GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]

The advent of large-scale fluorescence and electronic microscopy techniques along with maturing image analysis is giving life sciences a deluge of geometrical objects in 2D/3D(+t) to deal with. These objects take the form of large scale, localised, precise, single cell, quantitative data such as cel...

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Main Authors: Minh-Son Phan, Anatole Chessel
Format: Article
Language:English
Published: F1000 Research Ltd 2021-06-01
Series:F1000Research
Online Access:https://f1000research.com/articles/9-1374/v2
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spelling doaj-d06a7742b55d4f2cbae04dae64a5f2032021-06-29T10:51:38ZengF1000 Research LtdF1000Research2046-14022021-06-01910.12688/f1000research.27395.257818GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]Minh-Son Phan0Anatole Chessel1Laboratory of Optics and Biosciences, CNRS, INSERM, Ecole polytechniqe, Institut polytechnique de Paris, Palaiseau, 91120, FranceLaboratory of Optics and Biosciences, CNRS, INSERM, Ecole polytechniqe, Institut polytechnique de Paris, Palaiseau, 91120, FranceThe advent of large-scale fluorescence and electronic microscopy techniques along with maturing image analysis is giving life sciences a deluge of geometrical objects in 2D/3D(+t) to deal with. These objects take the form of large scale, localised, precise, single cell, quantitative data such as cells’ positions, shapes, trajectories or lineages, axon traces in whole brains atlases or varied intracellular protein localisations, often in multiple experimental conditions. The data mining of those geometrical objects requires a variety of mathematical and computational tools of diverse accessibility and complexity. Here we present a new Python library for quantitative 3D geometry called GeNePy3D which helps handle and mine information and knowledge from geometric data, providing a unified application programming interface (API) to methods from several domains including computational geometry, scale space methods or spatial statistics. By framing this library as generically as possible, and by linking it to as many state-of-the-art reference algorithms and projects as needed, we help render those often specialist methods accessible to a larger community. We exemplify the usefulness of the  GeNePy3D toolbox by re-analysing a recently published whole-brain zebrafish neuronal atlas, with other applications and examples available online. Along with an open source, documented and exemplified code, we release reusable containers to allow for convenient and wide usability and increased reproducibility.https://f1000research.com/articles/9-1374/v2
collection DOAJ
language English
format Article
sources DOAJ
author Minh-Son Phan
Anatole Chessel
spellingShingle Minh-Son Phan
Anatole Chessel
GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
F1000Research
author_facet Minh-Son Phan
Anatole Chessel
author_sort Minh-Son Phan
title GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
title_short GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
title_full GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
title_fullStr GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
title_full_unstemmed GeNePy3D: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
title_sort genepy3d: a quantitative geometry python toolbox for bioimaging [version 2; peer review: 2 approved]
publisher F1000 Research Ltd
series F1000Research
issn 2046-1402
publishDate 2021-06-01
description The advent of large-scale fluorescence and electronic microscopy techniques along with maturing image analysis is giving life sciences a deluge of geometrical objects in 2D/3D(+t) to deal with. These objects take the form of large scale, localised, precise, single cell, quantitative data such as cells’ positions, shapes, trajectories or lineages, axon traces in whole brains atlases or varied intracellular protein localisations, often in multiple experimental conditions. The data mining of those geometrical objects requires a variety of mathematical and computational tools of diverse accessibility and complexity. Here we present a new Python library for quantitative 3D geometry called GeNePy3D which helps handle and mine information and knowledge from geometric data, providing a unified application programming interface (API) to methods from several domains including computational geometry, scale space methods or spatial statistics. By framing this library as generically as possible, and by linking it to as many state-of-the-art reference algorithms and projects as needed, we help render those often specialist methods accessible to a larger community. We exemplify the usefulness of the  GeNePy3D toolbox by re-analysing a recently published whole-brain zebrafish neuronal atlas, with other applications and examples available online. Along with an open source, documented and exemplified code, we release reusable containers to allow for convenient and wide usability and increased reproducibility.
url https://f1000research.com/articles/9-1374/v2
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