journal article Feb 15, 2019

Patient-Level Prediction of Cardio-Cerebrovascular Events in Hypertension Using Nationwide Claims Data

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Details
Published
Feb 15, 2019
Vol/Issue
21(2)
Pages
e11757
Cite This Article
Jaram Park, Jeong-Whun Kim, Borim Ryu, et al. (2019). Patient-Level Prediction of Cardio-Cerebrovascular Events in Hypertension Using Nationwide Claims Data. Journal of Medical Internet Research, 21(2), e11757. https://doi.org/10.2196/11757