论文标题
生理驱动的心脏骤停结果预测的计算模型
A Physiology-Driven Computational Model for Post-Cardiac Arrest Outcome Prediction
论文作者
论文摘要
Patients resuscitated from cardiac arrest (CA) face a high risk of neurological disability and death, however pragmatic methods are lacking for accurate and reliable prognostication.这项研究的目的是建立计算模型,以通过利用高维患者数据(ICU)后尽早获得可用的高维患者数据来预测CA后结果。我们假设可以通过整合生理时间序列(PTS)数据和训练机学习(ML)分类器来增强模型性能。我们比较了单独从电子健康记录(EHR)中提取的特征的三个模型,这些模型是从ICU入院后前24小时收集的PTS得出的特征(PTS24),以及集成PTS24和EHR的模型。感兴趣的结果是ICU出院时的生存和神经系统结果。与单独使用EHR或PTS24的模型相比,组合的EHR-PTS24模型具有更高的歧视(接收器操作特征曲线[AUC]),以预测存活率(分别为0.85、0.80和0.68)和神经系统结果(0.87、0.87、0.83、0.83和0.78)。最佳的ML分类器比参考逻辑回归模型(APACHE III)获得了更高的歧视(AUC 0.85 vs 0.70)和神经系统结果预测(AUC 0.87 vs 0.75)。特征分析揭示了先前未知因素与CA后恢复有关。结果证明了ML模型对CA后预测建模的有效性,并表明复苏编码短期结果概率后在很早的早期阶段记录的PTS。
Patients resuscitated from cardiac arrest (CA) face a high risk of neurological disability and death, however pragmatic methods are lacking for accurate and reliable prognostication. The aim of this study was to build computational models to predict post-CA outcome by leveraging high-dimensional patient data available early after admission to the intensive care unit (ICU). We hypothesized that model performance could be enhanced by integrating physiological time series (PTS) data and by training machine learning (ML) classifiers. We compared three models integrating features extracted from the electronic health records (EHR) alone, features derived from PTS collected in the first 24hrs after ICU admission (PTS24), and models integrating PTS24 and EHR. Outcomes of interest were survival and neurological outcome at ICU discharge. Combined EHR-PTS24 models had higher discrimination (area under the receiver operating characteristic curve [AUC]) than models which used either EHR or PTS24 alone, for the prediction of survival (AUC 0.85, 0.80 and 0.68 respectively) and neurological outcome (0.87, 0.83 and 0.78). The best ML classifier achieved higher discrimination than the reference logistic regression model (APACHE III) for survival (AUC 0.85 vs 0.70) and neurological outcome prediction (AUC 0.87 vs 0.75). Feature analysis revealed previously unknown factors to be associated with post-CA recovery. Results attest to the effectiveness of ML models for post-CA predictive modeling and suggest that PTS recorded in very early phase after resuscitation encode short-term outcome probabilities.