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What is the role of AI-driven automation in static surgical guide design? A scoping review

Maria Fernanda Silva Andrade‐Bortoletto, Xijin Du, Eslam Abdelwahab Dawood, Oana Elena Burlacu Vatamanu, Mihai Tarce, Rocharles Cavalcante Fontenele, Deborah Queiroz Freitas, Reinhilde Jacobs

2025Journal of Dentistry6 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: This scoping review aims to evaluate the extent of artificial intelligence (AI)- driven automation currently available for designing static surgical guides (SG) for implant placement and its correlation with implant placement accuracy. METHODS: A comprehensive literature search was conducted across PubMed, Scopus, Web of Science, Embase, Cochrane Library, and grey literature up to February 2025. Two reviewers independently screened 518 English-language articles, selecting 140 for eligibility evaluation. After applying exclusion criteria, seven studies were included for full-text review. The SG planning process was classified as manual, semi-automated, or fully automated driven by AI. Implant placement accuracy was assessed based on linear (cervical and apical) and angular deviations, with a detailed review of measurement methods used. Additionally, a market survey was conducted to identify available SG design software, its key features, and the level of automation implemented for each design step. RESULTS: All included studies (n=7) employed a semi-automated software for SG design. The mean deviations in implant placement using SGs were 0.65 mm (0.22 to 1.19 mm) (linear-cervical), 0.95 mm (0.18 to 2.11 mm) (linear-apical), and 2.92° (0.77 to 6.35°) (angular). The software programs used were: coDiagnostiX™ software (Version 9.0, Dental Wings GmbH, Germany), Smop-software (version 2.7.0, Swissmeda AG, Switzerland), 3Shape Implant studio (Version 2021.1.2, 3Shape, Denmark), R2WARE™ (MegaGen implant, Korea), 3-Matic modelling software (Materialise, Belgium) and Blue Sky Plan 4.8 (Blue Sky Bio, USA). CONCLUSIONS: This scoping review found that most surgical guide planning software employs a semi-automated approach requiring human intervention, which has shown clinically acceptable implant placement accuracy. Fully automated (AI-based) designs were not yet validated scientifically.

Topics & Concepts

AutomationSoftwareComputer scienceEngineeringSystems engineeringSoftware toolSurgical proceduresSoftware engineeringSurgical planningMedicineDental Implant Techniques and OutcomesDental Radiography and ImagingScientific and Engineering Research Topics
What is the role of AI-driven automation in static surgical guide design? A scoping review | Litcius