Department of Orthopaedic Surgery, Northwestern University Feinberg School of Medicine, Chicago, IL.
Clin Spine Surg. 2023 Apr 1;36(3):143-149. doi: 10.1097/BSD.0000000000001443. Epub 2023 Mar 13.
A retrospective cohort study from a multisite academic medical center.
To construct, evaluate, and interpret a series of machine learning models to predict outcomes related to inpatient health care resource utilization for patients undergoing anterior cervical discectomy and fusion (ACDF).
Reducing postoperative health care utilization is an important goal for improving the delivery of surgical care and serves as a metric for quality assessment. Recent data has shown marked hospital resource utilization after ACDF surgery, including readmissions, and ED visits. The burden of postoperative health care use presents a potential application of machine learning techniques, which may be capable of accurately identifying at-risk patients using patient-specific predictors.
Patients 18-88 years old who underwent ACDF from 2011 to 2021 at a multisite academic center and had preoperative lab values within 3 months of surgery were included. Outcomes analyzed included 90-day readmissions, postoperative length of stay, and nonhome discharge. Four machine learning models-Extreme Gradient Boosted Trees, Balanced Random Forest, Elastic-Net Penalized Logistic Regression, and a Neural Network-were trained and evaluated through the Area Under the Curve estimates. Feature importance scores were computed for the highest-performing model per outcome through model-specific metrics.
A total of 1026 cases were included in the analysis cohort. All machine learning models were predictive for outcomes of interest, with the Random Forest algorithm consistently demonstrating the strongest average area under the curve performance, with a peak performance of 0.84 for nonhome discharge. Important features varied per outcome, though age, body mass index, American Society of Anesthesiologists classification >2, and medical comorbidities were highly weighted in the studied outcomes.
Machine learning models were successfully applied and predictive of postoperative health utilization after ACDF. Deployment of these tools can assist clinicians in determining high-risk patients.
III.
来自多站点学术医疗中心的回顾性队列研究。
构建、评估和解释一系列机器学习模型,以预测接受前路颈椎间盘切除融合术(ACDF)的患者与住院医疗资源利用相关的结局。
减少术后医疗保健的使用是改善手术护理提供的一个重要目标,也是质量评估的一个指标。最近的数据显示,ACDF 手术后医院资源的利用明显增加,包括再入院和急诊就诊。术后医疗保健使用的负担提出了机器学习技术的潜在应用,这些技术可能能够使用患者特定的预测因子准确识别高风险患者。
纳入 2011 年至 2021 年在多站点学术中心接受 ACDF 且手术前 3 个月内有术前实验室值的 18-88 岁患者。分析的结局包括 90 天再入院、术后住院时间和非家庭出院。通过曲线下面积估计值对 4 种机器学习模型(极端梯度提升树、平衡随机森林、弹性网络惩罚逻辑回归和神经网络)进行训练和评估。通过特定于模型的指标计算每个结局中表现最佳的模型的特征重要性评分。
共有 1026 例患者纳入分析队列。所有机器学习模型均对感兴趣的结局具有预测性,随机森林算法的平均曲线下面积表现始终最强,非家庭出院的最佳性能峰值为 0.84。重要特征因结局而异,但年龄、体重指数、美国麻醉医师协会分类>2 和合并症在研究结局中权重较高。
机器学习模型成功地应用于 ACDF 后的术后医疗保健利用,并具有预测性。这些工具的部署可以帮助临床医生确定高风险患者。
III。