Department of Neurosurgery, Mount Sinai Health System, 1468 Madison (Ave), New York, 10029 NY, USA.
Spine J. 2023 Dec;23(12):1750-1763. doi: 10.1016/j.spinee.2023.08.009. Epub 2023 Aug 23.
A traumatic spinal cord injury (SCI) can cause temporary or permanent motor and sensory impairment, leading to serious short and long-term consequences that can result in significant morbidity and mortality. The cervical spine is the most commonly affected area, accounting for about 60% of all traumatic SCI cases.
This study aims to employ machine learning (ML) algorithms to predict various outcomes, such as in-hospital mortality, nonhome discharges, extended length of stay (LOS), extended length of intensive care unit stay (ICU-LOS), and major complications in patients diagnosed with cervical SCI (cSCI).
Our study was a retrospective machine learning classification study aiming to predict the outcomes of interest, which were binary categorical variables, in patients diagnosed with cSCI.
The data for this study were obtained from the American College of Surgeons (ACS) Trauma Quality Program (TQP) database, which was queried to identify patients who suffered from cSCI between 2019 and 2021.
The outcomes of interest of our study were in-hospital mortality, nonhome discharges, prolonged LOS, prolonged ICU-LOS, and major complications. The study evaluated the models' performance using both graphical and numerical methods. The receiver operating characteristic (ROC) and precision-recall curves (PRC) were used to assess model performance graphically. Numerical evaluation metrics included AUROC, balanced accuracy, weighted area under PRC (AUPRC), weighted precision, and weighted recall.
The study employed data from the American College of Surgeons (ACS) Trauma Quality Program (TQP) database to identify patients with cSCI. Four ML algorithms, namely XGBoost, LightGBM, CatBoost, and Random Forest, were utilized to develop predictive models. The most effective models were then incorporated into a publicly available web application designed to forecast the outcomes of interest.
There were 71,661 patients included in the analysis for the outcome mortality, 67,331 for the outcome nonhome discharges, 76,782 for the outcome prolonged LOS, 26,615 for the outcome prolonged ICU-LOS, and 72,132 for the outcome major complications. The algorithms exhibited an AUROC value range of 0.78 to 0.839 for in-hospital mortality, 0.806 to 0.815 for nonhome discharges, 0.679 to 0.742 for prolonged LOS, 0.666 to 0.682 for prolonged ICU-LOS, and 0.637 to 0.704 for major complications. An open access web application was developed as part of the study, which can generate predictions for individual patients based on their characteristics.
Our study suggests that ML models can be valuable in assessing risk for patients with cervical cSCI and may have considerable potential for predicting outcomes during hospitalization. ML models demonstrated good predictive ability for in-hospital mortality and nonhome discharges, fair predictive ability for prolonged LOS, but poor predictive ability for prolonged ICU-LOS and major complications. Along with these promising results, the development of a user-friendly web application that facilitates the integration of these models into clinical practice is a significant contribution of this study. The product of this study may have significant implications in clinical settings to personalize care, anticipate outcomes, facilitate shared decision making and informed consent processes for cSCI patients.
外伤性脊髓损伤(SCI)可导致暂时或永久性运动和感觉功能障碍,导致严重的短期和长期后果,从而导致显著的发病率和死亡率。颈椎是最常受影响的区域,约占所有外伤性 SCI 病例的 60%。
本研究旨在运用机器学习(ML)算法预测各种结果,如住院死亡率、非家庭出院、延长住院时间(LOS)、延长重症监护病房 LOS(ICU-LOS)和主要并发症在诊断为颈脊髓损伤(cSCI)的患者中。
我们的研究是一项回顾性机器学习分类研究,旨在预测感兴趣的结果,这些结果是患者的二进制分类变量,患有 cSCI。
该研究的数据来自美国外科医师学会(ACS)创伤质量计划(TQP)数据库,该数据库被查询以确定 2019 年至 2021 年期间患有 cSCI 的患者。
本研究感兴趣的结果是住院死亡率、非家庭出院、延长 LOS、延长 ICU-LOS 和主要并发症。该研究使用图形和数值方法评估模型性能。接收器工作特征(ROC)和精度-召回曲线(PRC)用于图形评估模型性能。数值评估指标包括 AUROC、平衡准确性、加权 PRC 下面积(AUPRC)、加权精度和加权召回。
该研究使用美国外科医师学会(ACS)创伤质量计划(TQP)数据库的数据来识别患有 cSCI 的患者。使用了四种 ML 算法,即 XGBoost、LightGBM、CatBoost 和随机森林,来开发预测模型。然后,将最有效的模型纳入一个公开的网络应用程序中,该应用程序旨在预测感兴趣的结果。
我们的研究表明,ML 模型可以在评估颈脊髓损伤患者的风险方面具有价值,并且在预测住院期间的结果方面可能具有相当大的潜力。ML 模型对住院死亡率和非家庭出院具有良好的预测能力,对延长 LOS 具有良好的预测能力,但对延长 ICU-LOS 和主要并发症的预测能力较差。除了这些有希望的结果外,开发一个用户友好的网络应用程序,以促进这些模型在临床实践中的整合,是本研究的一个重要贡献。本研究的产品可能对临床环境具有重要意义,可以实现个性化护理、预测结果、促进颈椎脊髓损伤患者的共同决策和知情同意过程。