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A statistically rigorous deep neural network approach to predict mortality in trauma patients admitted to the intensive care unit

机译:一种统计上严格的深度神经网络方法,以预测入侵密集护理单位的创伤患者死亡率

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BACKGROUND Trauma patients admitted to critical care are at high risk of mortality because of their injuries. Our aim was to develop a machine learning-based model to predict mortality using Fahad-Liaqat-Ahmad Intensive Machine (FLAIM) framework. We hypothesized machine learning could be applied to critically ill patients and would outperform currently used mortality scores. METHODS The current Deep-FLAIM model evaluates the statistically significant risk factors and then supply these risk factors to deep neural network to predict mortality in trauma patients admitted to the intensive care unit (ICU). We analyzed adult patients (>= 18 years) admitted to the trauma ICU in the publicly available database Medical Information Mart for Intensive Care III version 1.4. The first phase selection of risk factor was done using Cox-regression univariate and multivariate analyses. In the second phase, we applied deep neural network and other traditional machine learning models like Linear Discriminant Analysis, Gaussian Naive Bayes, Decision Tree Model, and k-nearest neighbor models. RESULTS We identified a total of 3,041 trauma patients admitted to the trauma surgery ICU. We observed that several clinical and laboratory-based variables were statistically significant for both univariate and multivariate analyses while others were not. With most significant being serum anion gap (hazard ratio [HR], 2.46; 95% confidence interval [CI], 1.94-3.11), sodium (HR, 2.11; 95% CI, 1.61-2.77), and chloride (HR, 2.11; 95% CI, 1.69-2.64) abnormalities on laboratories, while clinical variables included the diagnosis of sepsis (HR, 2.03; 95% CI, 1.23-3.37), Quick Sequential Organ Failure Assessment score (HR, 1.52; 95% CI, 1.32-3.76). And Systemic Inflammatory Response Syndrome criteria (HR. 1.41; 95% CI, 1.24-1.26). After we used these clinically significant variables and applied various machine learning models to the data, we found out that our proposed DNN outperformed all the other methods with test set accuracy of 92.25%, sensitivity of 79.13%, and specificity of 94.16%; positive predictive value, 66.42%; negative predictive value, 96.87%; and area under the curve of the receiver-operator curve of 0.91 (1.45-1.29). CONCLUSION Our novel Deep-FLAIM model outperformed all other machine learning models. The model is easy to implement, user friendly and with high accuracy.
机译:背景:接受重症监护的创伤患者因受伤而面临较高的死亡风险。我们的目标是开发一个基于机器学习的模型,使用Fahad Liaqat Ahmad强化机器(FLAIM)框架预测死亡率。我们假设机器学习可以应用于危重病人,并且会优于目前使用的死亡率得分。方法当前的Deep-FLAIM模型评估具有统计学意义的危险因素,然后将这些危险因素提供给Deep神经网络,以预测重症监护病房(ICU)创伤患者的死亡率。我们分析了创伤ICU中的成人患者(>=18岁),这些患者在可公开获取的重症监护III 1.4版数据库医疗信息集市中入院。风险因素的第一阶段选择采用Cox回归单变量和多变量分析。在第二阶段,我们应用了深度神经网络和其他传统的机器学习模型,如线性判别分析、高斯朴素贝叶斯、决策树模型和k-最近邻模型。结果我们共确定了3041名创伤患者入住创伤外科ICU。我们观察到,一些临床和实验室变量在单变量和多变量分析中具有统计学意义,而其他变量则不具有统计学意义。最显著的是实验室中的血清阴离子间隙(危险比[HR],2.46;95%可信区间[CI],1.94-3.11)、钠(HR,2.11;95%可信区间,1.61-2.77)和氯(HR,2.11;95%可信区间,1.69-2.64)异常,而临床变量包括败血症的诊断(HR,2.03;95%可信区间,1.23-3.37)、快速顺序器官衰竭评估评分(HR,1.52;95%可信区间,1.32-3.76)。全身炎症反应综合征标准(HR.1.41;95%CI,1.24-1.26)。在使用这些具有临床意义的变量并对数据应用各种机器学习模型后,我们发现我们提出的DNN优于所有其他方法,测试集准确率为92.25%,敏感性为79.13%,特异性为94.16%;阳性预测值66.42%;阴性预测值96.87%;接收器-操作员曲线下的面积为0.91(1.45-1.29)。结论我们新的Deep-FLAIM模型优于所有其他机器学习模型。该模型易于实现,用户友好,精度高。

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