{"title":"Early prediction of cardiovascular disease using artificial neural network","authors":"Jyotismita Talukdar, T. Singh","doi":"10.1515/pjbr-2022-0107","DOIUrl":null,"url":null,"abstract":"Abstract In recent years, there has been a noticeable rise in the mortality rate, and heart disease is a significant contributor to this trend. According to the California Association for Diabetes Investigation, by 2015, cardiovascular disease would be the primary cause of death in India, where 62 billion people live. Deficiencies in the heart’s ability to pump blood to and from the rest of the body are the leading cause of cardiovascular disease. The healthcare industry is a prime example of a sector poised to greatly benefit from the availability of massive amounts of data and analytical insights. Increasingly, it will be important to extract medical data to predict and treat the high fatality rate caused by heart attacks. Every day, humanity generates terabytes worth of data. Medical errors with dire effects can be avoided only with high-quality services. Hospitals can reduce the price of expensive clinical testing by using decision support systems. Hospitals in the modern-day use hospital information systems to keep track of patient records. The health care sector generates vast amounts of data, but little of it is really put to good use. It will be important to adopt a new strategy to reduce costs and make accurate predictions about heart disease. To determine which machine learning and deep learning approaches are most useful and accurate for predicting and classifying cardiac illnesses, this article reviews the existing literature on the topic and subsequently tries to detect the most probable factors leading to heart disease. This study introduces and models an artificial neural network methodology for identifying potential cardiovascular disease risk factors. In this study, we examine and present the various full and partial correlations among risk attributes. In addition, a number of risk variables are analysed to generate a predicted list of risk features most likely to result in cardiovascular disease.","PeriodicalId":90037,"journal":{"name":"Paladyn : journal of behavioral robotics","volume":"190 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2023-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Paladyn : journal of behavioral robotics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1515/pjbr-2022-0107","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 3
Abstract
Abstract In recent years, there has been a noticeable rise in the mortality rate, and heart disease is a significant contributor to this trend. According to the California Association for Diabetes Investigation, by 2015, cardiovascular disease would be the primary cause of death in India, where 62 billion people live. Deficiencies in the heart’s ability to pump blood to and from the rest of the body are the leading cause of cardiovascular disease. The healthcare industry is a prime example of a sector poised to greatly benefit from the availability of massive amounts of data and analytical insights. Increasingly, it will be important to extract medical data to predict and treat the high fatality rate caused by heart attacks. Every day, humanity generates terabytes worth of data. Medical errors with dire effects can be avoided only with high-quality services. Hospitals can reduce the price of expensive clinical testing by using decision support systems. Hospitals in the modern-day use hospital information systems to keep track of patient records. The health care sector generates vast amounts of data, but little of it is really put to good use. It will be important to adopt a new strategy to reduce costs and make accurate predictions about heart disease. To determine which machine learning and deep learning approaches are most useful and accurate for predicting and classifying cardiac illnesses, this article reviews the existing literature on the topic and subsequently tries to detect the most probable factors leading to heart disease. This study introduces and models an artificial neural network methodology for identifying potential cardiovascular disease risk factors. In this study, we examine and present the various full and partial correlations among risk attributes. In addition, a number of risk variables are analysed to generate a predicted list of risk features most likely to result in cardiovascular disease.
近年来,死亡率明显上升,而心脏病是造成这一趋势的重要原因。根据加州糖尿病调查协会(California Association for Diabetes Investigation)的数据,到2015年,心血管疾病将成为印度的主要死因,印度有620亿人口。心脏向身体其他部位输送血液的能力不足是导致心血管疾病的主要原因。医疗保健行业就是一个典型的例子,该行业准备从大量数据和分析见解的可用性中受益匪浅。越来越重要的是,提取医疗数据,以预测和治疗由心脏病发作引起的高死亡率。人类每天都会产生数tb的数据。只有提供高质量的服务,才能避免造成严重后果的医疗事故。医院可以通过使用决策支持系统来降低昂贵的临床检测费用。现代医院使用医院信息系统来跟踪病人的记录。医疗保健行业产生了大量的数据,但很少有数据真正得到有效利用。采用一种新的策略来降低成本并对心脏病做出准确的预测将是很重要的。为了确定哪种机器学习和深度学习方法对预测和分类心脏病最有用和准确,本文回顾了有关该主题的现有文献,并随后试图检测导致心脏病的最可能因素。本研究介绍一种人工神经网路方法,并建立模型以辨识潜在的心血管疾病危险因素。在这项研究中,我们检查并提出各种风险属性之间的完全和部分相关性。此外,还分析了一些风险变量,以生成最可能导致心血管疾病的风险特征的预测列表。