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AI vs FRCR: What it means for the future
1
Zitationen
4
Autoren
2023
Jahr
Abstract
A recent work by Shelmerdine et al. was published in the Christmas edition of the BMJ. The authors were inspired by George Hinton's statement that artificial intelligence (AI) would supersede radiologists, and ventured to investigate whether the AI software Milvue Suite which had been trained on a few hundred thousand chest and musculoskeletal x-rays, could pass the rapid reporting section of the FRCR - an exam which must be passed in order to practice as a consultant radiologist in the UK. This brief comment sums up the company's opinions and perspective from the practical AI developmental angle and also its translation into a commercially viable and clinically useful tool. Hoping this will provide a fair and balanced view of the role of AI in radiology.
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