Segmentation of 3D images of plant tissues at multiple scales using the level set method
Abstract Background Developmental biology has made great strides in recent years towards the quantification of cellular properties during development. This requires tissues to be imaged and segmented to generate computerised versions that can be easily analysed. In this context, one of the principal...
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doaj-5986d256a3a6400d932359d970e8313b2020-11-25T00:45:51ZengBMCPlant Methods1746-48112017-12-0113111110.1186/s13007-017-0264-5Segmentation of 3D images of plant tissues at multiple scales using the level set methodAnnamária Kiss0Typhaine Moreau1Vincent Mirabet2Cerasela Iliana Calugaru3Arezki Boudaoud4Pradeep Das5Laboratoire Reproduction et Développement des Plantes, Univ Lyon, UCB Lyon 1, ENS de Lyon, CNRS, INRALaboratoire Reproduction et Développement des Plantes, Univ Lyon, UCB Lyon 1, ENS de Lyon, CNRS, INRALaboratoire Reproduction et Développement des Plantes, Univ Lyon, UCB Lyon 1, ENS de Lyon, CNRS, INRACentre Blaise Pascal, ENS de LyonLaboratoire Reproduction et Développement des Plantes, Univ Lyon, UCB Lyon 1, ENS de Lyon, CNRS, INRALaboratoire Reproduction et Développement des Plantes, Univ Lyon, UCB Lyon 1, ENS de Lyon, CNRS, INRAAbstract Background Developmental biology has made great strides in recent years towards the quantification of cellular properties during development. This requires tissues to be imaged and segmented to generate computerised versions that can be easily analysed. In this context, one of the principal technical challenges remains the faithful detection of cellular contours, principally due to variations in image intensity throughout the tissue. Watershed segmentation methods are especially vulnerable to these variations, generating multiple errors due notably to the incorrect detection of the outer surface of the tissue. Results We use the level set method (LSM) to improve the accuracy of the watershed segmentation in different ways. First, we detect the outer surface of the tissue, reducing the impact of low and variable contrast at the surface during imaging. Second, we demonstrate a new edge function for a level set, based on second order derivatives of the image, to segment individual cells. Finally, we also show that the LSM can be used to segment nuclei within the tissue. Conclusion The watershed segmentation of the outer cell layer is demonstrably improved when coupled with the LSM-based surface detection step. The tool can also be used to improve watershed segmentation at cell-scale, as well as to segment nuclei within a tissue. The improved segmentation increases the quality of analysis, and the surface detected by our algorithm may be used to calculate local curvature or adapted for other uses, such as mathematical simulations.http://link.springer.com/article/10.1186/s13007-017-0264-5Confocal image3DSegmentationLevel set methodWatershedL1 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Annamária Kiss Typhaine Moreau Vincent Mirabet Cerasela Iliana Calugaru Arezki Boudaoud Pradeep Das |
spellingShingle |
Annamária Kiss Typhaine Moreau Vincent Mirabet Cerasela Iliana Calugaru Arezki Boudaoud Pradeep Das Segmentation of 3D images of plant tissues at multiple scales using the level set method Plant Methods Confocal image 3D Segmentation Level set method Watershed L1 |
author_facet |
Annamária Kiss Typhaine Moreau Vincent Mirabet Cerasela Iliana Calugaru Arezki Boudaoud Pradeep Das |
author_sort |
Annamária Kiss |
title |
Segmentation of 3D images of plant tissues at multiple scales using the level set method |
title_short |
Segmentation of 3D images of plant tissues at multiple scales using the level set method |
title_full |
Segmentation of 3D images of plant tissues at multiple scales using the level set method |
title_fullStr |
Segmentation of 3D images of plant tissues at multiple scales using the level set method |
title_full_unstemmed |
Segmentation of 3D images of plant tissues at multiple scales using the level set method |
title_sort |
segmentation of 3d images of plant tissues at multiple scales using the level set method |
publisher |
BMC |
series |
Plant Methods |
issn |
1746-4811 |
publishDate |
2017-12-01 |
description |
Abstract Background Developmental biology has made great strides in recent years towards the quantification of cellular properties during development. This requires tissues to be imaged and segmented to generate computerised versions that can be easily analysed. In this context, one of the principal technical challenges remains the faithful detection of cellular contours, principally due to variations in image intensity throughout the tissue. Watershed segmentation methods are especially vulnerable to these variations, generating multiple errors due notably to the incorrect detection of the outer surface of the tissue. Results We use the level set method (LSM) to improve the accuracy of the watershed segmentation in different ways. First, we detect the outer surface of the tissue, reducing the impact of low and variable contrast at the surface during imaging. Second, we demonstrate a new edge function for a level set, based on second order derivatives of the image, to segment individual cells. Finally, we also show that the LSM can be used to segment nuclei within the tissue. Conclusion The watershed segmentation of the outer cell layer is demonstrably improved when coupled with the LSM-based surface detection step. The tool can also be used to improve watershed segmentation at cell-scale, as well as to segment nuclei within a tissue. The improved segmentation increases the quality of analysis, and the surface detected by our algorithm may be used to calculate local curvature or adapted for other uses, such as mathematical simulations. |
topic |
Confocal image 3D Segmentation Level set method Watershed L1 |
url |
http://link.springer.com/article/10.1186/s13007-017-0264-5 |
work_keys_str_mv |
AT annamariakiss segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod AT typhainemoreau segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod AT vincentmirabet segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod AT ceraselailianacalugaru segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod AT arezkiboudaoud segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod AT pradeepdas segmentationof3dimagesofplanttissuesatmultiplescalesusingthelevelsetmethod |
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