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NOT YET RECRUITING
NCT07505485
NA

Artificial Intelligence-Based Assessment of Endosseous Lesions

Sponsor: University of Bari Aldo Moro

View on ClinicalTrials.gov

Summary

Despite these advances, CBCT interpretation remains largely qualitative and dependent on the clinician's experience. Conventional evaluation is based on two-dimensional slices and linear measurements, which may underestimate lesion complexity and spatial distribution. Recent developments in Artificial Intelligence in Medicine have introduced automated image segmentation tools capable of identifying lesion boundaries and calculating volumetric data. These technologies allow a transition from subjective assessment to objective, reproducible quantification. The potential clinical advantages include: * Objective measurement of lesion size (volume in mm³) * Improved surgical planning * Enhanced prediction of anatomical involvement * Reduction of diagnostic errors * Standardization of follow-up and outcome assessment Therefore, the aim of the present study was to evaluate the clinical impact of AI-based segmentation and volumetric analysis of endosseous lesions compared to conventional CBCT interpretation.

Official title: Artificial Intelligence-Based Assessment of Endosseous Lesions: A Prospective Clinical Study

Key Details

Gender

All

Age Range

18 Years - 80 Years

Study Type

INTERVENTIONAL

Enrollment

10

Start Date

2026-03-01

Completion Date

2026-05-01

Last Updated

2026-04-01

Healthy Volunteers

Yes

Interventions

DIAGNOSTIC_TEST

AI assisted Evaluation

CBCT scans were processed using AI-based software capable of: * Automated segmentation of the lesion * 3D reconstruction * Volumetric calculation