一种基于深度神经网络的心电图信号分类新方法

Tasnim Ahmed, A. Rahman, Tareque Mohmud Chowdhury, Rafsanjany Kushol, Md. Nishat Raihan
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引用次数: 1

摘要

心房颤动(AF)是一种不寻常的心律状况,它是由心房多处零星的电脉冲发射引起的。房颤被认为是世界上导致中风的主要原因之一。房颤通常在心电图(ECG)读数的帮助下进行人工筛查。人工读取心电是一项繁琐而耗时的工作,而且容易出现人为错误。因此,自动化过程是必不可少的。然而,在相当长的一段时间内,使用高效的自动化过程识别心功能异常一直是一项具有挑战性的任务。在本文中,作者使用来自PhysioNet/2017challenge的数据集,提出了一个复杂的神经网络架构CNN+LSTM,用于四种类型的心脏状况(正常、心房颤动、嘈杂窦性心律和替代心律)的分类。PhysioNet/2017挑战赛数据集的志愿者来自不同的背景,他们的身体属性有很大的变化窗口,这使得数据集足够可靠。此外,该数据集的样本数量超过了之前任何关于该主题的数据集,这进一步增加了该数据集的全面性。使用该模型,作者的方法达到了91.19%的峰值精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Approach to Classify Electrocardiogram Signals Using Deep Neural Networks
Atrial fibrillation (AF) is an unusual heart rhythm condition which is caused by sporadic firing of electrical impulses from multiple places in the atria. AF is considered to be one of the leading cause of stroke in the world. AF is usually screened manually with the help of Electrocardiodiagram (ECG) reading. The manual process of reading ECG is a tedious and time-consuming task which is laden with human errors. Therefore, an automated process is quintessential. However, discerning anomaly in heart function using an efficient automated process has been a challenging task for quite some time. In this paper, the authors propose an intricate Neural Network architecture, CNN+LSTM, for the classification amongst four types of heart condition-Normal, Atrial Fibrillation, Noisy Sinus Rhythm and Alternative Rhythms using a dataset from PhysioNet/2017challenge. Volunteers in PhysioNet/2017 challenge dataset came from diverse backgrounds and had a wide window of variation in their physical attributes, making the dataset sufficiently reliable. In addition, the number of samples in this dataset exceeded any other before it on this topic, which further adds to the comprehensiveness of this dataset. The authors' method reached a summit accuracy of 91.19% using the proposed model.
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