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Computational cancer detection of pathological images based on an optimization method for color-index local auto-correlation feature extraction

机译:基于优化的颜色索引局部自相关特征提取方法的病理图像计算机癌检测

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Aiming to lessen the burdens of the pathologist with efficient diagnosis assistance, this paper proposes a cancer detection method for pathological images utilizing color features based on color-index local auto-correlations (CILAC), applied to color-indexed images to utilize co-occurrence information about indexed pixels. Moreover, a method for the automatic optimization of feature extraction is also proposed. Based on a database including both benign and cancerous pathological images, experimental results show enhanced performance compared to prior research, which demonstrate the effectiveness of the proposed cancer detection method.
机译:为了减轻病理学家的负担,提供了有效的诊断帮助,本文提出了一种基于颜色索引局部自相关(CILAC)的利用颜色特征对病理图像进行癌症检测的方法,并将其应用于颜色索引图像以实现共现有关索引像素的信息。此外,还提出了一种自动优化特征提取的方法。基于包括良性和癌性病理图像的数据库,实验结果显示,与以前的研究相比,其性能得到了增强,这证明了所提出的癌症检测方法的有效性。

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