Centroid-aware feature recalibration for cancer grading in pathology images

Jaeung Lee, Keunho Byeon, J. T. Kwak
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引用次数: 0

Abstract

Cancer grading is an essential task in pathology. The recent developments of artificial neural networks in computational pathology have shown that these methods hold great potential for improving the accuracy and quality of cancer diagnosis. However, the issues with the robustness and reliability of such methods have not been fully resolved yet. Herein, we propose a centroid-aware feature recalibration network that can conduct cancer grading in an accurate and robust manner. The proposed network maps an input pathology image into an embedding space and adjusts it by using centroids embedding vectors of different cancer grades via attention mechanism. Equipped with the recalibrated embedding vector, the proposed network classifiers the input pathology image into a pertinent class label, i.e., cancer grade. We evaluate the proposed network using colorectal cancer datasets that were collected under different environments. The experimental results confirm that the proposed network is able to conduct cancer grading in pathology images with high accuracy regardless of the environmental changes in the datasets.
质心感知特征重新校准用于病理图像的癌症分级
肿瘤分级是病理学中的一项重要任务。人工神经网络在计算病理学中的最新发展表明,这些方法在提高癌症诊断的准确性和质量方面具有巨大的潜力。然而,这些方法的鲁棒性和可靠性问题尚未得到充分解决。在此,我们提出了一个质心感知特征再校准网络,可以准确和稳健地进行癌症分级。该网络将输入的病理图像映射到嵌入空间中,并通过注意机制使用不同癌症等级的质心嵌入向量对其进行调整。利用重新校准的嵌入向量,该网络将输入的病理图像分类为相关的类别标签,即癌症等级。我们使用在不同环境下收集的结直肠癌数据集来评估所提出的网络。实验结果证实,无论数据集的环境变化如何,所提出的网络都能够以较高的准确率对病理图像进行癌症分级。
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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