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On the role of deep learning model complexity in adversarial robustness for medical images
2022
BMC Medical Informatics and Decision Making
Background Deep learning (DL) models are highly vulnerable to adversarial attacks for medical image classification. An adversary could modify the input data in imperceptible ways such that a model could be tricked to predict, say, an image that actually exhibits malignant tumor to a prediction that it is benign. However, adversarial robustness of DL models for medical images is not adequately studied. DL in medicine is inundated with models of various complexity—particularly, very large models.
doi:10.1186/s12911-022-01891-w
pmid:35725429
pmcid:PMC9208111
fatcat:6jctdwquvvepbe6abge7rgemae