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利用可穿戴光电容积脉搏波描记法检测心脏状态及其对院外心脏骤停检测的意义。

Detecting cardiac states with wearable photoplethysmograms and implications for out-of-hospital cardiac arrest detection.

机构信息

Department of Emergency Medicine, University of British Columbia, 2775 Laurel Street, Vancouver, BC, V5Z 1M9, Canada.

British Columbia Resuscitation Research Collaborative, Providence Research, 1190 Hornby Street, Vancouver, BC, V6Z 2K5, Canada.

出版信息

Sci Rep. 2024 Oct 5;14(1):23185. doi: 10.1038/s41598-024-74117-w.

Abstract

Out-of-hospital cardiac arrest (OHCA) is a global health problem affecting approximately 4.4 million individuals yearly. OHCA has a poor survival rate, specifically when unwitnessed (accounting for up to 75% of cases). Rapid recognition can significantly improve OHCA survival, and consumer wearables with continuous cardiopulmonary monitoring capabilities hold potential to "witness" cardiac arrest and activate emergency services. In this study, we used an arterial occlusion model to simulate cardiac arrest and investigated the ability of infrared photoplethysmogram (PPG) sensors, often utilized in consumer wearable devices, to differentiate normal cardiac pulsation, pulseless cardiac (i.e., resembling a cardiac arrest), and non-physiologic (i.e., off-body) states. Across the classification models trained and evaluated on three anatomical locations, higher classification performances were observed on the finger (macro average F1-score of 0.964 on the fingertip and 0.954 on the finger base) compared to the wrist (macro average F1-score of 0.837). The wrist-based classification model, which was trained and evaluated using all PPG measurements, including both high- and low-quality recordings, achieved a macro average precision and recall of 0.922 and 0.800, respectively. This wrist-based model, which represents the most common form factor in consumer wearables, could only capture about 43.8% of pulseless events. However, models trained and tested exclusively on high-quality recordings achieved higher classification outcomes (macro average F1-score of 0.975 on the fingertip, 0.973 on the finger base, and 0.934 on the wrist). The fingertip model had the highest performance to differentiate arterial occlusion pulselessness from normal cardiac pulsation and off-body measurements with macro average precision and recall of 0.978 and 0.972, respectively. This model was able to identify 93.7% of pulseless states (i.e., resembling a cardiac arrest event), with a 0.4% false positive rate. All classification models relied on a combination of time-, power spectral density (PSD)-, and frequency-domain features to differentiate normal cardiac pulsation, pulseless cardiac, and off-body PPG recordings. However, our best model represented an idealized detection condition, relying on ensuring high-quality PPG data for training and evaluation of machine learning algorithms. While 90.7% of our PPG recordings from the fingertip were considered of high quality, only 53.2% of the measurements from the wrist passed the quality criteria. Our findings have implications for adapting consumer wearables to provide OHCA detection, involving advancements in hardware and software to ensure high-quality measurements in real-world settings, as well as development of wearables with form factors that enable high-quality PPG data acquisition more consistently. Given these improvements, we demonstrate that OHCA detection can feasibly be made available to anyone using PPG-based consumer wearables.

摘要

院外心脏骤停 (OHCA) 是一个全球性的健康问题,每年影响约 440 万人。OHCA 的存活率很低,尤其是在无人目击的情况下(占病例的 75%)。快速识别可以显著提高 OHCA 的存活率,而具有连续心肺监测功能的消费类可穿戴设备有可能“目击”心脏骤停并激活急救服务。在这项研究中,我们使用动脉闭塞模型来模拟心脏骤停,并研究了红外光体积描记 (PPG) 传感器的能力,该传感器通常用于消费类可穿戴设备,以区分正常的心脏搏动、无脉性心脏(即类似于心脏骤停)和非生理性(即脱离身体)状态。在对三个解剖位置进行训练和评估的分类模型中,手指上的分类性能更高(指尖的宏观平均 F1 得分为 0.964,指根的宏观平均 F1 得分为 0.954),而手腕上的分类性能较低(宏观平均 F1 得分为 0.837)。基于手腕的分类模型使用所有 PPG 测量值进行训练和评估,包括高质量和低质量的记录,分别达到了宏观平均精度和召回率 0.922 和 0.800。这个基于手腕的模型是消费类可穿戴设备中最常见的形式因素,它只能捕获约 43.8%的无脉事件。然而,仅在高质量记录上进行训练和测试的模型取得了更高的分类结果(指尖的宏观平均 F1 得分为 0.975,指根的宏观平均 F1 得分为 0.973,手腕的宏观平均 F1 得分为 0.934)。指尖模型在区分动脉闭塞无脉性和正常心搏以及脱离身体测量方面具有最高的性能,宏观平均精度和召回率分别为 0.978 和 0.972。该模型能够识别 93.7%的无脉状态(即类似于心脏骤停事件),假阳性率为 0.4%。所有分类模型都依赖于时间、功率谱密度 (PSD) 和频域特征的组合来区分正常心搏、无脉性心脏和脱离身体的 PPG 记录。然而,我们最好的模型代表了一种理想化的检测条件,依赖于确保高质量的 PPG 数据用于训练和评估机器学习算法。虽然我们从指尖获得的 PPG 记录中有 90.7%被认为是高质量的,但只有 53.2%的手腕测量值通过了质量标准。我们的发现对适应消费类可穿戴设备以提供 OHCA 检测具有影响,涉及硬件和软件的改进,以确保在现实环境中获得高质量的测量值,以及开发具有能够更一致地获取高质量 PPG 数据的形式因素的可穿戴设备。有了这些改进,我们证明了使用基于 PPG 的消费类可穿戴设备可以实现 OHCA 检测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4227/11455951/6e8b4d5d8ba5/41598_2024_74117_Fig1_HTML.jpg

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