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基于桡动脉脉搏波特征分析识别冠状动脉病变:一项病例对照研究。

Identifying Coronary Artery Lesions by Feature Analysis of Radial Pulse Wave: A Case-Control Study.

机构信息

Department of Basic Medical Science, Shanghai Key Laboratory of Health Identification and Assessment, Shanghai University of Traditional Chinese Medicine, 1200 Cailun Road, Pudong New District, Shanghai 201203, China.

Institute of Intelligent Perception and Diagnosis, School of Mechanical and Power Engineering, East China University of Science and Technology, 130 Meilong Road, Xuhui District, Shanghai 200237, China.

出版信息

Biomed Res Int. 2021 Dec 30;2021:5047501. doi: 10.1155/2021/5047501. eCollection 2021.

Abstract

BACKGROUND

Cardiovascular diseases have been always the most common cause of morbidity and mortality worldwide. Health monitoring of high-risk and suspected patients is essential. Currently, invasive coronary angiography is still the most direct and accurate method of determining the severity of coronary artery lesions, but it may not be the optimal clinical choice for suspected patients who had clinical symptoms of coronary heart disease (CHD) such as chest pain but no coronary artery lesion. Modern medical research indicates that radial pulse waves contain substantial pathophysiologic information about the cardiovascular and circulation systems; therefore, analysis of these waves could be a noninvasive technique for assessing cardiovascular disease.

OBJECTIVE

The objective of this study was to analyze the radial pulse wave to construct models for assessing the extent of coronary artery lesions based on pulse features and investigate the latent value of noninvasive detection technology based on pulse wave in the evaluation of cardiovascular disease, so as to promote the development of wearable devices and mobile medicine.

METHOD

This study included 529 patients suspected of CHD who had undergone coronary angiography. Patients were sorted into a control group with no lesions, a 1 or 2 lesion group, and a multiple (3 or more) lesion group as determined by coronary angiography. The linear time-domain features and the nonlinear multiscale entropy features of their radial pulse wave signals were compared, and these features were used to construct models for identifying the range of coronary artery lesions using the -nearest neighbor (KNN), decision tree (DT), and random forest (RF) machine learning algorithms. The average precision of these algorithms was then compared.

RESULTS

(1) Compared with the control group, the group with 1 or 2 lesions had increases in their radial pulse wave time-domain features H2/H1, H3/H1, and W2 ( < 0.05), whereas the group with multiple lesions had decreases in MSE1, MSE2, MSE3, MSE4, and MSE5 ( < 0.05). (2) Compared with the 1 or 2 lesion group, the multiple lesion group had increases in T1/T ( < 0.05) and decreases in T and W1 ( < 0.05). (3) The RF model for identifying numbers of coronary artery lesions had a higher average precision than the models built with KNN or DT. Furthermore, average precision of the model was highest (80.98%) if both time-domain features and multiscale entropy features of radial pulse signals were used to construct the model.

CONCLUSION

Pulse wave signal can identify the range of coronary artery lesions with acceptable accuracy; this result is promising valuable for assessing the severity of coronary artery lesions. The technique could be used to development of mobile medical treatments or remote home monitoring systems for patients suspected or those at high risk of coronary atherosclerotic heart disease.

摘要

背景

心血管疾病一直是全球最常见的发病率和死亡率原因。对高危和疑似患者进行健康监测至关重要。目前,虽然冠状动脉造影仍然是确定冠状动脉病变严重程度的最直接和准确的方法,但对于有胸痛等冠心病临床症状但无冠状动脉病变的疑似患者,它可能不是最佳的临床选择。现代医学研究表明,桡动脉脉搏波包含有关心血管和循环系统的大量病理生理信息;因此,分析这些波可能是一种评估心血管疾病的非侵入性技术。

目的

本研究旨在分析桡动脉脉搏波,构建基于脉搏特征评估冠状动脉病变程度的模型,并探讨基于脉搏波的无创检测技术在心血管疾病评估中的潜在价值,以促进可穿戴设备和移动医疗的发展。

方法

本研究纳入了 529 例疑似冠心病并接受冠状动脉造影的患者。根据冠状动脉造影结果,患者分为对照组(无病变)、1 或 2 个病变组和多个(3 个及以上)病变组。比较了他们的桡动脉脉搏波信号的线性时域特征和非线性多尺度熵特征,并使用 -最近邻(KNN)、决策树(DT)和随机森林(RF)机器学习算法构建了用于识别冠状动脉病变范围的模型。然后比较了这些算法的平均精度。

结果

(1)与对照组相比,1 或 2 个病变组的桡动脉脉搏波时域特征 H2/H1、H3/H1 和 W2 增加(<0.05),而多个病变组的 MSE1、MSE2、MSE3、MSE4 和 MSE5 减少(<0.05)。(2)与 1 或 2 个病变组相比,多个病变组的 T1/T 增加(<0.05),T 和 W1 减少(<0.05)。(3)RF 模型用于识别冠状动脉病变数量的平均精度高于 KNN 或 DT 构建的模型。此外,如果同时使用桡动脉脉搏信号的时域特征和多尺度熵特征来构建模型,则模型的平均精度最高(80.98%)。

结论

脉搏波信号可以识别冠状动脉病变范围,准确率可接受;这一结果对于评估冠状动脉病变严重程度具有潜在价值。该技术可用于开发移动医疗治疗或远程家庭监测系统,用于疑似或高风险的冠状动脉粥样硬化性心脏病患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0c2d/8739924/032d4d3b57a4/BMRI2021-5047501.001.jpg

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