) of the selected publications. Terminal cancer research was reported from Taiwan.</p>
        <p>In terms of publication years, our analysis revealed an uptick in the frequency of papers related to mHealth and wearables in cancer. Our review coincides with the emergence of the COVID-19 pandemic, during which there was a surge in research interest within the biomedical sciences, particularly related to the use of wearable technology in remote monitoring of patients with cancer. The distribution of publications during this period suggested that in the years 2020 to 2022 combined, approximately one-quarter of the selected studies were published, accounting for 25% (5/20) of our data set. The majority were distributed between the years 2021 to 2023, which collectively contributed to 75% (15/20) of the data quality improvement strategies for wearable data preprocessing in cancer care settings. In fact, 40% (8/20) of all selected studies were published in 2023 alone, marking a substantial rise and interest in this research domain.</p>
        <p>Our findings reported the use of wearable technology across a diverse range of cancer types. Predominantly, the category encompassing “multiple types of cancer” accounted for 40% (8/20) of the studies in this area. The remainder of the research was distributed among specific types of cancer, with each category’s contribution detailed as follows: breast cancer (3/20, 15%), terminal cancer (3/20, 15%), pancreatic cancer (2/20, 10%), blood cancer (1/20, 5%), colorectal cancer (1/20, 5%), prostate cancer (1/20, 5%), and gynecologic cancer (1/20, 5%). In addition, the recent literature indicated a trend toward increased adoption of wearable technology for cancer surveillance, signifying a growing recognition of the potential benefits that wearables may offer in continuous patient monitoring across heterogeneous cancer types.</p>
        <p>The initial database search yielded 2147 studies, of which 20 (0.93%) met the inclusion criteria after screening and full-text review (<xref rid="figure2" ref-type="fig">Figure 2</xref>). The included studies applied preprocessing techniques to wearable sensor data from a range of cancer populations, including breast, colorectal, gynecologic, and blood cancers, as well as multiple other types of cancer. The most commonly used wearable devices were actigraphy sensors and consumer-grade fitness trackers, which provided data on physical activity, sleep, heart rate, and other physiological parameters.</p>
        <p>Various preprocessing approaches are used in each of the identified themes. The most common data transformation approaches included fast Fourier transform [<xref ref-type="bibr" rid="ref31">31</xref>], time-series segmentation [<xref ref-type="bibr" rid="ref33">33</xref>,<xref ref-type="bibr" rid="ref34">34</xref>,<xref ref-type="bibr" rid="ref39">39</xref>], and statistical feature calculation [<xref ref-type="bibr" rid="ref30">30</xref>,<xref ref-type="bibr" rid="ref35">35</xref>,<xref ref-type="bibr" rid="ref45">45</xref>]. However, for the data normalization techniques, <italic>z</italic> score standardization and min-max normalization were the most frequently reported scaling methods [<xref ref-type="bibr" rid="ref32">32</xref>,<xref ref-type="bibr" rid="ref37">37</xref>,<xref ref-type="bibr" rid="ref43">43</xref>,<xref ref-type="bibr" rid="ref46">46</xref>,<xref ref-type="bibr" rid="ref49">49</xref>] and for the data cleaning, imputation [<xref ref-type="bibr" rid="ref30">30</xref>,<xref ref-type="bibr" rid="ref37">37</xref>,<xref ref-type="bibr" rid="ref40">40</xref>], outlier removal [<xref ref-type="bibr" rid="ref36">36</xref>,<xref ref-type="bibr" rid="ref46">46</xref>], and artifact filtering [<xref ref-type="bibr" rid="ref32">32</xref>,<xref ref-type="bibr" rid="ref41">41</xref>] approaches were used. Notably, 25% (5/20) of the studies combined multiple preprocessing techniques from different categories, suggesting that a comprehensive approach to data preparation may be beneficial [<xref ref-type="bibr" rid="ref32">32</xref>,<xref ref-type="bibr" rid="ref36">36</xref>,<xref ref-type="bibr" rid="ref38">38</xref>,<xref ref-type="bibr" rid="ref45">45</xref>,<xref ref-type="bibr" rid="ref46">46</xref>]. However, there was significant heterogeneity in the specific techniques used and their implementations across studies, highlighting a lack of standardized preprocessing pipelines for wearable sensor data in cancer care.</p>
        <p>The preprocessing techniques were applied to support a range of AI/ML applications, including treatment response prediction [<xref ref-type="bibr" rid="ref35">35</xref>,<xref ref-type="bibr" rid="ref42">42</xref>], symptom monitoring [<xref ref-type="bibr" rid="ref44">44</xref>,<xref ref-type="bibr" rid="ref47">47</xref>], and survival analysis [<xref ref-type="bibr" rid="ref33">33</xref>,<xref ref-type="bibr" rid="ref34">34</xref>]. The most common ML algorithms were random forests, support vector machines, and deep learning models, such as long short-term memory networks. However, few studies directly compared the impact of different preprocessing approaches on model performance, making it difficult to draw conclusions about optimal techniques.</p>
        <fig id="figure2" position="float">
          <label>Figure 2</label>
          <caption>
            <p>PRISMA-ScR (Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews) diagram for a scoping review of biomedical scientific literature. ML: machine learning.</p>
          </caption>
          <graphic xlink:href="mhealth_v12i1e59587_fig2.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
        <fig id="figure3" position="float">
          <label>Figure 3</label>
          <caption>
            <p>Relevant references by geographical location.</p>
          </caption>
          <graphic xlink:href="mhealth_v12i1e59587_fig3.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
      </sec>
      <sec>
        <title>Major Themes Identified</title>
        <p>Three major themes were identified, as outlined in <xref ref-type="table" rid="table1">Table 1</xref>: (1) data normalization and standardization (8/20, 40% of papers), (2) data transformation (12/20, 60% of papers), and (3) data cleaning (8/20, 40% of papers). These were subcategorized based on the preprocessing techniques. Data transformation comprises studies related to dimensionality reduction, data feature calculation, variable transformation, or domain transformation. Data normalization and standardization included data standardization or data normalization. The data cleaning category included data filtering, outliers’ removal, imputation techniques, missing data, and duplicate removal. Multiple selected work categories were required to combine preprocessing tasks encompassing the previous 3 mentioned categories while addressing data quality issues [<xref ref-type="bibr" rid="ref30">30</xref>-<xref ref-type="bibr" rid="ref49">49</xref>], which are presented in <xref ref-type="table" rid="table1">Tables 1</xref> and <xref ref-type="table" rid="table2">2</xref>.</p>
        <table-wrap position="float" id="table2">
          <label>Table 2</label>
          <caption>
            <p>A summary of relevant preprocessing elements on selected published works.</p>
          </caption>
          <table width="1000" cellpadding="5" cellspacing="0" border="1" rules="groups" frame="hsides">
            <col width="120"/>
            <col width="160"/>
            <col width="160"/>
            <col width="150"/>
            <col width="240"/>
            <col width="170"/>
            <thead>
              <tr valign="top">
                <td>Reference</td>
                <td>Time resolution</td>
                <td>Exclusion criteria</td>
                <td>Missing data imputation technique</td>
                <td>Features extracted</td>
                <td>Outcomes</td>
              </tr>
            </thead>
            <tbody>
              <tr valign="top">
                <td>Liu et al [<xref ref-type="bibr" rid="ref30">30</xref>], 2023</td>
                <td>Each day was a data point</td>
                <td>Days with no wearable device data uploaded</td>
                <td>Linear interpolation</td>
                <td>A combination of basic demographic data, clinical assessment data, and wearable device data</td>
                <td>Death event prediction</td>
              </tr>
              <tr valign="top">
                <td>Zhao et al [<xref ref-type="bibr" rid="ref31">31</xref>], 2022</td>
                <td>Data were sent at a rate of 4 times per s</td>
                <td>Determine whether an exercise is completed correctly or incorrectly</td>
                <td>Not applicable</td>
                <td>Statistical gyroscopic-based features obtained from all 3 axes (x, y, and z)</td>
                <td>Rehabilitation</td>
              </tr>
              <tr valign="top">
                <td>Moscato et al [<xref ref-type="bibr" rid="ref32">32</xref>], 2022</td>
                <td>A 2-min time window before the beginning of each session was created</td>
                <td>Feature pairing was tested by Pearson correlation coefficient &gt;0.9</td>
                <td>Linear interpolation</td>
                <td>12 features from the HRV<sup>a</sup> analysis, 5 features from the photoplethysmography morphological analysis, 17 features from the electrodermal activity, 3 features from the temperature, and 2 features from the activity index</td>
                <td>Pain assessment</td>
              </tr>
              <tr valign="top">
                <td>Yang et al [<xref ref-type="bibr" rid="ref33">33</xref>], 2021</td>
                <td>An average value of 20 timesteps within total time shortened to &lt;500 timesteps</td>
                <td>Time series &gt;500 timesteps</td>
                <td>Zero paddings until the maximum length of the time series was reached</td>
                <td>Physical activity, angle, and spin</td>
                <td>Survival prediction</td>
              </tr>
              <tr valign="top">
                <td>Huang et al [<xref ref-type="bibr" rid="ref34">34</xref>], 2023</td>
                <td>A mean of 20 timesteps was chosen as the average value for 3 time frames (12, 24, and 48 h)</td>
                <td>Properly designed patients’ admission criteria</td>
                <td>Zero padding was used to reach the maximum length of the time series</td>
                <td>Physical activity, angle, and spin and the clinical data from patients were also considered</td>
                <td>Survival prediction</td>
              </tr>
              <tr valign="top">
                <td>Cos et al [<xref ref-type="bibr" rid="ref35">35</xref>], 2021</td>
                <td>Biobehavioral rhythmic features were computed for the entire tested period, and statistical and semantic features were generated daily</td>
                <td>Biobehavioral rhythmic features were excluded due to the dimensions</td>
                <td>Data-level and feature-level</td>
                <td>First- and second-order statistical features from the daily step count, HR<sup>b</sup>, and sleep time–series data</td>
                <td>Pancreatectomy treatment outcomes from patients activity</td>
              </tr>
              <tr valign="top">
                <td>Davoudi et al [<xref ref-type="bibr" rid="ref36">36</xref>], 2021</td>
                <td>Extracted relevant features from a 16-s window; data were eventually smoothed with a 30-s running average window</td>
                <td>Data length &lt;4 min</td>
                <td>Not applicable</td>
                <td>Time and frequency domain features</td>
                <td>Physical activity recognition and energy expenditure estimation</td>
              </tr>
              <tr valign="top">
                <td>Liu et al [<xref ref-type="bibr" rid="ref37">37</xref>], 2020</td>
                <td>Disaggregating the 15-min step count data and simulating the 1-min step count time series</td>
                <td>Nonwear days were identified and removed before the analysis</td>
                <td>Thresholding</td>
                <td>Statistics from HR metrics and activity levels</td>
                <td>Algorithm validation</td>
              </tr>
              <tr valign="top">
                <td>Tedesco et al [<xref ref-type="bibr" rid="ref38">38</xref>], 2021</td>
                <td>Not provided</td>
                <td>Wear time per day was &lt;600 min</td>
                <td>Feature mean</td>
                <td>Statistical features from (1) demographics, (2) self-report health and lifestyle, (3) wearable data, and (4) laboratory tests</td>
                <td>Cancer- specific mortality prediction</td>
              </tr>
              <tr valign="top">
                <td>Dong et al [<xref ref-type="bibr" rid="ref39">39</xref>], 2021</td>
                <td>1-min epoch to aggregate and synchronize the raw actigraphy data</td>
                <td>9.5 h window size for accelerometer data to fit models</td>
                <td>Not applicable</td>
                <td>Time and frequency domain features from actigraphy and laboratory tests</td>
                <td>Salivary cortisol levels on in patients with pancreatic cancer</td>
              </tr>
              <tr valign="top">
                <td>Patel et al [<xref ref-type="bibr" rid="ref40">40</xref>], 2023</td>
                <td>Numerical continuous variables involving sleep-wake times were entered in the 24 h format</td>
                <td>Data were excluded from the 1-h period before and after going to bed</td>
                <td>Average values</td>
                <td>Sleep-based features and sleep-wake transitional-related features</td>
                <td>Exploratory machine learning study</td>
              </tr>
              <tr valign="top">
                <td>Asghari [<xref ref-type="bibr" rid="ref41">41</xref>], 2021</td>
                <td>Not provided</td>
                <td>Data inconsistencies removal</td>
                <td>Not applicable</td>
                <td>Demographics, clinical features, and wearable data</td>
                <td>Diagnostic prediction on CRC<sup>c</sup> older adults</td>
              </tr>
              <tr valign="top">
                <td>Rossi et al [<xref ref-type="bibr" rid="ref42">42</xref>], 2021</td>
                <td>Three distinct types of temporal segments for weekly observations</td>
                <td>Periods before admission</td>
                <td>Majority class</td>
                <td>Activity or steps related features and clinical data</td>
                <td>Postsurgery complications</td>
              </tr>
              <tr valign="top">
                <td>Vets et al [<xref ref-type="bibr" rid="ref43">43</xref>], 2023</td>
                <td>Acceleration data’s sampling rate was 30 Hz</td>
                <td>Unknown data were discarded from further analysis</td>
                <td>Spline interpolation</td>
                <td>Statistical parameters from accelerometer readings</td>
                <td>Rehabilitation study</td>
              </tr>
              <tr valign="top">
                <td>Feng et al [<xref ref-type="bibr" rid="ref44">44</xref>], 2023</td>
                <td>A window of 48 h following step count decline</td>
                <td>A decline of 1000 steps or more as a binary predictor among participants</td>
                <td>Thresholding</td>
                <td>Step counts calculated on different time windows</td>
                <td>Physical activity monitoring on active treatment</td>
              </tr>
              <tr valign="top">
                <td>van den Eijnden et al [<xref ref-type="bibr" rid="ref45">45</xref>], 2023</td>
                <td>The data were stored at 1-s intervals</td>
                <td>Early stopping algorithm</td>
                <td>Not applicable</td>
                <td>For health dot sensor: RR<sup>d</sup>, activity level (actlevel); for Elan wristband: statistical parameters from HR, and frequency domain features</td>
                <td>Recovery scores</td>
              </tr>
              <tr valign="top">
                <td>S et al [<xref ref-type="bibr" rid="ref46">46</xref>], 2020</td>
                <td>Temperature profiles had values from 16 sensors gathered for 1 d at every 5-min interval</td>
                <td>Out-of-range temperature data discrimination</td>
                <td>Not applicable</td>
                <td>Linear and nonlinear features from the time-series temperature data</td>
                <td>Introductory paper</td>
              </tr>
              <tr valign="top">
                <td>Barber et al [<xref ref-type="bibr" rid="ref47">47</xref>], 2022</td>
                <td>Each day was considered an observation</td>
                <td>Discrimination of days was applied to unscheduled contacts</td>
                <td>Not applicable</td>
                <td>Fatigue, physical function, anxiety, mean daily HR, daily steps, sleep, and time-related features</td>
                <td>Feasibility and events prediction</td>
              </tr>
              <tr valign="top">
                <td>Jacobsen et al [<xref ref-type="bibr" rid="ref48">48</xref>], 2023</td>
                <td>Raw signals were acquired with a frequency of &gt;30 Hz; calculated parameters were stored with a rate of 1 Hz</td>
                <td>Data points reduction due to interruptions</td>
                <td>Not applicable</td>
                <td>Noninvasive monitoring of vital signs and physical activity; SCC<sup>e</sup> events</td>
                <td>Clinical complications during treatment</td>
              </tr>
              <tr valign="top">
                <td>Li et al [<xref ref-type="bibr" rid="ref49">49</xref>], 2023</td>
                <td>Sampling frequency was 200 Hz for IMU<sup>f</sup>; the HR was stored at a sampling frequency was 1 Hz</td>
                <td>Feature selection for redundancy removal</td>
                <td>Majority class</td>
                <td>HR metrics, physical activity parameters, Blood Mass Index, and blood oxygen statistical values</td>
                <td>Physical fitness assessment</td>
              </tr>
            </tbody>
          </table>
          <table-wrap-foot>
            <fn id="table2fn1">
              <p><sup>a</sup>HRV: heart rate variability.</p>
            </fn>
            <fn id="table2fn2">
              <p><sup>b</sup>HR: heart rate.</p>
            </fn>
            <fn id="table2fn3">
              <p><sup>c</sup>CRC: colorectal cancer.</p>
            </fn>
            <fn id="table2fn4">
              <p><sup>d</sup>RR: respiratory rate.</p>
            </fn>
            <fn id="table2fn5">
              <p><sup>e</sup>SCC: serious clinical complications.</p>
            </fn>
            <fn id="table2fn6">
              <p><sup>f</sup>IMU: inertial measurement unit.</p>
            </fn>
          </table-wrap-foot>
        </table-wrap>
      </sec>
      <sec>
        <title>Data Transformation</title>
        <p>Zhao et al [<xref ref-type="bibr" rid="ref31">31</xref>] reported a proof-of-concept for postoperative rehabilitation in a small cohort of 4 patients with breast cancer, using a prototype that used peak detection and Fourier transform by switching time domain points of the 3D axis to a predetermined frequency. Yang et al [<xref ref-type="bibr" rid="ref33">33</xref>] hypothesized that wristband actigraphy monitoring devices could predict in-hospital death of end-stage multiple types of patients with cancer during the hospitalization period admissions. To avoid variations in each patient’s data length, zero padding was used until the maximum length of the time series was reached [<xref ref-type="bibr" rid="ref33">33</xref>]. Scoring systems, such as the Palliative Prognostic Index and Palliative Performance Scale, were considered for fitting machine learning models (MLMs) [<xref ref-type="bibr" rid="ref33">33</xref>]. Huang et al [<xref ref-type="bibr" rid="ref34">34</xref>] reported a comparison study between the results of wearable-based activity monitoring with traditional prognostic tools for patients with end-stage cancer. In total 3 different time frames were segmented for preprocessing [<xref ref-type="bibr" rid="ref34">34</xref>]. A mean of 20 timesteps was selected as the average value for each of the 3 different time frames (48, 24, and 12 h) [<xref ref-type="bibr" rid="ref34">34</xref>]. Zero padding was used in the study by Huang et al [<xref ref-type="bibr" rid="ref34">34</xref>], making it applicable to data transformation. Cos et al [<xref ref-type="bibr" rid="ref35">35</xref>] used a wearable device to predict treatment outcomes in patients with pancreatic cancer, standardizing data before using ML methods.</p>
        <p>Dong et al [<xref ref-type="bibr" rid="ref39">39</xref>] proposed a general predictive modeling process that used actigraphy data to predict underlying salivary cortisol levels using graph representation learning. The raw sensor data were preprocessed using time window segmentation to reduce noise in the data [<xref ref-type="bibr" rid="ref39">39</xref>]. Rossi et al [<xref ref-type="bibr" rid="ref42">42</xref>] focused on predicting postdischarge oncologic surgical complications and their impact on patient outcomes. There were 3 distinct types of temporal segments for each patient. They considered observations up to the second week after discharge, treating each week as a distinct observation [<xref ref-type="bibr" rid="ref42">42</xref>].</p>
        <p>Feng et al [<xref ref-type="bibr" rid="ref44">44</xref>] evaluated the feasibility of daily step count monitoring and the association between step counts and treatment-emergent symptoms in patients with prostate cancer. As shown in <xref ref-type="table" rid="table1">Table 1</xref>, the preprocessing technique could be summarized as follows: (1) a decline of 1000 steps or more as a binary predictor and (2) time window segmentation [<xref ref-type="bibr" rid="ref44">44</xref>]. Jacobsen et al [<xref ref-type="bibr" rid="ref48">48</xref>] impacted medical literature by proposing self-supervised contrastive learning methods for hematological malignancy treatments. Noninvasive monitoring of vital signs and physical activity was recorded within serious clinical complications in the input data set [<xref ref-type="bibr" rid="ref48">48</xref>]. Data downsampling was the selected preprocessing technique to eliminate physical interruptions [<xref ref-type="bibr" rid="ref48">48</xref>]. These studies collectively illustrated diverse data transform methods, such as feature selection, time segmentation, domain transformation, and time windowing, to enhance wearable device data quality, making them more suitable for AI/ML modeling aimed at predicting patient outcomes in cancer care. In addition, these findings have leveraged a range of wearable technologies and AI/ML methods to advance cancer care. Techniques, such as peak detection and Fourier transform have been used for data preprocessing, supporting applications that include postoperative rehabilitation, physical activity classification, prediction of treatment outcomes, and assessment of cancer-specific mortality. These studies highlight the potential of integrating high-dimensional wearable data with clinical information to enhance patient monitoring and prognosis.</p>
      </sec>
      <sec>
        <title>Data Normalization and Standardization</title>
        <p>Barber et al [<xref ref-type="bibr" rid="ref47">47</xref>] assessed the feasibility of postoperative intervention for patients with gynecologic cancer in a manner similar to Zhao et al [<xref ref-type="bibr" rid="ref31">31</xref>], incorporating patient-reported outcomes and wearable activity data and also opting for standardization and normalization of preprocessing methods. Finally, Li et al [<xref ref-type="bibr" rid="ref49">49</xref>] proposed a method using multimodel decision fusion based on multisource data for physical fitness assessment for patients with cancer. They enriched the raw data by using Baseline, Synthetic Minority Over-sampling Technique, random oversampling, adaptive synthetic oversampling, and Mahalanobis Distance and Boundary Constraints. The interval scaling method and <italic>z</italic> score standardization after segmentation are the common methods in the study by Li et al [<xref ref-type="bibr" rid="ref49">49</xref>]. These additional investigations used tailored data preprocessing approaches to further refine the quality of wearable device data for subsequent analysis (eg, data partitioning for training and testing).</p>
        <p>Moscato et al [<xref ref-type="bibr" rid="ref32">32</xref>] proposed an automatic pain assessment for patients with cancer (21 in total) by using the Empatica wristband. Because all physiological signals were recorded at different sampling rates, different-order Butterworth filtering with different cutoff frequencies was the data enrichment selected method [<xref ref-type="bibr" rid="ref32">32</xref>]. Each pulse was normalized with the <italic>z</italic> score procedure and processed with an automated algorithm that detects pulses suitable for heart rate variability analysis and derived metrics [<xref ref-type="bibr" rid="ref32">32</xref>]. Liu et al [<xref ref-type="bibr" rid="ref37">37</xref>] aimed to develop an unsupervised personalized sleep-wake identification algorithm using multistage data to explore the benefits of incorporating heart rate metrics and actigraphy data in these types of algorithms for the general population. After nonwear exclusion, there were 14 participants whose data qualified for analysis; 5 (36%) had high cholesterol, 6 (43%) participants had hypertension, 3 (21%) had cancer, 2 (14%) had diabetes mellitus, and 1 (7%) have had a stroke. They preprocessed the step count data, and 2 schematic ML-based models were designed by following the Markov model’s fundamentals. To facilitate the fusion of step count and heart rate data in the models, downscaling was used to deal with the multigranularity data [<xref ref-type="bibr" rid="ref37">37</xref>]. In addition, imputation techniques were implemented. Tedesco et al [<xref ref-type="bibr" rid="ref38">38</xref>] explored the prediction of cancer-specific mortality over a 2- to 7-year period using a data set from a longitudinal study of 2291 70-year-old Swedish patients, integrating wearable and electronic health record data. They applied standardization and normalization preprocessing techniques within imputation.</p>
        <p>Vets et al [<xref ref-type="bibr" rid="ref43">43</xref>] aimed to determine the accuracy of a pretrained laboratory-based MLM to distinguish functional from nonfunctional arm motions through home interventions of survivors from breast cancer populations. From the accelerometer data, functional activity was defined using two separate methods: (1) the counts threshold method, and (2) a pretrained MLM [<xref ref-type="bibr" rid="ref43">43</xref>]. Activity counts were calculated from the raw acceleration data [<xref ref-type="bibr" rid="ref43">43</xref>]. The outcome “total minutes active” was calculated as the sum of the 1-second epochs where the count threshold exceeded 1 [<xref ref-type="bibr" rid="ref43">43</xref>]. Data normalization was the final step before fitting AI/ML models. van den Eijnden et al [<xref ref-type="bibr" rid="ref45">45</xref>] created a model that predicted continuous recovery scores (regressors) in perioperative care in the hospital and at home for objective oncology-based decision-making. They preprocessed data by obtaining a balanced split in which they equally divided the demographic predictors and surgery type into 2 groups by splitting the patients 10,000 times [<xref ref-type="bibr" rid="ref45">45</xref>]. Finally, authors standardized features by scaling the data to a normal distribution with a mean of 0 and a unit variance [<xref ref-type="bibr" rid="ref45">45</xref>]. S et al [<xref ref-type="bibr" rid="ref46">46</xref>] introduced a noninvasive wearable device developed as an adjunct to current modalities to assist in the detection of breast tissue abnormalities in any type of breast tissue. In the study, data normalization and outliers’ removal were the data transformation methods to enrich the quality of the collected temperature data.</p>
      </sec>
      <sec>
        <title>Data Cleaning</title>
        <p>Liu et al [<xref ref-type="bibr" rid="ref30">30</xref>] aimed to investigate the potential of using wearable devices and AI/ML to predict death events among patients with terminal cancer. To improve the model training, the authors used imputation techniques [<xref ref-type="bibr" rid="ref30">30</xref>]. The data set was a combination of demographic, clinical, and wearable device data [<xref ref-type="bibr" rid="ref30">30</xref>]. Davoudi et al [<xref ref-type="bibr" rid="ref36">36</xref>] conducted a study comparing various accelerometer placements in classifying physical activity and associated energy expenditure among older adults. Of the 93 participants who completed the study, 27 (29%) were identified with a range of cancer diagnoses. Raw data were cleaned using bias reduction and eventually transformed by activity location and vector magnitude calculation [<xref ref-type="bibr" rid="ref36">36</xref>]. Similarly, Patel et al [<xref ref-type="bibr" rid="ref40">40</xref>] sought to enhance prognostic tools by combining ML analysis of actigraphy, sleep data, and routine clinical data with a missing data imputation technique within averaging. Asghari [<xref ref-type="bibr" rid="ref41">41</xref>] proposed an internet of things–based predicting model to predict colorectal cancer in older adults. The data preprocessing phase was required to clean the sensed medical internet of things data from the inconsistencies and the noises for the data mining phase [<xref ref-type="bibr" rid="ref41">41</xref>]. Outliers’ removal was the initial step selected for preprocessing.</p>
        <p>Accordingly, we proposed a generalized preprocessing framework that comprises all 3 major data preprocessing themes (<xref rid="figure4" ref-type="fig">Figure 4</xref>), reflecting the core elements that were consistently reported across studies.</p>
        <fig id="figure4" position="float">
          <label>Figure 4</label>
          <caption>
            <p>A general framework for data preprocessing techniques used to make noninvasive data collected from mobile health and wearable sensor artificial intelligence and machine learning (AI/ML) ready in cancer monitoring applications.</p>
          </caption>
          <graphic xlink:href="mhealth_v12i1e59587_fig4.png" alt-version="no" mimetype="image" position="float" xlink:type="simple"/>
        </fig>
      </sec>
    </sec>
    <sec sec-type="discussion">
      <title>Discussion</title>
      <sec>
        <title>Principal Findings</title>
        <p>In this paper, we conducted a scoping review of the preprocessing techniques applied to wearable sensor data in cancer care. Our findings revealed a significant rise in the use of wearable sensors for patient monitoring, along with an increase in preprocessing methods for data analysis over the past 5 years. This likely stemmed from recent advancements in sensor technology, greater emphasis on personalized and remote patient care, the rising prevalence of big data analytics in health care, and increasing recognition of real-time health data for precision oncology.</p>
        <p>Data transformation emerged as the most reported preprocessing technique, representing approximately 60% (12/20) of the literature findings. Most studies relied on data from commercially available products, except a study by Zhao et al [<xref ref-type="bibr" rid="ref31">31</xref>], which assessed a prototype’s efficiency in a small cohort. While published studies describing preprocessing methods for wearable devices are growing, the diagnoses being studied remain sparse and generally limited to single disease types or settings.</p>
        <p>The physiological data captured from wearables are typically noisy, contain missing values, have outliers, redundant features, and erroneous measurements [<xref ref-type="bibr" rid="ref50">50</xref>,<xref ref-type="bibr" rid="ref51">51</xref>]. On the basis of the literature review in this paper, we found that various data cleaning procedures are used to clean the wearable sensor data, including data smoothing techniques (ie, moving average and exponential moving average) to reduce short-term signal artifacts and remove noise, removing duplicate entries, detection and removal of erroneous measurements due to sensor malfunctioning or losing contact of the sensor with skin or wearing the watch on incorrect body location, and outlier removal. The outlier removal for wearable data [<xref ref-type="bibr" rid="ref52">52</xref>] in the reviewed studies consists of the range inspection of physiological parameter values with the clinically relevant range or developing a threshold using statistical techniques to detect outliers. Finally, missing data imputation is a critical component of data cleaning due to their ability to handle complex missing patterns as demonstrated in wearable-based data [<xref ref-type="bibr" rid="ref53">53</xref>-<xref ref-type="bibr" rid="ref57">57</xref>].</p>
        <p>Our review suggests that the data cleaning procedures should be carefully inspected and applied based on the data captured from the wearables, as the captured data will produce false conclusions and predictions without proper data cleaning procedures, which is not acceptable in clinical research. In addition, the outliers’ removal should be based on data behavior and domain knowledge, as a region of anomaly is often within the boundaries of normal patterns of physiological data; for example, for the heart rate data, the normal behavior might evolve, which can be considered anomalous behavior, and the removal of data points leads to the loss of critical data. A generalized, automated, and adaptive data cleaning procedure is required for the wearable data to address the issues that arise due to improper data cleaning.</p>
        <p>Time-series segmentation is the most used data transformation technique in wearable research identified in the review, necessitated by the multivariate nature of the data and varying sampling rates. Segmentation can be based on study outcomes, such as daily, hourly, or minute-by-minute intervals. Our review indicates that the optimal time window size for segmentation must be determined through experimentation to achieve the best performance results. This window size varies across different cancer cohorts and should be tailored to the specific data set rather than relying solely on literature. The granularity of time segmentation also affects feature extraction. For instance, summary statistics like mean, median, SD, and minimum, and maximum differ when calculated for daily versus hourly or minute-by-minute windows. The reviewed literature [<xref ref-type="bibr" rid="ref58">58</xref>-<xref ref-type="bibr" rid="ref60">60</xref>] also explores additional feature types, including frequency domain features and linear and nonlinear features.</p>
        <p>Data compliance is another major challenge in wearable studies and has a profound impact on the study outcomes. Physiological data captured from wearables are highly variable [<xref ref-type="bibr" rid="ref61">61</xref>] and have high noncompliance rates by the participants. The participants’ compliance determines the validity of the data collected from the wearables and their utility. Different thresholds are established for various parameters, such as daily wear time or step counts to filter or preprocess the data [<xref ref-type="bibr" rid="ref62">62</xref>-<xref ref-type="bibr" rid="ref64">64</xref>]. This scoping review suggests that we should strive to develop algorithms for standardizing the physiological metrics collected, which includes establishing thresholds for data inclusion based on compliance, filtering data based on adequate wearable wear time in study participants undergoing cancer per day and per week, percentage of days on which wearable was worn by the participants, inclusion and exclusion of data due to participant wearable synchronization issues, etc. ML techniques can be exploited to automate the data compliance assessments for different data extracted in different types of cancer.</p>
        <p>Finally, data normalization is critical to developing AI/ML-ready data for the wearable studies. The data scaling helps not only in building efficient and accurate MLMs but also removes the effect of different scales and ranges in the model prediction. Our review suggests that researchers should identify the appropriate normalization technique for their study and understand the data distribution and model results before and after applying these techniques.</p>
        <p>In summary, this scoping review identified 3 main categories of preprocessing techniques: data transformation, data normalization and standardization, and data cleaning, that have been applied to wearable sensor data in cancer care. While these techniques are commonly used to prepare data for AI/ML analysis, there is a lack of standardization in their implementation and limited evidence of their comparative effectiveness. Moreover, wearable sensor data are highly unstructured, complex, and messy because it is generated continuously and with high frequency (thousands of observations per second), leading to rich streams of time-series data. Thus, there is an urgent need to develop novel preprocessing procedures and frameworks, enhancing data quality and data readiness for AI/ML applications in cancer research. Future work should focus on developing validated preprocessing pipelines and benchmarking their impact on AI/ML model performance across diverse cancer populations and wearable devices. By providing a generalizable framework, we aim to accelerate the development of AI/ML models in not only cancer care but also potentially other areas of health care that leverage wearable sensor data. Researchers and clinicians can adapt this framework to their specific needs, promoting standardization while allowing for necessary customization.</p>
      </sec>
      <sec>
        <title>Preprocessing Techniques for General mHealth Applications</title>
        <p>Preprocessing techniques have been a considerable topic of interest in the research community within its integration with the mHealth concept [<xref ref-type="bibr" rid="ref65">65</xref>-<xref ref-type="bibr" rid="ref67">67</xref>]. For example, cardiovascular diseases and diabetes are 2 conditions that have benefited from mHealth tools. In a study by Qaisar et al [<xref ref-type="bibr" rid="ref68">68</xref>], an efficient method for the diagnosis of arrhythmia based on electrocardiogram inputs was proposed. The method combined multivariate processing, wavelet decomposition, frequency content-based subband coefficient selection, and ML techniques for preprocessing. In a study by Efat et al [<xref ref-type="bibr" rid="ref69">69</xref>], a smart health monitoring tool for patients with diabetes was introduced. The objective of the authors was to use continuous sensor monitoring and processing with neural networks to provide a continuous evaluation of the patient’s health risk status by considering the patients’ noninvasive biometric data [<xref ref-type="bibr" rid="ref69">69</xref>]. To improve data quality, the authors used data transformation. Photoplethysmography has been used for blood pressure monitoring by incorporating the mHealth concept [<xref ref-type="bibr" rid="ref70">70</xref>]. The authors collected photoplethysmography signal data from smartphones and passed them through a high-pass filter with a cutoff frequency of 0.5 Hz. To filter out unwanted peaks and create a smooth signal, a moving average filter with a span of 5 data points was applied to the signals before peak detection was performed [<xref ref-type="bibr" rid="ref70">70</xref>]. Peak detections were implemented by finding the local maximum values in the signals [<xref ref-type="bibr" rid="ref70">70</xref>]. The incorporation of mHealth technology has brought several efficient alternatives for health care engineering. In addition, it becomes a challenging factor while addressing data quality issues. The general health care sector has experienced irregularities in converting raw data to suitable formats, there is not an exceptional case in cancer monitoring.</p>
      </sec>
      <sec>
        <title>Proposed Preprocessing Framework</title>
        <p>To address the challenges and limitations identified in the reviewed literature, we propose a general preprocessing framework to develop AI/ML-ready data for mHealth cancer monitoring applications. <xref rid="figure4" ref-type="fig">Figure 4</xref> summarizes this framework for noninvasive physiological monitoring data analysis. While our framework is conceptually applied within the setting of general oncology monitoring to fit AI/ML models, it could also be applied in other disease settings by following the key elements and steps of data preprocessing techniques.</p>
        <p>Our proposed framework (<xref rid="figure4" ref-type="fig">Figure 4</xref>) synthesizes the best practices identified in this review, offering a standardized approach to preprocessing wearable sensor data. The framework’s strength lies in its flexibility and broad applicability. While the framework was developed based on cancer care applications, its fundamental components, data cleaning, data transformation, and data normalization and standardization, are relevant to a wide range of chronic diseases that can benefit from continuous monitoring via wearable sensors. By extracting raw wearable-based data from a real-world scenario, as shown in this paper using the cancer care setting, researchers should be able to reproduce available preprocessing solutions to other settings that leverage wearable sensor data. For instance, the data cleaning techniques identified in cancer studies, such as handling missing data and removing artifacts, are equally crucial in preprocessing data for heart disease or diabetes monitoring. Similarly, the data transformation methods, including feature extraction and dimensionality reduction, can be adapted to extract relevant biomarkers for various conditions. The framework’s emphasis on data normalization and standardization ensures that regardless of the specific disease context, the preprocessed data will be suitable for AI/ML applications.</p>
        <p>Data captured from wearable sensors (eg, sleep parameters, heart rate, and steps) are unique in that they are collected passively, nonobtrusively, and continuously in real-world settings [<xref ref-type="bibr" rid="ref71">71</xref>]. For cancer applications, the identification of noninvasive biomarkers is an attractive tool for possibly predicting clinical outcomes [<xref ref-type="bibr" rid="ref72">72</xref>]. However, current challenges of applying AI/ML techniques in the cancer research setting include data quality issues, data dimensionality, diverse data types, dynamic evolution of disease states, lack of labeled data, frequent and irregular data sparsity, and data integration issues [<xref ref-type="bibr" rid="ref73">73</xref>]. Noninvasive wearables, such as fitness trackers, smartwatches, and many medical monitoring devices, are built using standardized design and manufacturing processes. These standard processes pertain to aspects like how data are sampled (sampling rate), how the wearables are constructed (structural aspects), and how complex the devices are. Because of these standardized methods, wearable devices can operate in a manner that captures and provides data frequently, often in real time. This continuous stream of data means that wearables are consistently generating much information. Wearable technologies are still in their infancy in cancer research because they have not been widely implemented on patients diagnosed with oncology diseases. In addition, they still face challenges in being effectively used for cancer research because of difficulties in data collection, limited types of data captured, and the scattered nature of the data storage.</p>
      </sec>
      <sec>
        <title>Strengths and Limitations of the Review and Preprocessing Techniques</title>
        <p>Our review provides a valuable synthesis of current preprocessing practices for wearable sensor data in cancer applications and highlights key opportunities for standardization and future research. By transparently reporting our methods and potential biases, we aim to support the interpretability and trustworthiness of our findings. Prior research has primarily focused on ML methods rather than emphasizing on standardized preprocessing techniques to make the data AI/ML ready. Key strengths and limitations are summarized in <xref ref-type="supplementary-material" rid="app3">Multimedia Appendix 3</xref>. In addition, we point out potential factors that may influence the validity of our scoping review.</p>
        <p>First, despite our comprehensive search strategy across multiple databases, it is possible that some relevant studies were not captured, particularly if they were published in nonindexed journals or as gray literature. However, we believe the risk of missing significant preprocessing methodologies is low given the breadth of our search and focus on peer-reviewed articles.</p>
        <p>Second, categorizing preprocessing techniques required some subjective interpretation, as nomenclature was not always consistent across studies. We mitigated this by having multiple authors independently classify techniques and resolve discrepancies through discussion. Nonetheless, some overlap between categories may remain. The framework we proposed offers a generalizable taxonomy but should be further validated and refined as the field evolves.</p>
        <p>Third, our analysis was limited to assessing the reported preprocessing workflows in each study. Without access to the underlying data sets and code, we could not directly compare the effectiveness or reproducibility of different techniques. Quantitative benchmarking of preprocessing methods on standardized wearable data sets would be a valuable direction for future work to provide more objective guidance for researchers.</p>
      </sec>
      <sec>
        <title>Conclusions</title>
        <p>Herein, we conducted a scoping review of preprocessing techniques by focusing exclusively on enhancing raw data from wearables before fitting AI/ML models. Recently, there has been a worldwide interest in the data quality improvement elements in the biomedical area. Our review identified 3 different preprocessing categories applicable to cancer care. Data preprocessing plays a fundamental role in the knowledge discovery from analyzing cancer-related data, especially when data are captured from wearables. A general framework within conventional preprocessing tasks, including data cleaning, data transformation, and data normalization and standardization, has been proposed with a detailed preprocessing pipeline well described. However, due to the diversity of oncology diseases, we validated the availability of significant challenges in preprocessing technique implementation for AI/ML readiness. These methods can bring significant research outcomes across the enhancement of wearable data while addressing data quality issues through different data sets with diverse specifications. The general preprocessing framework proposed in this study represents a significant step toward standardizing the preparation of wearable sensor data for AI/ML applications. While developed in the context of cancer care, its principles are broadly applicable and adaptable to other chronic diseases requiring continuous monitoring. Future research should focus on validating and refining this framework across diverse health care contexts, potentially leading to more efficient and effective use of wearable sensor data in precision medicine.</p>
      </sec>
    </sec>
  </body>
  <back>
    <app-group>
      <supplementary-material id="app1">
        <label>Multimedia Appendix 1</label>
        <p>Search queries.</p>
        <media xlink:href="mhealth_v12i1e59587_app1.docx" xlink:title="DOCX File , 17 KB"/>
      </supplementary-material>
      <supplementary-material id="app2">
        <label>Multimedia Appendix 2</label>
        <p>PRISMA-ScR (Preferred Reporting Items for Systematic reviews and Meta-Analyses extension for Scoping Reviews) checklist.</p>
        <media xlink:href="mhealth_v12i1e59587_app2.docx" xlink:title="DOCX File , 108 KB"/>
      </supplementary-material>
      <supplementary-material id="app3">
        <label>Multimedia Appendix 3</label>
        <p>Strengths and Limitations of Preprocessing Approaches.</p>
        <media xlink:href="mhealth_v12i1e59587_app3.docx" xlink:title="DOCX File , 16 KB"/>
      </supplementary-material>
    </app-group>
    <glossary>
      <title>Abbreviations</title>
      <def-list>
        <def-item>
          <term id="abb1">AI/ML</term>
          <def>
            <p>artificial intelligence and machine learning</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb2">mHealth</term>
          <def>
            <p>mobile health</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb3">MLM</term>
          <def>
            <p>machine learning model</p>
          </def>
        </def-item>
        <def-item>
          <term id="abb4">PRISMA</term>
          <def>
            <p>Preferred Reporting Items for Systematic Reviews and Meta-Analyses</p>
          </def>
        </def-item>
      </def-list>
    </glossary>
    <ack>
      <p>The authors would like to thank Mrs Kate Saylor for her productive collaboration throughout the methodology development of this work. VG is supported by a National Heart, Lung, and Blood Institute (NHLBI) grant (K24HL156896). SWC is supported by the National Cancer Institute and NHLBI grants (R01CA249211 and K24HL156896). BLO is supported by an NHLBI training grant (T32HL007622).</p>
    </ack>
    <notes>
      <sec>
        <title>Data Availability</title>
        <p>All data generated or analyzed during this study are included in this published article and its supplementary information files.</p>
      </sec>
    </notes>
    <fn-group>
      <fn fn-type="con">
        <p>Data extraction was performed by 3 authors (BLO, VG, and SWC) by mutual agreement, and discrepancies were resolved by discussion with other coauthors (RK, XC, AS, AJ, and CZ). The outcomes from the themes’ categorization part were finally evaluated independently by each author. All listed authors have reviewed and contributed to the manuscript.</p>
      </fn>
      <fn fn-type="conflict">
        <p>None declared.</p>
      </fn>
    </fn-group>
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