健康监测系统中心血管疾病预测预警技术研究

Yi Chai, Guixia Kang, Ningbo Zhang, Jianwei Wu, Xiaoshuang Liu, Yuncheng Liu
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引用次数: 1

摘要

慢性疾病正逐渐成为危害人们健康的主要因素。幸运的是,电子医疗的发展为慢性病的预防和治疗提供了一种新的思路。本文主要研究了基于电子健康和数据挖掘的心血管疾病(cvd)预防预警技术。在本文中,我们将使用加权关联分类算法对医疗数据库中的数据进行建模,以确定心血管风险水平。在数据挖掘和知识发现的基础上,提出智能预警机制,针对不同风险水平的患者提供不同的服务。实验结果表明,所采用的分类算法在医疗保健领域具有更高的准确率和更好的理解能力,是一种更有效的挖掘算法。本研究对控制心血管疾病患者的风险水平具有一定的意义。
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Research on CVDs prediction and early warning techniques in healthcare monitoring system
Chronic diseases are gradually becoming the principal factors of harm to people's health. Fortunately, the development of e-health provides a novel thought for chronic disease prevention and treatment. This paper focuses on the research of cardiovascular disease (CVDs) prevention and early warning techniques using e-health and data mining. In this paper, we will use weighted associative classification algorithm to model the data in healthcare database to determine the level of cardiovascular risk. Besides, on the basis of data mining and knowledge discovery, intelligent warning mechanisms are proposed to provide different services to patients with different levels of risk. The experimental results show that the used classification algorithm is a more effective mining algorithm in the field of healthcare with higher accuracy and better comprehension. Our study is of definite significance to help control risk level of CVDs patients.
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