Coronary Health Index (CHI) as A Determinant for Arterial Stenosis, Derived Using PPG and ECG Signals

Poulomi Pal, M. Mahadevappa
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Abstract

Cardiovascular disease (CVD) patients were targeted from cardiology department in this study to segregate who had stenosis and also identify the principal diseased coronary artery using PPG and ECG signals. After pre-processing these signals, dicrotic notch region of PPG and S-T segment of ECG, within each cardiac cycle was extracted as templates. A new fused segment was generated from two templates by a proposed algorithm. Utilizing statistics on three templates we defined the term Coronary Health Index (CHI) to evaluate the status of coronary arteries. Setting CHI thresholding values, healthy and stenosed artery were differentiated. Using CHI values from patients with stenosis, the classification of arteries (LAD, RCA, and LCx) was performed using Graph Attentive Convolution Network. Among 408 CVD patients 256 had occlusion in either LAD or RCA or LCx. Binary classification among presence and absence of stenosis was carried out with 0.92 accuracy, 0.91 recall, 0.91 precision, 0.90 specificity, and 0.92 F-score. Identification of stenosed artery was measured with Kappa score (0.89) and Youden's J statistic value (0.84). AUC(0.93) and AP(0.92) values from ROC and PRC curves, respectively. This derived CHI could be able to study stenosis in non-invasive, easy and cost-effective manner.
冠状动脉健康指数(CHI)作为动脉狭窄的决定因素,利用PPG和ECG信号推导
本研究以心内科的心血管疾病(CVD)患者为对象,利用PPG和ECG信号分离狭窄患者,并确定主要病变冠状动脉。对这些信号进行预处理后,提取各心动周期内PPG和S-T段的二致凹痕区作为模板。该算法在两个模板之间生成新的融合段。利用三个模板的统计数据,我们定义了冠状动脉健康指数(CHI)来评估冠状动脉的状况。设置CHI阈值,区分健康动脉和狭窄动脉。使用狭窄患者的CHI值,使用Graph细心卷积网络进行动脉(LAD, RCA和LCx)分类。在408例CVD患者中,256例有LAD、RCA或LCx闭塞。对有无狭窄进行二元分类,准确率0.92,召回率0.91,精密度0.91,特异性0.90,f评分0.92。Kappa评分(0.89)和Youden's J统计值(0.84)测定血管狭窄程度。AUC(0.93)和AP(0.92)分别来自ROC和PRC曲线。该方法可以无创、简便、经济地研究狭窄。
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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