Review on Heart Disease Diagnosis Using Deep Learning Methods

Trupti Vasantrao Bhandare, Selvarani Rangasamy
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引用次数: 1

Abstract

Developments for automation and advanced computing in the area of medical data processing has outcome with different new learning techniques. Deep learning has evolved as an advanced approach in machine learning applied to different old and new area of applications. Deep learning approaches have evolved as supervised, semi-supervised and un-supervised mode applied for different real time applications. The approach has shown a significant usage for image processing, computer vision, medical diagnosis, robotic and control operation application. Among various usage of machine learning approaches for automation, medical diagnosis has been observed as a new upcoming application. The criticality of data processing, response time, and accuracy in decision, tends the learning system more complex in usage for medical diagnosis. This paper outlines the developments made in the area of medical diagnosis and deep learning application for heart disease diagnosis. The application, database and the learning system used in the automation process is reviewed and outlined the evolution of deep learning approach for medical data analysis.
基于深度学习方法的心脏病诊断研究综述
自动化和先进计算在医疗数据处理领域的发展产生了不同的新学习技术。深度学习已经发展成为机器学习的一种先进方法,应用于不同的新旧应用领域。深度学习方法已经发展为监督、半监督和非监督模式,应用于不同的实时应用。该方法在图像处理、计算机视觉、医学诊断、机器人和控制操作等方面具有重要的应用价值。在机器学习自动化方法的各种用途中,医疗诊断被认为是一个新的应用。数据处理、响应时间和决策准确性的重要性,使得学习系统在医学诊断中的应用更加复杂。本文概述了医学诊断领域的进展以及深度学习在心脏病诊断中的应用。回顾了自动化过程中使用的应用程序、数据库和学习系统,概述了深度学习方法在医疗数据分析中的发展。
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