STAR-RL : Spatial-temporal Hierarchical Reinforcement Learning for Interpretable Pathology Image Super-Resolution
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review
Author(s)
Related Research Unit(s)
Detail(s)
Original language | English |
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Pages (from-to) | 4368-4379 |
Journal / Publication | IEEE Transactions on Medical Imaging |
Volume | 43 |
Issue number | 12 |
Online published | 27 Jun 2024 |
Publication status | Published - Dec 2024 |
Link(s)
Abstract
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 degradation. The source code is to be released. © 2024 IEEE.
Research Area(s)
- Reinforcement Learning, Super-Resolution, Markov Decision Problem, Whole Slide Imaging
Citation Format(s)
STAR-RL: Spatial-temporal Hierarchical Reinforcement Learning for Interpretable Pathology Image Super-Resolution. / Chen, Wenting; Liu, Jie; Chow, Tommy W.S. et al.
In: IEEE Transactions on Medical Imaging, Vol. 43, No. 12, 12.2024, p. 4368-4379.
In: IEEE Transactions on Medical Imaging, Vol. 43, No. 12, 12.2024, p. 4368-4379.
Research output: Journal Publications and Reviews › RGC 21 - Publication in refereed journal › peer-review