Applications of Machine Learning in Real-Life Digital Health Interventions: Review of the Literature
Journal of Medical Internet Research2019Vol. 21(4), pp. e12286–e12286
Citations Over TimeTop 1% of 2019 papers
Abstract
This review found that digital health interventions incorporating machine learning algorithms in real-life studies can be useful and effective. Given the low number of studies identified in this review and that they did not follow a rigorous machine learning evaluation methodology, we urge the research community to conduct further studies in intervention settings following evaluation principles and demonstrating the potential of machine learning in clinical practice.
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