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A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant

The development of double haploids (DHs) is a straightforward path for obtaining pure lines but has multiple bottlenecks. Among them is the determination of the optimal stage of pollen induction for androgenesis. In this work, we developed Microscan, a deep learning-based system for the detection an...

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Autores principales: García-Fortea, Edgar, García-Pérez, Ana, Gimeno-Páez, Esther, Sánchez-Gimeno, Alfredo, Vilanova, Santiago, Prohens, Jaime, Pastor-Calle, David
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7564724/
https://www.ncbi.nlm.nih.gov/pubmed/32899465
http://dx.doi.org/10.3390/biology9090272
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author García-Fortea, Edgar
García-Pérez, Ana
Gimeno-Páez, Esther
Sánchez-Gimeno, Alfredo
Vilanova, Santiago
Prohens, Jaime
Pastor-Calle, David
author_facet García-Fortea, Edgar
García-Pérez, Ana
Gimeno-Páez, Esther
Sánchez-Gimeno, Alfredo
Vilanova, Santiago
Prohens, Jaime
Pastor-Calle, David
author_sort García-Fortea, Edgar
collection PubMed
description The development of double haploids (DHs) is a straightforward path for obtaining pure lines but has multiple bottlenecks. Among them is the determination of the optimal stage of pollen induction for androgenesis. In this work, we developed Microscan, a deep learning-based system for the detection and recognition of the stages of pollen development. In a first experiment, the algorithm was developed adapting the RetinaNet predictive model using microspores of different eggplant accessions as samples. A mean average precision of 86.30% was obtained. In a second experiment, the anther range to be cultivated in vitro was determined in three eggplant genotypes by applying the Microscan system. Subsequently, they were cultivated following two different androgenesis protocols (Cb and E6). The response was only observed in the anther size range predicted by Microscan, obtaining the best results with the E6 protocol. The plants obtained were characterized by flow cytometry and with the Single Primer Enrichment Technology high-throughput genotyping platform, obtaining a high rate of confirmed haploid and double haploid plants. Microscan has been revealed as a tool for the high-throughput efficient analysis of microspore samples, as it has been exemplified in eggplant by providing an increase in the yield of DHs production.
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spelling pubmed-75647242020-10-26 A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant García-Fortea, Edgar García-Pérez, Ana Gimeno-Páez, Esther Sánchez-Gimeno, Alfredo Vilanova, Santiago Prohens, Jaime Pastor-Calle, David Biology (Basel) Article The development of double haploids (DHs) is a straightforward path for obtaining pure lines but has multiple bottlenecks. Among them is the determination of the optimal stage of pollen induction for androgenesis. In this work, we developed Microscan, a deep learning-based system for the detection and recognition of the stages of pollen development. In a first experiment, the algorithm was developed adapting the RetinaNet predictive model using microspores of different eggplant accessions as samples. A mean average precision of 86.30% was obtained. In a second experiment, the anther range to be cultivated in vitro was determined in three eggplant genotypes by applying the Microscan system. Subsequently, they were cultivated following two different androgenesis protocols (Cb and E6). The response was only observed in the anther size range predicted by Microscan, obtaining the best results with the E6 protocol. The plants obtained were characterized by flow cytometry and with the Single Primer Enrichment Technology high-throughput genotyping platform, obtaining a high rate of confirmed haploid and double haploid plants. Microscan has been revealed as a tool for the high-throughput efficient analysis of microspore samples, as it has been exemplified in eggplant by providing an increase in the yield of DHs production. MDPI 2020-09-05 /pmc/articles/PMC7564724/ /pubmed/32899465 http://dx.doi.org/10.3390/biology9090272 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
García-Fortea, Edgar
García-Pérez, Ana
Gimeno-Páez, Esther
Sánchez-Gimeno, Alfredo
Vilanova, Santiago
Prohens, Jaime
Pastor-Calle, David
A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title_full A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title_fullStr A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title_full_unstemmed A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title_short A Deep Learning-Based System (Microscan) for the Identification of Pollen Development Stages and Its Application to Obtaining Doubled Haploid Lines in Eggplant
title_sort deep learning-based system (microscan) for the identification of pollen development stages and its application to obtaining doubled haploid lines in eggplant
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7564724/
https://www.ncbi.nlm.nih.gov/pubmed/32899465
http://dx.doi.org/10.3390/biology9090272
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