Evaluation of Performance of Cloud Based Neural Network Models on Arrhythmia Classification

Uttam R, Supreeth Arabi, A. Mantri, Surabhi Rakhecha
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Abstract

Arrhythmia classification is always a subject of keen interest in medical sciences as it aids the diagnostic process. Cloud-based real-time cardiac monitoring models are emerging in the market. These monitoring models can compute very intensive tasks in real time and have found a lot of application in Medical diagnostics. Several cloud-based methods have been proposed and its total functionality is evaluated. In this paper, we propose an evaluation of different neural network models. The signal is transformed into wavelet domain and noise removal is carried out by wavelet de-noising post filtering. The features are extracted from the processed signal and are transmitted to the cloud where predictive models are applied to the extracted features to predict the class of arrhythmia thus aiding the medical diagnostic process.
基于云的神经网络模型在心律失常分类中的性能评价
心律失常的分类一直是医学领域的热门课题,因为它有助于诊断过程。基于云的实时心脏监测模型正在市场上兴起。这些监测模型可以实时计算非常密集的任务,在医学诊断中得到了广泛的应用。提出了几种基于云的方法,并对其总体功能进行了评估。在本文中,我们提出了不同的神经网络模型的评估。将信号变换到小波域,通过小波去噪后滤波进行去噪。从处理过的信号中提取特征并传输到云,在云中,预测模型应用于提取的特征来预测心律失常的类别,从而帮助医疗诊断过程。
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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