Detection Of Atrial Fibrillation in Electrocardiogram Signals using Machine Learning

Rohan Sanghavi, Fenil Chheda, Sachin Kanchan, S. Kadge
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引用次数: 2

Abstract

Atrial fibrillation is a type of heart abnormality often called as an arrhythmia. It is detected when the heart does not beat at a normal pace i.e at spurious time intervals. Automatic atrial fibrillation (AFib) detection is a problem that has been tackled by researchers and engineers for a few decades. It is the most common of the arrhythmias [5]. Many people are susceptible to get AFib. According to the Centers for Disease Control and Prevention (CDC), approximately 2% of people younger than 65 years old have AFib, while about 9% of people ages 65 and older have it [6]. A device which can differentiate between sinus rhythm and AFib would be a gift for people having this illness.
利用机器学习检测心电图信号中的房颤
心房颤动是一种心脏异常,常被称为心律失常。当心脏不以正常速度跳动时,即在虚假的时间间隔内检测到它。心房颤动(AFib)的自动检测是研究人员和工程师们几十年来一直在解决的一个问题。它是最常见的心律失常。许多人都容易患上心房纤颤。根据美国疾病控制与预防中心(CDC)的数据,65岁以下的人中约有2%患有心房纤颤,而65岁及以上的人中约有9%患有心房纤颤。一种可以区分窦性心律和心房颤动的设备将是患有这种疾病的人的礼物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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