Enhanced Thyroid Nodule Classification Adopting Significant Features Selection

P. D., A. Karegowda, G. M., Abhishek Hooli, R. Aparna, Prashant Gk
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Abstract

Appropriate selection of features play a crucial role for refining precision of classification systems. The classification accuracy and training speed may be significantly intensified by elimination of superfluous features. The present paper addresses the high dimensional data analysis problem through feature selection approach for refining the classification accuracy of Thyroid Nodules (TNs) as benign and malignant. Thyroid Ultrasound Images (TUS) containing nodules are first de-speckled and further improved using Canny Edge Detection (CED) method. This process is followed by application of segmentation technique Adaptive Regularized Kernel Fuzzy C-means (ARKFCM) where relevant Area of Interest (AOI) is obtained and using AOI, nineteen texture features are mined. Finally, feature subset selection is carried out using five different search methods- Genetic Search (GS), Best First (BF), Linear Forward Selection (LFS), Greedy Step Wise (GSW), and Subset Size Forward Selection (SSFS). Selected features are assessed using ten different classifiers Bayes Net, Naïve Bayes, Logistic, Multilayer Perceptron, Radial Basis Function, Sequential Minimal Optimization, Instance Based K-nearest neighbor, K-star, J-48 and Random Tree. Experimental evaluation revealed, features listed using five search techniques have boosted performance of all considered classifiers in comparison to their performance using original nineteen features.
采用显著特征选择增强甲状腺结节分类
适当的特征选择对于提高分类系统的精度起着至关重要的作用。通过剔除冗余特征,可以显著提高分类精度和训练速度。本文通过特征选择方法来解决高维数据分析问题,以提高甲状腺结节(TNs)良恶性分类的准确性。首先使用Canny边缘检测(CED)方法对含有结节的甲状腺超声图像(TUS)进行去斑点化和进一步改进。在此过程中,应用自适应正则化核模糊c均值分割技术(ARKFCM),获得相关的兴趣区域(AOI),并利用AOI挖掘19个纹理特征。最后,利用遗传搜索(GS)、最佳优先(BF)、线性前向选择(LFS)、贪婪步进(GSW)和子集大小前向选择(SSFS)五种不同的搜索方法进行特征子集选择。选择的特征使用十种不同的分类器进行评估:贝叶斯网络、Naïve贝叶斯、逻辑、多层感知器、径向基函数、顺序最小优化、基于实例的k近邻、k星、J-48和随机树。实验评估显示,与使用最初的19个特征相比,使用五种搜索技术列出的特征提高了所有考虑的分类器的性能。
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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