Cargando…

Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench

Segmentation is the process of isolating specific regions or objects within an imaged volume, so that further study can be undertaken on these areas of interest. When considering the analysis of complex biological systems, the segmentation of three-dimensional image data is a time consuming and labo...

Descripción completa

Detalles Bibliográficos
Autores principales: Darrow, Michele C., Luengo, Imanol, Basham, Mark, Spink, Matthew C., Irvine, Sarah, French, Andrew P., Ashton, Alun W., Duke, Elizabeth M.H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MyJove Corporation 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5614362/
https://www.ncbi.nlm.nih.gov/pubmed/28872144
http://dx.doi.org/10.3791/56162
_version_ 1783266396596076544
author Darrow, Michele C.
Luengo, Imanol
Basham, Mark
Spink, Matthew C.
Irvine, Sarah
French, Andrew P.
Ashton, Alun W.
Duke, Elizabeth M.H.
author_facet Darrow, Michele C.
Luengo, Imanol
Basham, Mark
Spink, Matthew C.
Irvine, Sarah
French, Andrew P.
Ashton, Alun W.
Duke, Elizabeth M.H.
author_sort Darrow, Michele C.
collection PubMed
description Segmentation is the process of isolating specific regions or objects within an imaged volume, so that further study can be undertaken on these areas of interest. When considering the analysis of complex biological systems, the segmentation of three-dimensional image data is a time consuming and labor intensive step. With the increased availability of many imaging modalities and with automated data collection schemes, this poses an increased challenge for the modern experimental biologist to move from data to knowledge. This publication describes the use of SuRVoS Workbench, a program designed to address these issues by providing methods to semi-automatically segment complex biological volumetric data. Three datasets of differing magnification and imaging modalities are presented here, each highlighting different strategies of segmenting with SuRVoS. Phase contrast X-ray tomography (microCT) of the fruiting body of a plant is used to demonstrate segmentation using model training, cryo electron tomography (cryoET) of human platelets is used to demonstrate segmentation using super- and megavoxels, and cryo soft X-ray tomography (cryoSXT) of a mammalian cell line is used to demonstrate the label splitting tools. Strategies and parameters for each datatype are also presented. By blending a selection of semi-automatic processes into a single interactive tool, SuRVoS provides several benefits. Overall time to segment volumetric data is reduced by a factor of five when compared to manual segmentation, a mainstay in many image processing fields. This is a significant savings when full manual segmentation can take weeks of effort. Additionally, subjectivity is addressed through the use of computationally identified boundaries, and splitting complex collections of objects by their calculated properties rather than on a case-by-case basis.
format Online
Article
Text
id pubmed-5614362
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher MyJove Corporation
record_format MEDLINE/PubMed
spelling pubmed-56143622017-10-10 Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench Darrow, Michele C. Luengo, Imanol Basham, Mark Spink, Matthew C. Irvine, Sarah French, Andrew P. Ashton, Alun W. Duke, Elizabeth M.H. J Vis Exp Basic Protocol Segmentation is the process of isolating specific regions or objects within an imaged volume, so that further study can be undertaken on these areas of interest. When considering the analysis of complex biological systems, the segmentation of three-dimensional image data is a time consuming and labor intensive step. With the increased availability of many imaging modalities and with automated data collection schemes, this poses an increased challenge for the modern experimental biologist to move from data to knowledge. This publication describes the use of SuRVoS Workbench, a program designed to address these issues by providing methods to semi-automatically segment complex biological volumetric data. Three datasets of differing magnification and imaging modalities are presented here, each highlighting different strategies of segmenting with SuRVoS. Phase contrast X-ray tomography (microCT) of the fruiting body of a plant is used to demonstrate segmentation using model training, cryo electron tomography (cryoET) of human platelets is used to demonstrate segmentation using super- and megavoxels, and cryo soft X-ray tomography (cryoSXT) of a mammalian cell line is used to demonstrate the label splitting tools. Strategies and parameters for each datatype are also presented. By blending a selection of semi-automatic processes into a single interactive tool, SuRVoS provides several benefits. Overall time to segment volumetric data is reduced by a factor of five when compared to manual segmentation, a mainstay in many image processing fields. This is a significant savings when full manual segmentation can take weeks of effort. Additionally, subjectivity is addressed through the use of computationally identified boundaries, and splitting complex collections of objects by their calculated properties rather than on a case-by-case basis. MyJove Corporation 2017-08-23 /pmc/articles/PMC5614362/ /pubmed/28872144 http://dx.doi.org/10.3791/56162 Text en Copyright © 2017, Journal of Visualized Experiments http://creativecommons.org/licenses/by/3.0/us/ This is an open-access article distributed under the terms of the Creative Commons Attribution 3.0 License. To view a copy of this license, visithttp://creativecommons.org/licenses/by/3.0/us/
spellingShingle Basic Protocol
Darrow, Michele C.
Luengo, Imanol
Basham, Mark
Spink, Matthew C.
Irvine, Sarah
French, Andrew P.
Ashton, Alun W.
Duke, Elizabeth M.H.
Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title_full Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title_fullStr Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title_full_unstemmed Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title_short Volume Segmentation and Analysis of Biological Materials Using SuRVoS (Super-region Volume Segmentation) Workbench
title_sort volume segmentation and analysis of biological materials using survos (super-region volume segmentation) workbench
topic Basic Protocol
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5614362/
https://www.ncbi.nlm.nih.gov/pubmed/28872144
http://dx.doi.org/10.3791/56162
work_keys_str_mv AT darrowmichelec volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT luengoimanol volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT bashammark volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT spinkmatthewc volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT irvinesarah volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT frenchandrewp volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT ashtonalunw volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench
AT dukeelizabethmh volumesegmentationandanalysisofbiologicalmaterialsusingsurvossuperregionvolumesegmentationworkbench