Enhancement and segmentation of histopathological images of cancer using dynamic stochastic resonance

Anuranjeeta, Shiru Sharma, Neeraj Sharma, M. Singh, K. K. Shukla
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引用次数: 1

Abstract

Pathologists face difficulty in cell image detection as uneven dye causes the low contrast and inhomogeneity. The proposed discrete cosine transform (DCT)-based dynamic stochastic resonance (DSR) technique enhances the histopathological images of cancer. Further, the DSR-based Otsu's thresholding processed image helps in the better segmentation of histopathological images of four types of cancer cells, i.e., breast, cervix, ovarian and prostate cancer. The comparison of segmentation results were performed on the University of California, Santabarbara (UCSB) available breast cancer datasets for analysis. The algorithm has been applied to total 22 breast cancer images including benign and malignant and compared with region of interest (ROI) segmented ground truth images to validate the performance of proposed DSR-based Otsu's thresholding. DSR-based Otsu's segmentation obtained better results with 0.776 average correlation, 0.979 average normalised probabilistic rand (NPR) index, 0.011 average global consistency error (GCE), and 0.185 average variation of information (VI). These indices are higher than the other conventional segmentation methods and have the advantage to identify the target objects in low contrast images.
动态随机共振对肿瘤组织病理图像的增强和分割
病理学家在细胞图像检测中面临着困难,因为不均匀的染色导致低对比度和不均匀性。提出了基于离散余弦变换(DCT)的动态随机共振(DSR)技术,增强了肿瘤的组织病理图像。此外,基于dsr的Otsu’s阈值处理图像有助于更好地分割乳腺癌、宫颈癌、卵巢癌和前列腺癌四种癌细胞的组织病理图像。将分割结果与加州大学圣塔芭芭拉分校(UCSB)现有的乳腺癌数据集进行对比分析。将该算法应用于包括良性和恶性在内的共22张乳腺癌图像,并与感兴趣区域(ROI)分割的ground truth图像进行比较,以验证所提出的基于dsr的Otsu阈值的性能。基于dsr的Otsu分割方法获得了较好的分割效果,平均相关系数为0.776,平均归一化概率系数(NPR)为0.979,平均全局一致性误差(GCE)为0.011,平均信息变异系数(VI)为0.185,这些指标均高于其他常规分割方法,具有在低对比度图像中识别目标物体的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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