IEEE J Biomed Health Inform. 2021 Sep;25(9):3351-3360. doi: 10.1109/JBHI.2021.3068619. Epub 2021 Sep 3.
Hypovolemia remains the leading cause of preventable death in trauma cases. Recent research has demonstrated that using noninvasive continuous waveforms rather than traditional vital signs improves accuracy in early detection of hypovolemia to assist in triage and resuscitation. This work evaluates random forest models trained on different subsets of data from a pig model (n = 6) of absolute (bleeding) and relative (nitroglycerin-induced vasodilation) progressive hypovolemia (to 20% decrease in mean arterial pressure) and resuscitation. Features for the models were derived from a multi-modal set of wearable sensors, comprised of the electrocardiogram (ECG), seismocardiogram (SCG) and reflective photoplethysmogram (RPPG) and were normalized to each subject.s baseline. The median RMSE between predicted and actual percent progression towards cardiovascular decompensation for the best model was 30.5% during the relative period, 16.8% during absolute and 22.1% during resuscitation. The least squares best fit line over the mean aggregated predictions had a slope of 0.65 and intercept of 12.3, with an R value of 0.93. When transitioned to a binary classification problem to identify decompensation, this model achieved an AUROC of 0.80. This study: a) developed a global model incorporating ECG, SCG and RPPG features for estimating individual-specific decompensation from progressive relative and absolute hypovolemia and resuscitation; b) demonstrated SCG as the most important modality to predict decompensation; c) demonstrated efficacy of random forest models trained on different data subsets; and d) demonstrated adding training data from two discrete forms of hypovolemia increases prediction accuracy for the other form of hypovolemia and resuscitation.
低血容量仍然是创伤病例中可预防死亡的主要原因。最近的研究表明,使用无创连续波而不是传统的生命体征来提高低血容量早期检测的准确性,以协助分诊和复苏。这项工作评估了随机森林模型,这些模型是在来自猪模型(n=6)的绝对(出血)和相对(硝化甘油诱导的血管扩张)进行性低血容量(平均动脉压降低 20%)和复苏的不同数据子集上训练的。模型的特征来自一组多模态可穿戴传感器,包括心电图(ECG)、心冲击图(SCG)和反射光体积描记图(RPPG),并根据每个受试者的基线进行了归一化。在相对时期,最佳模型预测和实际心血管失代偿进展百分比之间的中位数 RMSE 为 30.5%,在绝对时期为 16.8%,在复苏时期为 22.1%。平均聚合预测的最小二乘最佳拟合线斜率为 0.65,截距为 12.3,R 值为 0.93。当转换为二进制分类问题以识别失代偿时,该模型的 AUROC 为 0.80。本研究:a)开发了一种全局模型,该模型结合了 ECG、SCG 和 RPPG 特征,用于从进行性相对和绝对低血容量以及复苏中估计个体特异性失代偿;b)证明了 SCG 是预测失代偿的最重要模式;c)证明了随机森林模型在不同数据子集上训练的效果;d)证明了从两种不同形式的低血容量中添加训练数据可以提高对另一种形式的低血容量和复苏的预测准确性。