Segmentation and accurate identification of large carious lesions on high quality x-ray images based on Attentional U-Net model. A proof of concept study

Author:

Li Wei123,Zhu Xueyan4ORCID,Wang Xiaochun1,Wang Fei235,Liu Junyan235ORCID,Chen Mingjun35,Wang Yang35ORCID,Yue Honghao35ORCID

Affiliation:

1. Department of Stomatology, Fourth Affiliated Hospital of Harbin Medical University, Harbin 150001, China

2. HIT Wuhu Robot Technology Research Institute, Wuhu 241000, People’s Republic of China

3. School of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150001, People’s Republic of China

4. School of Technology, Beijing Forestry University, Beijing 100083, China

5. State Key Laboratory of Robotics and System (HIT), Harbin 150001, People’s Republic of China

Abstract

Dental caries is a bacterial infectious disease that destroys the structure of teeth. It is one of the main diseases that endanger human health [R. H. Selwitz, A. I. Ismail, and N. B. Pitts, Lancet 369(9555), 51–59 (2007)]. At present, dentists use both visual exams and radiographs for the detection of caries. Affected by the patient's dental health and the degree of caries demineralization, it is sometimes difficult to accurately identify some dental caries in x-ray images with the naked eye. Therefore, dentists need an intelligent and accurate dental caries recognition system to assist diagnosis, reduce the influence of doctors' subjective factors, and improve the efficiency of dental caries diagnosis. Therefore, this paper combines the U-Net model verified in the field of biomedical image segmentation with the convolution block attention module, designs an Attention U-Net model for caries image segmentation, and discusses the feasibility of deep learning technology in caries image recognition so as to prepare for the next clinical verification. After testing, the Dice similarity coefficient, mean pixel accuracy, mean intersection over union, and frequency-weighted intersection over the union of teeth segmentation with Attention U-Net are 95.30%, 94.46%, 93.10%, and 93.54%, respectively. The Dice similarity coefficient, mean pixel accuracy, mean intersection over union, and frequency-weighted intersection over the union of dental caries segmentation with Attention U-Net are 85.36%, 91.84%, 82.22%, and 97.08%, respectively. As a proof of concept study, this study was an initial evaluation of technology to assist dentists in the detection of caries. There is still more work needed before this can be used clinically.

Funder

National Postdoctoral Program for Innovative Talents

China Postdoctoral Science Foundation

Heilongjiang Postoral fund

Aeronautical Science Foundation of China

National science foundation of Heilongjiang province

The fourth affliated hospital of harbin medical university

National natural science foundation of china

Self-planned task of state key lab. of robotics and system, the programme of introducing talents of discipline of university

HIT Wuhu Robot Technology Research Institute

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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