Baki Humam, Özçelik İsmail Bülent
Department of Orthopedics, Private Gaziosmanpaşa Hospital, Istanbul Yeni Yüzyıl University, 34245 Istanbul, Turkey.
El Istanbul Hand Surgery Microsurgery Group, İstanbul Yeni Yüzyıl University Gaziosmanpaşa Hospital Hand Surgery Unit, Faculty of Health Sciences, Nisantasi University, 34398 Istanbul, Turkey.
Diagnostics (Basel). 2025 Jul 16;15(14):1787. doi: 10.3390/diagnostics15141787.
: Postoperative deep vein thrombosis (DVT) is a common and serious complication after tibial fracture surgery. This study aimed to develop and evaluate machine learning (ML) models to predict the occurrence of DVT following tibia fracture surgery. : A retrospective analysis was conducted on patients who had undergone surgery for isolated tibial fractures. A total of 42 predictive models were developed using combinations of six ML algorithms-logistic regression, support vector machine, random forest, extreme gradient boosting, Light Gradient Boosting Machine (LightGBM), and neural networks-and seven feature selection methods, including SHapley Additive exPlanations (SHAP), Least Absolute Shrinkage and Selection Operator (LASSO), Boruta, recursive feature elimination, univariate filtering, and full-variable inclusion. Model performance was assessed based on discrimination, quantified by the area under the receiver operating characteristic curve (AUC-ROC), and calibration, measured using Brier scores, with internal validation performed via bootstrapping. : Of 471 patients, 80 (17.0%) developed postoperative DVT. The ML models achieved high overall accuracy in predicting DVT. Twenty-four models showed similarly excellent discrimination (pairwise AUC comparisons, > 0.05). The top-performing model (random forest with RFE) attained an AUC of 0.99, while several others (including LightGBM and SVM-based models) also reached AUC values in the 0.97-0.99 range. Notably, support vector machine models paired with Boruta or LASSO feature selection demonstrated the best calibration (lowest Brier scores), indicating reliable risk estimation. The final selected SVM models achieved high specificity (≥95%) with moderate sensitivity (75-80%) for DVT detection. : ML models demonstrated high accuracy in predicting postoperative DVT following tibial fracture surgery. Support vector machine-based models showed particularly favorable discrimination and calibration. These results suggest the potential utility of ML-based risk stratification to guide individualized prophylaxis, warranting further validation in prospective clinical settings.
术后深静脉血栓形成(DVT)是胫骨骨折手术后常见且严重的并发症。本研究旨在开发和评估机器学习(ML)模型,以预测胫骨骨折手术后DVT的发生情况。
对接受单纯胫骨骨折手术的患者进行了回顾性分析。使用六种ML算法(逻辑回归、支持向量机、随机森林、极端梯度提升、轻量级梯度提升机(LightGBM)和神经网络)与七种特征选择方法(包括SHapley加性解释(SHAP)、最小绝对收缩和选择算子(LASSO)、Boruta、递归特征消除、单变量过滤和全变量纳入)的组合,共开发了42个预测模型。基于判别力(通过受试者操作特征曲线下面积(AUC-ROC)量化)和校准(使用Brier分数测量)评估模型性能,并通过自举法进行内部验证。
在471例患者中,80例(17.0%)发生了术后DVT。ML模型在预测DVT方面总体准确率较高。24个模型显示出同样出色的判别力(两两AUC比较,>0.05)。表现最佳的模型(采用RFE的随机森林)的AUC约为0.99,而其他几个模型(包括基于LightGBM和SVM的模型)的AUC值也在0.97-0.99范围内。值得注意的是,与Boruta或LASSO特征选择相结合的支持向量机模型表现出最佳的校准(最低的Brier分数),表明风险估计可靠。最终选定的SVM模型在检测DVT时具有较高的特异性(≥95%)和中等的敏感性(约75-80%)。
ML模型在预测胫骨骨折手术后的术后DVT方面表现出较高的准确性。基于支持向量机的模型显示出特别良好的判别力和校准。这些结果表明基于ML的风险分层在指导个体化预防方面的潜在效用,值得在前瞻性临床环境中进一步验证。