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Artificial intelligence in endoscopy and colonoscopy: a comprehensive bibliometric analysis of global research trends
3
Zitationen
12
Autoren
2025
Jahr
Abstract
The bibliometric analysis highlights the rapid expansion and diversification of AI research in endoscopy and colonoscopy. Key clusters, such as "adenoma detection" and "polyp segmentation," underscore the field's shift toward real-time diagnostic improvements. As AI technologies become more integrated into clinical practice, they are set to improve diagnostic accuracy and patient outcomes in gastroenterology.
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