使用脉冲波谐波预测冠状动脉病变严重程度:一项基于句法评分的研究。

IF 2.4 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
Haitian Li, Buxing Chen, GinChung Wang, Yunxiao Wang, Yang Yang
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Finally, the discriminant ability of the prediction model was evaluated using the ROC curve analysis and the Bootstrap internal validation method. Results: A total of 348 patients were included, with 249 males and 99 females. In the male group, the discriminant model was based on |ΔC10|,ΔD6, |ΔD9|, |ΔD10|, |ΔP8|, |ΔP10|, ΔP1CV, and ΔC9CV, with the minimum AIC value of 105.47, the area under the ROC curve (AUC) of 0.89, and the average AUC of 0.85 in the Bootstrap internal validation. In the female group, the discriminant model was based on |ΔD2|, |ΔD3|, |ΔD5|, |ΔD6|, |ΔD9|, |ΔC2CV|, |ΔC4CV|, |ΔC5CV|, | ΔC6CV|, and |ΔC9CV|, with the minimum AIC value of 59.34. The AUC of the ROC curve of this prediction model was 0.92, and the average AUC in the Bootstrap internal validation was 0.84. 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引用次数: 0

摘要

本研究旨在探讨左、右手脉搏波谐波指数差异与SYNTAX评分的相关性,探讨脉搏波谐波预测冠状动脉病变程度的潜力。方法应用光波描记术记录冠脉造影患者的双手动脉压波信号。根据“内脏共振理论”,以心跳0 ~ 11的整数倍作为共振频率,通过傅里叶变换方法将采集到的动脉压力波分解为第0 ~ 11次谐波。谐波特性用振幅(Cn)、相位(Pn)和能量(Dn) (n为谐波序号)来量化,并计算各指标的变异系数,后缀为CV。测量值之间的差异的左边和右边参数计算相同的病人(ΔCn、ΔPnΔDn,ΔCnCV,ΔPnCV),和获得的差异的绝对值(|ΔCn |, |ΔPn |, | |ΔDn, |ΔCnCV |, |ΔPnCV |)。根据冠状动脉造影成像数据,计算所有参与者的SYNTAX评分,按性别分为男性和女性队列。各组以SYNTAX评分≥22分为因变量,谐波指数差异为自变量,建立logistic回归模型。为确定最佳预测模型,采用赤池信息准则(Akaike Information Criterion, AIC),选择得分最低的模型。最后,采用ROC曲线分析和Bootstrap内部验证方法对预测模型的判别能力进行评价。结果:共纳入348例患者,其中男性249例,女性99例。在男性组中,基于|ΔC10|、ΔD6、|ΔD9|、|ΔD10|、|ΔP8|、|ΔP10|、ΔP1CV和ΔC9CV的判别模型,在Bootstrap内部验证中,AIC最小值为105.47,ROC曲线下面积(AUC)为0.89,平均AUC为0.85。女性组,判别模型是基于|ΔD2 |, |ΔD3 |, |ΔD5 |, |ΔD6 |, |ΔD9 |, |ΔC2CV |, |ΔC4CV |, |ΔC5CV |, |ΔC6CV |,和|ΔC9CV |,最小AIC值59.34。该预测模型的ROC曲线AUC为0.92,Bootstrap内部验证的平均AUC为0.84。本研究采用无创方法结合SYNTAX评分对冠状动脉闭塞程度进行评估,为临床评价CAD提供了一种有价值的无创工具。该检测方法操作简便,重复性高,且设备体积小,适用于各种环境,可由患者独立操作。然而,目前的研究是横断面的,只发现了一种联系,而不是因果关系,需要未来的前瞻性研究来澄清因果关系。结论:左、右手脉搏波谐波的不同特征能有效反映冠状动脉病变程度。通过对脉波谐波的分析,可以建立一个判别冠状动脉病变程度的诊断模型,为临床评估冠心病提供了一种有价值的无创工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Coronary Artery Lesion Severity Using Pulse Wave Harmonics: A SYNTAX Score-Based Study.

Introduction This study aimed to investigate the correlation between the differences in pulse wave harmonic indices between the left and right hands and the SYNTAX score and to explore the potential of pulse wave harmonics in predicting the degree of coronary artery lesions. Methods The arterial pressure wave signals from both hands of the patients scheduled for coronary angiography were recorded using photoplethysmography. According to the "visceral resonance theory," taking integer multiples of the heartbeat from 0 to 11 as the resonance frequencies, the collected arterial pressure waves were decomposed into the 0th to 11th harmonics via the Fourier transform method. The harmonic characteristics were quantified by amplitude (Cn), phase (Pn), and energy (Dn) (n is the harmonic serial number), and the coefficient of variation of the indices was calculated and suffixed as CV. The difference between the measured values of the left- and right-hand parameters of the same patient was calculated (ΔCn,ΔPn,ΔDn,ΔCnCV,ΔPnCV), and the absolute value of the difference was obtained (|ΔCn|, |ΔPn|, |ΔDn|, |ΔCnCV|, |ΔPnCV|). Based on the coronary angiography imaging data, SYNTAX scores were computed for all participants, who were stratified by gender into male and female cohorts. For each group, logistic regression models were established with SYNTAX score≥22 as the dependent variable, and harmonic index differences as the independent variables. To determine the best prediction model, the Akaike Information Criterion (AIC) was used and model with the lowest score was selected. Finally, the discriminant ability of the prediction model was evaluated using the ROC curve analysis and the Bootstrap internal validation method. Results: A total of 348 patients were included, with 249 males and 99 females. In the male group, the discriminant model was based on |ΔC10|,ΔD6, |ΔD9|, |ΔD10|, |ΔP8|, |ΔP10|, ΔP1CV, and ΔC9CV, with the minimum AIC value of 105.47, the area under the ROC curve (AUC) of 0.89, and the average AUC of 0.85 in the Bootstrap internal validation. In the female group, the discriminant model was based on |ΔD2|, |ΔD3|, |ΔD5|, |ΔD6|, |ΔD9|, |ΔC2CV|, |ΔC4CV|, |ΔC5CV|, | ΔC6CV|, and |ΔC9CV|, with the minimum AIC value of 59.34. The AUC of the ROC curve of this prediction model was 0.92, and the average AUC in the Bootstrap internal validation was 0.84. Discussion In this study, the degree of coronary artery occlusion was evaluated through a noninvasive method combined with the SYNTAX score, providing a valuable noninvasive tool for clinical evaluation of CAD. This detection method is easy to operate, has high repeatability, and the equipment is small in size, making it suitable for various environments, it can be operated independently by the patients. Yet, the current study, being cross-sectional, only found an association rather than a causal relationship, calling for future prospective studies to clarify the causal link. Conclusion: The different characteristics of pulse wave harmonics between the left and right hands can effectively reflect the degree of coronary artery lesions. Through the analysis of pulse wave harmonics, a diagnostic model with good discriminant ability for predicting the degree of coronary artery lesions can be constructed, which may offer a valuable non-invasive tool for the clinical assessment of CAD.

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来源期刊
Current Cardiology Reviews
Current Cardiology Reviews CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
3.70
自引率
10.50%
发文量
117
期刊介绍: Current Cardiology Reviews publishes frontier reviews of high quality on all the latest advances on the practical and clinical approach to the diagnosis and treatment of cardiovascular disease. All relevant areas are covered by the journal including arrhythmia, congestive heart failure, cardiomyopathy, congenital heart disease, drugs, methodology, pacing, and preventive cardiology. The journal is essential reading for all researchers and clinicians in cardiology.
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