Spine Surgery Center, Department of Spine Surgery, Zhongda Hospital Affiliated to Southeast University, Nanjing, Jiangsu, People's Republic of China.
Department of Orthopedics, Yancheng Third People's Hospital, Yancheng, Jiangsu, People's Republic of China.
Spine (Phila Pa 1976). 2024 Sep 15;49(18):1281-1293. doi: 10.1097/BRS.0000000000005087. Epub 2024 Jul 4.
Retrospective study.
The objective of this investigation was to formulate and internally verify a customized machine learning (ML) framework for forecasting cerebrospinal fluid leakage (CSFL) in lumbar fusion surgery. This was accomplished by integrating imaging parameters and using the SHapley Additive exPlanation (SHAP) technique to elucidate the interpretability of the model.
Given the increasing incidence and surgical volume of spinal degeneration worldwide, accurate predictions of postoperative complications are urgently needed. SHAP-based interpretable ML models have not been used for CSFL risk factor analysis in lumbar fusion surgery.
Clinical and imaging data were retrospectively collected from 3505 patients who underwent lumbar fusion surgery. Six distinct machine learning models were formulated: extreme gradient boosting (XGBoost), decision tree (DT), random forest (RF), support vector machine (SVM), Gaussian naive Bayes (GaussianNB), and K-nearest neighbors (KNN) models. Evaluation of model performance on the test dataset was performed using performance metrics, and the analysis was executed through the SHAP framework.
CSFL was detected in 95 (2.71%) of 3505 patients. Notably, the XGBoost model exhibited outstanding accuracy in forecasting CSFLs, with high precision (0.9815), recall (0.6667), accuracy (0.8182), F1 score (0.7347), and AUC (0.7343). In addition, through SHAP analysis, significant predictors of CSFL were identified, including ligamentum flavum thickness, zygapophysial joint degeneration grade, central spinal stenosis grade, decompression segment count, decompression mode, intervertebral height difference, Cobb angle, intervertebral height index difference, operation mode, lumbar segment lordosis angle difference, Meyerding grade of lumbar spondylolisthesis, and revision surgery.
The combination of the XGBoost model with the SHAP is an effective tool for predicting the risk of CSFL during lumbar fusion surgery. Its implementation could aid clinicians in making informed decisions, potentially enhancing patient outcomes and lowering healthcare expenses. This study advocates for the adoption of this approach in clinical settings to enhance the evaluation of CSFL risk among patients undergoing lumbar fusion.
回顾性研究。
本研究旨在构建并内部验证一个定制的机器学习(ML)框架,用于预测腰椎融合手术中的脑脊液漏(CSFL)。通过整合成像参数并使用 SHapley Additive exPlanation(SHAP)技术,阐明模型的可解释性,从而实现这一目标。
鉴于全球范围内脊柱退变的发病率和手术量不断增加,迫切需要准确预测术后并发症。基于 SHAP 的可解释性 ML 模型尚未用于腰椎融合手术中 CSFL 危险因素分析。
回顾性收集了 3505 例接受腰椎融合手术患者的临床和影像学数据。构建了 6 种不同的机器学习模型:极端梯度提升(XGBoost)、决策树(DT)、随机森林(RF)、支持向量机(SVM)、高斯朴素贝叶斯(GaussianNB)和 K-近邻(KNN)模型。通过性能指标在测试数据集上评估模型性能,并通过 SHAP 框架进行分析。
在 3505 例患者中,有 95 例(2.71%)检测到 CSFL。值得注意的是,XGBoost 模型在预测 CSFL 方面表现出色,具有较高的精度(0.9815)、召回率(0.6667)、准确性(0.8182)、F1 评分(0.7347)和 AUC(0.7343)。此外,通过 SHAP 分析,确定了 CSFL 的显著预测因子,包括黄韧带厚度、关节突关节退变程度、中央椎管狭窄程度、减压节段数、减压方式、椎间隙高度差、Cobb 角、椎间隙高度指数差、手术方式、腰椎前凸角度差、腰椎滑脱 Meyerding 分级和翻修手术。
XGBoost 模型与 SHAP 的结合是预测腰椎融合术中 CSFL 风险的有效工具。它的实施可以帮助临床医生做出明智的决策,有可能改善患者的预后并降低医疗费用。本研究提倡在临床环境中采用这种方法,以增强对接受腰椎融合术患者 CSFL 风险的评估。