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Revista Cubana de Estomatología

On-line version ISSN 1561-297X

Abstract

SUAZO GALDAMES, Iván. Applications of Artificial Intelligence in Dentomaxillofacial Diagnosis. Rev Cubana Estomatol [online]. 2024, vol.61  Epub Apr 10, 2024. ISSN 1561-297X.

Introduction:

The introduction of applications driven by artificial intelligence is revolutionizing dentomaxillofacial imaging.

Objectives:

Describe the current state of the applications of artificial intelligence in dentomaxillofacial diagnosis, evaluate its impact, and identify future directions for research and implementation.

Method

: A narrative review was carried out using systematic searches in databases such as PubMed, Google Scholar, IEEE Xplore, among others. The study focused on articles published from 2010 to the present. Research that applies artificial intelligence technologies in dentomaxillofacial diagnosis was included and its quality and relevance were evaluated using established tools.

Results:

Artificial intelligence, especially deep learning, has shown significant improvements in image segmentation, disease detection, and treatment planning in dentomaxillofacial imaging. Artificial intelligence techniques have allowed the automation of image analysis tasks, improving efficiency and diagnostic accuracy.

Conclusions:

Artificial intelligence has significant potential to revolutionize dentomaxillofacial imaging, as it offers improvements in diagnostic accuracy, efficiency in image interpretation, and treatment planning. Further research is needed to overcome technical, ethical, and privacy challenges and validate the clinical applicability of these technologies.

Keywords : artificial intelligence; diagnostic imaging; radiology; X-ray computed tomography machines; deep learning.

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