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首页> 外文期刊>Expert systems with applications >Hybrid segmentation, characterization and classification of basal cell nuclei from histopathological images of normal oral mucosa and oral submucous fibrosis
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Hybrid segmentation, characterization and classification of basal cell nuclei from histopathological images of normal oral mucosa and oral submucous fibrosis

机译:从正常口腔黏膜和口腔黏膜下纤维化的组织病理学图像对基底细胞核进行混合分割,表征和分类

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This work presents a quantitative microscopic approach for discriminating oral submucous fibrosis (OSF) from normal oral mucosa (NOM) in respect to morphological and textural properties of the basal cell nuclei. Practically, basal cells constitute the proliferative compartment (called basal layer) of the epithelium. In the context of histopathological evaluation, the morphometry and texture of basal nuclei are assumed to vary during malignant transformation according to onco-pathologists. In order to automate the pathological understanding, the basal layer is initially extracted from histopathological images of NOM (n = 341) and OSF (n = 429) samples using fuzzy divergence, morphological operations and parabola fitting followed by median filter-based noise reduction. Next, the nuclei are segmented from the layer using color deconvolution, marker-controlled watershed transform and gradient vector flow (GVF) active contour method. Eighteen morphological, 4 gray-level co-occurrence matrix (GLCM) based texture features and 1 intensity feature are quantized from five types of basal nuclei characteristics. Afterwards, unsupervised feature selection method is used to evaluate significant features and hence 18 are obtained as most discriminative out of 23. Finally, supervised and unsupervised classifiers are trained and tested with 18 features for the classification between normal and OSF samples. Experimental results are obtained and compared. It is observed that linear kernel based support vector machine (SVM) leads to 99.66% accuracy in comparison with Bayesian classifier (96.56%) and Gaussian mixture model (90.37%).
机译:这项工作提出了一种定量的显微镜方法,用于区分基底细胞核的形态和质地特性与正常口腔粘膜(NOM)口腔粘膜下纤维化(OSF)。实际上,基底细胞构成上皮的增殖区室(称为基底层)。在组织病理学评估的背景下,根据肿瘤病理学家的推测,在恶性转化过程中基底核的形态和质地会发生变化。为了自动进行病理学理解,首先使用模糊散度,形态学运算和抛物线拟合从中值滤波器进行降噪,然后从NOM(n = 341)和OSF(n = 429)样本的组织病理学图像中提取基底层。接下来,使用颜色反卷积,标记控制的分水岭变换和梯度矢量流(GVF)主动轮廓法从该层中分割出核。从五种类型的基础核特征中量化了18种基于形态,4种灰度共现矩阵(GLCM)的纹理特征和1种强度特征。然后,使用非监督特征选择方法来评估重要特征,因此从23个中最有区别地获得18个。最后,对监督和非监督分类器进行了训练,并使用18个特征对正常和OSF样本之间的分类进行了测试。获得并比较了实验结果。可以看出,与贝叶斯分类器(96.56%)和高斯混合模型(90.37%)相比,基于线性核的支持向量机(SVM)的准确性为99.66%。

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