基于优化技术的高效心脏病预测系统

C. Suvarna, A. Sali, Sakina Salmani
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引用次数: 18

摘要

在这个现代社会中,许多人遵循8小时工作周期的久坐不动的生活方式,心血管疾病或心脏病是全球死亡的主要原因之一。医疗保健行业医院的计算机被用来收集关于病人及其疾病的大量信息。这个巨大的信息库包含了丰富的知识。数据中隐藏的模式和关系大多被忽视了。诊断患者的心血管疾病是一项艰巨的任务,能够准确预测这类疾病的医生很少。本文的研究重点是在数据挖掘和优化技术的帮助下开发一种预测算法。数据挖掘是指使用各种技术来识别数据库中的信息或决策知识,并以一种可以用于决策支持、预测、预测和估计等领域的方式提取这些信息或决策知识。我们将使用粒子群优化技术,这是一种固有的分布式算法,其中问题的解决方案来自许多称为粒子的简单个体代理之间的相互作用。我们用于实验测试的数据源是常用的,并被认为是心脏病预测可靠性排名的事实上的标准。我们还将使用带有收缩因子的PSO稍加修改的版本,称为收缩PSO。研究结果表明,粒子群数据挖掘算法不仅与其他进化技术具有竞争力,而且与行业标准算法具有竞争力,可以成功地应用于心脏病预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient heart disease prediction system using optimization technique
In this modern society where large number of humans follow a sedentary lifestyle following an 8 hour job cycle, cardio vascular diseases or heart diseases is one of the leading causes of mortality worldwide. The computers at the hospitals of the healthcare industries are used to collect huge amounts of information regarding the patients and their ailments. This huge repository of information contains wealth of knowledge. The hidden patterns and relationships in the data is mostly overlooked. Diagnosing cardio vascular diseases in patients is a difficult task and doctors who can accurately predict such diseases are few in number. This research paper focuses on developing a prediction algorithm with the help of data mining and optimization techniques. Data Mining refers to using a variety of techniques to identify information or decision making knowledge in the database and extracting these in a way that they can put to use in areas such as decision support, predictions, forecasting and estimation. We will be using the Particle Swarm Optimization technique which is an inherently distributed algorithm where the solution for a problem emerges from the interactions between many simple individual agents called particles. The data source we have used for experimental testing are commonly used and considered as a de facto standard for heart disease prediction reliability ranking. We will also be using a slightly modified version of PSO with constriction factor called Constricted PSO. The results obtained show that Particle Swarm Data Mining Algorithms are competitive, not only with other evolutionary techniques, but also with industry standard algorithms, and can be successfully applied to heart disease prediction.
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