Automated Classification of Heart Disease using Deep Learning

Ayush Pandey, R. Joshi, M. Dutta
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Abstract

Heart murmurs are irregular heartbeat patterns that may be a sign of a serious cardiac problem. These conditions can only be diagnosed by qualified professionals using a stethoscope. Given that the patient-to-doctor ratio is low in developing countries, there is a requirement for an automated system that can classify heart sounds and analyses the phonocardiogram (PCG) recording in real-time. A critical step in the diagnosis of cardiovascular disorders (CVDs) is the computerized classification of cardiac sounds. Particularly when applied to heart sound spectrograms, Deep learning techniques have been quite successful in automating the detection of CVDs. Such a system might be created using a variety of available techniques, transfer learning is one of such utilities. A modern machine learning technique that has gained popularity due to its quick training time and improved accuracy. The lack of sufficient data, effective models and ineffective training pose certain limitations. This paper aims at developing a lightweight, fast and reliable alternative for heart sound classification. The data is cleaned, processed, and transformed into an image using spectrogram signal representation. Based on the obtained experimental outcomes of this research paper, a transfer learning pipeline could make heart sound classification and CVD detection easier while requiring less training time and resources.
使用深度学习的心脏病自动分类
心脏杂音是不规则的心跳模式,可能是严重心脏问题的征兆。这些情况只能由合格的专业人员使用听诊器进行诊断。鉴于发展中国家的医患比例较低,因此需要一种能够对心音进行分类并实时分析心音图(PCG)记录的自动化系统。诊断心血管疾病(cvd)的关键步骤是心音的计算机分类。特别是当应用于心音谱图时,深度学习技术在cvd的自动化检测方面非常成功。这样的系统可以使用各种可用的技术来创建,迁移学习就是这样的工具之一。一种现代机器学习技术,由于其快速的训练时间和提高的准确性而受到欢迎。由于缺乏足够的数据、有效的模型和无效的训练,造成了一定的局限性。本文旨在开发一种轻量、快速、可靠的心音分类方法。数据被清洗,处理,并转换成图像使用频谱图信号表示。从本研究得到的实验结果来看,迁移学习管道可以简化心音分类和心血管疾病检测,同时减少训练时间和资源。
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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