Rashedi Navid, Murphy Ethan K, Klein Samuel B, Hamlin Alexandra, Anderson Justin E, Minichiello Joseph M, Lindqwister Alexander L, Moodie Karen L, Wanken Zachary J, Read Jackson T, Borza Victor A, Elliott Jonathan T, Halter Ryan J, Vaze Vikrant S, Paradis Norman A
Thayer School of Engineering, Dartmouth College, 15 Thayer Dr, Hanover, NH 03755, United States of America.
Geisel School of Medicine, Dartmouth College, 1 Rope Ferry Rd, Hanover, NH 03755, United States of America.
Physiol Meas. 2025 Feb 25;13(2). doi: 10.1088/1361-6579/adb4b8.
Occult hemorrhage (OH) can emerge subtly post-trauma, especially when internal bleeding is not yet severe enough to result in noticeable hemodynamic changes or shock. Despite normal appearances of traditional vital signs like heart rate (HR) and blood pressure (BP), clinically significant OH may be present, posing a critical diagnostic challenge. Early detection of OH, before vital signs begin to deteriorate, is vital as delays in identifying such conditions are linked to poorer patient outcomes. We analyze the performance of poly-anatomic multivariate technologies-including electrical impedance tomography (EIT), near-infrared spectroscopy (NIRS), electrical impedance spectroscopy (EIS), plethysmography (Pleth), and ECG-in a porcine model of OH. The goal was to detect OH without the need to know the subject's pre-established normal baseline.Forty female swine were bled at slow rates to create an extended period of subclinical hemorrhage, during which the animals' HR and BP remained stable before hemodynamic deterioration. Continuous vital signs, Pleth, and continuous non-invasive data were recorded and analyzed with the objective of developing an improved means of detecting OH. This detection was set up as a supervised voting classification problem where the measurement of each technology (minimally transformed) was used to train a classifier. A soft majority voting classification technique was then used to detect the existence of OH.When comparing the prediction performance of the most significant univariate technology (EIT) to that of a poly-anatomic multivariate approach, the latter achieved higher area-under-the-curve (AUC) values from receiver operating characteristic analyses in almost every observation interval duration. In particular, after 21 min of continuous observation, the best AUC of the multivariate approach was 0.98, while that of the univariate approach was 0.92. The best multivariate technologies, in descending order, appeared to be EIT on the thorax, NIRS on the abdomen, and EIS on the thorax.In this clinically relevant porcine model of clinically OH, multivariate non-invasive measurements may be superior to univariate ones in detecting OH. Advanced technologies such as EIT, NIRS, and EIS exhibit considerably greater potential to accurately predict OH than standard physiological measurements. From a practical standpoint, our approach would not require the medical device to have prior access to non-hemorrhage baseline data for each patient. Early detection of OH using these technologies could improve patient outcomes by allowing for timely intervention before vital signs begin to deteriorate.
隐匿性出血(OH)可能在创伤后隐匿出现,尤其是当内出血尚未严重到足以导致明显的血流动力学变化或休克时。尽管心率(HR)和血压(BP)等传统生命体征看似正常,但临床上可能存在具有重要意义的OH,这构成了关键的诊断挑战。在生命体征开始恶化之前早期检测到OH至关重要,因为识别此类情况的延迟与患者预后较差有关。我们在OH的猪模型中分析了多解剖学多变量技术的性能,包括电阻抗断层扫描(EIT)、近红外光谱(NIRS)、电阻抗光谱(EIS)、容积描记法(Pleth)和心电图(ECG)。目标是在无需了解受试者预先确定的正常基线的情况下检测OH。40只雌性猪以缓慢的速度放血,以造成一段延长的亚临床出血期,在此期间动物的HR和BP在血流动力学恶化之前保持稳定。记录并分析连续的生命体征、容积描记法数据以及连续的非侵入性数据,目的是开发一种改进的OH检测方法。这种检测被设置为一个监督投票分类问题,其中每种技术(经过最小程度转换)的测量值用于训练一个分类器。然后使用软多数投票分类技术来检测OH的存在。当将最显著的单变量技术(EIT)的预测性能与多解剖学多变量方法的预测性能进行比较时,在几乎每个观察间隔持续时间内,后者在接受者操作特征分析中获得了更高的曲线下面积(AUC)值。特别是,在连续观察21分钟后,多变量方法的最佳AUC为0.98,而单变量方法的最佳AUC为0.92。最佳的多变量技术按降序排列似乎是胸部的EIT、腹部的NIRS和胸部的EIS。在这个与临床相关的临床OH猪模型中,如果要检测OH,多变量非侵入性测量可能优于单变量测量。与标准生理测量相比,诸如EIT、NIRS和EIS等先进技术在准确预测OH方面具有更大的潜力。从实际角度来看,我们的方法不需要医疗设备事先获取每个患者的非出血基线数据。使用这些技术早期检测OH可以通过在生命体征开始恶化之前进行及时干预来改善患者预后。