2024
DOI: 10.1055/a-2321-0397
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Predicting Postoperative Pain and Opioid Use with Machine Learning Applied to Longitudinal Electronic Health Record and Wearable Data

Nidhi Soley,
Traci J. Speed,
Anping Xie
et al.

Abstract: Background: Managing acute postoperative pain and minimizing chronic opioid use is crucial for patient recovery and long-term well-being. Objective: This study explored using preoperative electronic health records (EHR) and wearable device data for machine-learning models that predict postoperative acute pain and chronic opioid use. Methods: The study cohort consisted of ~347 All of Us Research Program participants who underwent one of eight surgical procedures and shared EHR and wearable device data. We dev… Show more

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