Feature Selection and Classification for Analysis of Breast Thermograms

N. Usha, N. Sriraam, N. Kavya, D. Sharath, Ravi Prabha, Bharathi B Hiremath, B. Venkataraman, M. Menaka
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引用次数: 1

Abstract

Breast thermography gives the information of abnormality in the breast which induces an angiogenesis and higher metabolic activity. It is well known fact through thermal analysis, one can infer that the abnormal cancerous breast regions show higher skin surface temperature and can be considered as potential biomarker. This specific study highlights the classification of breast thermograms using tamura and statistical features with Support Vector Machine (SVM) and K-Nearest Neighborhood (KNN) classifiers. Best features were selected using non parametric T -test analysis and the resultant features were used for classification of normal and abnormal breast thermograms. During the simulation study through thermal analysis, all abnormal breast thermograms skin surface temperature was found to be greater than 0.5° C. An overall classification accuracy of 90% and 88.9% was achieved using SVM and KNN classifiers respectively. The application of feature selection techniques outperforms the classifier's performance for the proposed study.
乳房热像图分析的特征选择与分类
乳房热成像提供了乳房异常的信息,引起血管生成和更高的代谢活动。众所周知,通过热分析,可以推断出异常癌变乳腺区域具有较高的皮肤表面温度,可以视为潜在的生物标志物。这项具体的研究强调了使用tamura和统计特征与支持向量机(SVM)和k -最近邻(KNN)分类器对乳房热图进行分类。使用非参数T检验分析选择最佳特征,并将结果特征用于正常和异常乳房热像图的分类。在通过热分析进行的模拟研究中,发现所有异常乳房热像图皮肤表面温度均大于0.5℃,使用SVM和KNN分类器的总体分类准确率分别达到90%和88.9%。在本研究中,特征选择技术的应用优于分类器的性能。
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