DeepSet SimCLR: Self-supervised deep sets for improved pathology representation learning

IF 3.9 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pattern Recognition Letters Pub Date : 2024-09-12 DOI:10.1016/j.patrec.2024.09.005
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Abstract

Often, applications of self-supervised learning to 3D medical data opt to use 3D variants of successful 2D network architectures. Although promising approaches, they are significantly more computationally demanding to train, and thus reduce the widespread applicability of these methods away from those with modest computational resources. Thus, in this paper, we aim to improve standard 2D SSL algorithms by modelling the inherent 3D nature of these datasets implicitly. We propose two variants that build upon a strong baseline model and show that both of these variants often outperform the baseline in a variety of downstream tasks. Importantly, in contrast to previous works in both 2D and 3D approaches for 3D medical data, both of our proposals introduce negligible additional overhead in terms of parameter complexity. Although data loading overhead increases over the baseline SimCLR model (which we can show can be somewhat mitigated through parallelisation), our proposed models are still significantly more efficient than previous approaches based on sequence modelling. Overall, our proposed methods help improve the democratisation of these approaches for medical applications.

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DeepSet SimCLR:用于改进病理表征学习的自监督深度集
在三维医疗数据的自我监督学习应用中,通常会选择使用成功的二维网络架构的三维变体。虽然这种方法很有前途,但其训练对计算的要求要高得多,从而降低了这些方法的广泛适用性,使计算资源有限的人无法使用这些方法。因此,在本文中,我们旨在通过对这些数据集固有的三维性质进行隐式建模来改进标准的二维 SSL 算法。我们在强大的基线模型基础上提出了两种变体,并证明这两种变体在各种下游任务中的表现往往优于基线。重要的是,与之前针对三维医疗数据的二维和三维方法的研究相比,我们的两项建议在参数复杂度方面引入的额外开销几乎可以忽略不计。虽然与基线 SimCLR 模型相比,数据加载开销有所增加(我们可以证明,通过并行化可以在一定程度上缓解这一问题),但我们提出的模型仍然比以前基于序列建模的方法高效得多。总之,我们提出的方法有助于提高这些方法在医学应用中的民主化程度。
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来源期刊
Pattern Recognition Letters
Pattern Recognition Letters 工程技术-计算机:人工智能
CiteScore
12.40
自引率
5.90%
发文量
287
审稿时长
9.1 months
期刊介绍: Pattern Recognition Letters aims at rapid publication of concise articles of a broad interest in pattern recognition. Subject areas include all the current fields of interest represented by the Technical Committees of the International Association of Pattern Recognition, and other developing themes involving learning and recognition.
期刊最新文献
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