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首页> 外文期刊>Journal of Medical Engineering >Detection and Classification of Cancer from Microscopic Biopsy Images Using Clinically Significant and Biologically Interpretable Features
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Detection and Classification of Cancer from Microscopic Biopsy Images Using Clinically Significant and Biologically Interpretable Features

机译:从具有临床意义和生物学上可解释的特征的显微活检图像中检测和分类癌症

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A framework for automated detection and classification of cancer from microscopic biopsy images using clinically significant and biologically interpretable features is proposed and examined. The various stages involved in the proposed methodology include enhancement of microscopic images, segmentation of background cells, features extraction, and finally the classification. An appropriate and efficient method is employed in each of the design steps of the proposed framework after making a comparative analysis of commonly used method in each category. For highlighting the details of the tissue and structures, the contrast limited adaptive histogram equalization approach is used. For the segmentation of background cells,k-means segmentation algorithm is used because it performs better in comparison to other commonly used segmentation methods. In feature extraction phase, it is proposed to extract various biologically interpretable and clinically significant shapes as well as morphology based features from the segmented images. These include gray level texture features, color based features, color gray level texture features, Law’s Texture Energy based features, Tamura’s features, and wavelet features. Finally, theK-nearest neighborhood method is used for classification of images into normal and cancerous categories because it is performing better in comparison to other commonly used methods for this application. The performance of the proposed framework is evaluated using well-known parameters for four fundamental tissues (connective, epithelial, muscular, and nervous) of randomly selected 1000 microscopic biopsy images.
机译:提出并检查了使用临床上有意义的和生物学上可解释的特征从显微活检图像自动检测和分类癌症的框架。所提出的方法学涉及的各个阶段包括显微图像的增强,背景细胞的分割,特征提取以及最后的分类。在对每种类别中常用方法进行比较分析之后,在所建议框架的每个设计步骤中都采用了一种适当而有效的方法。为了突出组织和结构的细节,使用了对比度受限的自适应直方图均衡方法。对于背景细胞的分割,使用k均值分割算法是因为与其他常用的分割方法相比,它的执行效果更好。在特征提取阶段,建议从分割图像中提取各种生物学上可解释的和临床上有意义的形状以及基于形态的特征。其中包括灰度纹理功能,基于颜色的功能,彩色灰度纹理功能,基于Law的纹理能量的功能,Tamura的功能和小波功能。最后,K近邻法用于将图像分类为正常和癌性类别,因为与该应用程序的其他常用方法相比,它的性能更好。拟议框架的性能使用随机选择的1000个显微活检图像的四个基本组织(结缔组织,上皮,肌肉和神经)的众所周知的参数进行评估。

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