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An interpretable and versatile machine learning approach for oocyte phenotyping

Meiotic maturation is a crucial step of oocyte formation, allowing its potential fertilization and embryo development. Elucidating this process is important for both fundamental research and assisted reproductive technology. However, few computational tools based on non-invasive measurements are ava...

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Autores principales: Letort, Gaelle, Eichmuller, Adrien, Da Silva, Christelle, Nikalayevich, Elvira, Crozet, Flora, Salle, Jeremy, Minc, Nicolas, Labrune, Elsa, Wolf, Jean-Philippe, Terret, Marie-Emilie, Verlhac, Marie-Hélène
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Company of Biologists Ltd 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9377708/
https://www.ncbi.nlm.nih.gov/pubmed/35660922
http://dx.doi.org/10.1242/jcs.260281
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author Letort, Gaelle
Eichmuller, Adrien
Da Silva, Christelle
Nikalayevich, Elvira
Crozet, Flora
Salle, Jeremy
Minc, Nicolas
Labrune, Elsa
Wolf, Jean-Philippe
Terret, Marie-Emilie
Verlhac, Marie-Hélène
author_facet Letort, Gaelle
Eichmuller, Adrien
Da Silva, Christelle
Nikalayevich, Elvira
Crozet, Flora
Salle, Jeremy
Minc, Nicolas
Labrune, Elsa
Wolf, Jean-Philippe
Terret, Marie-Emilie
Verlhac, Marie-Hélène
author_sort Letort, Gaelle
collection PubMed
description Meiotic maturation is a crucial step of oocyte formation, allowing its potential fertilization and embryo development. Elucidating this process is important for both fundamental research and assisted reproductive technology. However, few computational tools based on non-invasive measurements are available to characterize oocyte meiotic maturation. Here, we develop a computational framework to phenotype oocytes based on images acquired in transmitted light. We trained neural networks to segment the contour of oocytes and their zona pellucida using oocytes from diverse species. We defined a comprehensive set of morphological features to describe an oocyte. These steps were implemented in an open-source Fiji plugin. We present a feature-based machine learning pipeline to recognize oocyte populations and determine morphological differences between them. We first demonstrate its potential to screen oocytes from different strains and automatically identify their morphological characteristics. Its second application is to predict and characterize the maturation potential of oocytes. We identify the texture of the zona pellucida and cytoplasmic particle size as features to assess mouse oocyte maturation potential and tested whether these features were applicable to the developmental potential of human oocytes. This article has an associated First Person interview with the first author of the paper.
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spelling pubmed-93777082022-09-02 An interpretable and versatile machine learning approach for oocyte phenotyping Letort, Gaelle Eichmuller, Adrien Da Silva, Christelle Nikalayevich, Elvira Crozet, Flora Salle, Jeremy Minc, Nicolas Labrune, Elsa Wolf, Jean-Philippe Terret, Marie-Emilie Verlhac, Marie-Hélène J Cell Sci Tools and Resources Meiotic maturation is a crucial step of oocyte formation, allowing its potential fertilization and embryo development. Elucidating this process is important for both fundamental research and assisted reproductive technology. However, few computational tools based on non-invasive measurements are available to characterize oocyte meiotic maturation. Here, we develop a computational framework to phenotype oocytes based on images acquired in transmitted light. We trained neural networks to segment the contour of oocytes and their zona pellucida using oocytes from diverse species. We defined a comprehensive set of morphological features to describe an oocyte. These steps were implemented in an open-source Fiji plugin. We present a feature-based machine learning pipeline to recognize oocyte populations and determine morphological differences between them. We first demonstrate its potential to screen oocytes from different strains and automatically identify their morphological characteristics. Its second application is to predict and characterize the maturation potential of oocytes. We identify the texture of the zona pellucida and cytoplasmic particle size as features to assess mouse oocyte maturation potential and tested whether these features were applicable to the developmental potential of human oocytes. This article has an associated First Person interview with the first author of the paper. The Company of Biologists Ltd 2022-07-13 /pmc/articles/PMC9377708/ /pubmed/35660922 http://dx.doi.org/10.1242/jcs.260281 Text en © 2022. Published by The Company of Biologists Ltd https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution and reproduction in any medium provided that the original work is properly attributed.
spellingShingle Tools and Resources
Letort, Gaelle
Eichmuller, Adrien
Da Silva, Christelle
Nikalayevich, Elvira
Crozet, Flora
Salle, Jeremy
Minc, Nicolas
Labrune, Elsa
Wolf, Jean-Philippe
Terret, Marie-Emilie
Verlhac, Marie-Hélène
An interpretable and versatile machine learning approach for oocyte phenotyping
title An interpretable and versatile machine learning approach for oocyte phenotyping
title_full An interpretable and versatile machine learning approach for oocyte phenotyping
title_fullStr An interpretable and versatile machine learning approach for oocyte phenotyping
title_full_unstemmed An interpretable and versatile machine learning approach for oocyte phenotyping
title_short An interpretable and versatile machine learning approach for oocyte phenotyping
title_sort interpretable and versatile machine learning approach for oocyte phenotyping
topic Tools and Resources
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9377708/
https://www.ncbi.nlm.nih.gov/pubmed/35660922
http://dx.doi.org/10.1242/jcs.260281
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