Battlefield Health & Trauma Center for Human Integrative Physiology, US Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX 78234, USA.
Department of Medicine, Uniformed Services University of the Health Sciences, Bethesda, MD 20814, USA.
Sensors (Basel). 2022 Mar 30;22(7):2642. doi: 10.3390/s22072642.
The application of artificial intelligence (AI) has provided new capabilities to develop advanced medical monitoring sensors for detection of clinical conditions of low circulating blood volume such as hemorrhage. The purpose of this study was to compare for the first time the discriminative ability of two machine learning (ML) algorithms based on real-time feature analysis of arterial waveforms obtained from a non-invasive continuous blood pressure system (Finometer) signal to predict the onset of decompensated shock: the compensatory reserve index (CRI) and the compensatory reserve metric (CRM). One hundred ninety-one healthy volunteers underwent progressive simulated hemorrhage using lower body negative pressure (LBNP). The least squares means and standard deviations for each measure were assessed by LBNP level and stratified by tolerance status (high vs. low tolerance to central hypovolemia). Generalized Linear Mixed Models were used to perform repeated measures logistic regression analysis by regressing the onset of decompensated shock on CRI and CRM. Sensitivity and specificity were assessed by calculation of receiver-operating characteristic (ROC) area under the curve (AUC) for CRI and CRM. Values for CRI and CRM were not distinguishable across levels of LBNP independent of LBNP tolerance classification, with CRM ROC AUC (0.9268) being statistically similar ( = 0.134) to CRI ROC AUC (0.9164). Both CRI and CRM ML algorithms displayed discriminative ability to predict decompensated shock to include individual subjects with varying levels of tolerance to central hypovolemia. Arterial waveform feature analysis provides a highly sensitive and specific monitoring approach for the detection of ongoing hemorrhage, particularly for those patients at greatest risk for early onset of decompensated shock and requirement for implementation of life-saving interventions.
人工智能 (AI) 的应用为开发先进的医学监测传感器提供了新的能力,用于检测低循环血量的临床情况,如出血。本研究的目的是首次比较两种基于从无创连续血压系统 (Finometer) 信号获得的动脉波形的实时特征分析的机器学习 (ML) 算法的鉴别能力,以预测失代偿性休克的发作:代偿储备指数 (CRI) 和代偿储备量 (CRM)。191 名健康志愿者接受了下体负压 (LBNP) 模拟渐进性出血。通过 LBNP 水平评估每个指标的最小二乘平均值和标准差,并根据耐受状态(对中心低血容量的高耐受与低耐受)分层。使用广义线性混合模型通过将失代偿性休克发作回归到 CRI 和 CRM 来执行重复测量逻辑回归分析。通过计算 CRI 和 CRM 的接收者操作特征 (ROC) 曲线下面积 (AUC) 来评估 CRI 和 CRM 的敏感性和特异性。无论 LBNP 耐受分类如何,CRI 和 CRM 的值在 LBNP 水平上都无法区分,CRM 的 ROC AUC(0.9268)与 CRI 的 ROC AUC(0.9164)在统计学上相似(=0.134)。CRI 和 CRM 的 ML 算法都显示出鉴别能力,可预测失代偿性休克,包括对中心低血容量具有不同耐受水平的个体受试者。动脉波形特征分析为检测持续出血提供了一种高度敏感和特异的监测方法,特别是对于那些最容易发生失代偿性休克和需要实施救生干预的患者。