Eduardo Duarte Caleme, Lucia Cevidanes, Claudia Mattos, Felicia Miranda, Marcela Gurgel, Selene Barone, Alban Gaydamour, Enzo Tulissi, Jeanne Claret, Gaelle Leroux, Alexandre Moro, João Gonçalves, Antônio Ruellas, Marina Morettin Zuperlari, Paulo Zupelari Gonçalves, Nina Hsu, Larry Wolford, Juan Prieto, Jonas Bianchi
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Aligning MRI and CBCT for Advanced TMJ Diagnostics: Case Series Using AI-Powered Registration in Dentistry and Orthodontics.
This study demonstrates the functionality and clinical value of magnetic resonance imaging (MRI) to cone-beam computed tomography (CBCT) registration using a new open-source artificial intelligence (AI) model called MR2CBCT. We present five clinical cases in which the AI-based method was used to register CBCT and MRI images. For comparison, manual registration was also performed. Qualitative inspection revealed that manual alignment often showed errors that could compromise diagnostic accuracy. In contrast, the AI-based approach consistently corrected these discrepancies, producing more anatomically coherent fused images to better support clinical decision-making. Our findings highlight MR2CBCT as a reliable and accessible tool for multimodal integration in temporomandibular joint (TMJ) assessment in orthodontics and general dentistry.
期刊介绍:
Each issue provides up-to-date, state-of-the-art information on a single topic in orthodontics. Readers are kept abreast of the latest innovations, research findings, clinical applications and clinical methods. Collection of the issues will provide invaluable reference material for present and future review.