Disease Prediction Using Machine Learning on Smartphone-Based Eye, Skin, and Voice Data: Scoping Review
Research Dawadi, Mai Inoue, Jie Ting Tay, Agustin Martin-Morales, Thien Vu, Michihiro Araki

TL;DR
This review explores how smartphone data from eye, skin, and voice can be used with machine learning to predict diseases, summarizing 49 studies.
Contribution
The paper provides a structured overview of smartphone-based disease prediction using machine learning, categorizing studies by data source and methods.
Findings
49 relevant studies were identified, using 31 databases and 24 machine learning methods.
Studies focused on smartphone-derived data from voice, skin, and eye for disease prediction.
Publicly available databases and experimental data collection were both common approaches.
Abstract
The application of machine learning methods to data generated by ubiquitous devices like smartphones presents an opportunity to enhance the quality of health care and diagnostics. Smartphones are ideal for gathering data easily, providing quick feedback on diagnoses, and proposing interventions for health improvement. We reviewed the existing literature to gather studies that have used machine learning models with smartphone-derived data for the prediction and diagnosis of health anomalies. We divided the studies into those that used machine learning models by conducting experiments to retrieve data and predict diseases, and those that used machine learning models on publicly available databases. The details of databases, experiments, and machine learning models are intended to help researchers working in the fields of machine learning and artificial intelligence in the health care…
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Taxonomy
TopicsMobile Health and mHealth Applications · Data-Driven Disease Surveillance
