Bedolla Carlos N, Gonzalez Jose M, Vega Saul J, Convertino Víctor A, Snider Eric J
U.S. Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX 78234, USA.
Department of Medicine, Uniformed Services University, Bethesda, MD 20814, USA.
Bioengineering (Basel). 2023 May 19;10(5):612. doi: 10.3390/bioengineering10050612.
Tracking vital signs accurately is critical for triaging a patient and ensuring timely therapeutic intervention. The patient's status is often clouded by compensatory mechanisms that can mask injury severity. The compensatory reserve measurement () is a triaging tool derived from an arterial waveform that has been shown to allow for earlier detection of hemorrhagic shock. However, the deep-learning artificial neural networks developed for its estimation do not explain how specific arterial waveform elements lead to predicting due to the large number of parameters needed to tune these models. Alternatively, we investigate how classical machine-learning models driven by specific features extracted from the arterial waveform can be used to estimate . More than 50 features were extracted from human arterial blood pressure data sets collected during simulated hypovolemic shock resulting from exposure to progressive levels of lower body negative pressure. A bagged decision tree design using the ten most significant features was selected as optimal for estimation. This resulted in an average root mean squared error in all test data of 0.171, similar to the error for a deep-learning algorithm at 0.159. By separating the dataset into sub-groups based on the severity of simulated hypovolemic shock withstood, large subject variability was observed, and the key features identified for these sub-groups differed. This methodology could allow for the identification of unique features and machine-learning models to differentiate individuals with good compensatory mechanisms against hypovolemia from those that might be poor compensators, leading to improved triage of trauma patients and ultimately enhancing military and emergency medicine.
准确跟踪生命体征对于对患者进行分诊并确保及时进行治疗干预至关重要。患者的状况常常被代偿机制所掩盖,这些机制可能会掩盖损伤的严重程度。代偿储备测量()是一种从动脉波形衍生而来的分诊工具,已被证明能够更早地检测出失血性休克。然而,为其估计而开发的深度学习人工神经网络并未解释特定的动脉波形元素如何导致预测,因为调整这些模型需要大量参数。相比之下,我们研究了如何利用从动脉波形中提取的特定特征驱动的经典机器学习模型来估计。从在因暴露于逐渐增加的下体负压而导致的模拟低血容量性休克期间收集的人体动脉血压数据集中提取了50多个特征。使用十个最重要特征的袋装决策树设计被选为估计的最佳方案。这导致所有测试数据中的平均均方根误差为0.171,与深度学习算法的误差0.159相似。通过根据承受的模拟低血容量性休克的严重程度将数据集分成子组,观察到了较大的个体差异,并且为这些子组确定的关键特征也不同。这种方法可以识别独特的特征和机器学习模型,以区分具有良好低血容量代偿机制的个体与代偿能力可能较差的个体,从而改善创伤患者的分诊,最终提升军事和急诊医学水平。