利用机器学习技术有效预测心脏病

A. Kotia, M. Rastogi, R. A. Bhongade
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引用次数: 0

摘要

目前影响全球的最重要问题之一是心脏病。临床知识分析领域的一个重要问题可能是疾病预测。使用机器学习可以识别、检测和预测许多医疗状况。本研究使用机器学习方法和Python编程来研究心脏病预测。在过去的几年里,由于脂肪的抑制,心脏病已经成为一种普遍和致命的疾病。人体内压力过大会导致这种疾病的发展。利用数据集中的多个特征,研究人员可以预测心脏病。为了评估患者的表现,使用了一个由12个参数和70000个唯一数据值组成的数据集。本研究的主要目标是通过使用算法来提高心脏病检测的准确性,其中目标输出确定受试者是否患有心脏病。本研究为今后利用机器学习方法进行心脏病预测提供了基础。
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Use of machine learning techniques for effective prediction of heart disease
One of the most important problems now affecting the globe is heart disease. A significant problem in the field of clinical knowledge analysis might be disorder prediction. Many medical conditions can be identified, detected and predicted using machine learning. This study uses machine learning methods and Python programming to study heart disease prediction. Heart disease has become a prevalent and fatal condition in the last few years due to the suppression of fat. Excessive pressure in the human body causes this disease to develop. Using multiple features from the dataset, researchers can predict heart disease. To assess patient performance, a dataset consisting of 12 parameters as well as 70000 unique data values ​​was used. The main goal of this study is to increase the accuracy of heart disease detection by using algorithms where the target output determines whether the subject has heart disease. This study provides the base for future heart disease prediction by using the machine learning method.
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来源期刊
Cardiometry
Cardiometry MEDICAL LABORATORY TECHNOLOGY-
自引率
0.00%
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0
审稿时长
6 weeks
期刊介绍: Cardiometry is an open access biannual electronic journal founded in 2012. It refers to medicine, particularly to cardiology, as well as oncocardiology and allied science of biophysics and medical equipment engineering. We publish mainly high quality original articles, reports, case reports, reviews and lectures in the field of the theory of cardiovascular system functioning, principles of cardiometry, its diagnostic methods, cardiovascular system therapy from the aspect of cardiometry, system and particular approaches to maintaining health, engineering peculiarities in cardiometry developing. The interdisciplinary areas of the journal are: hemodynamics, biophysics, biochemistry, metrology. The target audience of our Journal covers healthcare providers including cardiologists and general practitioners, bioengineers, biophysics, medical equipment, especially cardiology diagnostics device, developers, educators, nurses, healthcare decision-makers, people with cardiovascular diseases, cardiology and engineering universities and schools, state and private clinics. Cardiometry is aimed to provide a wide forum for exchange of information and public discussion on above scientific issues for the mentioned experts.
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