2017
DOI: 10.1109/tmi.2017.2693182
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MRI-Based Medial Axis Extraction and Boundary Segmentation of Cranial Nerves Through Discrete Deformable 3D Contour and Surface Models

Abstract: This paper presents a segmentation technique to identify the medial axis and the boundary of cranial nerves. We utilize a 3-D deformable one-simplex discrete contour model to extract the medial axis of each cranial nerve. This contour model represents a collection of two-connected vertices linked by edges, where vertex position is determined by a Newtonian expression for vertex kinematics featuring internal and external forces, the latter of which include attractive forces toward the nerve medial axis. We expl… Show more

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Cited by 13 publications
(7 citation statements)
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References 31 publications
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“…16,[22][23][24] Other model-based segmentation approaches include deformable model-based segmentations that initialize a deformable model into the image to be segmented and then the segmentation proceeds by deforming the initial model using image-specific knowledge. 25,26 These model-based methods require fine-tuned parameters for every structure to be segmented, and are sensitive to structures and image quality variations. Learning-based models train a classifier or regressor from a pool of training image.…”
Section: Introductionmentioning
confidence: 99%
“…16,[22][23][24] Other model-based segmentation approaches include deformable model-based segmentations that initialize a deformable model into the image to be segmented and then the segmentation proceeds by deforming the initial model using image-specific knowledge. 25,26 These model-based methods require fine-tuned parameters for every structure to be segmented, and are sensitive to structures and image quality variations. Learning-based models train a classifier or regressor from a pool of training image.…”
Section: Introductionmentioning
confidence: 99%
“…Nevertheless, the combination of geometric modeling and image processing techniques is highly required to acquire the most extraordinary outcomes, which has been still received the interest and never ceased to draw public attention among community of researchers. Sharmin et al [41] presented a method to analyze and extract the boundary of the cranial nerve based on the segmentation technique on the MRI image data. Combining with the geometrical computation of minimal path in the medial axis extraction method and radius function along the path, the method identifies exactly the nerve shape and its surface model.…”
Section: Sinh's Methodsmentioning
confidence: 99%
“…Nevertheless, the Chan-Vese model is the highest performing technique and delivers comparable outputs to the LARW technique. In the same year, Sultana, Blatt, Gilles, Rashid, & Audette (2017) attempts to recognize the boundary of cranial nerves and the medial axis by segmenting the ten pairs of brainstem cranial nerves from CNIII (the oculomotor nerve) to CNXII (the Hypoglossal nerve). The dataset for training the model was MRI data but the methods employed were a medial axis identification algorithm and a 3D deformable 1-simplex discrete contour model.…”
Section: Related Workmentioning
confidence: 99%