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Residual Attention Generative Adversarial Networks for Nuclei Detection on Routine Colon Cancer Histology Images

机译:残余注意力对核癌组织组织学图像核检测的生成抗逆性网络

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The automatic detection of nuclei in pathological images plays an important role in diagnosis and prognosis of cancers. Most nuclei detection algorithms are based on the assumption that the nuclei center should have larger responses than their surroundings in the probability map of the pathological image, which in turn transforms the detection or localization problem into finding the local maxima on the probability map. However, all the existing studies used regression algorithms to determine the probability map, which neglect to take the spatial contiguity within the probability map into consideration. In order to capture the higher-order consistency within the generated probability map, we propose an approach called Residual Attention Generative Adversarial Network (i.e., RAGAN) for nuclei detection. Specifically, the objective function of the RAGAN model combines a detection term with an adversarial term. The adversarial term adopts a generator called Residual Attention U-Net (i.e., RAU-Net) to produce the probability maps that cannot be distinguished by the ground-truth. Based on the adversarial model, we can simultaneously estimate the probabilities of many pixels with high-order consistency, by which we can derive a more accurate probability map. We evaluate our method on a public colorectal adenocarcinoma images dataset with 29756 nuclei. Experimental results show that our method can achieve the F1 Score of 0.847 (with a Precision of 0.859 and a Recall of 0.836) for nuclei detection, which is superior to the conventional methods.
机译:病理图像中核的自动检测在癌症的诊断和预后起着重要作用。大多数核检测算法基于假设核心中心应在病理图像的概率图中的周围环境具有更大的响应,这反过来将检测或定位问题转换为在概率图上找到局部最大值。然而,所有现有的研究使用回归算法来确定概率图,该概率图忽略了在概率图中的空间邻接考虑。为了在所产生的概率图中捕获更高阶的一致性,我们提出了一种被称为核检测的残余注意力发生的对抗性网络(即Ragan)的方法。具体地,Ragan模型的目标函数将检测术语与对抗术语组合。对抗术语采用一种称为残余注意力U-Net(即,RAU网)的发电机,以产生无法通过地面真理区分的概率图。基于对抗模型,我们可以同时估计许多像素的概率,以高阶一致性,我们可以推导出更准确的概率图。我们在具有29756个核的公共结肠直肠腺癌图像数据集中评估我们的方法。实验结果表明,我们的方法可以达到0.847的F1得分(精度为0.859,召回0.836),其优于常规方法。

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