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CASS: Cross Architectural Self-Supervision for Medical Image Analysis

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arxiv 2206.04170 v6 pith:ABH7HDYJ submitted 2022-06-08 cs.CV cs.AIcs.LGeess.IV

CASS: Cross Architectural Self-Supervision for Medical Image Analysis

classification cs.CV cs.AIcs.LGeess.IV
keywords datacasslabeledlearningmedicalanalysisarchitecturalbatch
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent advances in deep learning and computer vision have reduced many barriers to automated medical image analysis, allowing algorithms to process label-free images and improve performance. However, existing techniques have extreme computational requirements and drop a lot of performance with a reduction in batch size or training epochs. This paper presents Cross Architectural - Self Supervision (CASS), a novel self-supervised learning approach that leverages Transformer and CNN simultaneously. Compared to the existing state of the art self-supervised learning approaches, we empirically show that CASS-trained CNNs and Transformers across four diverse datasets gained an average of 3.8% with 1% labeled data, 5.9% with 10% labeled data, and 10.13% with 100% labeled data while taking 69% less time. We also show that CASS is much more robust to changes in batch size and training epochs. Notably, one of the test datasets comprised histopathology slides of an autoimmune disease, a condition with minimal data that has been underrepresented in medical imaging. The code is open source and is available on GitHub.

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