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Mandible segmentation from CT data for virtual surgical planning using an augmented two-stepped convolutional neural network
by
Raith, Stefan
, Pankert, Tobias
, Peters, Florian
, Hölzle, Frank
, Lee, Hyun
, Modabber, Ali
in
Accuracy
/ Artificial neural networks
/ Automation
/ Bones
/ Computed tomography
/ Computer Imaging
/ Computer Science
/ Data augmentation
/ Datasets
/ Health Informatics
/ High resolution
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Image segmentation
/ Imaging
/ Mandible - diagnostic imaging
/ Mandible - surgery
/ Medical imaging
/ Medicine
/ Medicine & Public Health
/ Neural networks
/ Neural Networks, Computer
/ Original
/ Original Article
/ Pattern Recognition and Graphics
/ Radiology
/ Semantics
/ Surgery
/ Tomography, X-Ray Computed
/ Transplants & implants
/ Vision
2023
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Mandible segmentation from CT data for virtual surgical planning using an augmented two-stepped convolutional neural network
by
Raith, Stefan
, Pankert, Tobias
, Peters, Florian
, Hölzle, Frank
, Lee, Hyun
, Modabber, Ali
in
Accuracy
/ Artificial neural networks
/ Automation
/ Bones
/ Computed tomography
/ Computer Imaging
/ Computer Science
/ Data augmentation
/ Datasets
/ Health Informatics
/ High resolution
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Image segmentation
/ Imaging
/ Mandible - diagnostic imaging
/ Mandible - surgery
/ Medical imaging
/ Medicine
/ Medicine & Public Health
/ Neural networks
/ Neural Networks, Computer
/ Original
/ Original Article
/ Pattern Recognition and Graphics
/ Radiology
/ Semantics
/ Surgery
/ Tomography, X-Ray Computed
/ Transplants & implants
/ Vision
2023
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Mandible segmentation from CT data for virtual surgical planning using an augmented two-stepped convolutional neural network
by
Raith, Stefan
, Pankert, Tobias
, Peters, Florian
, Hölzle, Frank
, Lee, Hyun
, Modabber, Ali
in
Accuracy
/ Artificial neural networks
/ Automation
/ Bones
/ Computed tomography
/ Computer Imaging
/ Computer Science
/ Data augmentation
/ Datasets
/ Health Informatics
/ High resolution
/ Humans
/ Image Processing, Computer-Assisted - methods
/ Image segmentation
/ Imaging
/ Mandible - diagnostic imaging
/ Mandible - surgery
/ Medical imaging
/ Medicine
/ Medicine & Public Health
/ Neural networks
/ Neural Networks, Computer
/ Original
/ Original Article
/ Pattern Recognition and Graphics
/ Radiology
/ Semantics
/ Surgery
/ Tomography, X-Ray Computed
/ Transplants & implants
/ Vision
2023
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Mandible segmentation from CT data for virtual surgical planning using an augmented two-stepped convolutional neural network
Journal Article
Mandible segmentation from CT data for virtual surgical planning using an augmented two-stepped convolutional neural network
2023
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Overview
Purpose
For computer-aided planning of facial bony surgery, the creation of high-resolution 3D-models of the bones by segmenting volume imaging data is a labor-intensive step, especially as metal dental inlays or implants cause severe artifacts that reduce the quality of the computer-tomographic imaging data. This study provides a method to segment accurate, artifact-free 3D surface models of mandibles from CT data using convolutional neural networks.
Methods
The presented approach cascades two independently trained 3D-U-Nets to perform accurate segmentations of the mandible bone from full resolution CT images. The networks are trained in different settings using three different loss functions and a data augmentation pipeline. Training and evaluation datasets consist of manually segmented CT images from 307 dentate and edentulous individuals, partly with heavy imaging artifacts. The accuracy of the models is measured using overlap-based, surface-based and anatomical-curvature-based metrics.
Results
Our approach produces high-resolution segmentations of the mandibles, coping with severe imaging artifacts in the CT imaging data. The use of the two-stepped approach yields highly significant improvements to the prediction accuracies. The best models achieve a Dice coefficient of 94.824% and an average surface distance of 0.31 mm on our test dataset.
Conclusion
The use of two cascaded U-Net allows high-resolution predictions for small regions of interest in the imaging data. The proposed method is fast and allows a user-independent image segmentation, producing objective and repeatable results that can be used in automated surgical planning procedures.
Publisher
Springer International Publishing,Springer Nature B.V
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