Artificial Intelligence for Root Canal Orifice Identification Using Dental Operating Microscope
Abstract
To evaluate the diagnostic performance of artificial intelligence (AI) in detecting root canal orifices using images captured with a dental operating microscope (DOM). A total of 80 human maxillary first and second molars were included in the study. After preparing traditional access cavities, root canal orifices were identified under a dental operating microscope (DOM) at 21.25× magnification. Following orifice identification, video recordings were obtained using the DOM, from which a total of 1527 frames were randomly selected for analysis. The root canal orifices in these frames were manually labelled using CranioCatch labeling software (CranioCatch, Eskişehir, Turkey). In the binary classification task, the system correctly identified 502 out of 526 root canal orifices, yielding an accuracy of 91%. The YOLO-based CNN demonstrated high accuracy and sensitivity in detecting root canal orifices from DOM images.
I Want to Write a Scientific Research Project
CranioCatch is a global leader in dental medical technology that improves oral care in the field of dentistry. With AI-supported clinical, educational, and labeling solutions, we provide significant improvements in the diagnosis and treatment of dental diseases using contemporary approaches in advanced machine learning technology.
CranioCatch serves thousands of patients with dental health issues worldwide every day with its innovative technologies. That’s why we eagerly look forward to meeting our valued dentists who wish to work in the field of 'Scientific Research in Dentistry'.



Contact Us

