Deep learning‐based automatic segmentation of bone graft material after maxillary sinus augmentation

Author:

Tao Baoxin12345ORCID,Xu Jiangchang6,Gao Jie12345,He Shamin12345,Jiang Shuanglin6,Wang Feng12345,Chen Xiaojun6,Wu Yiqun12345

Affiliation:

1. Department of Second Dental Center Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine Shanghai China

2. College of Stomatology Shanghai Jiao Tong University Shanghai China

3. National Center for Stomatology Shanghai China

4. National Clinical Research Center for Oral Diseases Shanghai China

5. Shanghai Key Laboratory of Stomatology Shanghai China

6. Institute of Biomedical Manufacturing and Life Quality Engineering, State Key Laboratory of Mechanical System and Vibration, School of Mechanical Engineering Shanghai Jiao Tong University Shanghai China

Abstract

AbstractObjectivesTo investigate the accuracy and reliability of deep learning in automatic graft material segmentation after maxillary sinus augmentation (SA) from cone‐beam computed tomography (CBCT) images.Materials and MethodsOne hundred paired CBCT scans (a preoperative scan and a postoperative scan) were collected and randomly allocated to training (n = 82) and testing (n = 18) subsets. The ground truths of graft materials were labeled by three observers together (two experienced surgeons and a computer engineer). A deep learning model including a 3D V‐Net and a 3D Attention V‐Net was developed. The overall performance of the model was assessed through the testing data set. The comparative accuracy and inference time consumption of the model‐driven and manual segmentation (by two surgeons with 3 years of experience in dental implant surgery) were conducted on 10 CBCT scans from the test samples.ResultsThe deep learning model had a Dice coefficient (Dice) of 90.36 ± 2.53%, a 95% Hausdorff distance (HD) of 1.59 ± 0.82 mm, and an average surface distance (ASD) of 0.38 ± 0.11 mm. The proposed model only needed 7.2 s, while the surgeon took 19.15 min on average to complete a segmentation task. The overall performances of the model were significantly superior to those of surgeons.ConclusionsThe proposed deep learning model yielded a more accurate and efficient performance of automatic segmentation of graft material after SA than that of the two surgeons. The proposed model could facilitate a powerful system for volumetric change evaluation, dental implant planning, and digital dentistry.

Publisher

Wiley

Subject

Oral Surgery

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