A Dynamic Bayesian Multichannel Fusion Scheme for Heart Rate Monitoring With Ballistocardiograph Signals in Free-Living Environments

Jun Qi;Ruilin Cai;Qing Liu;Wei Wang;Jieming Ma;Jianjun Chen
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Abstract

Ballistocardiograph (BCG) stands out as a noncontact technology for heart monitoring, offering a wealth of cardiovascular parameter information. Its applications have overshadowed traditional electrocardiogram particularly for free-living environment, such as home monitoring, in recent years. However, challenges arise from the susceptibility of BCG signals to positional variations, bodily movements, and systemic noise, posing formidable obstacles for detection algorithms. In this article, we propose a novel interbeat interval detection approach with the dynamic Bayesian network for multichannel fusion, in terms of five unique indicators for the precise localization of cardiac activity from extracted features. We also introduce a peak detection method to locate the positions of all HIJK complex within BCG segment and evaluate the generalization of the proposed method in the simulated environment of different noise generation. The results from the dataset comprising 36 healthy subjects and four cardiovascular disease patients show that the proposed method exhibits average coverage rate up to 96.15%; the mean square error is 0.04 compared with single-channel measures, which suggest the potential of our method in assisting the long-term heartbeat monitoring in free-living environments.
自由生活环境中使用球心动图信号进行心率监测的动态贝叶斯多通道融合方案
球形心动图(BCG)是一种非接触式心脏监测技术,可提供丰富的心血管参数信息。近年来,它在自由生活环境(如家庭监测)中的应用已经超越了传统心电图。然而,BCG 信号易受位置变化、身体运动和系统噪声的影响,这给检测算法带来了巨大障碍。在本文中,我们利用动态贝叶斯网络提出了一种用于多通道融合的新型搏动间期检测方法,即从提取的特征中精确定位心脏活动的五个独特指标。我们还引入了一种峰值检测方法来定位 BCG 节段内所有 HIJK 复合物的位置,并在不同噪声产生的模拟环境中评估了所提方法的通用性。由 36 名健康受试者和 4 名心血管疾病患者组成的数据集结果表明,所提方法的平均覆盖率高达 96.15%;与单通道测量方法相比,均方误差为 0.04,这表明我们的方法在协助自由生活环境中的长期心跳监测方面具有潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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