Nonrobust features in biomedical images improve in-distribution accuracy on MedMNIST tasks but degrade performance on shifted data like MedMNIST-C, while robust models show the opposite pattern.
Useful nonrobust features are ubiquitous in biomedical images
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abstract
We study whether deep networks for medical imaging learn useful nonrobust features - predictive input patterns that are not human interpretable and highly susceptible to small adversarial perturbations - and how these features impact test performance. We show that models trained only on nonrobust features achieve well above chance accuracy across five MedMNIST classification tasks, confirming their predictive value in-distribution. Conversely, adversarially trained models that primarily rely on robust features sacrifice in-distribution accuracy but yield markedly better performance under controlled distribution shifts (MedMNIST-C). Overall, nonrobust features boost standard accuracy yet degrade out-of-distribution performance, revealing a practical robustness-accuracy trade-off in medical imaging classification tasks that should be tailored to the requirements of the deployment setting.
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Useful nonrobust features are ubiquitous in biomedical images
Nonrobust features in biomedical images improve in-distribution accuracy on MedMNIST tasks but degrade performance on shifted data like MedMNIST-C, while robust models show the opposite pattern.