通过表面心电图 T 波交替预测未来心律失常的创新方法

Q4 Health Professions
Ali Farhan, Ijaz Rasul, Sahar Fazal, A. Hayat, Nayyer Masood, Alam Shah, Ali Hassan, Ghulam Ali, Usama Munir
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引用次数: 0

摘要

目的探索心脏病患者致险心律失常的预测技术。研究设计:前瞻性纵向研究 研究地点和时间:巴基斯坦拉瓦尔品第武装部队心脏病研究所和费萨拉巴德政府学院大学,2017 年 7 月至 10 月。研究方法:从电生理学部门收集 24 小时 Holter 监测的心电图。心电图数据以便携式文档格式收集,并进一步转换为图像格式进行计算分析。管理数据按多次心律失常发作进行分析。使用卷积神经网络(CNN)对数据进行分类,该网络基于计算患者每个心动周期内三个连续峰值的选定 T 波的结果。结果共选取了 126 名确诊为心律失常的患者。患者室性早搏的平均发作次数为 21.5±30。显著心电图发作的平均持续时间为 3.33±9.65(秒)。分类器的准确率和精确率约为 81%,对显示有导致未来危及生命的心律失常风险的数据的整体重要性进行了评估。结论本研究介绍了一种基于临床范例的创新方法,可帮助预防即将发生的心律失常事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Innovative Approach for the Prediction of Future Arrhythmia through T-wave Alternans on Surface Electrocardiogram (ECG)
Objective: To explore the techniques for predicting risk-causing arrhythmia in cardiac patients. Study Design: Prospective longitudinal Study Place and Duration of Study: Armed Forces Institute of Cardiology, Rawalpindi Pakistan, and Government College University, Faisalabad from Jul to Oct 2017. Methodology: The Electrocardiograms of 24-hour Holter monitoring were collected from the Electrophysiology Department. Electrocardiogram data was collected in the portable document format that was further transformed into Image format for computational analysis. Administrative data were analysed in multiple episodes of cardiac arrhythmogenesis. Data were classified by using a Convolutional Neural Network (CNN) based on computing the results of selected T-waves in three consecutive peaks within each cardiac cycle of patients. Results: One hundred twenty-six patients diagnosed with arrhythmia were selected. The mean episode of premature ventricular contractions in participants was 21.5±30. The mean duration of significant ECG episodes was 3.33±9.65 (seconds). The accuracy and precision rate of the classifier was about 81% for the overall significance of data that exhibited the risk of causing future life-threatening arrhythmia. Conclusion: This study introduces an innovative approach based on clinical paradigms that may help prevent the upcoming cardiac arrhythmogenesis events.
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来源期刊
Pakistan Armed Forces Medical Journal
Pakistan Armed Forces Medical Journal Health Professions-Health Professions (miscellaneous)
CiteScore
0.20
自引率
0.00%
发文量
17
审稿时长
24 weeks
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