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Mortality prediction in patients with isolated moderate and severe traumatic brain injury using machine learning models

机译:使用机器学习模型分离中度和严重创伤性脑损伤患者的死亡率预测

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摘要

BACKGROUND:The purpose of this study was to build a model of machine learning (ML) for the prediction of mortality in patients with isolated moderate and severe traumatic brain injury (TBI). METHODS:Hospitalized adult patients registered in the Trauma Registry System between January 2009 and December 2015 were enrolled in this study. Only patients with an Abbreviated Injury Scale (AIS) score ≥ 3 points related to head injuries were included in this study. A total of 1734 (1564 survival and 170 non-survival) and 325 (293 survival and 32 non-survival) patients were included in the training and test sets, respectively. RESULTS:Using demographics and injury characteristics, as well as patient laboratory data, predictive tools (e.g., logistic regression [LR], support vector machine [SVM], decision tree [DT], naive Bayes [NB], and artificial neural networks [ANN]) were used to determine the mortality of individual patients. The predictive performance was evaluated by accuracy, sensitivity, and specificity, as well as by area under the curve (AUC) measures of receiver operator characteristic curves. In the training set, all five ML models had a specificity of more than 90% and all ML models (except the NB) achieved an accuracy of more than 90%. Among them, the ANN had the highest sensitivity (80.59%) in mortality prediction. Regarding performance, the ANN had the highest AUC (0.968), followed by the LR (0.942), SVM (0.935), NB (0.908), and DT (0.872). In the test set, the ANN had the highest sensitivity (84.38%) in mortality prediction, followed by the SVM (65.63%), LR (59.38%), NB (59.38%), and DT (43.75%). CONCLUSIONS:The ANN model provided the best prediction of mortality for patients with isolated moderate and severe TBI.
机译:背景:本研究的目的是建立一种机器学习模型(ML),用于预测患者患者患者患者中度和严重的创伤性脑损伤(TBI)。方法:在本研究中注册了2009年1月至2015年12月期间在创伤创建中登记的成人患者。本研究仅均唯一患有缩写损伤量表(AIS)评分≥3分的患者均均纳入了与头部损伤相关的3分。培训和试验组共有1734名(1564名存活率和170个不生存)和325(293份生存和32名非生存)患者。结果:使用人口统计学和伤害特征,以及患者实验室数据,预测工具(例如,Logistic回归[LR],支持向量机[SVM],决策树[DT],Naive Bayes [NB]和人工神经网络[ ANN])用于确定个体患者的死亡率。通过准确性,灵敏度和特异性以及接收器操作员特征曲线的曲线(AUC)测量下的精度,灵敏度和特异性来评估预测性能。在培训集中,所有五个ML型号的特异性超过90%,所有ML型号(NB除外)达到了90%以上的准确性。其中,恩的敏感性最高(80.59%)在死亡率预测中。关于性能,ANN具有最高的AUC(0.968),其次是LR(0.942),SVM(0.935),NB(0.908)和DT(0.872)。在测试组中,ANN具有最高的敏感性(84.38%)在死亡率预测中,其次是SVM(65.63%),LR(59.38%),Nb(59.38%)和DT(43.75%)。结论:ANN模型为孤立中度和严重TBI患者提供了最佳对死亡率的预测。

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