基于GoogLeNet和生成对抗网络的心律失常检测算法

Siho Shin, Jaehyo Jung, Mingu Kang, Y. Kim
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引用次数: 0

摘要

心律失常是一种伴有不规则心跳的心血管疾病,如果持续时间过长,可能会导致心脏病发作。由于心律失常的症状发生不规律,需要长时间监测心脏。本研究提出了一种基于GoogLeNet和GAN的心律失常诊断算法。由于本研究中提出的算法可以增加使用GAN的数据数量,因此它可以在短时间内从测量的生命日志中准确地诊断出心律失常的发生。使用GoogLeNet和GAN对心电数据进行分类,准确率约为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arrhythmia Detection Algorithm using GoogLeNet and Generative Adversarial Network with Lifelog Signals
Arrhythmia is a cardiovascular disease with an irregular heartbeat, which can lead to a heart attack if it lasts for an excessive amount of time. Because the symptoms of arrhythmia occur irregularly, the heart needs to be monitored for a lengthy time period. This study suggests an arrhythmia diagnosis algorithm using GoogLeNet and a GAN. Because the algorithm proposed in this study can add to the number of data using a GAN, it can accurately diagnose an arrhythmic occurrence from measured lifelog over a short period of time. The classification of ECG data using GoogLeNet and a GAN showed an accuracy of approximately 99%.
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