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Machine Learning Methods for Precision Medicine Research Designed to Reduce Health Disparities: A Structured Tutorial
Author(s) -
Sanjay Basu,
James H. Faghmous,
Patrick Doupé
Publication year - 2020
Publication title -
ethnicity and disease
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.767
H-Index - 67
eISSN - 1945-0826
pISSN - 1049-510X
DOI - 10.18865/ed.30.s1.217
Subject(s) - machine learning , artificial intelligence , computer science , boosting (machine learning) , ensemble learning , health care , deep learning , data science , economics , economic growth
  Precision medicine research designed to reduce health disparities often involves studying multi-level datasets to understand how diseases manifest disproportionately in one group over another, and how scarce health care resources can be directed precisely to those most at risk for disease. In this article, we provide a structured tutorial for medical and public health research­ers on the application of machine learning methods to conduct precision medicine research designed to reduce health dispari­ties. We review key terms and concepts for understanding machine learning papers, including supervised and unsupervised learning, regularization, cross-validation, bagging, and boosting. Metrics are reviewed for evaluating machine learners and major families of learning approaches, including tree-based learning, deep learning, and ensemble learning. We highlight the advan­tages and disadvantages of different learning approaches, describe strategies for interpret­ing “black box” models, and demonstrate the application of common methods in an example dataset with open-source statistical code in R.Ethn Dis. 2020;30(Suppl 1):217-228; doi:10.18865/ed.30.S1.217

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