Medicine and Healthnpj Digital Medicine
Cohort design and natural language processing to reduce bias in electronic health records research
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Discover how electronic health record (EHR) datasets can overcome biases and missing data through innovative sampling and natural language processing methods. This groundbreaking research conducted by esteemed authors reveals a significant reduction in missing vital signs and improved risk model calibration, enhancing the generalizability of EHR research.
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