Deng Ruining, Cui Can, Remedios Lucas W, Bao Shunxing, Womick R Michael, Chiron Sophie, Li Jia, Roland Joseph T, Lau Ken S, Liu Qi, Wilson Keith T, Wang Yaohong, Coburn Lori A, Landman Bennett A, Huo Yuankai
Vanderbilt University, Nashville, TN 37215, USA.
The University of North Carolina at Chapel Hill, Chapel Hill, NC 27514, USA.
Med Image Anal. 2024 May;94:103124. doi: 10.1016/j.media.2024.103124. Epub 2024 Feb 27.
Analyzing high resolution whole slide images (WSIs) with regard to information across multiple scales poses a significant challenge in digital pathology. Multi-instance learning (MIL) is a common solution for working with high resolution images by classifying bags of objects (i.e. sets of smaller image patches). However, such processing is typically performed at a single scale (e.g., 20× magnification) of WSIs, disregarding the vital inter-scale information that is key to diagnoses by human pathologists. In this study, we propose a novel cross-scale MIL algorithm to explicitly aggregate inter-scale relationships into a single MIL network for pathological image diagnosis. The contribution of this paper is three-fold: (1) A novel cross-scale MIL (CS-MIL) algorithm that integrates the multi-scale information and the inter-scale relationships is proposed; (2) A toy dataset with scale-specific morphological features is created and released to examine and visualize differential cross-scale attention; (3) Superior performance on both in-house and public datasets is demonstrated by our simple cross-scale MIL strategy. The official implementation is publicly available at https://github.com/hrlblab/CS-MIL.
在数字病理学中,针对跨多个尺度的信息分析高分辨率全切片图像(WSIs)是一项重大挑战。多实例学习(MIL)是通过对对象包(即较小图像块的集合)进行分类来处理高分辨率图像的常用解决方案。然而,这种处理通常在WSIs的单个尺度(例如20倍放大率)下进行,而忽略了对于人类病理学家进行诊断至关重要的关键跨尺度信息。在本研究中,我们提出了一种新颖的跨尺度MIL算法,以将跨尺度关系明确地聚合到单个MIL网络中用于病理图像诊断。本文的贡献有三个方面:(1)提出了一种整合多尺度信息和跨尺度关系的新颖跨尺度MIL(CS-MIL)算法;(2)创建并发布了一个具有特定尺度形态特征的玩具数据集,以检查和可视化差异跨尺度注意力;(3)我们简单的跨尺度MIL策略在内部和公共数据集上均展示了卓越的性能。官方实现可在https://github.com/hrlblab/CS-MIL上公开获取。