An Extensive Survey on Evolutionary Algorithm Based Kidney Disease Prediction

R. T. Selvi, I. Muthulakshmi
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引用次数: 1

Abstract

Presently, the identification of kidney disease (KD) among medical practitioners becomes popular to detect the presence of KD in an easier way and at a faster rate. Due to the huge quantity of medical database, efficient methods needed to for proper diagnosis. In general, the expert's knowledge is necessary for the classification of data to predict the presence of KDs. In the past days, statistical techniques and some machine learning algorithms are used. Recently, evolutionary algorithms (EA) become famous and several classification techniques for KD prediction have also been developed. In this paper, we made an attempt to review the existing KD prediction techniques. The review is based on different aspects such as aim, algorithm used, experimental analysis and so on. A comparison of the reviewed methods is also made interms of different criteria.
基于进化算法的肾脏疾病预测研究综述
目前,肾脏疾病(KD)的识别在医疗从业者中变得流行,以更容易的方式和更快的速度检测KD的存在。由于海量的医学数据库,需要有效的方法来进行正确的诊断。一般来说,专家的知识对于数据分类以预测kd的存在是必要的。在过去的日子里,使用了统计技术和一些机器学习算法。近年来,进化算法(EA)越来越受欢迎,一些用于KD预测的分类技术也被开发出来。在本文中,我们试图回顾现有的KD预测技术。本文从目标、使用的算法、实验分析等方面进行综述。本文还根据不同的标准对评述的方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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