Department of Orthopaedic Surgery, David Geffen School of Medicine at UCLA, Los Angeles, California, USA.
Department of Orthopaedic Surgery, David Geffen School of Medicine at UCLA, Los Angeles, California, USA.
World Neurosurg. 2021 Aug;152:e227-e234. doi: 10.1016/j.wneu.2021.05.080. Epub 2021 May 28.
Given the significant cost and morbidity of patients undergoing lumbar fusion, accurate preoperative risk-stratification would be of great utility. We aim to develop a machine learning model for prediction of major complications and readmission after lumbar fusion. We also aim to identify the factors most important to performance of each tested model.
We identified 38,788 adult patients who underwent lumbar fusion at any California hospital between 2015 and 2017. The primary outcome was major perioperative complication or readmission within 30 days. We build logistic regression and advanced machine learning models: XGBoost, AdaBoost, Gradient Boosting, and Random Forest. Discrimination and calibration were assessed using area under the receiver operating characteristic curve and Brier score, respectively.
There were 4470 major complications (11.5%). The XGBoost algorithm demonstrates the highest discrimination of the machine learning models, outperforming regression. The variables most important to XGBoost performance include angina pectoris, metastatic cancer, teaching hospital status, history of concussion, comorbidity burden, and workers' compensation insurance. Teaching hospital status and concussion history were not found to be important for regression.
We report a machine learning algorithm for prediction of major complications and readmission after lumbar fusion that outperforms logistic regression. Notably, the predictors most important for XGBoost differed from those for regression. The superior performance of XGBoost may be due to the ability of advanced machine learning methods to capture relationships between variables that regression is unable to detect. This tool may identify and address potentially modifiable risk factors, helping risk-stratify patients and decrease complication rates.
鉴于接受腰椎融合术的患者的巨大成本和发病率,如果能够准确地进行术前风险分层,将会带来巨大的收益。我们旨在开发一种机器学习模型,以预测腰椎融合术后的主要并发症和再入院。我们还旨在确定每个测试模型中最重要的性能因素。
我们确定了 2015 年至 2017 年期间在加利福尼亚州任何一家医院接受腰椎融合术的 38788 名成年患者。主要结局是术后 30 天内发生主要围手术期并发症或再入院。我们构建了逻辑回归和高级机器学习模型:XGBoost、AdaBoost、梯度提升和随机森林。使用接收者操作特征曲线下的面积和 Brier 评分分别评估区分度和校准度。
有 4470 例主要并发症(11.5%)。XGBoost 算法对机器学习模型的区分度最高,优于回归。对 XGBoost 性能最重要的变量包括心绞痛、转移性癌症、教学医院状态、脑震荡史、合并症负担和工人赔偿保险。教学医院状态和脑震荡史对回归并不重要。
我们报告了一种用于预测腰椎融合术后主要并发症和再入院的机器学习算法,该算法优于逻辑回归。值得注意的是,XGBoost 的重要预测因素与回归不同。XGBoost 的优异性能可能是由于高级机器学习方法能够捕捉回归无法检测到的变量之间的关系。该工具可以识别和解决潜在的可改变的风险因素,帮助患者进行风险分层并降低并发症发生率。