全自动模板匹配法检测健康与病理受试者无心电图心电信号。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Salvatore Parlato, Jessica Centracchio, Daniele Esposito, Paolo Bifulco, Emilio Andreozzi
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引用次数: 0

摘要

心脏力学监测技术通过轻便的无极传感器在胸部记录心脏振动,从而实现对患者的长期监测。心脏机械信号中的心跳检测通常是通过利用同步心电图(ECG)信号来提供可靠的心跳定位来实现的,然而这严重限制了长期监测。一种基于模板匹配的心跳定位方法在不需要同时记录心电图的情况下,在多种心力学信号中表现出了很高的性能。然而,该方法的重复性受到限制,因为需要由熟练的操作员从心脏机械信号中手动选择心跳模板。为了克服这一限制,本研究提出了一种全自动版本的模板匹配方法,用于无心电图心跳检测,该方法由一种新的自动模板选择算法提供支持。该方法对来自150名健康和病理受试者的256个地震心动图(SCG)、陀螺仪(GCG)和力图(FCG)信号进行了验证。与现有的无心电图心跳检测方法进行比较。该方法对健康受试者SCG的敏感性为97.8%和98.6%,对GCG的敏感性为96.3%和94.5%,对FCG的敏感性为99.2%和99.3%,对病理受试者SCG和GCG的敏感性分别为85%和95%。心跳间隔的统计分析报告了几乎单位斜率(R2 > 0.998)和健康受试者±6 ms和病理受试者±13 ms范围内的一致性限制。所提出的自动化方法在心跳定位精度上超越了以往所有无心电图的方法,并在最大的病理受试者队列和最多的心跳次数上得到了验证。本研究中提出的方法代表了通过心脏机械信号进行无心电图心脏活动监测的最新技术,确保了准确、可重复、独立于操作员的心跳定位。MATLAB®代码作为现成的工具发布,以支持在临床和非临床环境中更广泛和实际使用的心脏力学监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully automated template matching method for ECG-free heartbeat detection in cardiomechanical signals of healthy and pathological subjects.

Cardiomechanical monitoring techniques record cardiac vibrations on the chest via lightweight electrodeless sensors that allow long-term patient monitoring. Heartbeat detection in cardiomechanical signals is generally achieved by leveraging a simultaneous electrocardiography (ECG) signal to provide a reliable heartbeats localization, which however strongly limits long-term monitoring. A heartbeats localization method based on template matching has demonstrated very high performance in several cardiomechanical signals, with no need for a concurrent ECG recording. However, the reproducibility of that method was limited by the need for manual selection of a heartbeat template from the cardiomechanical signal by a skilled operator. To overcome that limitation, this study presents a fully automated version of the template matching method for ECG-free heartbeat detection, powered by a novel automatic template selection algorithm. The novel method was validated on 256 Seismocardiography (SCG), Gyrocardiography (GCG), and Forcecardiography (FCG) signals, from 150 healthy and pathological subjects. Comparison with all existing methods for ECG-free heartbeat detection was carried out. The method scored sensitivity and positive predictive value (PPV) of 97.8% and 98.6% for SCG, 96.3% and 94.5% for GCG, 99.2% and 99.3% for FCG, on healthy subjects, and of 85% and 95% for both SCG and GCG on pathological subjects. Statistical analyses on inter-beat intervals reported almost unit slopes (R2 > 0.998) and limits of agreement within ± 6 ms for healthy subjects and ± 13 ms for pathological subjects. The proposed automated method surpasses all previous ECG-free approaches in heartbeat localization accuracy and was validated on the largest cohort of pathological subjects and the highest number of heartbeats. The method proposed in this study represents the current state of the art for ECG-free monitoring of cardiac activity via cardiomechanical signals, ensuring accurate, reproducible, operator-independent heartbeats localization. MATLAB® code is released as an off-the-shelf tool to support a more widespread and practical use of cardiomechanical monitoring in both clinical and non-clinical settings.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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