Application of machine learning to identify risk factors for outpatient opioid prescriptions following spine surgery.

IF 2.1 Q2 MEDICINE, GENERAL & INTERNAL
BioMedicine-Taiwan Pub Date : 2024-12-01 eCollection Date: 2024-01-01 DOI:10.37796/2211-8039.1471
Alexander Bouterse, Andrew Cabrera, Adam Jameel, David Chung, Olumide Danisa
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Abstract

Introduction: Spine surgery is a common source of narcotic prescriptions and carries potential for long-term opioid dependence. As prescription opioids play a role in nearly 25 % of all opioid overdose deaths in the United States, mitigating risk for prolonged postoperative opioid utilization is crucial for spine surgeons.

Purpose: The aim of this study was to employ six ML algorithms to identify clinical variables predictive of increased opioid utilization across spinal surgeries, including anterior cervical discectomy and fusion (ACDF), posterior thoracolumbar fusion (PTLF), and lumbar laminectomy.

Methods: A query of the author's institutional database identified adult patients undergoing ACDF, PTLF, or lumbar laminectomy between 2013 and 2022. Six supervised ML algorithms, including Random Forest, Extreme Gradient Boosting, and LightGBM, were tasked with predicting additional opioid prescriptions at a patient's first postoperative visit based on set variables. Predictive variables were evaluated for missing data and optimized. Model performance was assessed with common analytical metrics, and variable importance was quantified using permutation feature importance. Statistical analysis utilized Pearson's Chi-square tests for categorical and independent sample t-tests for numerical differences.

Results: The author's query identified 3202 patients matching selection criteria, with 841, 1,409, and 952 receiving ACDF, PTLF, and lumbar laminectomy, respectively. The ML algorithms produced an aggregate AUC of 0.743, performing most effectively for lumbar laminectomy. Random Forest and LightGBM classifiers were selected for generation of permutation feature importance (PFI) values. Hospital length of stay was the only highly featured variable carrying statistical significance across all procedures.

Conclusion: Notable risk factors for increased postoperative opioid use were identified, including shorter hospital stays, younger age, and prolonged operative time. These findings can help identify patients at increased risk and guide strategies to mitigate opioid dependence.

应用机器学习识别脊柱手术后门诊阿片类药物处方的危险因素。
脊柱外科是麻醉药处方的常见来源,并具有长期阿片类药物依赖的潜力。由于处方阿片类药物在美国近25%的阿片类药物过量死亡中起作用,因此降低术后阿片类药物长期使用的风险对脊柱外科医生至关重要。目的:本研究的目的是采用六种ML算法来识别预测脊柱手术中阿片类药物使用增加的临床变量,包括前路颈椎椎间盘切除术和融合(ACDF)、后路胸腰椎融合(PTLF)和腰椎椎板切除术。方法:查询笔者的机构数据库,确定2013年至2022年间接受ACDF、PTLF或腰椎椎板切除术的成年患者。包括随机森林、极端梯度增强和LightGBM在内的六种监督ML算法的任务是根据设置的变量预测患者术后首次就诊时额外的阿片类药物处方。对缺失数据进行预测变量评估并优化。模型性能用常用的分析指标进行评估,变量重要性用排列特征重要性进行量化。统计分析使用皮尔逊卡方检验分类和独立样本t检验数值差异。结果:作者的查询确定了3202例符合选择标准的患者,分别有841例、1409例和952例接受ACDF、PTLF和腰椎椎板切除术。ML算法产生的总AUC为0.743,在腰椎椎板切除术中表现最有效。选择Random Forest和LightGBM分类器生成排列特征重要性(PFI)值。住院时间是唯一具有高度特征的变量,在所有程序中具有统计学意义。结论:确定了术后阿片类药物使用增加的显著危险因素,包括较短的住院时间、较年轻的年龄和较长的手术时间。这些发现可以帮助识别风险增加的患者,并指导减轻阿片类药物依赖的策略。
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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来源期刊
BioMedicine-Taiwan
BioMedicine-Taiwan MEDICINE, GENERAL & INTERNAL-
CiteScore
2.80
自引率
5.90%
发文量
21
审稿时长
24 weeks
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