ECG-Free Assessment of Cardiac Valve Events Using Seismocardiography

Mohammad Muntasir Rahman, Aysha Mann, Amirtaha Taebi
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Abstract

Seismocardiogram (SCG) signals can play a crucial role in remote cardiac monitoring, capturing important events such as aortic valve opening (AO) and mitral valve closure (MC). However, existing SCG methods for detecting AO and MC typically rely on electrocardiogram (ECG) data. In this study, we propose an innovative approach to identify AO and MC events in SCG signals without the need for ECG information. Our method utilized a template bank, which consists of signal templates extracted from SCG waveforms of 5 healthy subjects. These templates represent characteristic features of a heart cycle. When analyzing new, unseen SCG signals from another group of 6 healthy subjects, we employ these templates to accurately detect cardiac cycles and subsequently pinpoint AO and MC events. Our results demonstrate the effectiveness of the proposed template bank approach in achieving ECG-independent AO and MC detection, laying the groundwork for more convenient remote cardiovascular assessment.
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利用地震心动图对心脏瓣膜事件进行无心电图评估
地震心动图(SCG)信号可在远程心脏监测中发挥重要作用,捕捉主动脉瓣开放(AO)和半月瓣关闭(MC)等重要事件。然而,用于检测 AO 和 MC 的现有 SCG 方法通常依赖于心电图(ECG)数据。在这项研究中,我们提出了一种创新方法,无需心电图信息即可识别 SCG 信号中的 AO 和 MC 事件。我们的方法利用了一个模板库,该模板库由从 5 名健康受试者的 SCG 波形中提取的信号模板组成。这些模板代表了心动周期的特征。在分析来自另一组 6 名健康受试者的新的、未见过的 SCG 信号时,我们利用这些模板来准确检测心动周期,并随后精确定位 AO 和 MC 事件。我们的研究结果证明了所提出的模板库方法在实现独立于心电图的 AO 和 MC 检测方面的有效性,为更方便的远程心血管评估奠定了基础。
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