Deep learning models on Heart Disease Estimation - A review

T. M. A. Monisha Sharean, G. Johncy
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引用次数: 9

Abstract

Heart disease, also known as cardiovascular disease (CVD), is the foremost among all widespread diseases in the people community. Any disorder that affects the heart's function is typically called heart disease. Narrowing or blockage of the coronary arteries, which supply blood to the heart, is the most common cause of heart failure. Coronary Artery Disease (CAD) is a common form of heart disease and the leading cause of heart attacks. Nowadays, there is no age limit for people to get affected by this disease. There are so many diagnosis methods available where most are costly, the risk involved, and technical experts are needed to perform the disease diagnosis. Clinical research has pointed out different factors that increase the risk of CAD and heart attack. These factors can be categorized into two types, i.e., risk factors that cannot be changed and those that can be changed. Sex, age and family history are those factors that cannot be altered. In contrast, factors related to a subject's lifestyle, e.g., smoking, high cholesterol, high blood pressure and physical inactivity, can be changed. This paper reviews various deep learning techniques involving heart disease prognostic and their accuracy in predicting that they can be treated in advance to prevent fatalities.
心脏病评估中的深度学习模型综述
心脏病,又称心血管疾病(CVD),是人群中最常见的疾病。任何影响心脏功能的疾病都被称为心脏病。为心脏供血的冠状动脉变窄或堵塞是导致心力衰竭的最常见原因。冠状动脉疾病(CAD)是一种常见的心脏病,也是心脏病发作的主要原因。如今,人们患这种疾病没有年龄限制。有许多可用的诊断方法,其中大多数都是昂贵的,涉及风险,并且需要技术专家来进行疾病诊断。临床研究指出了增加冠心病和心脏病发作风险的不同因素。这些因素可以分为两类,即不能改变的风险因素和可以改变的风险因素。性别、年龄和家族史是无法改变的因素。相反,与受试者的生活方式相关的因素,如吸烟、高胆固醇、高血压和缺乏体育活动,是可以改变的。本文回顾了各种涉及心脏病预后的深度学习技术及其预测的准确性,这些技术可以提前治疗以防止死亡。
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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