PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data

<p>Abstract</p> <p>Background</p> <p>In molecular microbial ecology, massive sequencing is gradually replacing classical fingerprinting techniques such as terminal-restriction fragment length polymorphism (T-RFLP) combined with cloning-sequencing for the characterizatio...

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Main Authors: Weissbrodt David G, Shani Noam, Sinclair Lucas, Lefebvre Grégory, Rossi Pierre, Maillard Julien, Rougemont Jacques, Holliger Christof
Format: Article
Language:English
Published: BMC 2012-12-01
Series:BMC Microbiology
Subjects:
Online Access:http://www.biomedcentral.com/1471-2180/12/306
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spelling doaj-c640d8b702c743f98811b6acdc9cc1362020-11-24T21:35:46ZengBMCBMC Microbiology1471-21802012-12-0112130610.1186/1471-2180-12-306PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing dataWeissbrodt David GShani NoamSinclair LucasLefebvre GrégoryRossi PierreMaillard JulienRougemont JacquesHolliger Christof<p>Abstract</p> <p>Background</p> <p>In molecular microbial ecology, massive sequencing is gradually replacing classical fingerprinting techniques such as terminal-restriction fragment length polymorphism (T-RFLP) combined with cloning-sequencing for the characterization of microbiomes. Here, a bioinformatics methodology for pyrosequencing-based T-RF identification (PyroTRF-ID) was developed to combine pyrosequencing and T-RFLP approaches for the description of microbial communities. The strength of this methodology relies on the identification of T-RFs by comparison of experimental and digital T-RFLP profiles obtained from the same samples. DNA extracts were subjected to amplification of the 16S rRNA gene pool, T-RFLP with the <it>Hae</it>III restriction enzyme, 454 tag encoded FLX amplicon pyrosequencing, and PyroTRF-ID analysis. Digital T-RFLP profiles were generated from the denoised full pyrosequencing datasets, and the sequences contributing to each digital T-RF were classified to taxonomic bins using the Greengenes reference database. The method was tested both on bacterial communities found in chloroethene-contaminated groundwater samples and in aerobic granular sludge biofilms originating from wastewater treatment systems.</p> <p>Results</p> <p>PyroTRF-ID was efficient for high-throughput mapping and digital T-RFLP profiling of pyrosequencing datasets. After denoising, a dataset comprising ca. 10′000 reads of 300 to 500 bp was typically processed within ca. 20 minutes on a high-performance computing cluster, running on a Linux-related CentOS 5.5 operating system, enabling parallel processing of multiple samples. Both digital and experimental T-RFLP profiles were aligned with maximum cross-correlation coefficients of 0.71 and 0.92 for high- and low-complexity environments, respectively. On average, 63±18% of all experimental T-RFs (30 to 93 peaks per sample) were affiliated to phylotypes.</p> <p>Conclusions</p> <p>PyroTRF-ID profits from complementary advantages of pyrosequencing and T-RFLP and is particularly adapted for optimizing laboratory and computational efforts to describe microbial communities and their dynamics in any biological system. The high resolution of the microbial community composition is provided by pyrosequencing, which can be performed on a restricted set of selected samples, whereas T-RFLP enables simultaneous fingerprinting of numerous samples at relatively low cost and is especially adapted for routine analysis and follow-up of microbial communities on the long run.</p> http://www.biomedcentral.com/1471-2180/12/306Microbial ecologyT-RFLPPyrosequencingDigital T-RFLPBioinformatics methodology
collection DOAJ
language English
format Article
sources DOAJ
author Weissbrodt David G
Shani Noam
Sinclair Lucas
Lefebvre Grégory
Rossi Pierre
Maillard Julien
Rougemont Jacques
Holliger Christof
spellingShingle Weissbrodt David G
Shani Noam
Sinclair Lucas
Lefebvre Grégory
Rossi Pierre
Maillard Julien
Rougemont Jacques
Holliger Christof
PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
BMC Microbiology
Microbial ecology
T-RFLP
Pyrosequencing
Digital T-RFLP
Bioinformatics methodology
author_facet Weissbrodt David G
Shani Noam
Sinclair Lucas
Lefebvre Grégory
Rossi Pierre
Maillard Julien
Rougemont Jacques
Holliger Christof
author_sort Weissbrodt David G
title PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
title_short PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
title_full PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
title_fullStr PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
title_full_unstemmed PyroTRF-ID: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16S rRNA gene pyrosequencing data
title_sort pyrotrf-id: a novel bioinformatics methodology for the affiliation of terminal-restriction fragments using 16s rrna gene pyrosequencing data
publisher BMC
series BMC Microbiology
issn 1471-2180
publishDate 2012-12-01
description <p>Abstract</p> <p>Background</p> <p>In molecular microbial ecology, massive sequencing is gradually replacing classical fingerprinting techniques such as terminal-restriction fragment length polymorphism (T-RFLP) combined with cloning-sequencing for the characterization of microbiomes. Here, a bioinformatics methodology for pyrosequencing-based T-RF identification (PyroTRF-ID) was developed to combine pyrosequencing and T-RFLP approaches for the description of microbial communities. The strength of this methodology relies on the identification of T-RFs by comparison of experimental and digital T-RFLP profiles obtained from the same samples. DNA extracts were subjected to amplification of the 16S rRNA gene pool, T-RFLP with the <it>Hae</it>III restriction enzyme, 454 tag encoded FLX amplicon pyrosequencing, and PyroTRF-ID analysis. Digital T-RFLP profiles were generated from the denoised full pyrosequencing datasets, and the sequences contributing to each digital T-RF were classified to taxonomic bins using the Greengenes reference database. The method was tested both on bacterial communities found in chloroethene-contaminated groundwater samples and in aerobic granular sludge biofilms originating from wastewater treatment systems.</p> <p>Results</p> <p>PyroTRF-ID was efficient for high-throughput mapping and digital T-RFLP profiling of pyrosequencing datasets. After denoising, a dataset comprising ca. 10′000 reads of 300 to 500 bp was typically processed within ca. 20 minutes on a high-performance computing cluster, running on a Linux-related CentOS 5.5 operating system, enabling parallel processing of multiple samples. Both digital and experimental T-RFLP profiles were aligned with maximum cross-correlation coefficients of 0.71 and 0.92 for high- and low-complexity environments, respectively. On average, 63±18% of all experimental T-RFs (30 to 93 peaks per sample) were affiliated to phylotypes.</p> <p>Conclusions</p> <p>PyroTRF-ID profits from complementary advantages of pyrosequencing and T-RFLP and is particularly adapted for optimizing laboratory and computational efforts to describe microbial communities and their dynamics in any biological system. The high resolution of the microbial community composition is provided by pyrosequencing, which can be performed on a restricted set of selected samples, whereas T-RFLP enables simultaneous fingerprinting of numerous samples at relatively low cost and is especially adapted for routine analysis and follow-up of microbial communities on the long run.</p>
topic Microbial ecology
T-RFLP
Pyrosequencing
Digital T-RFLP
Bioinformatics methodology
url http://www.biomedcentral.com/1471-2180/12/306
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