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检测和分类心房和心室心血管疾病,以提高资源受限地区的心脏健康素养。

Detection and classification of atrial and ventricular cardiovascular diseases to improve the cardiac health literacy for resource constrained regions.

作者信息

Arora Neha, Mishra Biswajit

机构信息

One Health Research Group DA-IICT Gandhinagar India.

出版信息

Healthc Technol Lett. 2023 Apr 10;10(3):35-52. doi: 10.1049/htl2.12043. eCollection 2023 Jun.

Abstract

ECG is a non-invasive way of determining cardiac health by measuring the electrical activity of the heart. A novel detection technique for feature points P, QRS and T is investigated to diagnose various atrial and ventricular cardiovascular anomalies with ECG signals for ambulatory monitoring. Before the system is worthy of field trials, it is validated with several databases and recorded their response. The QRS complex detection is based on the Pan Tompkins algorithm and difference operation method that provides positive predictivity, sensitivity and false detection rate of 99.29%, 99.49% and 1.29%, respectively. Proposed novel T wave detection provides sensitivity of 97.78%. Also, proposed P wave detection provides positive predictivity, sensitivity and false detection rate of 99.43%, 99.4% and 1.15% for the control study (normal subjects) and 82.68%, 94.3% and 25.4% for the case (patients with cardiac anomalies) study, respectively. Disease detection such as arrhythmia is based on standard R-R intervals while myocardial infarction is based on the ST-T deviations where the positive predictivity, sensitivity and accuracy are observed to be 94.6%, 84.2% and 85%, respectively. It should be noted that, since the frontal leads are only used, the anterior myocardial infarction cases are detected with the injury pattern in lead and ST depression in reciprocal leads. Detection of atrial fibrillation is done for both short and long duration signals using statistical methods using interquartile range and standard deviations, giving very high accuracy, 100% in most cases. The system hardware for obtaining the 2 lead ECG signal is designed using commercially available off the shelf components. Small field validation of the designed system is performed at a Public Health Centre in Gujarat, India with 42 patients (both cases and controls). 78.5% accuracy was achieved during the field validation. It is thus concluded that the proposed method is ideal for improvisation in cardiac health monitoring outreach in resource constrained regions.

摘要

心电图是一种通过测量心脏电活动来确定心脏健康状况的非侵入性方法。研究了一种用于检测特征点P、QRS和T的新型检测技术,以利用动态监测的心电图信号诊断各种心房和心室心血管异常。在该系统值得进行现场试验之前,先用几个数据库对其进行了验证,并记录了它们的响应。QRS波群检测基于Pan Tompkins算法和差分运算方法,其阳性预测值、灵敏度和误检率分别为99.29%、99.49%和1.29%。所提出的新型T波检测的灵敏度为97.78%。此外,所提出的P波检测在对照研究(正常受试者)中的阳性预测值、灵敏度和误检率分别为99.43%、99.4%和1.15%,在病例研究(心脏异常患者)中的阳性预测值、灵敏度和误检率分别为82.68%、94.3%和25.4%。心律失常等疾病的检测基于标准的R-R间期,而心肌梗死的检测基于ST-T段偏移,其阳性预测值、灵敏度和准确率分别为94.6%、84.2%和85%。需要注意的是,由于仅使用了额面导联,前壁心肌梗死病例通过导联中的损伤模式和对应导联中的ST段压低来检测。使用四分位间距和标准差的统计方法对短时长和长时长信号进行房颤检测,在大多数情况下准确率非常高,达到100%。用于获取双导联心电图信号的系统硬件采用市售现成组件设计。在印度古吉拉特邦的一个公共卫生中心,对42名患者(包括病例和对照)进行了该设计系统的小型现场验证。现场验证期间的准确率达到了78.5%。因此得出结论,所提出的方法对于在资源有限地区改善心脏健康监测服务而言是理想的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f559/10230560/9bec1d1a8a26/HTL2-10-35-g017.jpg

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