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Local energy-based shape histogram feature extraction technique for breast cancer diagnosis

机译:基于局部能量的形状直方图特征提取技术在乳腺癌诊断中的应用

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This paper proposes a novel local energy-based shape histogram (LESH) as the feature set for recognition of abnormalities in mammograms. It investigates the implication of this technique on mammogram-datasets of the Mammographic Image Analysis Society and INbreast. In the evaluation, regions of interest were extracted from the mammograms, their LESH features calculated, and fed to support vector machine (SVM) classifiers. In addition, the impact of selecting a subset of LESH features on classification performance was also observed and benchmarked against a state-of-the-art wavelet based feature extraction method. The proposed method achieved a higher classification accuracy of 99.00 +/- 0.50, as well as an A(z) value of 0.9900 +/- 0.0050 with multiple SVM kernels, where a linear kernel performed with 100% accuracy for distinguishing between the abnormalities (masses vs. microcalcifications). Hence, the general capability of the proposed method was established, in which it not only distinguishes between malignant and benign cases for any type of abnormality but also among different types of abnormalities. It is therefore concluded that LESH features are an excellent choice for extracting significant clinical information from mammogram images with significant potential for application to 3-D MRI images. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新颖的基于局部能量的形状直方图(LESH)作为特征来识别乳房X光照片中的异常。它研究了这项技术对乳腺X线图像分析学会和Inbreast的乳腺X线照片数据集的影响。在评估中,从乳房X线照片中提取了感兴趣的区域,计算了它们的LESH特征,并将其馈入支持向量机(SVM)分类器。此外,还观察到选择LESH特征子集对分类性能的影响,并以基于最新小波的特征提取方法为基准。所提出的方法在多个SVM内核中实现了99.00 +/- 0.50的更高分类精度,以及0.9900 +/- 0.0050的A(z)值,其中线性内核以100%的精度执行以区分异常(质量与微钙化)。因此,建立了所提出方法的一般能力,其中它不仅可以区分任何类型异常的恶性和良性病例,而且还可以区分不同类型的异常。因此得出的结论是,LESH功能是从乳房X线照片中提取重要临床信息的极佳选择,具有在3-D MRI图像中应用的巨大潜力。 (C)2015 Elsevier Ltd.保留所有权利。

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