Hierarchical discriminative learning improves visual representations of biomedical microscopy.

Cheng Jiang, Xinhai Hou, Akhil Kondepudi, Asadur Chowdury, Christian W Freudiger, Daniel A Orringer, Honglak Lee, Todd C Hollon
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引用次数: 3

Abstract

Learning high-quality, self-supervised, visual representations is essential to advance the role of computer vision in biomedical microscopy and clinical medicine. Previous work has focused on self-supervised representation learning (SSL) methods developed for instance discrimination and applied them directly to image patches, or fields-of-view, sampled from gigapixel whole-slide images (WSIs) used for cancer diagnosis. However, this strategy is limited because it (1) assumes patches from the same patient are independent, (2) neglects the patient-slide-patch hierarchy of clinical biomedical microscopy, and (3) requires strong data augmentations that can degrade downstream performance. Importantly, sampled patches from WSIs of a patient's tumor are a diverse set of image examples that capture the same underlying cancer diagnosis. This motivated HiDisc, a data-driven method that leverages the inherent patient-slide-patch hierarchy of clinical biomedical microscopy to define a hierarchical discriminative learning task that implicitly learns features of the underlying diagnosis. HiDisc uses a self-supervised contrastive learning framework in which positive patch pairs are defined based on a common ancestry in the data hierarchy, and a unified patch, slide, and patient discriminative learning objective is used for visual SSL. We benchmark HiDisc visual representations on two vision tasks using two biomedical microscopy datasets, and demonstrate that (1) HiDisc pretraining outperforms current state-of-the-art self-supervised pretraining methods for cancer diagnosis and genetic mutation prediction, and (2) HiDisc learns high-quality visual representations using natural patch diversity without strong data augmentations.

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分层判别学习提高了生物医学显微镜的视觉表征。
学习高质量的、自我监督的视觉表征对于提高计算机视觉在生物医学显微镜和临床医学中的作用至关重要。之前的工作主要集中在自监督表示学习(SSL)方法上,该方法用于实例识别,并将其直接应用于用于癌症诊断的从千兆像素整张图像(wsi)中采样的图像补丁或视场。然而,这种策略是有限的,因为它(1)假设来自同一患者的贴片是独立的,(2)忽略了临床生物医学显微镜的患者-玻片-贴片层次结构,(3)需要强大的数据增强,这可能会降低下游性能。重要的是,从患者肿瘤的wsi中采样的斑块是一组不同的图像示例,它们捕获了相同的潜在癌症诊断。这激发了HiDisc,一种数据驱动的方法,利用临床生物医学显微镜固有的患者-幻灯片-贴片层次来定义分层判别学习任务,隐式学习潜在诊断的特征。HiDisc使用自监督对比学习框架,其中基于数据层次结构中的共同祖先定义正补丁对,并将统一的补丁、幻灯片和患者判别学习目标用于可视化SSL。我们使用两个生物医学显微镜数据集在两个视觉任务上对HiDisc视觉表示进行了基准测试,并证明(1)HiDisc预训练优于目前最先进的癌症诊断和基因突变预测的自监督预训练方法;(2)HiDisc在没有强数据增强的情况下使用自然斑块多样性学习高质量的视觉表示。
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MAPSeg: Unified Unsupervised Domain Adaptation for Heterogeneous Medical Image Segmentation Based on 3D Masked Autoencoding and Pseudo-Labeling. Learned representation-guided diffusion models for large-image generation. SI-MIL: Taming Deep MIL for Self-Interpretability in Gigapixel Histopathology. Calibrating Multi-modal Representations: A Pursuit of Group Robustness without Annotations. Representing Part-Whole Hierarchies in Foundation Models by Learning Localizability, Composability, and Decomposability from Anatomy via Self-Supervision.
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