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使用高阶谱特征和局部二值模式自动诊断口腔癌:一项对比研究。

Automated diagnosis of oral cancer using higher order spectra features and local binary pattern: a comparative study.

机构信息

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

出版信息

Technol Cancer Res Treat. 2011 Oct;10(5):443-55. doi: 10.7785/tcrt.2012.500221.

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 objective 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, the approach introduced is used to grade the histopathological tissue sections into normal, OSF without dysplasia (OSFWD) and OSF with dysplasia (OSFD), which would help the oral onco-pathologists to screen the subjects rapidly. The main objective of this work is to evaluate the use of Higher Order Spectra (HOS) features and Local Binary Pattern (LBP) features extracted from the epithelial layer in classifying normal, OSFWD and OSFD. For this purpose, we extracted twenty three HOS features and nine LBP features and fed them to a Support Vector Machine (SVM) for automated diagnosis. One hundred and fifty eight images (90 normal, 42 OSFWD and 26 OSFD images) were used for analysis. LBP features provide a good sensitivity of 82.85% and specificity of 87.84%, and the HOS features provide higher values of sensitivity (94.07%) and specificity (93.33%) using SVM classifier. The proposed system, can be used as an adjunct tool by the onco-pathologists to cross-check their diagnosis.

摘要

在定量显微镜领域,纹理信息在组织特征和诊断中通常除了形态和强度外,也起着重要作用。本工作的目的是基于纹理特征提高分类准确性,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,所提出的方法用于将组织学切片分为正常、无异型增生的 OSF(OSFWD)和有异型增生的 OSF(OSFD),这将有助于口腔肿瘤病理学家快速筛查对象。本工作的主要目的是评估高阶谱(HOS)特征和从上皮层提取的局部二值模式(LBP)特征在分类正常、OSFWD 和 OSFD 中的使用。为此,我们提取了二十三个 HOS 特征和九个 LBP 特征,并将它们馈送到支持向量机(SVM)中进行自动诊断。共分析了 158 张图像(90 张正常、42 张 OSFWD 和 26 张 OSFD 图像)。LBP 特征的灵敏度为 82.85%,特异性为 87.84%,而使用 SVM 分类器时 HOS 特征的灵敏度(94.07%)和特异性(93.33%)更高。该系统可作为肿瘤病理学家的辅助工具,用于交叉检查他们的诊断。

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