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Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads

BACKGROUND: Gene isoforms are commonly found in both prokaryotes and eukaryotes. Since each isoform may perform a specific function in response to changing environmental conditions, studying the dynamics of gene isoforms is important in understanding biological processes and disease conditions. Howe...

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Autores principales: Liang, Ma, Raley, Castle, Zheng, Xin, Kutty, Geetha, Gogineni, Emile, Sherman, Brad T., Sun, Qiang, Chen, Xiongfong, Skelly, Thomas, Jones, Kristine, Stephens, Robert, Zhou, Bin, Lau, William, Johnson, Calvin, Imamichi, Tomozumi, Jiang, Minkang, Dewar, Robin, Lempicki, Richard A., Tran, Bao, Kovacs, Joseph A., Huang, Da Wei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4820869/
https://www.ncbi.nlm.nih.gov/pubmed/27051465
http://dx.doi.org/10.1186/s13040-016-0090-8
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author Liang, Ma
Raley, Castle
Zheng, Xin
Kutty, Geetha
Gogineni, Emile
Sherman, Brad T.
Sun, Qiang
Chen, Xiongfong
Skelly, Thomas
Jones, Kristine
Stephens, Robert
Zhou, Bin
Lau, William
Johnson, Calvin
Imamichi, Tomozumi
Jiang, Minkang
Dewar, Robin
Lempicki, Richard A.
Tran, Bao
Kovacs, Joseph A.
Huang, Da Wei
author_facet Liang, Ma
Raley, Castle
Zheng, Xin
Kutty, Geetha
Gogineni, Emile
Sherman, Brad T.
Sun, Qiang
Chen, Xiongfong
Skelly, Thomas
Jones, Kristine
Stephens, Robert
Zhou, Bin
Lau, William
Johnson, Calvin
Imamichi, Tomozumi
Jiang, Minkang
Dewar, Robin
Lempicki, Richard A.
Tran, Bao
Kovacs, Joseph A.
Huang, Da Wei
author_sort Liang, Ma
collection PubMed
description BACKGROUND: Gene isoforms are commonly found in both prokaryotes and eukaryotes. Since each isoform may perform a specific function in response to changing environmental conditions, studying the dynamics of gene isoforms is important in understanding biological processes and disease conditions. However, genome-wide identification of gene isoforms is technically challenging due to the high degree of sequence identity among isoforms. Traditional targeted sequencing approach, involving Sanger sequencing of plasmid-cloned PCR products, has low throughput and is very tedious and time-consuming. Next-generation sequencing technologies such as Illumina and 454 achieve high throughput but their short read lengths are a critical barrier to accurate assembly of highly similar gene isoforms, and may result in ambiguities and false joining during sequence assembly. More recently, the third generation sequencer represented by the PacBio platform offers sufficient throughput and long reads covering the full length of typical genes, thus providing a potential to reliably profile gene isoforms. However, the PacBio long reads are error-prone and cannot be effectively analyzed by traditional assembly programs. RESULTS: We present a clustering-based analysis pipeline integrated with PacBio sequencing data for profiling highly similar gene isoforms. This approach was first evaluated in comparison to de novo assembly of 454 reads using a benchmark admixture containing 10 known, cloned msg genes encoding the major surface glycoprotein of Pneumocystis jirovecii. All 10 msg isoforms were successfully reconstructed with the expected length (~1.5 kb) and correct sequence by the new approach, while 454 reads could not be correctly assembled using various assembly programs. When using an additional benchmark admixture containing 22 known P. jirovecii msg isoforms, this approach accurately reconstructed all but 4 these isoforms in their full-length (~3 kb); these 4 isoforms were present in low concentrations in the admixture. Finally, when applied to the original clinical sample from which the 22 known msg isoforms were cloned, this approach successfully identified not only all known isoforms accurately (~3 kb each) but also 48 novel isoforms. CONCLUSIONS: PacBio sequencing integrated with the clustering-based analysis pipeline achieves high-throughput and high-resolution discrimination of highly similar sequences, and can serve as a new approach for genome-wide characterization of gene isoforms and other highly repetitive sequences. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13040-016-0090-8) contains supplementary material, which is available to authorized users.
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spelling pubmed-48208692016-04-06 Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads Liang, Ma Raley, Castle Zheng, Xin Kutty, Geetha Gogineni, Emile Sherman, Brad T. Sun, Qiang Chen, Xiongfong Skelly, Thomas Jones, Kristine Stephens, Robert Zhou, Bin Lau, William Johnson, Calvin Imamichi, Tomozumi Jiang, Minkang Dewar, Robin Lempicki, Richard A. Tran, Bao Kovacs, Joseph A. Huang, Da Wei BioData Min Methodology BACKGROUND: Gene isoforms are commonly found in both prokaryotes and eukaryotes. Since each isoform may perform a specific function in response to changing environmental conditions, studying the dynamics of gene isoforms is important in understanding biological processes and disease conditions. However, genome-wide identification of gene isoforms is technically challenging due to the high degree of sequence identity among isoforms. Traditional targeted sequencing approach, involving Sanger sequencing of plasmid-cloned PCR products, has low throughput and is very tedious and time-consuming. Next-generation sequencing technologies such as Illumina and 454 achieve high throughput but their short read lengths are a critical barrier to accurate assembly of highly similar gene isoforms, and may result in ambiguities and false joining during sequence assembly. More recently, the third generation sequencer represented by the PacBio platform offers sufficient throughput and long reads covering the full length of typical genes, thus providing a potential to reliably profile gene isoforms. However, the PacBio long reads are error-prone and cannot be effectively analyzed by traditional assembly programs. RESULTS: We present a clustering-based analysis pipeline integrated with PacBio sequencing data for profiling highly similar gene isoforms. This approach was first evaluated in comparison to de novo assembly of 454 reads using a benchmark admixture containing 10 known, cloned msg genes encoding the major surface glycoprotein of Pneumocystis jirovecii. All 10 msg isoforms were successfully reconstructed with the expected length (~1.5 kb) and correct sequence by the new approach, while 454 reads could not be correctly assembled using various assembly programs. When using an additional benchmark admixture containing 22 known P. jirovecii msg isoforms, this approach accurately reconstructed all but 4 these isoforms in their full-length (~3 kb); these 4 isoforms were present in low concentrations in the admixture. Finally, when applied to the original clinical sample from which the 22 known msg isoforms were cloned, this approach successfully identified not only all known isoforms accurately (~3 kb each) but also 48 novel isoforms. CONCLUSIONS: PacBio sequencing integrated with the clustering-based analysis pipeline achieves high-throughput and high-resolution discrimination of highly similar sequences, and can serve as a new approach for genome-wide characterization of gene isoforms and other highly repetitive sequences. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (doi:10.1186/s13040-016-0090-8) contains supplementary material, which is available to authorized users. BioMed Central 2016-04-05 /pmc/articles/PMC4820869/ /pubmed/27051465 http://dx.doi.org/10.1186/s13040-016-0090-8 Text en © Liang et al. 2016 Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated.
spellingShingle Methodology
Liang, Ma
Raley, Castle
Zheng, Xin
Kutty, Geetha
Gogineni, Emile
Sherman, Brad T.
Sun, Qiang
Chen, Xiongfong
Skelly, Thomas
Jones, Kristine
Stephens, Robert
Zhou, Bin
Lau, William
Johnson, Calvin
Imamichi, Tomozumi
Jiang, Minkang
Dewar, Robin
Lempicki, Richard A.
Tran, Bao
Kovacs, Joseph A.
Huang, Da Wei
Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title_full Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title_fullStr Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title_full_unstemmed Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title_short Distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of PacBio single-molecule long reads
title_sort distinguishing highly similar gene isoforms with a clustering-based bioinformatics analysis of pacbio single-molecule long reads
topic Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4820869/
https://www.ncbi.nlm.nih.gov/pubmed/27051465
http://dx.doi.org/10.1186/s13040-016-0090-8
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