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首页> 外文期刊>Journal of medical systems >A new expert system for diagnosis of lung cancer: Gda-ls-svm
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A new expert system for diagnosis of lung cancer: Gda-ls-svm

机译:诊断肺癌的新专家系统:Gda-ls-svm

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摘要

In nowadays, there are many various diseases, whose diagnosis is very hardly. Lung cancer is one of this type diseases. It begins in the lungs and spreads to other organs of human body. In this paper, an expert diagnostic system based on General Discriminant Analysis (GDA) and Least Square Support Vector Machine (LS-SVM) Classifier for diagnosis of lung cancer. This expert diagnosis system is called as GDA-LS-SVM in rest of this paper. The GDALS- SVM expert diagnosis system has two stages. These are 1. Feature extraction and feature reduction stage and 2. Classification stage. In feature extraction and feature reduction stage, lung cancer dataset is obtained and dimension of this lung cancer dataset, which has 57 features, is reduced to eight features using Generalized Discriminant Analysis (GDA) method. Then, in classification stage, these reduced features are given to Least Squares Support Vector Machine (LS-SVM) classifier. The lung cancer dataset used in this study was taken from the UCI machine learning database. The classification accuracy of this GDA-LS-SVM expert system was obtained about 96.875% from results of these experimental studies.
机译:当今,有许多种疾病,很难诊断。肺癌是这类疾病之一。它开始于肺部,并扩散到人体的其他器官。本文基于通用判别分析(GDA)和最小二乘支持向量机(LS-SVM)分类器的专家诊断系统可用于诊断肺癌。在本文的其余部分中,该专家诊断系统称为GDA-LS-SVM。 GDALS-SVM专家诊断系统分为两个阶段。它们是1.特征提取和特征缩减阶段以及2.分类阶段。在特征提取和特征约简阶段,获得肺癌数据集,并使用广义判别分析(GDA)方法将具有57个特征的肺癌数据集的维数减少为8个。然后,在分类阶段,将这些简化后的特征提供给最小二乘支持向量机(LS-SVM)分类器。本研究中使用的肺癌数据集来自UCI机器学习数据库。根据这些实验研究的结果,此GDA-LS-SVM专家系统的分类精度约为96.875%。

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