Rickards Caroline A, Vyas Nisarg, Ryan Kathy L, Ward Kevin R, Andre David, Hurst Gennifer M, Barrera Chelsea R, Convertino Victor A
Department of Integrative Physiology, University of North Texas Health Science Center, Fort Worth, Texas;
J Appl Physiol (1985). 2014 Mar 1;116(5):486-94. doi: 10.1152/japplphysiol.00012.2013. Epub 2014 Jan 9.
Due to limited remote triage monitoring capabilities, combat medics cannot currently distinguish bleeding soldiers from those engaged in combat unless they have physical access to them. The purpose of this study was to test the hypothesis that low-level physiological signals can be used to develop a machine-learning algorithm for tracking changes in central blood volume that will subsequently distinguish central hypovolemia from physical activity. Twenty-four subjects underwent central hypovolemia via lower body negative pressure (LBNP), and a supine-cycle exercise protocol. Exercise workloads were determined by matching heart rate responses from each LBNP level. Heart rate and stroke volume (SV) were measured via Finometer. ECG, heat flux, skin temperature, galvanic skin response, and two-axis acceleration were obtained from an armband (SenseWear Pro2) and used to develop a machine-learning algorithm to predict changes in SV as an index of central blood volume under both conditions. The algorithm SV was retrospectively compared against Finometer SV. A model was developed to determine whether unknown data points could be correctly classified into these two conditions using leave-one-out cross-validation. Algorithm vs. Finometer SV values were strongly correlated for LBNP in individual subjects (mean r = 0.92; range 0.75-0.98), but only moderately correlated for exercise (mean r = 0.50; range -0.23-0.87). From the first level of LBNP/exercise, the machine-learning algorithm was able to distinguish between LBNP and exercise with high accuracy, sensitivity, and specificity (all ≥90%). In conclusion, a machine-learning algorithm developed from low-level physiological signals could reliably distinguish central hypovolemia from exercise, indicating that this device could provide battlefield remote triage capabilities.
由于远程分诊监测能力有限,目前战斗医护人员无法区分正在流血的士兵和正在战斗的士兵,除非他们能亲自接触到这些士兵。本研究的目的是检验以下假设:低水平生理信号可用于开发一种机器学习算法,以跟踪中心血容量的变化,从而区分中心性低血容量与身体活动。24名受试者通过下体负压(LBNP)和仰卧循环运动方案经历了中心性低血容量。通过匹配每个LBNP水平的心率反应来确定运动负荷。通过Finometer测量心率和每搏输出量(SV)。从臂带(SenseWear Pro2)获取心电图、热通量、皮肤温度、皮肤电反应和双轴加速度,并用于开发机器学习算法,以预测两种情况下作为中心血容量指标的SV变化。将算法SV与Finometer SV进行回顾性比较。开发了一个模型,以确定是否可以使用留一法交叉验证将未知数据点正确分类到这两种情况中。个体受试者中,算法与Finometer SV值在LBNP时高度相关(平均r = 0.92;范围0.75 - 0.98),但在运动时仅中度相关(平均r = 0.50;范围 - 0.23 - 0.87)。从LBNP/运动的第一阶段开始,机器学习算法就能以高准确性、敏感性和特异性(均≥90%)区分LBNP和运动。总之,从低水平生理信号开发的机器学习算法能够可靠地区分中心性低血容量与运动,表明该设备可提供战场远程分诊能力。