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How Well Do Self-Supervised Models Transfer to Medical Imaging?

Jonah Anton, Liam Castelli, Mun Fai Chan, Mathilde Outters, Wan Hee Tang, Venus Cheung, Pancham Shukla, Rahee Walambe, Ketan Kotecha

2022Journal of Imaging14 citationsDOIOpen Access PDF

Abstract

Self-supervised learning approaches have seen success transferring between similar medical imaging datasets, however there has been no large scale attempt to compare the transferability of self-supervised models against each other on medical images. In this study, we compare the generalisability of seven self-supervised models, two of which were trained in-domain, against supervised baselines across eight different medical datasets. We find that ImageNet pretrained self-supervised models are more generalisable than their supervised counterparts, scoring up to 10% better on medical classification tasks. The two in-domain pretrained models outperformed other models by over 20% on in-domain tasks, however they suffered significant loss of accuracy on all other tasks. Our investigation of the feature representations suggests that this trend may be due to the models learning to focus too heavily on specific areas.

Topics & Concepts

Computer scienceTransferabilityArtificial intelligenceMachine learningDomain (mathematical analysis)Transfer of learningSupervised learningFeature (linguistics)Focus (optics)Medical imagingPattern recognition (psychology)Artificial neural networkMathematicsPhilosophyLinguisticsPhysicsMathematical analysisLogitOpticsDomain Adaptation and Few-Shot LearningAI in cancer detectionCOVID-19 diagnosis using AI