Emerging Machine Learning in Wearable Healthcare Sensors

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Human biosignals provide essential information for diagnosing diseases such as dementia and Parkinson's disease. Owing to the shortcomings of current clinical assessments, noninvasive solutions are required. Machine learning (ML) on wearable sensor data is a promising method for the real-time monitoring and early detection of abnormalities. ML facilitates disease identification, severity mea-surement, and remote rehabilitation by providing continuous feedback. In the context of wearable sensor technology, ML involves training on observed data for tasks such as classification and regression with applications in clinical metrics. Although supervised ML presents challenges in clinical settings, unsupervised learning, which focuses on tasks such as cluster identification and anomaly detection, has emerged as a useful alternative. This review examines and discusses a variety of ML algorithms such as Support Vector Machines (SVM), Random Forests (RF), Decision Trees (DT), Neural Networks (NN), and Deep Learning for the analysis of complex clinical data.
Publisher
Korean Sensors Society
Issue Date
2023-11
Article Type
Article
Citation

Journal of Sensor Science and Technology, v.32, no.6, pp.378 - 385

ISSN
1225-5475
DOI
10.46670/jsst.2023.32.6.378
URI
http://hdl.handle.net/10203/320043
Appears in Collection
ME-Journal Papers(저널논문)
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