STAR-RL:用于可解释病理图像超分辨率的时空分层强化学习

Wenting Chen;Jie Liu;Tommy W. S. Chow;Yixuan Yuan
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引用次数: 0

摘要

病理图像是细胞病理学筛查中准确解释病变细胞的必要条件,但获得高分辨率的数字切片需要专门的设备和较长的扫描时间。虽然超分辨率(SR)技术可以缓解这一问题,但现有的深度学习模型以黑盒方式恢复病理图像,这可能导致不真实的生物细节和误诊。此外,目前的方法对病理图像的每个像素的恢复分配相同的计算资源,导致由于病理图像的变化很大,导致恢复的次优问题。本文提出了第一个分层强化学习框架——时空分层强化学习(Spatial-Temporal hierarchical reinforcement learning, STAR-RL),主要解决病理图像超分辨率问题中的上述问题。我们将SR问题重新表述为可解释操作的马尔可夫决策过程,并在补丁级采用分层恢复机制,以避免次优恢复。具体来说,提出了高级空间管理器为低级补丁工作器挑选出损坏最严重的补丁。此外,高级时间管理器可以评估所选补丁并确定是否应该提前停止优化,从而避免过度处理问题。在时空管理器的指导下,底层patch worker在每个时间步用逐像素可解释的动作处理所选的patch。对不同核函数的医学图像进行了退化实验,结果表明了STAR-RL算法的有效性。此外,STAR-RL在肿瘤诊断中的促进作用具有较大的边际,并在各种降解下显示出普遍性。源代码可从https://github.com/CUHK-AIM-Group/STAR-RL获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STAR-RL: Spatial-Temporal Hierarchical Reinforcement Learning for Interpretable Pathology Image Super-Resolution
Pathology image are essential for accurately interpreting lesion cells in cytopathology screening, but acquiring high-resolution digital slides requires specialized equipment and long scanning times. Though super-resolution (SR) techniques can alleviate this problem, existing deep learning models recover pathology image in a black-box manner, which can lead to untruthful biological details and misdiagnosis. Additionally, current methods allocate the same computational resources to recover each pixel of pathology image, leading to the sub-optimal recovery issue due to the large variation of pathology image. In this paper, we propose the first hierarchical reinforcement learning framework named Spatial-Temporal hierARchical Reinforcement Learning (STAR-RL), mainly for addressing the aforementioned issues in pathology image super-resolution problem. We reformulate the SR problem as a Markov decision process of interpretable operations and adopt the hierarchical recovery mechanism in patch level, to avoid sub-optimal recovery. Specifically, the higher-level spatial manager is proposed to pick out the most corrupted patch for the lower-level patch worker. Moreover, the higher-level temporal manager is advanced to evaluate the selected patch and determine whether the optimization should be stopped earlier, thereby avoiding the over-processed problem. Under the guidance of spatial-temporal managers, the lower-level patch worker processes the selected patch with pixel-wise interpretable actions at each time step. Experimental results on medical images degraded by different kernels show the effectiveness of STAR-RL. Furthermore, STAR-RL validates the promotion in tumor diagnosis with a large margin and shows generalizability under various degradations. The source code is available at https://github.com/CUHK-AIM-Group/STAR-RL .
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