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SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification

High-throughput sequencing of full-length transcripts using long reads has paved the way for the discovery of thousands of novel transcripts, even in well-annotated mammalian species. The advances in sequencing technology have created a need for studies and tools that can characterize these novel va...

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Autores principales: Tardaguila, Manuel, de la Fuente, Lorena, Marti, Cristina, Pereira, Cécile, Pardo-Palacios, Francisco Jose, del Risco, Hector, Ferrell, Marc, Mellado, Maravillas, Macchietto, Marissa, Verheggen, Kenneth, Edelmann, Mariola, Ezkurdia, Iakes, Vazquez, Jesus, Tress, Michael, Mortazavi, Ali, Martens, Lennart, Rodriguez-Navarro, Susana, Moreno-Manzano, Victoria, Conesa, Ana
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory Press 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5848618/
https://www.ncbi.nlm.nih.gov/pubmed/29440222
http://dx.doi.org/10.1101/gr.222976.117
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author Tardaguila, Manuel
de la Fuente, Lorena
Marti, Cristina
Pereira, Cécile
Pardo-Palacios, Francisco Jose
del Risco, Hector
Ferrell, Marc
Mellado, Maravillas
Macchietto, Marissa
Verheggen, Kenneth
Edelmann, Mariola
Ezkurdia, Iakes
Vazquez, Jesus
Tress, Michael
Mortazavi, Ali
Martens, Lennart
Rodriguez-Navarro, Susana
Moreno-Manzano, Victoria
Conesa, Ana
author_facet Tardaguila, Manuel
de la Fuente, Lorena
Marti, Cristina
Pereira, Cécile
Pardo-Palacios, Francisco Jose
del Risco, Hector
Ferrell, Marc
Mellado, Maravillas
Macchietto, Marissa
Verheggen, Kenneth
Edelmann, Mariola
Ezkurdia, Iakes
Vazquez, Jesus
Tress, Michael
Mortazavi, Ali
Martens, Lennart
Rodriguez-Navarro, Susana
Moreno-Manzano, Victoria
Conesa, Ana
author_sort Tardaguila, Manuel
collection PubMed
description High-throughput sequencing of full-length transcripts using long reads has paved the way for the discovery of thousands of novel transcripts, even in well-annotated mammalian species. The advances in sequencing technology have created a need for studies and tools that can characterize these novel variants. Here, we present SQANTI, an automated pipeline for the classification of long-read transcripts that can assess the quality of data and the preprocessing pipeline using 47 unique descriptors. We apply SQANTI to a neuronal mouse transcriptome using Pacific Biosciences (PacBio) long reads and illustrate how the tool is effective in characterizing and describing the composition of the full-length transcriptome. We perform extensive evaluation of ToFU PacBio transcripts by PCR to reveal that an important number of the novel transcripts are technical artifacts of the sequencing approach and that SQANTI quality descriptors can be used to engineer a filtering strategy to remove them. Most novel transcripts in this curated transcriptome are novel combinations of existing splice sites, resulting more frequently in novel ORFs than novel UTRs, and are enriched in both general metabolic and neural-specific functions. We show that these new transcripts have a major impact in the correct quantification of transcript levels by state-of-the-art short-read-based quantification algorithms. By comparing our iso-transcriptome with public proteomics databases, we find that alternative isoforms are elusive to proteogenomics detection. SQANTI allows the user to maximize the analytical outcome of long-read technologies by providing the tools to deliver quality-evaluated and curated full-length transcriptomes.
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spelling pubmed-58486182018-03-20 SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification Tardaguila, Manuel de la Fuente, Lorena Marti, Cristina Pereira, Cécile Pardo-Palacios, Francisco Jose del Risco, Hector Ferrell, Marc Mellado, Maravillas Macchietto, Marissa Verheggen, Kenneth Edelmann, Mariola Ezkurdia, Iakes Vazquez, Jesus Tress, Michael Mortazavi, Ali Martens, Lennart Rodriguez-Navarro, Susana Moreno-Manzano, Victoria Conesa, Ana Genome Res Method High-throughput sequencing of full-length transcripts using long reads has paved the way for the discovery of thousands of novel transcripts, even in well-annotated mammalian species. The advances in sequencing technology have created a need for studies and tools that can characterize these novel variants. Here, we present SQANTI, an automated pipeline for the classification of long-read transcripts that can assess the quality of data and the preprocessing pipeline using 47 unique descriptors. We apply SQANTI to a neuronal mouse transcriptome using Pacific Biosciences (PacBio) long reads and illustrate how the tool is effective in characterizing and describing the composition of the full-length transcriptome. We perform extensive evaluation of ToFU PacBio transcripts by PCR to reveal that an important number of the novel transcripts are technical artifacts of the sequencing approach and that SQANTI quality descriptors can be used to engineer a filtering strategy to remove them. Most novel transcripts in this curated transcriptome are novel combinations of existing splice sites, resulting more frequently in novel ORFs than novel UTRs, and are enriched in both general metabolic and neural-specific functions. We show that these new transcripts have a major impact in the correct quantification of transcript levels by state-of-the-art short-read-based quantification algorithms. By comparing our iso-transcriptome with public proteomics databases, we find that alternative isoforms are elusive to proteogenomics detection. SQANTI allows the user to maximize the analytical outcome of long-read technologies by providing the tools to deliver quality-evaluated and curated full-length transcriptomes. Cold Spring Harbor Laboratory Press 2018-03 /pmc/articles/PMC5848618/ /pubmed/29440222 http://dx.doi.org/10.1101/gr.222976.117 Text en © 2018 Tardaguila et al.; Published by Cold Spring Harbor Laboratory Press http://creativecommons.org/licenses/by/4.0/ This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International), as described at http://creativecommons.org/licenses/by/4.0/.
spellingShingle Method
Tardaguila, Manuel
de la Fuente, Lorena
Marti, Cristina
Pereira, Cécile
Pardo-Palacios, Francisco Jose
del Risco, Hector
Ferrell, Marc
Mellado, Maravillas
Macchietto, Marissa
Verheggen, Kenneth
Edelmann, Mariola
Ezkurdia, Iakes
Vazquez, Jesus
Tress, Michael
Mortazavi, Ali
Martens, Lennart
Rodriguez-Navarro, Susana
Moreno-Manzano, Victoria
Conesa, Ana
SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title_full SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title_fullStr SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title_full_unstemmed SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title_short SQANTI: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
title_sort sqanti: extensive characterization of long-read transcript sequences for quality control in full-length transcriptome identification and quantification
topic Method
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5848618/
https://www.ncbi.nlm.nih.gov/pubmed/29440222
http://dx.doi.org/10.1101/gr.222976.117
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