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Detection of Cardiac Arrhythmia using Spectral features

机译:使用光谱特征检测心性心律失常

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摘要

Due to rapid advancements in technology, early diagnosis of diseases have facilitated in tremendous growth in the medical sector. One of the most crucial conditions that demands diagnosis at the earliest stage is Cardiac Arrhythmia. Arrhythmia is a condition where the heart beats too quickly or too slowly thus causing irregular rhythm. It affects millions of people every year. ECG signals can be used for the detection procedure. In this paper, we have proposed a method to detect arrhythmia from the spectral features which can be extracted from the ECG strips. For the data, we have used the MIT-BIH dataset as well the Stanford Irhythmic public data for the testing purpose. Further with a 14 attribute data frame created from the features extracted using python libraries, it was fed to various classification models out of which Random Forest gives the highest accuracy.
机译:由于技术的快速进步,早期的疾病促进了医学部门的巨大增长。要求最早诊断的最重要条件之一是心律失常。心律失常是心脏跳过太快或太慢的条件,从而导致不规则节奏。它每年都会影响数百万人。 ECG信号可用于检测过程。在本文中,我们提出了一种从可以从ECG条中提取的光谱特征来检测心律失常的方法。对于数据,我们也使用了MIT-BIH数据集,也可以进行测试目的的斯坦福对话。此外,对于从使用Python库提取的特征创建的14个属性数据帧,它被馈送到其中随机森林的各种分类模型提供了最高精度。

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