Litcius/Paper detail

AI in Radiology: Navigating Medical Responsibility

Maria Teresa Contaldo, Giovanni Pasceri, G. Vignati, Laura Bracchi, Sonia Triggiani, Gianpaolo Carrafiello

2024Diagnostics38 citationsDOIOpen Access PDF

Abstract

The application of Artificial Intelligence (AI) facilitates medical activities by automating routine tasks for healthcare professionals. AI augments but does not replace human decision-making, thus complicating the process of addressing legal responsibility. This study investigates the legal challenges associated with the medical use of AI in radiology, analyzing relevant case law and literature, with a specific focus on professional liability attribution. In the case of an error, the primary responsibility remains with the physician, with possible shared liability with developers according to the framework of medical device liability. If there is disagreement with the AI's findings, the physician must not only pursue but also justify their choices according to prevailing professional standards. Regulations must balance the autonomy of AI systems with the need for responsible clinical practice. Effective use of AI-generated evaluations requires knowledge of data dynamics and metrics like sensitivity and specificity, even without a clear understanding of the underlying algorithms: the opacity (referred to as the "black box phenomenon") of certain systems raises concerns about the interpretation and actual usability of results for both physicians and patients. AI is redefining healthcare, underscoring the imperative for robust liability frameworks, meticulous updates of systems, and transparent patient communication regarding AI involvement.

Topics & Concepts

LiabilityAutonomyProcess (computing)UsabilityHealth careKnowledge managementLegal liabilityComputer sciencePsychologyMedicinePolitical scienceLawHuman–computer interactionOperating systemArtificial Intelligence in Healthcare and EducationMedical Malpractice and Liability IssuesAutopsy Techniques and Outcomes