Karabacak Mert, Margetis Konstantinos
Department of Neurosurgery, Mount Sinai Health System, New York, New York, USA.
Department of Neurosurgery, Mount Sinai Health System, New York, New York, USA.
World Neurosurg. 2023 Sep;177:e226-e238. doi: 10.1016/j.wneu.2023.06.025. Epub 2023 Jun 15.
This study aimed to assess the effectiveness of machine learning (ML) algorithms in predicting short-term adverse postoperative outcomes after cervical disc arthroplasty (CDA) and to create a user-friendly and accessible tool for this purpose.
The American College of Surgeons (ACS) National Surgical Quality Improvement Program (NSQIP) database was used to identify patients who underwent CDA. The outcome of interest was the combined occurrence of adverse events in the short-term postoperative period, including prolonged stay, major complications, nonhome discharges, and 30-day readmissions. To predict the combined outcome of interest, short-term adverse postoperative outcomes, 4 different ML algorithms were utilized to develop predictive models, and these models were incorporated into an open access web application.
A total of 6,604 patients that underwent CDA were included in the analysis. The mean area under the receiver operating characteristic curve (AUROC) and accuracy were 0.814 and 87.8% for all algorithms. SHapley Additive exPlanations (SHAP) analyses revealed that white race was the most important predictor variable for all 4 algorithms. The following URL will take users to the open access web application created to provide predictions for individual patients based on their characteristics: huggingface.co/spaces/MSHS-Neurosurgery-Research/NSQIP-CDA.
ML approaches have the potential to predict postoperative outcomes after CDA surgery. As the amount of data in spinal surgery grows, the development of predictive models as clinically useful decision-making tools may significantly improve risk assessment and prognosis. We present and make publicly available predictive models for CDA intended to achieve the goals mentioned above.
本研究旨在评估机器学习(ML)算法在预测颈椎间盘置换术(CDA)术后短期不良结局方面的有效性,并为此创建一个用户友好且易于使用的工具。
使用美国外科医师学会(ACS)国家外科质量改进计划(NSQIP)数据库来识别接受CDA的患者。感兴趣的结局是术后短期内不良事件的综合发生情况,包括住院时间延长、重大并发症、非回家出院和30天再入院。为了预测感兴趣的综合结局,即术后短期不良结局,使用了4种不同的ML算法来开发预测模型,并将这些模型纳入一个开放获取的网络应用程序中。
共有6604例接受CDA的患者纳入分析。所有算法的受试者操作特征曲线下面积(AUROC)均值和准确率分别为0.814和87.8%。SHapley值相加解释(SHAP)分析显示,白人种族是所有4种算法中最重要的预测变量。以下网址将引导用户访问创建的开放获取网络应用程序,该应用程序可根据患者特征为个体患者提供预测:huggingface.co/spaces/MSHS-Neurosurgery-Research/NSQIP-CDA。
ML方法有潜力预测CDA手术后的结局。随着脊柱手术数据量的增加,将预测模型开发为临床有用的决策工具可能会显著改善风险评估和预后。我们展示并公开了用于CDA的预测模型,以实现上述目标。