A hybrid mask RCNN-based tool to localize dental cavities from real-time mixed photographic images

Author:

Rashid Umer1ORCID,Javid Aiman1,Khan Abdur Rehman1ORCID,Liu Leo2,Ahmed Adeel1,Khalid Osman3,Saleem Khalid1,Meraj Shaista4,Iqbal Uzair5,Nawaz Raheel2ORCID

Affiliation:

1. Department of Computer Science, Quaid-e-Azam University, Islamabad, Pakistan

2. School of Business and Law, The Manchester Metropolitan University, Manchester, United Kingdom

3. Department of Computer Science, COMSATS University, Islamabad, Pakistan

4. Department of Radiology, Bolton NHS Foundation Trust, Bolton, United Kingdom

5. Department of Computer Science, National University of Computer and Emerging Sciences, Islamabad Chiniot-Faisalabad, Pakistan

Abstract

Nearly 3.5 billion humans have oral health issues, including dental caries, which requires dentist-patient exposure in oral examinations. The automated approaches identify and locate carious regions from dental images by localizing and processing either colored photographs or X-ray images taken via specialized dental photography cameras. The dentists’ interpretation of carious regions is difficult since the detected regions are masked using solid coloring and limited to a particular dental image type. The software-based automated tools to localize caries from dental images taken via ordinary cameras requires further investigation. This research provided a mixed dataset of dental photographic (colored or X-ray) images, instantiated a deep learning approach to enhance the existing dental image carious regions’ localization procedure, and implemented a full-fledged tool to present carious regions via simple dental images automatically. The instantiation mainly exploits the mixed dataset of dental images (colored photographs or X-rays) collected from multiple sources and pre-trained hybrid Mask RCNN to localize dental carious regions. The evaluations performed by the dentists showed that the correctness of annotated datasets is up to 96%, and the accuracy of the proposed system is between 78% and 92%. Moreover, the system achieved the overall satisfaction level of dentists above 80%.

Publisher

PeerJ

Subject

General Computer Science

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