Lucas Alfredo, Williams Alexander T, Cabrales Pedro
Department of BioengineeringUniversity of California at San DiegoLa JollaCA92092USA.
IEEE J Transl Eng Health Med. 2019 Jul 1;7:1900509. doi: 10.1109/JTEHM.2019.2924011. eCollection 2019.
This paper implements logistic regression models (LRMs) and feature selection for creating a predictive model for recovery form hemorrhagic shock (HS) with resuscitation using blood in the multiple experimental rat animal protocols. A total of 61 animals were studied across multiple HS experiments, which encompassed two different HS protocols and two resuscitation protocols using blood stored for short periods using five different techniques. Twenty-seven different systemic hemodynamics, cardiac function, and blood gas parameters were measured in each experiment, of which feature selection deemed only 25% of the them as relevant. The reduced feature set was used to train a final logistic regression model. A final test set accuracy is 84% compared to 74% for a baseline classifier using only MAP and HR measurements. Receiver operating characteristics (ROC) curve analysis and Cohens kappa statistics were also used as measures of performance, with the final reduced model outperforming the model, including all parameters. Our results suggest that LRMs trained with a combination of systemic hemodynamics, cardiac function, and blood gas parameters measured at multiple timepoints during HS can successfully classify HS recovery groups. Our results show the predictive ability of traditional and novel hemodynamic and cardiac function features and their combinations, many of which had not previously been taken into consideration, for monitoring HS. Furthermore, we have devised an effective methodology for feature selection and shown ways in which the performance of such predictive models should be assessed in future studies.
本文实施了逻辑回归模型(LRMs)和特征选择,以便在多个实验大鼠动物实验方案中,利用输血复苏创建出血性休克(HS)恢复的预测模型。在多个HS实验中共研究了61只动物,这些实验包括两种不同的HS方案和两种使用五种不同技术短期储存血液的复苏方案。每次实验测量了27种不同的全身血流动力学、心脏功能和血气参数,其中特征选择仅将25%的参数视为相关参数。精简后的特征集用于训练最终的逻辑回归模型。最终测试集的准确率为84%,而仅使用平均动脉压(MAP)和心率(HR)测量的基线分类器的准确率为74%。还使用受试者工作特征(ROC)曲线分析和科恩kappa统计作为性能指标,最终精简模型的表现优于包含所有参数的模型。我们的结果表明,在HS期间多个时间点测量的全身血流动力学、心脏功能和血气参数相结合训练的LRMs能够成功地对HS恢复组进行分类。我们的结果显示了传统和新型血流动力学及心脏功能特征及其组合的预测能力,其中许多特征以前未被考虑用于监测HS。此外,我们设计了一种有效的特征选择方法,并展示了在未来研究中应如何评估此类预测模型的性能。