Machine Learning Algorithms Can Be Reliably Leveraged to Identify Patients at High Risk of Prolonged Postoperative Opioid Use Following Orthopedic Surgery: A Systematic Review

Laura M. Krivicich, Kyleen Jan, K. Kunze, Morgan W. Rice, S. Nho
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Abstract

Background: Machine learning (ML) has emerged as a method to determine patient-specific risk for prolonged postoperative opioid use after orthopedic procedures. Purpose: We sought to analyze the efficacy and validity of ML algorithms in identifying patients who are at high risk for prolonged opioid use following orthopedic procedures. Methods: PubMed, EMBASE, and Web of Science Core Collection databases were queried for articles published prior to August 2021 for articles applying ML to predict prolonged postoperative opioid use following orthopedic surgeries. Features pertaining to patient demographics, surgical procedures, and ML algorithm performance were analyzed. Results: Ten studies met inclusion criteria: 4 spine, 3 knee, and 3 hip. Studies reported postoperative opioid use over 30 to 365 days and varied in defining prolonged use. Prolonged postsurgical opioid use frequency ranged from 4.3% to 40.9%. C-statistics for spine studies ranged from 0.70 to 0.81; for knee studies, 0.75 to 0.77; and for hip studies, 0.71 to 0.77. Brier scores for spine studies ranged from 0.039 to 0.076; for knee, 0.01 to 0.124; and for hip, 0.052 to 0.21. Seven articles reported calibration intercept (range: –0.02 to 0.16) and calibration slope (range: 0.88 to 1.08). Nine articles included a decision curve analysis. No investigations performed external validation. Thematic predictors of prolonged postoperative opioid use were preoperative opioid, benzodiazepine, or antidepressant use and extremes of age depending on procedure population. Conclusions: This systematic review found that ML algorithms created to predict risk for prolonged postoperative opioid use in orthopedic surgery patients demonstrate good discriminatory performance. The frequency and predictive features of prolonged postoperative opioid use identified were consistent with existing literature, although algorithms remain limited by a lack of external validation and imperfect adherence to predictive modeling guidelines.
机器学习算法可以可靠地用于识别骨科手术后长期使用阿片类药物的高风险患者:系统综述
背景:机器学习(ML)已经成为一种确定骨科手术后延长阿片类药物使用患者特异性风险的方法。目的:我们试图分析ML算法在识别骨科手术后阿片类药物长期使用高风险患者中的有效性和有效性。方法:查询PubMed、EMBASE和Web of Science核心收集数据库中2021年8月之前发表的文章,寻找应用ML预测骨科手术后阿片类药物使用时间延长的文章。分析了与患者人口统计学、手术程序和ML算法性能有关的特征。结果:10项研究符合纳入标准:4项脊柱,3项膝关节,3项髋关节。研究报告术后阿片类药物使用超过30至365天,对长期使用的定义各不相同。术后延长阿片类药物使用频率从4.3%到40.9%不等。脊柱研究的c统计量为0.70 ~ 0.81;对于膝关节研究,0.75 - 0.77;对于髋部研究,0.71到0.77。脊柱研究的Brier评分范围为0.039 ~ 0.076;膝关节为0.01 ~ 0.124;对于臀部,是0.052到0.21。7篇文章报告了校准截距(范围:-0.02至0.16)和校准斜率(范围:0.88至1.08)。九篇文章包括决策曲线分析。没有调查进行外部验证。术后阿片类药物使用时间延长的主题预测因子是术前阿片类药物、苯二氮卓类药物或抗抑郁药的使用以及取决于手术人群的极端年龄。结论:本系统综述发现,用于预测骨科手术患者术后长时间使用阿片类药物风险的ML算法具有良好的歧视性。确定的术后阿片类药物使用时间延长的频率和预测特征与现有文献一致,尽管算法仍然受到缺乏外部验证和不完全遵守预测建模指南的限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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