Impact of Preprocessing for Diagnosis of Diabetes Mellitus Using Artificial Neural Networks

T. Jayalskshmi, A. Santhakumaran
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引用次数: 25

Abstract

Medicine has always benefited from the technology. Artificial Neural Networks is currently the promising area of interest to solve medical problems. Diagnosis of diabetes is one of the most challenging problems in machine learning. This medical data set is seldom complete. Artificial neural networks require complete set of data for an accurate classification. The system explains how the pre-processing procedure and missing values influence the data set during the classification. The implemented system compares various missing value techniques and pre-processing techniques. Some combinations prove the real influence of these techniques. A classifier has applied to Pima Indian Diabetes dataset and the results were improved tremendously when using certain combination of preprocessing and missing value techniques. The experimental system achieves an excellent classification accuracy of 99% which is best than before.
预处理对人工神经网络诊断糖尿病的影响
医学一直受益于这项技术。人工神经网络是目前解决医疗问题的一个有前途的领域。糖尿病的诊断是机器学习中最具挑战性的问题之一。这个医疗数据集很少是完整的。人工神经网络需要完整的数据集才能进行准确的分类。说明了分类过程中预处理过程和缺失值对数据集的影响。实现的系统对各种缺失值技术和预处理技术进行了比较。一些组合证明了这些技术的真正影响。将一种分类器应用于皮马印第安人糖尿病数据集,在使用预处理和缺失值技术的一定组合时,结果得到了极大的改善。实验系统的分类准确率达到了99%,比以前的分类准确率提高了很多。
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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