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Accurate Prediction of Coronary Heart Disease for Patients With Hypertension From Electronic Health Records With Big Data and Machine-Learning Methods: Model Development and Performance Evaluation.

Zhenzhen DuYujie YangJing ZhengQi LiDenan LinYe LiJianping FanWen ChengXie-Hui ChenYunpeng Cai
Published in: JMIR medical informatics (2020)
We demonstrated that accurate risk prediction of CHD from EHRs is possible given a sufficiently large population of training data. Sophisticated machine-learning methods played an important role in tackling the heterogeneity and nonlinear nature of disease prediction. Moreover, accumulated EHR data over multiple time points provided additional features that were valuable for risk prediction. Our study highlights the importance of accumulating big data from EHRs for accurate disease predictions.
Keyphrases
  • big data
  • machine learning
  • electronic health record
  • artificial intelligence
  • high resolution
  • clinical decision support
  • blood pressure
  • adverse drug
  • single cell