心电图贴片加速度计对自由生活体位的分类:在多中心艾滋病队列研究中的应用

Pub Date : 2023-06-28 DOI:10.1007/s12561-023-09377-7
Lacey H. Etzkorn, Amir S. Heravi, Nicolas D. Knuth, Katherine C. Wu, Wendy S. Post, Jacek K. Urbanek, Ciprian M. Crainiceanu
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引用次数: 0

摘要

随着健康研究越来越多地通过带有加速度计的ECG贴片监测自由生活的心脏性能,研究人员将寻求研究身体活动和久坐行为的心电反应,这增加了对快速、可扩展的方法来处理加速度计数据的需求。当研究人员没有地面真值标签或其他参考测量(即直立测量)时,我们扩展了ECG补丁中加速度计的姿势分类算法。在多中心艾滋病队列研究中,携带和不携带艾滋病毒的男性使用Zio XT®长达2周(n = 1250)。我们对姿势分类的新扩展包括:(1)在没有参考直立测量的情况下对每个个体的直立姿势进行估计;(2)利用新型球面变化点检测对装置移除和重新定位的垂直估计进行校正;(3)使用聚类和投票过程对直立期和平卧期进行分类,而不是像其他算法那样使用简单的倾斜度阈值。由于在自由生活的环境中不存在姿势标签,我们执行了大量的敏感性分析,并根据来自Towson加速度计研究的标记数据评估算法,参与者在腰部佩戴加速度计。平均而言,87.1%的参与者在凌晨4点平躺,15.5%的参与者在下午1点平躺。与平日相比,参与者在周末平躺的时间要长54分钟。与单独控制设置的标记数据相比,性能良好(准确性= 96.0%,灵敏度= 97.5%,特异性= 95.9%)。即使不测量标准的直立位置,也可以通过ECG贴片上的加速度计对自由生活环境中的姿势进行分类。此外,不能考虑个体旋转和重新连接加速度计的算法在自由生活的环境中可能会失败。
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Classification of Free-Living Body Posture with ECG Patch Accelerometers: Application to the Multicenter AIDS Cohort Study
As health studies increasingly monitor free-living heart performance via ECG patches with accelerometers, researchers will seek to investigate cardio-electrical responses to physical activity and sedentary behavior, increasing demand for fast, scalable methods to process accelerometer data. We extend a posture classification algorithm for accelerometers in ECG patches when researchers do not have ground-truth labels or other reference measurements (i.e., upright measurement). Men living with and without HIV in the Multicenter AIDS Cohort study wore the Zio XT® for up to 2 weeks (n = 1250). Our novel extensions for posture classification include (1) estimation of an upright posture for each individual without a reference upright measurement; (2) correction of the upright estimate for device removal and re-positioning using novel spherical change point detection; and (3) classification of upright and recumbent periods using a clustering and voting process rather than a simple inclination threshold used in other algorithms. As no posture labels exist in the free-living environment, we perform numerous sensitivity analyses and evaluate the algorithm against labeled data from the Towson Accelerometer Study, where participants wore accelerometers at the waist. On average, 87.1% of participants were recumbent at 4 a.m. and 15.5% were recumbent at 1 p.m. Participants were recumbent 54 min longer on weekends compared to weekdays. Performance was good in comparison to labeled data in a separate, controlled setting (accuracy = 96.0%, sensitivity = 97.5%, specificity = 95.9%). Posture may be classified in the free-living environment from accelerometers in ECG patches even without measuring a standard upright position. Furthermore, algorithms that fail to account for individuals who rotate and re-attach the accelerometer may fail in the free-living environment.
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