A neural network approach to predict opioid misuse among previously hospitalized patients using electronic health records
Lucas Vega,
Winslow Conneen,
Michael A. Veronin
et al.
Abstract:Can Electronic Health Records (EHR) predict opioid misuse in general patient populations? This research trained three backpropagation neural networks to explore EHR predictors using existing patient data. Model 1 used patient diagnosis codes and was 75.5% accurate. Model 2 used patient prescriptions and was 64.9% accurate. Model 3 used both patient diagnosis codes and patient prescriptions and was 74.5% accurate. This suggests patient diagnosis codes are best able to predict opioid misuse. Opioid misusers have… Show more
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