Alireza Sameh, Mehrdad Rostami, Mourad Oussalah, Raija Korpelainen, Vahid Farrahi
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This systematic review identified peer-reviewed journal articles utilizing ML approaches for digital phenotyping and measuring digital biomarkers to analyze, screen, identify, and/or predict health-related outcomes using passive non-invasive signals collected from wearable devices or smartphones. PubMed, PubMed with Mesh, Web of Science, Scopus, and IEEE Xplore were searched for peer-reviewed journal articles published up to June 2024, identifying 66 papers. We reviewed the study populations used for data collection, data acquisition details, signal types, data preparation steps, ML approaches used, digital phenotypes and digital biomarkers, and health outcomes and diseases predicted using these ML techniques. Our findings highlight the promising potential for objective tracking of health outcomes and diseases using passive non-invasive signals collected from wearable devices and smartphones with ML approaches for characterization and prediction of a range of health outcomes and diseases, such as stress, seizure, fatigue, depression, and Parkinson’s disease. Future studies should focus on improving the quality of collected data, addressing missing data challenges, providing better documentation on study participants, and sharing the source code of the implemented methods and algorithms, along with their datasets and methods, for reproducibility purposes.</p></div>","PeriodicalId":8449,"journal":{"name":"Artificial Intelligence Review","volume":"58 2","pages":""},"PeriodicalIF":13.9000,"publicationDate":"2024-12-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://link.springer.com/content/pdf/10.1007/s10462-024-11009-5.pdf","citationCount":"0","resultStr":"{\"title\":\"Digital phenotypes and digital biomarkers for health and diseases: a systematic review of machine learning approaches utilizing passive non-invasive signals collected via wearable devices and smartphones\",\"authors\":\"Alireza Sameh, Mehrdad Rostami, Mourad Oussalah, Raija Korpelainen, Vahid Farrahi\",\"doi\":\"10.1007/s10462-024-11009-5\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Passive non-invasive sensing signals from wearable devices and smartphones are typically collected continuously without user input. 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引用次数: 0
摘要
来自可穿戴设备和智能手机的被动非侵入式传感信号通常是在没有用户输入的情况下连续采集的。这种被动和连续的数据收集使这些信号适合于与健康相关的结果、疾病诊断和预测建模的实时监测。越来越多的研究利用机器学习(ML)方法来预测和分析通过可穿戴设备和智能手机收集的被动非侵入性信号的健康指标和疾病。本系统综述确定了同行评议的期刊文章,这些文章利用ML方法进行数字表型分析和测量数字生物标志物,利用从可穿戴设备或智能手机收集的被动非侵入性信号分析、筛选、识别和/或预测与健康相关的结果。PubMed, PubMed with Mesh, Web of Science, Scopus和IEEE Xplore检索了截至2024年6月发表的同行评议期刊文章,确定了66篇论文。我们回顾了用于数据收集的研究人群、数据采集细节、信号类型、数据准备步骤、使用的机器学习方法、数字表型和数字生物标志物,以及使用这些机器学习技术预测的健康结果和疾病。我们的研究结果强调了客观跟踪健康结果和疾病的良好潜力,使用从可穿戴设备和智能手机收集的被动非侵入性信号,采用ML方法表征和预测一系列健康结果和疾病,如压力、癫痫、疲劳、抑郁和帕金森病。未来的研究应侧重于提高收集数据的质量,解决缺失数据的挑战,提供更好的研究参与者文档,共享实现方法和算法的源代码,以及他们的数据集和方法,以实现可重复性。
Digital phenotypes and digital biomarkers for health and diseases: a systematic review of machine learning approaches utilizing passive non-invasive signals collected via wearable devices and smartphones
Passive non-invasive sensing signals from wearable devices and smartphones are typically collected continuously without user input. This passive and continuous data collection makes these signals suitable for moment-by-moment monitoring of health-related outcomes, disease diagnosis, and prediction modeling. A growing number of studies have utilized machine learning (ML) approaches to predict and analyze health indicators and diseases using passive non-invasive signals collected via wearable devices and smartphones. This systematic review identified peer-reviewed journal articles utilizing ML approaches for digital phenotyping and measuring digital biomarkers to analyze, screen, identify, and/or predict health-related outcomes using passive non-invasive signals collected from wearable devices or smartphones. PubMed, PubMed with Mesh, Web of Science, Scopus, and IEEE Xplore were searched for peer-reviewed journal articles published up to June 2024, identifying 66 papers. We reviewed the study populations used for data collection, data acquisition details, signal types, data preparation steps, ML approaches used, digital phenotypes and digital biomarkers, and health outcomes and diseases predicted using these ML techniques. Our findings highlight the promising potential for objective tracking of health outcomes and diseases using passive non-invasive signals collected from wearable devices and smartphones with ML approaches for characterization and prediction of a range of health outcomes and diseases, such as stress, seizure, fatigue, depression, and Parkinson’s disease. Future studies should focus on improving the quality of collected data, addressing missing data challenges, providing better documentation on study participants, and sharing the source code of the implemented methods and algorithms, along with their datasets and methods, for reproducibility purposes.
期刊介绍:
Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.