BDCC, Vol. 10, Pages 16: AI-Enabled Diagnosis Using YOLOv9: Leveraging X-Ray Image Analysis in Dentistry
Big Data and Cognitive Computing doi: 10.3390/bdcc10010016
Authors:
Dhiaa Musleh
Atta Rahman
Haya Almossaeed
Fay Balhareth
Ghadah Alqahtani
Norah Alobaidan
Jana Altalag
May Issa Aldossary
Fahd Alhaidari
Artificial Intelligence (AI)-enabled diagnosis has emerged as a promising avenue for revolutionizing medical image analysis, such as X-ray analysis, across a wide range of healthcare disciplines, including dentistry, consequently offering swift, efficient, and accurate solutions for identifying various dental conditions. In this study, we investigated the application of the YOLOv9 model, a cutting-edge object detection algorithm, to automate the diagnosis of dental diseases from X-ray images. The proposed methodology encompasses a comprehensive analysis of dental datasets, as well as preprocessing and model training. Through rigorous experimentation, remarkable accuracy, precision, recall, mAP@50, and an F1-score of 84.89%, 89.2%, 86.9%, 89.2%, and 88%, respectively, are achieved. With significant improvements over the baseline model of 17.9%, 15.8%, 18.5%, and 16.81% in precision, recall, mAP@50, and F1-score, respectively, with 7.9 ms inference time. This demonstrates the effectiveness of the proposed approach in accurately identifying dental conditions. Additionally, we discuss the challenges in automated diagnosis of dental diseases and outline future research directions to address knowledge gaps in this domain. This study contributes to the growing body of literature on AI in dentistry, providing valuable insights for researchers and practitioners.
Source link
Dhiaa Musleh www.mdpi.com

