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In Journal of the American College of Radiology : JACR

The multitude of artificial intelligence (AI)-based solutions, vendors, and platforms poses a challenging proposition to an already complex clinical radiology practice. Apart from assessing and ensuring acceptable local performance and workflow fit to improve imaging services, AI tools require multiple stakeholders, including clinical, technical, and financial, who collaborate to move potential deployable applications to full clinical deployment in a structured and efficient manner. Postdeployment monitoring and surveillance of such tools require an infrastructure that ensures proper and safe use. Herein, the authors describe their experience and framework for implementing and supporting the use of AI applications in radiology workflow.

Bizzo Bernardo C, Dasegowda Giridhar, Bridge Christopher, Miller Benjamin, Hillis James M, Kalra Mannudeep K, Durniak Kimberly, Stout Markus, Schultz Thomas, Alkasab Tarik, Dreyer Keith J

2023-Mar

Artificial intelligence, deployment, implementation, machine learning, radiology