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利用机器学习模型增强闭合性骨盆骨折的临床决策

Enhancing clinical decision-making in closed pelvic fractures with machine learning models.

作者信息

Wang Dian, Li Yongxin, Wang Li

机构信息

Department of Emergency, Sichuan Provincial People's Hospital Chuandong Hospital, Dazhou First People's Hospital, Tongchuan District, Dazhou, Sichuan Province, China.

Department of Critical Care Medicine, Suining Municipal Hospital of Traditional Chinese Medicine, Suining, Sichuan Province, China.

出版信息

Biomol Biomed. 2025 May 8;25(7):1491-1507. doi: 10.17305/bb.2024.10802.

Abstract

Closed pelvic fractures can lead to severe complications, including hemodynamic instability (HI) and mortality. Accurate prediction of these risks is crucial for effective clinical management. This study aimed to utilize various machine learning (ML) algorithms to predict HI and death in patients with closed pelvic fractures and identify relevant risk factors. The retrospective study included 208 patients diagnosed with pelvic fractures and admitted to Suning Traditional Chinese Medicine Hospital between 2019 and 2023. Among these, 133 cases were identified as closed PFs. Patients with closed fractures were divided into a training set (n = 115) and a test set (n = 18). The training set was further stratified into two groups based on hemodynamic stability: Group A (patients with HI) and Group B (patients with hemodynamic stability). A total of 40 clinical variables were collected, and multiple machine learning algorithms were employed to develop predictive models, including logistic regression (LR), C5.0 Decision Tree (DT), Naive Bayes (NB), support vector machine (SVM), K-nearest neighbors (KNN), random Forest (RF), and artificial neural network (ANN). Additionally, factor analysis was performed to assess the interrelationships between variables. The RF and LR algorithms outperformed traditional methods-such as central venous pressure (CVP) and intra-abdominal pressure (IAP) measurements-in predicting HI. The RF model achieved an average under the ROC (AUC) of 0.92, with an accuracy of 0.86, precision of 0.81, and an F1 score of 0.87. The LR model had an average AUC of 0.82 but shared the same accuracy, precision, and F1 score as the RF model. Key risk factors identified included TILE grade, heart rate (HR), creatinine (CR), white blood cell count (WBC), fibrinogen (FIB), and lactic acid (LAC), with LAC levels >3.7 and an injury severity score (ISS) >13 as significant predictors of HI and mortality. In conclusion, the RF and LR algorithms are effective in predicting HI and mortality risk in patients with closed PFs, enhancing clinical decision-making and improving patient outcomes.

摘要

闭合性骨盆骨折可导致严重并发症,包括血流动力学不稳定(HI)和死亡。准确预测这些风险对于有效的临床管理至关重要。本研究旨在利用各种机器学习(ML)算法预测闭合性骨盆骨折患者的HI和死亡情况,并识别相关风险因素。这项回顾性研究纳入了208例被诊断为骨盆骨折并于2019年至2023年期间入住苏宁中医医院的患者。其中,133例被确定为闭合性骨盆骨折。闭合性骨折患者被分为训练集(n = 115)和测试集(n = 18)。训练集根据血流动力学稳定性进一步分为两组:A组(HI患者)和B组(血流动力学稳定患者)。共收集了40个临床变量,并采用多种机器学习算法建立预测模型,包括逻辑回归(LR)、C5.0决策树(DT)、朴素贝叶斯(NB)、支持向量机(SVM)、K近邻(KNN)、随机森林(RF)和人工神经网络(ANN)。此外,进行因子分析以评估变量之间的相互关系。在预测HI方面,RF和LR算法优于传统方法,如中心静脉压(CVP)和腹内压(IAP)测量。RF模型的ROC曲线下平均面积(AUC)为0.92,准确率为0.86,精确率为0.81,F1分数为0.87。LR模型的平均AUC为0.82,但与RF模型具有相同的准确率、精确率和F1分数。确定的关键风险因素包括Tile分级、心率(HR)、肌酐(CR)、白细胞计数(WBC)、纤维蛋白原(FIB)和乳酸(LAC),LAC水平>3.7和损伤严重程度评分(ISS)>13是HI和死亡的重要预测指标。总之,RF和LR算法在预测闭合性骨盆骨折患者的HI和死亡风险方面是有效的,可增强临床决策并改善患者预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8eec/12097389/26bf5f71e952/bb-2024-10802f1.jpg

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