Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.

This article presents a semi-automatic method for segmentation and reconstruction of freehand three-dimensional (3D) ultrasound data. The method incorporates a number of interesting features within the level-set framework: First, segmentation is carried out using region competition, requiring multip...

Disgrifiad llawn

Manylion Llyfryddiaeth
Prif Awduron: Gooding, M, Kennedy, S, Noble, J
Fformat: Journal article
Iaith:English
Cyhoeddwyd: 2008
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author Gooding, M
Kennedy, S
Noble, J
author_facet Gooding, M
Kennedy, S
Noble, J
author_sort Gooding, M
collection OXFORD
description This article presents a semi-automatic method for segmentation and reconstruction of freehand three-dimensional (3D) ultrasound data. The method incorporates a number of interesting features within the level-set framework: First, segmentation is carried out using region competition, requiring multiple distinct and competing regions to be encoded within the framework. This region competition uses a simple dot-product based similarity measure to compare intensities within each region. In addition, segmentation and surface reconstruction is performed within the 3D domain to take advantage of the additional spatial information available. This means that the method must interpolate the surface where there are gaps in the data, a feature common to freehand 3D ultrasound reconstruction. Finally, although the level-set method is restricted to a voxel grid, no assumption is made that the data being segmented will conform to this grid and may be segmented in its world-reference position. The volume reconstruction method is demonstrated in vivo for the volume measurement of ovarian follicles. The 3D reconstructions produce a lower error variance than the current clinical measurement based on a mean diameter estimated from two-dimensional (2D) images. However, both the clinical measurement and the semi-automatic method appear to underestimate the true follicular volume.
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spelling oxford-uuid:25491aeb-892d-461e-8deb-990af0b1dc9a2022-03-26T11:54:49ZVolume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:25491aeb-892d-461e-8deb-990af0b1dc9aEnglishSymplectic Elements at Oxford2008Gooding, MKennedy, SNoble, JThis article presents a semi-automatic method for segmentation and reconstruction of freehand three-dimensional (3D) ultrasound data. The method incorporates a number of interesting features within the level-set framework: First, segmentation is carried out using region competition, requiring multiple distinct and competing regions to be encoded within the framework. This region competition uses a simple dot-product based similarity measure to compare intensities within each region. In addition, segmentation and surface reconstruction is performed within the 3D domain to take advantage of the additional spatial information available. This means that the method must interpolate the surface where there are gaps in the data, a feature common to freehand 3D ultrasound reconstruction. Finally, although the level-set method is restricted to a voxel grid, no assumption is made that the data being segmented will conform to this grid and may be segmented in its world-reference position. The volume reconstruction method is demonstrated in vivo for the volume measurement of ovarian follicles. The 3D reconstructions produce a lower error variance than the current clinical measurement based on a mean diameter estimated from two-dimensional (2D) images. However, both the clinical measurement and the semi-automatic method appear to underestimate the true follicular volume.
spellingShingle Gooding, M
Kennedy, S
Noble, J
Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title_full Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title_fullStr Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title_full_unstemmed Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title_short Volume segmentation and reconstruction from freehand three-dimensional ultrasound data with application to ovarian follicle measurement.
title_sort volume segmentation and reconstruction from freehand three dimensional ultrasound data with application to ovarian follicle measurement
work_keys_str_mv AT goodingm volumesegmentationandreconstructionfromfreehandthreedimensionalultrasounddatawithapplicationtoovarianfolliclemeasurement
AT kennedys volumesegmentationandreconstructionfromfreehandthreedimensionalultrasounddatawithapplicationtoovarianfolliclemeasurement
AT noblej volumesegmentationandreconstructionfromfreehandthreedimensionalultrasounddatawithapplicationtoovarianfolliclemeasurement