AI-based segmentation of implants and crowns can improve pre-surgical planning for implants

Written By :  Dr. Shravani Dali
Medically Reviewed By :  Dr. Kamal Kant Kohli
Published On 2023-11-14 02:00 GMT   |   Update On 2023-11-14 05:35 GMT

AI-based segmentation of implants and crowns can improve pre-surgical planning for implants and post-operative assessment of peri-implant bone levels suggests a new study published in the Journal of DentistryA study was done to train and validate a cloud-based convolutional neural network (CNN) model for automated segmentation (AS) of dental implant and attached prosthetic crown on...

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AI-based segmentation of implants and crowns can improve pre-surgical planning for implants and post-operative assessment of peri-implant bone levels suggests a new study published in the Journal of Dentistry

A study was done to train and validate a cloud-based convolutional neural network (CNN) model for automated segmentation (AS) of dental implant and attached prosthetic crown on cone-beam computed tomography (CBCT) images.

A total dataset of 280 maxillomandibular jawbone CBCT scans was acquired from patients who underwent implant placement with or without coronal restoration. The dataset was randomly divided into three subsets: training set (n = 225), validation set (n = 25) and testing set (n = 30). A CNN model was developed and trained using expert-based semi-automated segmentation (SS) of the implant and attached prosthetic crown as the ground truth. The performance of AS was assessed by comparing with SS and manually corrected automated segmentation referred to as refined-automated segmentation (R-AS). Evaluation metrics included timing, voxel-wise comparison based on confusion matrix and 3D surface differences.

Results

The average time required for AS was 60 times faster (<30 s) than the SS approach. The CNN model was highly effective in segmenting dental implants both with and without coronal restoration, achieving a high dice similarity coefficient score of 0.92±0.02 and 0.91±0.03, respectively. Moreover, the root mean square deviation values were also found to be low (implant only: 0.08±0.09 mm, implant+restoration: 0.11±0.07 mm) when compared with R-AS, implying high AI segmentation accuracy.

The proposed cloud-based deep learning tool demonstrated high performance and time-efficient segmentation of implants on CBCT images.

Clinical significance

AI-based segmentation of implants and prosthetic crowns can minimize the negative impact of artifacts and enhance the generalizability of creating dental virtual models. Furthermore, incorporating the suggested tool into existing CNN models specialized for segmenting anatomical structures can improve pre-surgical planning for implants and post-operative assessment of peri‑implant bone levels.

Reference:

Bahaaeldeen M. Elgarba, Stijn Van Aelst, Abdullah Swaity, Nermin Morgan, Sohaib Shujaat, Reinhilde Jacobs. Deep learning-based segmentation of dental implants on cone-beam computed tomography images: A validation study, Journal of Dentistry, Volume 137,

2023, 104639, ISSN 0300-5712,https://doi.org/10.1016/j.jdent.2023.104639.

Keywords:

AI-based, segmentation, implants, crowns, can, improve, pre-surgical, planning, implants, post-operative, assessment, peri-implant bone levels, Journal of Dentistry, Artificial intelligence; Machine learning; Computer neural networks; Deep learning; Dental implant and cone-beam computed tomography

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Article Source : Journal of Dentistry

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