RAISE -- Radiology AI Safety, an End-to-end lifecycle approach
M. Jorge Cardoso, Julia Moosbauer, Tessa S. Cook, B. Selnur Erdal,, Brad Genereaux, Vikash Gupta, Bennett A. Landman, Tiarna Lee, Parashkev, Nachev, Elanchezhian Somasundaram, Ronald M. Summers, Khaled Younis,, Sebastien Ourselin, Franz MJ Pfister

TL;DR
This paper presents a comprehensive lifecycle approach to ensure the safety, effectiveness, and reliability of AI systems in radiology through rigorous evaluation, continuous monitoring, and stakeholder collaboration.
Contribution
It introduces an end-to-end framework for AI safety in radiology, emphasizing multi-level quality assurance and stakeholder engagement for responsible deployment.
Findings
Implementation of pre-deployment validation standards
Continuous post-deployment monitoring for data drift and fairness
Emphasis on stakeholder collaboration for AI safety
Abstract
The integration of AI into radiology introduces opportunities for improved clinical care provision and efficiency but it demands a meticulous approach to mitigate potential risks as with any other new technology. Beginning with rigorous pre-deployment evaluation and validation, the focus should be on ensuring models meet the highest standards of safety, effectiveness and efficacy for their intended applications. Input and output guardrails implemented during production usage act as an additional layer of protection, identifying and addressing individual failures as they occur. Continuous post-deployment monitoring allows for tracking population-level performance (data drift), fairness, and value delivery over time. Scheduling reviews of post-deployment model performance and educating radiologists about new algorithmic-driven findings is critical for AI to be effective in clinical…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Radiology practices and education · Radiation Dose and Imaging
MethodsSparse Evolutionary Training · Focus
