Optimization of Oral Rehabilitation: Use of Artificial Intelligence in the Manufacture of Protocol-Type Provisional Prostheses with Immediate Loading for Maxillae

Nascimento, Jaqueline Alves do and Lima, Jozely Francisca Mello and Castro, Daniel Sartorelli Marques de (2024) Optimization of Oral Rehabilitation: Use of Artificial Intelligence in the Manufacture of Protocol-Type Provisional Prostheses with Immediate Loading for Maxillae. Journal of Advances in Medicine and Medical Research, 36 (4). pp. 156-167. ISSN 2456-8899

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Abstract

The use of Large Language Model (LLM) technologies, such as Artificial Intelligence (AI) with Deep Learning and Machine Learning software, has become commonplace in surgical planning, enabling the capture, manipulation and digital planning of immediately loaded provisional prostheses for dental implants. Materials and Methods: this literature review a search was made for scientific articles in virtual databases: PUBMED, ScIELO, Google Scholar, LILACS, BVS, ResearchGate. Articles that were not part of dentistry were excluded based on the theme of the Abstract. The 28 articles pertinent to dentistry and the theme of the abstract were included and fully analyzed. The following were aligned and distributed in the literature review: systematic reviews, literature reviews, clinical cases, laboratory studies, books, theses and dissertations. Conclusion: The improvement of Artificial Intelligence in dentistry is enabling better planning and practical-surgical-prosthetic execution with the creation and printing of provisional prostheses with immediate loading, better retention, occlusal stability, less repair and a pleasant biopsychosocial sensation, since it eliminates instability due to the mechanical displacement of overdentures.

Item Type: Article
Subjects: STM Library > Medical Science
Depositing User: Managing Editor
Date Deposited: 23 Mar 2024 07:56
Last Modified: 23 Mar 2024 07:56
URI: http://open.journal4submit.com/id/eprint/3775

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