Machine learning in precision diabetes care and cardiovascular risk prediction

被引:0
作者
Evangelos K. Oikonomou
Rohan Khera
机构
[1] Yale School of Medicine,Section of Cardiovascular Medicine, Department of Internal Medicine
[2] Yale School of Public Health,Section of Health Informatics, Department of Biostatistics
[3] Yale School of Medicine,Section of Biomedical Informatics and Data Science
[4] Yale-New Haven Hospital,Center for Outcomes Research and Evaluation
来源
Cardiovascular Diabetology | / 22卷
关键词
Machine learning; Artificial intelligence; Prediction; Personalized medicine; Digital health; Diabetes; Cardiovascular disease;
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摘要
Artificial intelligence and machine learning are driving a paradigm shift in medicine, promising data-driven, personalized solutions for managing diabetes and the excess cardiovascular risk it poses. In this comprehensive review of machine learning applications in the care of patients with diabetes at increased cardiovascular risk, we offer a broad overview of various data-driven methods and how they may be leveraged in developing predictive models for personalized care. We review existing as well as expected artificial intelligence solutions in the context of diagnosis, prognostication, phenotyping, and treatment of diabetes and its cardiovascular complications. In addition to discussing the key properties of such models that enable their successful application in complex risk prediction, we define challenges that arise from their misuse and the role of methodological standards in overcoming these limitations. We also identify key issues in equity and bias mitigation in healthcare and discuss how the current regulatory framework should ensure the efficacy and safety of medical artificial intelligence products in transforming cardiovascular care and outcomes in diabetes.
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