Cross-scale Attention Guided Multi-instance Learning for Crohn's Disease Diagnosis with Pathological Images

Ruining Deng, C. Cui, L. W. Remedios, S. Bao, R. M. Womick, S. Chiron, Jia Li, J. T. Roland, K. Lau, Qi Liu, K. Wilson, Yao Wang, Lori A. Coburn, B. Landman, Yuankai Huo
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引用次数: 2

Abstract

Multi-instance learning (MIL) is widely used in the computer-aided interpretation of pathological Whole Slide Images (WSIs) to solve the lack of pixel-wise or patch-wise annotations. Often, this approach directly applies "natural image driven" MIL algorithms which overlook the multi-scale (i.e. pyramidal) nature of WSIs. Off-the-shelf MIL algorithms are typically deployed on a single-scale of WSIs (e.g., 20× magnification), while human pathologists usually aggregate the global and local patterns in a multi-scale manner (e.g., by zooming in and out between different magnifications). In this study, we propose a novel cross-scale attention mechanism to explicitly aggregate inter-scale interactions into a single MIL network for Crohn's Disease (CD), which is a form of inflammatory bowel disease. The contribution of this paper is two-fold: (1) a cross-scale attention mechanism is proposed to aggregate features from different resolutions with multi-scale interaction; and (2) differential multi-scale attention visualizations are generated to localize explainable lesion patterns. By training ~250,000 H&E-stained Ascending Colon (AC) patches from 20 CD patient and 30 healthy control samples at different scales, our approach achieved a superior Area under the Curve (AUC) score of 0.8924 compared with baseline models. The official implementation is publicly available at https://github.com/hrlblab/CS-MIL.
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跨尺度注意引导多实例学习在克罗恩病病理图像诊断中的应用
多实例学习(MIL)被广泛应用于病理全幻灯片图像(wsi)的计算机辅助解释中,以解决缺乏逐像素或逐块注释的问题。通常,这种方法直接应用“自然图像驱动”MIL算法,忽略了wsi的多尺度(即金字塔)性质。现成的MIL算法通常部署在单一尺度的wsi上(例如,20倍的放大倍率),而人类病理学家通常以多尺度的方式(例如,通过在不同的放大倍率之间放大和缩小)汇总全局和局部模式。在这项研究中,我们提出了一种新的跨尺度注意机制,明确地将克罗恩病(CD)的跨尺度相互作用聚集到一个单一的MIL网络中。本文的贡献有两个方面:(1)提出了一种跨尺度的注意机制,通过多尺度的相互作用来聚合不同分辨率的特征;(2)生成差异化多尺度注意可视化,以定位可解释的病变模式。通过对来自20例CD患者和30例健康对照样本的25万个h&e染色升结肠(AC)贴片进行不同尺度的训练,我们的方法获得了比基线模型更高的曲线下面积(AUC)得分0.8924。官方实现可以在https://github.com/hrlblab/CS-MIL上公开获得。
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