Whole-slide images (WSI) in computational pathology have high resolution with gigapixel size, but are generally with sparse regions of interest, which leads to weak diagnostic relevance and data inefficiency for each area in the slide. Most of the existing methods rely on a multiple instance learning framework that requires densely sampling local patches at high magnification. The limitation is evident in the application stage as the heavy computation for extracting patch-level features is inevitable. In this paper, we develop RLogist, a benchmarking deep reinforcement learning (DRL) method for fast observation strategy on WSIs. Imitating the diagnostic logic of human pathologists, our RL agent learns how to find regions of observation value and obtain representative features across multiple resolution levels, without having to analyze each part of the WSI at the high magnification. We benchmark our method on two whole-slide level classification tasks, including detection of metastases in WSIs of lymph node sections, and subtyping of lung cancer. Experimental results demonstrate that RLogist achieves competitive classification performance compared to typical multiple instance learning algorithms, while having a significantly short observation path. In addition, the observation path given by RLogist provides good decision-making interpretability, and its ability of reading path navigation can potentially be used by pathologists for educational/assistive purposes. Our code is available at: \url{https://github.com/tencent-ailab/RLogist}.
翻译:计算病理学中的整滑图象( WSII) 与 gapixel 大小具有高度分辨率,但通常与偏差区域有关,导致诊断相关性薄弱,幻灯片中每个区域的数据效率低下。大多数现有方法都依赖于一个多重实例学习框架,需要高放大度对本地的补丁进行密集取样。在应用阶段,由于提取补丁特性的重度计算是不可避免的,因此存在明显的局限性。在本文件中,我们开发了测谎仪,这是一个基准深度强化学习(DRL)方法,用于对WSI的快速观测战略。吸收了人类病理学家的诊断逻辑,我们RL代理学会如何在多个解析级别上找到观测值区域并获得代表性特征,而无需在高放大度上分析WSI的每个部分。我们用两种全滑度分类任务来衡量我们的方法,包括探测淋巴结节段的WSI的转移,以及肺癌亚缩。实验结果显示,Rologist在与典型的多例学习算法中取得了竞争性分类性工作,同时,我们使用了一条潜在的路径解释路径。我们研究路径,可以提供路径。