Logical Mining Assisted Heart Disease Prediction Scheme in Association with Deep Learning Principles

V. Kannagi, M. Rajkumar, I. Chandra, K. Sangeethalakshmi, V. Mohanavel
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引用次数: 1

Abstract

An estimated 350 million young adults (between the ages of 30 and 40) would have heart disease by 2030, according to the WHO. These individuals will be at risk for renal problems, stroke, as well as peripheral vascular disease. Heart disease is the leading cause of death in the modern era. Most individuals cannot afford the high expense of heart disease therapy. Because of this, a Heart Disease Prediction Scheme can help alleviate this issue. It aids in the earlier detection of cardiovascular disease. For the development of the Heart Disease Prediction Scheme, data mining methods are employed. A variety of healthcare data formats, including pictures, text, charts, and figures, are used in various systems. To diagnose cardiac disease early, we examine risk factors including system conditions. the selection of risk predictors, the use of efficient methods for identifying and extract key information to describe aspects of developing a prediction model We can quickly diagnose heart illness with multiple features and risk factor specifications using the new technique called Intelligent Learning Assisted Support Vector [ILASV]. Mining concepts are used to identify high-risk variables for heart disease based on these criteria. Fast and accurate illness predictions will be made possible by the application of data mining methods.
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基于深度学习原理的逻辑挖掘辅助心脏病预测方案
据世界卫生组织估计,到2030年,将有3.5亿年轻人(年龄在30至40岁之间)患有心脏病。这些人将面临肾脏问题、中风以及周围血管疾病的风险。心脏病是现代人类死亡的主要原因。大多数人负担不起高昂的心脏病治疗费用。正因为如此,心脏病预测计划可以帮助缓解这个问题。它有助于早期发现心血管疾病。对于心脏病预测方案的开发,采用了数据挖掘方法。各种系统中使用各种医疗保健数据格式,包括图片、文本、图表和数字。为了早期诊断心脏病,我们检查了包括系统状况在内的危险因素。我们可以使用一种名为智能学习辅助支持向量(ILASV)的新技术,快速诊断具有多种特征和风险因素规格的心脏病。挖掘概念用于根据这些标准确定心脏病的高危变量。数据挖掘方法的应用将使快速准确的疾病预测成为可能。
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