Identification of patients at risk of new onset heart failure: Utilizing a large statewide health information exchange to train and validate a risk prediction model.
Son Q DuongLe ZhengMinjie XiaBo JinModi LiuZhen LiShiying HaoShaun T AlfredsKarl G SylvesterEric WidenJeffery J TeutebergDoff B McElhinneyXuefeng B LingPublished in: PloS one (2021)
Utilizing machine learning modeling techniques on passively collected clinical HIE data, we developed and validated an incident-HF prediction tool that performs on par with other models that require proactively collected clinical data. Our algorithm could be integrated into other HIEs to leverage the EMR resources to provide individuals, systems, and payors with a risk stratification tool to allow for targeted resource allocation to reduce incident-HF disease burden on individuals and health care systems.