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用于口腔黏膜下纤维性变检测的组织学图像纹理特征描述。

Textural characterization of histopathological images for oral sub-mucous fibrosis detection.

机构信息

School of Medical Science and Technology, Indian Institute of Technology Kharagpur, West Bengal, 721302, India.

出版信息

Tissue Cell. 2011 Oct;43(5):318-30. doi: 10.1016/j.tice.2011.06.005. Epub 2011 Aug 6.

Abstract

In the field of quantitative microscopy, textural information plays a significant role very often in tissue characterization and diagnosis, in addition to morphology and intensity. The aim of this work is to improve the classification accuracy based on textural features for the development of a computer assisted screening of oral sub-mucous fibrosis (OSF). In fact, a systematic approach is introduced in order to grade the histopathological tissue sections into normal, OSF without dysplasia and OSF with dysplasia, which would help the oral onco-pathologists to screen the subjects rapidly. In totality, 71 textural features are extracted from epithelial region of the tissue sections using various wavelet families, Gabor-wavelet, local binary pattern, fractal dimension and Brownian motion curve, followed by preprocessing and segmentation. Wavelet families contribute a common set of 9 features, out of which 8 are significant and other 61 out of 62 obtained from the rest of the extractors are also statistically significant (p<0.05) in discriminating the three stages. Based on mean distance criteria, the best wavelet family (i.e., biorthogonal3.1 (bior3.1)) is selected for classifier design. support vector machine (SVM) is trained by 146 samples based on 69 textural features and its classification accuracy is computed for each of the combinations of wavelet family and rest of the extractors. Finally, it has been investigated that bior3.1 wavelet coefficients leads to higher accuracy (88.38%) in combination with LBP and Gabor wavelet features through three-fold cross validation. Results are shown and discussed in detail. It is shown that combining more than one texture measure instead of using just one might improve the overall accuracy.

摘要

在定量显微镜领域,纹理信息在组织特征和诊断中经常起着重要作用,除了形态和强度之外。本工作的目的是提高基于纹理特征的分类准确性,以便开发用于口腔黏膜下纤维化(OSF)的计算机辅助筛查。实际上,引入了一种系统方法,以便将组织学切片组织分为正常、无异型增生的 OSF 和有异型增生的 OSF,这将有助于口腔肿瘤病理学家快速筛查患者。总共从组织切片的上皮区域提取了 71 个纹理特征,使用了各种小波家族、Gabor 小波、局部二值模式、分形维数和布朗运动曲线,然后进行预处理和分割。小波家族提供了一组共同的 9 个特征,其中 8 个是显著的,其余 61 个是从其余提取器中获得的,在区分三个阶段时也是统计显著的(p<0.05)。基于均值距离标准,选择最佳的小波家族(即 biorthogonal3.1(bior3.1))用于分类器设计。支持向量机(SVM)基于 69 个纹理特征和 146 个样本进行训练,并计算每个小波家族和其余提取器组合的分类准确性。最后,通过三折交叉验证研究了 bior3.1 小波系数与 LBP 和 Gabor 小波特征相结合的更高准确性(88.38%)。详细展示和讨论了结果。结果表明,结合多个纹理测量值而不是仅使用一个纹理测量值可能会提高整体准确性。

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