A semi-automated assessment tool for craniofacial landmarks in CBCT: InVivo7 software.
Authors
Affiliations (3)
Affiliations (3)
- Department of Social and Preventive Dentistry (PRECOM); Boulevard Vinte e Oito de Setembro, 157, 2nd floor, Vila Isabel, Rio de Janeiro RJ; Brazil, 20.551-030. Electronic address: [email protected].
- Department of Social and Preventive Dentistry (PRECOM); Boulevard Vinte e Oito de Setembro, 157, 2nd floor, Vila Isabel, Rio de Janeiro RJ; Brazil, 20.551-030.
- Department of Orthodontics; 155 5th St, San Francisco, California, United States; 94103.
Abstract
This study describes and evaluates the functionality of the InVivo7 3D imaging software as a semi-automated tool for identifying craniofacial landmarks in CBCT scans. AI-assisted landmark tracing in InVivo7 was used to automatically identify anatomical points in CBCT images. Each landmark was manually verified by a skilled evaluator to ensure accurate and reliable results, particularly for soft tissue markers and dental measurements, which often presented challenges for AI detection. The study utilized a standardized cephalometric analysis to compare the software's performance. The evaluation included assessing the software's ability to recognize skeletal, dental, and soft tissue structures accurately. The semi-automated AI-assisted algorithm showed high precision in landmark identification. Manual verification confirmed its reliability and allowed the creation of a customized automated configuration for orthodontic diagnosis and treatment outcome evaluation. Specific clinical measures, such as the facial plane angle and molar relationships, were calculated using established formulas, allowing the software to categorize molar relationship classes (Angle Class I, II, III). InVivo7 presents a reliable and efficient tool for craniofacial landmark analysis, enhancing diagnostic accuracy while reducing manual labor. However, ongoing validation and software updates are essential to fully optimize its clinical applicability and ensure consistent performance across diverse patient populations. Future developments should focus on refining AI algorithms to improve soft tissue landmark detection and expanding datasets to enhance the robustness of automated analyses. Rule-based automated algorithm CBCT craniofacial landmark detection using InVivo7 provides accurate, reproducible measurements, reducing manual workload and enhancing orthodontic diagnostic efficiency. Its integration into clinical practice supports standardized assessments, streamlining treatment planning.