Department of Emergency Trauma Surgery, Ganzhou People's Hospital, Ganzhou, China.
Department of Orthopaedics, Shanghai Jiao Tong University Affiliated Sixth People's Hospital, Shanghai, China.
Front Cell Infect Microbiol. 2023 Jun 28;13:1206393. doi: 10.3389/fcimb.2023.1206393. eCollection 2023.
Surgical site infection (SSI) are a serious complication that can occur after open reduction and internal fixation (ORIF) of tibial fractures, leading to severe consequences. This study aimed to develop a machine learning (ML)-based predictive model to screen high-risk patients of SSI following ORIF of tibial fractures, thereby aiding in personalized prevention and treatment.
Patients who underwent ORIF of tibial fractures between January 2018 and October 2022 at the Department of Emergency Trauma Surgery at Ganzhou People's Hospital were retrospectively included. The demographic characteristics, surgery-related variables and laboratory indicators of patients were collected in the inpatient electronic medical records. Ten different machine learning algorithms were employed to develop the prediction model, and the performance of the models was evaluated to select the best predictive model. Ten-fold cross validation for the training set and ROC curves for the test set were used to evaluate model performance. The decision curve and calibration curve analysis were used to verify the clinical value of the model, and the relative importance of features in the model was analyzed.
A total of 351 patients who underwent ORIF of tibia fractures were included in this study, among whom 51 (14.53%) had SSI and 300 (85.47%) did not. Of the patients with SSI, 15 cases were of deep infection, and 36 cases were of superficial infection. Given the initial parameters, the ET, LR and RF are the top three algorithms with excellent performance. Ten-fold cross-validation on the training set and ROC curves on the test set revealed that the ET model had the best performance, with AUC values of 0.853 and 0.866, respectively. The decision curve analysis and calibration curves also showed that the ET model had the best clinical utility. Finally, the performance of the ET model was further tested, and the relative importance of features in the model was analyzed.
In this study, we constructed a multivariate prediction model for SSI after ORIF of tibial fracture through ML, and the strength of this study was the use of multiple indicators to establish an infection prediction model, which can better reflect the real situation of patients, and the model show great clinical prediction performance.
手术部位感染(SSI)是胫骨骨折切开复位内固定(ORIF)后可能发生的严重并发症,可导致严重后果。本研究旨在建立一种基于机器学习(ML)的预测模型,以筛选胫骨骨折 ORIF 后 SSI 的高危患者,从而辅助个性化预防和治疗。
回顾性纳入 2018 年 1 月至 2022 年 10 月在赣州市人民医院急诊创伤外科接受胫骨骨折 ORIF 的患者。收集患者的人口统计学特征、手术相关变量和实验室指标。采用 10 种不同的机器学习算法建立预测模型,通过比较模型的性能,筛选出最佳预测模型。采用 10 折交叉验证训练集和 ROC 曲线测试集评估模型性能。采用决策曲线和校准曲线分析验证模型的临床价值,并分析模型中特征的相对重要性。
本研究共纳入 351 例接受胫骨骨折 ORIF 的患者,其中 51 例(14.53%)发生 SSI,300 例(85.47%)未发生 SSI。在发生 SSI 的患者中,深部感染 15 例,浅部感染 36 例。根据初始参数,ET、LR 和 RF 是性能较好的前三种算法。在训练集上进行 10 折交叉验证和在测试集上进行 ROC 曲线分析表明,ET 模型的性能最佳,AUC 值分别为 0.853 和 0.866。决策曲线分析和校准曲线也表明,ET 模型具有最佳的临床实用性。最后,进一步测试了 ET 模型的性能,并分析了模型中特征的相对重要性。
本研究通过 ML 构建了胫骨骨折 ORIF 后 SSI 的多变量预测模型,本研究的优势在于使用多个指标建立感染预测模型,能够更好地反映患者的真实情况,且模型具有较好的临床预测性能。