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Demonstrating Clinical Impact for AI Interventions
1
Zitationen
5
Autoren
2023
Jahr
Abstract
Over recent years, tremendous progress has been made in the development of AI applications for healthcare. To demonstrate potential benefit to patients and the healthcare system, robust clinical evaluation should be carried out to generate the necessary evidence that AI systems are safe, accurate, and effective. Clinical studies should be designed with that intended impact in mind, and reported according to the relevant reporting standards. Several AI-specific reporting standards, including SPIRIT-AI, CONSORT-AI, STARD-AI, TRIPOD-AI, and DECIDE-AI, have been specifically developed, or are in the process of being developed, for clinical AI studies.
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