CAiD: Context-Aware Instance Discrimination for Self-supervised Learning in Medical Imaging.

Mohammad Reza Hosseinzadeh Taher, Fatemeh Haghighi, Michael B Gotway, Jianming Liang
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Abstract

Recently, self-supervised instance discrimination methods have achieved significant success in learning visual representations from unlabeled photographic images. However, given the marked differences between photographic and medical images, the efficacy of instance-based objectives, focusing on learning the most discriminative global features in the image (i.e., wheels in bicycle), remains unknown in medical imaging. Our preliminary analysis showed that high global similarity of medical images in terms of anatomy hampers instance discrimination methods for capturing a set of distinct features, negatively impacting their performance on medical downstream tasks. To alleviate this limitation, we have developed a simple yet effective self-supervised framework, called Context-Aware instance Discrimination (CAiD). CAiD aims to improve instance discrimination learning by providing finer and more discriminative information encoded from a diverse local context of unlabeled medical images. We conduct a systematic analysis to investigate the utility of the learned features from a three-pronged perspective: (i) generalizability and transferability, (ii) separability in the embedding space, and (iii) reusability. Our extensive experiments demonstrate that CAiD (1) enriches representations learned from existing instance discrimination methods; (2) delivers more discriminative features by adequately capturing finer contextual information from individual medial images; and (3) improves reusability of low/mid-level features compared to standard instance discriminative methods. As open science, all codes and pre-trained models are available on our GitHub page: https://github.com/JLiangLab/CAiD.

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医学影像中自我监督学习的情境感知实例辨析。
近年来,自监督实例识别方法在从未标记的摄影图像中学习视觉表征方面取得了显著的成功。然而,鉴于摄影图像和医学图像之间的显著差异,基于实例的目标(专注于学习图像中最具判别性的全局特征(即自行车的车轮))的有效性在医学成像中仍然未知。我们的初步分析表明,医学图像在解剖学方面的高度全局相似性阻碍了实例识别方法捕捉一组不同的特征,对其在医学下游任务中的表现产生了负面影响。为了减轻这一限制,我们开发了一个简单而有效的自我监督框架,称为上下文感知实例歧视(CAiD)。CAiD旨在通过从不同的未标记医学图像的局部上下文中提供更精细和更具判别性的编码信息,从而改善实例判别学习。我们从三个方面进行了系统的分析,以调查学习特征的效用:(i)可泛化性和可转移性,(ii)嵌入空间的可分离性,以及(iii)可重用性。我们的大量实验表明,CAiD(1)丰富了从现有实例识别方法中学习到的表征;(2)通过从单个媒体图像中充分捕获更精细的上下文信息,提供更多的判别特征;(3)与标准的实例判别方法相比,提高了低/中级特征的可重用性。作为开放科学,所有代码和预训练模型都可以在我们的GitHub页面上获得:https://github.com/JLiangLab/CAiD。
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