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Super-resolution recurrent convolutional neural networks for learning with multi-resolution whole slide images

机译:超分辨率递归卷积神经网络用于多分辨率全幻灯片图像学习

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摘要

We study a problem scenario of super-resolution (SR) algorithms in the context of whole slide imaging (WSI), a popular imaging modality in digital pathology. Instead of just one pair of high- and low-resolution images, which is typically the setup in which SR algorithms are designed, we are given multiple intermediate resolutions of the same image as well. The question remains how to best utilize such data to make the transformation learning problem inherent to SR more tractable and address the unique challenges that arises in this biomedical application. We propose a recurrent convolutional neural network model, to generate SR images from such multi-resolution WSI datasets. Specifically, we show that having such intermediate resolutions is highly effective in making the learning problem easily trainable and address large resolution difference in the low and high-resolution images common in WSI, even without the availability of a large size training data. Experimental results show state-of-the-art performance on three WSI histopathology cancer datasets, across a number of metrics.
机译:我们在全幻灯片成像(WSI)(数字病理学中一种流行的成像方式)的背景下研究了超分辨率(SR)算法的问题场景。不仅是一对高分辨率和低分辨率图像(通常是设计SR算法的设置),我们还为同一图像提供了多种中间分辨率。问题仍然是如何最佳利用这些数据,以使SR固有的转化学习问题更易于处理,并解决在此生物医学应用中出现的独特挑战。我们提出了循环卷积神经网络模型,以从这种多分辨率WSI数据集生成SR图像。具体地说,我们表明,即使没有大量的训练数据,具有这种中等分辨率对于使学习问题易于训练和解决WSI中常见的低分辨率和高分辨率图像中的高分辨率差异也非常有效。实验结果显示,在多个指标上,三个WSI组织病理学癌症数据集具有最先进的性能。

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