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Poster
in
Workshop: Red Teaming GenAI: What Can We Learn from Adversaries?

MedAIScout: Automated Retrieval of Known Machine Learning Vulnerabilities in Medical Applications

Athish Pranav Dharmalingam · Gargi Mitra

Keywords: [ ML-enabled medical device ] [ medical device security ] [ automated information retrieval ] [ ML attacks ] [ AI red-teaming ]


Abstract:

Machine learning (ML)-enabled medical devices are transforming the healthcare industry but are vulnerable to adversarial attacks that can compromise their safety. Current red teaming efforts often overlook these ML-specific threats, leaving devices exposed. To address this, we present MedAIScout, a semi-automated tool designed to retrieve information on known ML vulnerabilities relevant to ML-enabled medical devices. Through case studies on five FDA-approved ML-enabled devices, we demonstrate that MedAIScout effectively identifies relevant vulnerabilities, significantly aiding red teaming efforts

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