2023
DOI: 10.1111/clr.14221
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Deep learning‐based automatic segmentation of bone graft material after maxillary sinus augmentation

Baoxin Tao,
Jiangchang Xu,
Jie Gao
et al.

Abstract: ObjectivesTo 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… Show more

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