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Self-supervised Visualisation of Medical Image Datasets

22 February 2024
I. V. Nwabufo
Jan Niklas Böhm
Philipp Berens
D. Kobak
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Abstract

Self-supervised learning methods based on data augmentations, such as SimCLR, BYOL, or DINO, allow obtaining semantically meaningful representations of image datasets and are widely used prior to supervised fine-tuning. A recent self-supervised learning method, ttt-SimCNE, uses contrastive learning to directly train a 2D representation suitable for visualisation. When applied to natural image datasets, ttt-SimCNE yields 2D visualisations with semantically meaningful clusters. In this work, we used ttt-SimCNE to visualise medical image datasets, including examples from dermatology, histology, and blood microscopy. We found that increasing the set of data augmentations to include arbitrary rotations improved the results in terms of class separability, compared to data augmentations used for natural images. Our 2D representations show medically relevant structures and can be used to aid data exploration and annotation, improving on common approaches for data visualisation.

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