Adversarial Attack Vulnerability of Medical Image Analysis Systems: Unexplored Factors
Gerda Bortsova, Cristina Gonz\'alez-Gonzalo, Suzanne C. Wetstein,, Florian Dubost, Ioannis Katramados, Laurens Hogeweg, Bart Liefers, Bram van, Ginneken, Josien P.W. Pluim, Mitko Veta, Clara I. S\'anchez, and Marleen de, Bruijne

TL;DR
This study investigates previously unexplored factors influencing the vulnerability of medical image analysis systems to adversarial attacks, focusing on black-box scenarios in ophthalmology, radiology, and pathology.
Contribution
It reveals how weight initialization and data differences affect attack transferability, providing new insights for enhancing MedIA security.
Findings
Pre-training increases attack transferability significantly.
Data differences between models reduce attack success.
Architecture differences further diminish attack effectiveness.
Abstract
Adversarial attacks are considered a potentially serious security threat for machine learning systems. Medical image analysis (MedIA) systems have recently been argued to be vulnerable to adversarial attacks due to strong financial incentives and the associated technological infrastructure. In this paper, we study previously unexplored factors affecting adversarial attack vulnerability of deep learning MedIA systems in three medical domains: ophthalmology, radiology, and pathology. We focus on adversarial black-box settings, in which the attacker does not have full access to the target model and usually uses another model, commonly referred to as surrogate model, to craft adversarial examples. We consider this to be the most realistic scenario for MedIA systems. Firstly, we study the effect of weight initialization (ImageNet vs. random) on the transferability of adversarial attacks…
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