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Machine learning nonresponse adjustment of patient-reported opioid consumption data to enable consumption-informed postoperative opioid prescribing guidelines

Kennedy, Chris J, Jayson S Marwaha, Brendin R Beaulieu-Jones, Nina Scalise, Kortney A Robinson, Brandon Booth, Aaron Fleishman, Larry A Nathanson, and Gabriel A Brat. 2022. “Machine Learning Nonresponse Adjustment of Patient-Reported Opioid Consumption Data to Enable Consumption-Informed Postoperative Opioid Prescribing Guidelines”. Surgery in Practice and Science 10: 100098.
Last updated on 02/21/2025

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