Towards Foundation Models Learned from Anatomy in Medical Imaging via Self-supervision.

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

Human anatomy is the foundation of medical imaging and boasts one striking characteristic: its hierarchy in nature, exhibiting two intrinsic properties: (1) locality: each anatomical structure is morphologically distinct from the others; and (2) compositionality: each anatomical structure is an integrated part of a larger whole. We envision a foundation model for medical imaging that is consciously and purposefully developed upon this foundation to gain the capability of "understanding" human anatomy and to possess the fundamental properties of medical imaging. As our first step in realizing this vision towards foundation models in medical imaging, we devise a novel self-supervised learning (SSL) strategy that exploits the hierarchical nature of human anatomy. Our extensive experiments demonstrate that the SSL pretrained model, derived from our training strategy, not only outperforms state-of-the-art (SOTA) fully/self-supervised baselines but also enhances annotation efficiency, offering potential few-shot segmentation capabilities with performance improvements ranging from 9% to 30% for segmentation tasks compared to SSL baselines. This performance is attributed to the significance of anatomy comprehension via our learning strategy, which encapsulates the intrinsic attributes of anatomical structures-locality and compositionality-within the embedding space, yet overlooked in existing SSL methods. All code and pretrained models are available at GitHub.com/JLiangLab/Eden.

在医学成像中通过自我监督从解剖学中学习基础模型。
人体解剖学是医学成像的基础,它有一个显著特点:具有层次性,表现出两个内在属性:(1) 定位性:每个解剖结构在形态上都与其他结构不同;(2) 构成性:每个解剖结构都是更大整体的一个组成部分。我们设想建立一个医学成像基础模型,在此基础上有意识、有目的地进行开发,以获得 "理解 "人体解剖学的能力,并具备医学成像的基本特性。作为实现医学成像基础模型这一愿景的第一步,我们设计了一种新颖的自监督学习(SSL)策略,利用了人体解剖学的层次性。我们的大量实验证明,从我们的训练策略中衍生出的 SSL 预训练模型不仅优于最先进的(SOTA)完全/自我监督基线,而且还提高了注释效率,提供了潜在的少数镜头分割能力,与 SSL 基线相比,分割任务的性能提高了 9% 到 30%。我们的学习策略将解剖结构的固有属性--位置性和组成性--囊括到嵌入空间中,而现有的 SSL 方法却忽略了这一点。所有代码和预训练模型可从 GitHub.com/JLiangLab/Eden 获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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