基于布朗运动曲线的纹理分类及其在癌症诊断中的应用。

Muthu Rama Krishnan Mookiah, Pratik Shah, Chandan Chakraborty, Ajoy K Ray
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引用次数: 0

摘要

目的:建立一种基于口腔粘膜上皮结构特征的自动诊断方法来区分正常和口腔粘膜下纤维化(OSF)。研究设计:共考虑口腔黏膜组织病理切片的83张正常和29张OSF图像。提出的诊断机制包括两个部分:利用布朗运动曲线(BMC)提取特征和设计合适的分类器。这些特征的识别能力已被统计检验所证实。使用误差反向传播神经网络(BPNN)对OSF和normal进行分类。结果:在口腔癌自动诊断模块的开发中,BMC在描述口腔图像的纹理特征方面发挥了重要作用。Fisher线性判别分析的灵敏度为100%,特异度为85%,而BPNN的灵敏度为92.31%,特异度为100%。结论:在口腔癌的组织病理学诊断中,除了强度和形态学特征外,质地特征也很重要。鉴于此,利用BMC提取一组纹理特征用于OSF的诊断。最后,利用bp神经网络设计了一个纹理分类器,该分类器的诊断准确率达到96.43%。(肛门定量
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brownian motion curve-based textural classification and its application in cancer diagnosis.

Objective: To develop an automated diagnostic methodology based on textural features of the oral mucosal epithelium to discriminate normal and oral submucous fibrosis (OSF).

Study design: A total of 83 normal and 29 OSF images from histopathologic sections of the oral mucosa are considered. The proposed diagnostic mechanism consists of two parts: feature extraction using Brownian motion curve (BMC) and design ofa suitable classifier. The discrimination ability of the features has been substantiated by statistical tests. An error back-propagation neural network (BPNN) is used to classify OSF vs. normal.

Results: In development of an automated oral cancer diagnostic module, BMC has played an important role in characterizing textural features of the oral images. Fisher's linear discriminant analysis yields 100% sensitivity and 85% specificity, whereas BPNN leads to 92.31% sensitivity and 100% specificity, respectively.

Conclusion: In addition to intensity and morphology-based features, textural features are also very important, especially in histopathologic diagnosis of oral cancer. In view of this, a set of textural features are extracted using the BMC for the diagnosis of OSF. Finally, a textural classifier is designed using BPNN, which leads to a diagnostic performance with 96.43% accuracy. (Anal Quant

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