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How reliable is artificial intelligence in the diagnosis of cholesteatoma on CT images?
1
Zitationen
10
Autoren
2024
Jahr
Abstract
AI is making rapid progress in imaging, with recent studies already showing remarkable performance in cholesteatoma diagnosis. The speed of technological development is promising. However, to ensure safe and effective implementation in clinical practice, further studies are needed to validate and standardise these AI models. Future research should focus not only on the diagnostic accuracy, but also on the robustness, reproducibility and clinical integration of these emerging technologies.
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