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ChatGPT in radiology: A systematic review of performance, pitfalls, and future perspectives
95
Zitationen
9
Autoren
2024
Jahr
Abstract
Although ChatGPT's effectiveness has been shown in 84.1% of radiology studies, there are still multiple pitfalls and limitations to address. It is too soon to confirm its complete proficiency and accuracy, and more extensive multicenter studies utilizing diverse datasets and pre-training techniques are required to verify ChatGPT's role in radiology.
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