Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, MN. Electronic address: https://twitter.com/SalehinejadH.
Division of Hepatobiliary and Pancreas Surgery, Mayo Clinic, Rochester, MN. Electronic address: https://twitter.com/HalaMuaddi.
Surgery. 2024 Aug;176(2):246-251. doi: 10.1016/j.surg.2024.03.054. Epub 2024 May 25.
To combat the opioid epidemic, several strategies were implemented to limit the unnecessary prescription of opioids in the postoperative period. However, this leaves a subset of patients who genuinely require additional opioids with inadequate pain control. Deep learning models are powerful tools with great potential of optimizing health care delivery through a patient-centered focus. We sought to investigate whether deep learning models can be used to predict patients who would require additional opioid prescription refills in the postoperative period after elective surgery.
This is a retrospective study of patients who received elective surgical intervention at the Mayo Clinic. Adult English-speaking patients ≥18 years old, who underwent an elective surgical procedure between 2013 and 2019, were eligible for inclusion. Machine learning models, including deep learning, random forest, and eXtreme Gradient Boosting, were designed to predict patients who require opioid refills after discharge from hospital.
A total of 9,731 patients with mean age of 62.1 years (51.4% female) were included in the study. Deep learning and random forest models predicted patients who required opioid refills with high accuracy, 0.79 ± 0.07 and 0.78 ± 0.08, respectively. Procedure performed, highest pain score recorded during hospitalization, and total oral morphine milligram equivalents prescribed at discharge were the top 3 predictors for requiring opioid refills after discharge.
Deep learning models can be used to predict patients who require postoperative opioid prescription refills with high accuracy. Other machine learning models, such as random forest, can perform equal to deep learning, increasing the applicability of machine learning for combating the opioid epidemic.
为了应对阿片类药物流行,实施了几种策略来限制术后不必要的阿片类药物处方。然而,这使得一部分真正需要额外阿片类药物的患者的疼痛控制不足。深度学习模型是一种强大的工具,具有通过以患者为中心的关注来优化医疗保健服务的巨大潜力。我们试图研究深度学习模型是否可用于预测在择期手术后的术后期间需要额外阿片类药物处方补充的患者。
这是一项对梅奥诊所接受择期手术干预的患者进行的回顾性研究。符合纳入标准的患者为年龄≥18 岁、2013 年至 2019 年间接受择期手术的成年英语患者。设计了机器学习模型,包括深度学习、随机森林和极端梯度增强,以预测出院后需要阿片类药物补充的患者。
共有 9731 名平均年龄为 62.1 岁(51.4%为女性)的患者纳入研究。深度学习和随机森林模型对需要阿片类药物补充的患者预测准确率较高,分别为 0.79 ± 0.07 和 0.78 ± 0.08。进行的手术、住院期间记录的最高疼痛评分和出院时开的总口服吗啡毫克当量是出院后需要阿片类药物补充的前 3 个预测因素。
深度学习模型可用于准确预测需要术后阿片类药物处方补充的患者。其他机器学习模型,如随机森林,可以与深度学习一样表现出色,增加了机器学习在应对阿片类药物流行中的适用性。