Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Gareth Butland is active.

Publication


Featured researches published by Gareth Butland.


Mbio | 2015

Rapid Quantification of Mutant Fitness in Diverse Bacteria by Sequencing Randomly Bar-Coded Transposons

Morgan N. Price; Robert Jordan Waters; Jacob S. Lamson; Jennifer He; Cindi A. Hoover; Matthew J. Blow; James Bristow; Gareth Butland; Adam P. Arkin; Adam M. Deutschbauer

ABSTRACT Transposon mutagenesis with next-generation sequencing (TnSeq) is a powerful approach to annotate gene function in bacteria, but existing protocols for TnSeq require laborious preparation of every sample before sequencing. Thus, the existing protocols are not amenable to the throughput necessary to identify phenotypes and functions for the majority of genes in diverse bacteria. Here, we present a method, random bar code transposon-site sequencing (RB-TnSeq), which increases the throughput of mutant fitness profiling by incorporating random DNA bar codes into Tn5 and mariner transposons and by using bar code sequencing (BarSeq) to assay mutant fitness. RB-TnSeq can be used with any transposon, and TnSeq is performed once per organism instead of once per sample. Each BarSeq assay requires only a simple PCR, and 48 to 96 samples can be sequenced on one lane of an Illumina HiSeq system. We demonstrate the reproducibility and biological significance of RB-TnSeq with Escherichia coli, Phaeobacter inhibens, Pseudomonas stutzeri, Shewanella amazonensis, and Shewanella oneidensis. To demonstrate the increased throughput of RB-TnSeq, we performed 387 successful genome-wide mutant fitness assays representing 130 different bacterium-carbon source combinations and identified 5,196 genes with significant phenotypes across the five bacteria. In P. inhibens, we used our mutant fitness data to identify genes important for the utilization of diverse carbon substrates, including a putative d-mannose isomerase that is required for mannitol catabolism. RB-TnSeq will enable the cost-effective functional annotation of diverse bacteria using mutant fitness profiling. IMPORTANCE A large challenge in microbiology is the functional assessment of the millions of uncharacterized genes identified by genome sequencing. Transposon mutagenesis coupled to next-generation sequencing (TnSeq) is a powerful approach to assign phenotypes and functions to genes. However, the current strategies for TnSeq are too laborious to be applied to hundreds of experimental conditions across multiple bacteria. Here, we describe an approach, random bar code transposon-site sequencing (RB-TnSeq), which greatly simplifies the measurement of gene fitness by using bar code sequencing (BarSeq) to monitor the abundance of mutants. We performed 387 genome-wide fitness assays across five bacteria and identified phenotypes for over 5,000 genes. RB-TnSeq can be applied to diverse bacteria and is a powerful tool to annotate uncharacterized genes using phenotype data. A large challenge in microbiology is the functional assessment of the millions of uncharacterized genes identified by genome sequencing. Transposon mutagenesis coupled to next-generation sequencing (TnSeq) is a powerful approach to assign phenotypes and functions to genes. However, the current strategies for TnSeq are too laborious to be applied to hundreds of experimental conditions across multiple bacteria. Here, we describe an approach, random bar code transposon-site sequencing (RB-TnSeq), which greatly simplifies the measurement of gene fitness by using bar code sequencing (BarSeq) to monitor the abundance of mutants. We performed 387 genome-wide fitness assays across five bacteria and identified phenotypes for over 5,000 genes. RB-TnSeq can be applied to diverse bacteria and is a powerful tool to annotate uncharacterized genes using phenotype data.


Nucleic Acids Research | 2007

Bacteriome.org—an integrated protein interaction database for E. coli

Chong Su; Jose M. Peregrin-Alvarez; Gareth Butland; Sadhna Phanse; Vincent Fong; Andrew Emili; John Parkinson

Abstract High throughput methods are increasingly being used to examine the functions and interactions of gene products on a genome-scale. These include systematic large-scale proteomic studies of protein complexes and protein–protein interaction networks, functional genomic studies examining patterns of gene expression and comparative genomics studies examining patterns of conservation. Since these datasets offer different yet highly complementary perspectives on cell behavior it is expected that integration of these datasets will lead to conceptual advances in our understanding of the fundamental design and evolutionary principles that underlie the organization and function of proteins within biochemical pathways. Here we present Bacteriome.org, a resource that combines locally generated interaction and evolutionary datasets with a previously generated knowledgebase, to provide an integrated view of the Escherichia coli interactome. Tools are provided which allow the user to select and visualize functional, evolutionary and structural relationships between groups of interacting proteins and to focus on genes of interest. Currently the database contains three interaction datasets: a functional dataset consisting of 3989 interactions between 1927 proteins; a ‘core’ high quality experimental dataset of 4863 interactions between 1100 proteins and an ‘extended’ experimental dataset of 9860 interactions between 2131 proteins. Bacteriome.org is available online at http://www.bacteriome.org.


Applied and Environmental Microbiology | 2011

Generalized Schemes for High-Throughput Manipulation of the Desulfovibrio vulgaris Genome

Swapnil R. Chhabra; Gareth Butland; Dwayne A. Elias; John-Marc Chandonia; O.-Y. Fok; Tr Juba; A. Gorur; Simon Allen; C. M. Leung; Kimberly L. Keller; Sonia A. Reveco; Grant M. Zane; E. Semkiw; R. Prathapam; B. Gold; Mary E. Singer; M. Ouellet; Evelin Szakal; Danielle M. Jorgens; Morgan N. Price; Witkowska He; Harry R. Beller; Adam P. Arkin; Terry C. Hazen; Mark D. Biggin; Manfred Auer; Judy D. Wall; Jay D. Keasling

ABSTRACT The ability to conduct advanced functional genomic studies of the thousands of sequenced bacteria has been hampered by the lack of available tools for making high-throughput chromosomal manipulations in a systematic manner that can be applied across diverse species. In this work, we highlight the use of synthetic biological tools to assemble custom suicide vectors with reusable and interchangeable DNA “parts” to facilitate chromosomal modification at designated loci. These constructs enable an array of downstream applications, including gene replacement and the creation of gene fusions with affinity purification or localization tags. We employed this approach to engineer chromosomal modifications in a bacterium that has previously proven difficult to manipulate genetically, Desulfovibrio vulgaris Hildenborough, to generate a library of over 700 strains. Furthermore, we demonstrate how these modifications can be used for examining metabolic pathways, protein-protein interactions, and protein localization. The ubiquity of suicide constructs in gene replacement throughout biology suggests that this approach can be applied to engineer a broad range of species for a diverse array of systems biological applications and is amenable to high-throughput implementation.


Methods of Molecular Biology | 2009

In vivo investigation of protein-protein interactions for helicases using tandem affinity purification.

Matthew Jessulat; Terry Buist; Alamgir; Mohsen Hooshyar; Jianhua Xu; Hiroyuki Aoki; M. Clelia Ganoza; Gareth Butland; Ashkan Golshani

A key component in determining the functional role of any protein is the elucidation of its binding partners using protein-protein interaction (PPI) data. Here we examine the use of tandem affinity purification (TAP) tagging to study RNA/DNA helicase PPIs in Escherichia coli. The tag, which consists of a calmodulin-binding region, a TEV protease recognition sequence, and an IgG-binding domain, is introduced into E. coli using a lambdared recombination system. This method prevents the overproduction of the target protein, which could generate false interactions. The interacting proteins are then affinity purified using double affinity purification steps and are separated by SDS-PAGE followed by mass spectrometry identification. Each protein identified would represent a physical interaction in the cell. These interactions may potentially be mediated by an RNA/DNA template, for which the helicase would likely be needed to disrupt the secondary structures.


Molecular & Cellular Proteomics | 2016

Bacterial Interactomes: Interacting Protein Partners Share Similar Function and Are Validated in Independent Assays More Frequently Than Previously Reported

Maxim Shatsky; Simon Allen; Barbara Gold; Nl Liu; Tr Juba; Sonia A. Reveco; Dwayne A. Elias; R. Prathapam; J He; W Yang; Evelin Szakal; Haichuan Liu; Mary E. Singer; Jil T. Geller; Bonita R. Lam; A Saini; Vv Trotter; Steven C. Hall; Susan J. Fisher; Steven E. Brenner; Chhabra; Terry C. Hazen; Judy D. Wall; Witkowska He; Biggin; John-Marc Chandonia; Gareth Butland

Numerous affinity purification-mass spectrometry (AP-MS) and yeast two-hybrid screens have each defined thousands of pairwise protein-protein interactions (PPIs), most of which are between functionally unrelated proteins. The accuracy of these networks, however, is under debate. Here, we present an AP-MS survey of the bacterium Desulfovibrio vulgaris together with a critical reanalysis of nine published bacterial yeast two-hybrid and AP-MS screens. We have identified 459 high confidence PPIs from D. vulgaris and 391 from Escherichia coli. Compared with the nine published interactomes, our two networks are smaller, are much less highly connected, and have significantly lower false discovery rates. In addition, our interactomes are much more enriched in protein pairs that are encoded in the same operon, have similar functions, and are reproducibly detected in other physical interaction assays than the pairs reported in prior studies. Our work establishes more stringent benchmarks for the properties of protein interactomes and suggests that bona fide PPIs much more frequently involve protein partners that are annotated with similar functions or that can be validated in independent assays than earlier studies suggested.


Molecular & Cellular Proteomics | 2016

Quantitative Tagless Copurification: A Method to Validate and Identify Protein-Protein Interactions

Maxim Shatsky; Ming Dong; Haichuan Liu; Lee Lisheng Yang; Megan Choi; Mary E. Singer; Jil T. Geller; Susan J. Fisher; Steven C. Hall; Terry C. Hazen; Steven E. Brenner; Gareth Butland; Jian Jin; H. Ewa Witkowska; John-Marc Chandonia; Mark D. Biggin

Identifying protein-protein interactions (PPIs) at an acceptable false discovery rate (FDR) is challenging. Previously we identified several hundred PPIs from affinity purification - mass spectrometry (AP-MS) data for the bacteria Escherichia coli and Desulfovibrio vulgaris. These two interactomes have lower FDRs than any of the nine interactomes proposed previously for bacteria and are more enriched in PPIs validated by other data than the nine earlier interactomes. To more thoroughly determine the accuracy of ours or other interactomes and to discover further PPIs de novo, here we present a quantitative tagless method that employs iTRAQ MS to measure the copurification of endogenous proteins through orthogonal chromatography steps. 5273 fractions from a four-step fractionation of a D. vulgaris protein extract were assayed, resulting in the detection of 1242 proteins. Protein partners from our D. vulgaris and E. coli AP-MS interactomes copurify as frequently as pairs belonging to three benchmark data sets of well-characterized PPIs. In contrast, the protein pairs from the nine other bacterial interactomes copurify two- to 20-fold less often. We also identify 200 high confidence D. vulgaris PPIs based on tagless copurification and colocalization in the genome. These PPIs are as strongly validated by other data as our AP-MS interactomes and overlap with our AP-MS interactome for D.vulgaris within 3% of expectation, once FDRs and false negative rates are taken into account. Finally, we reanalyzed data from two quantitative tagless screens of human cell extracts. We estimate that the novel PPIs reported in these studies have an FDR of at least 85% and find that less than 7% of the novel PPIs identified in each screen overlap. Our results establish that a quantitative tagless method can be used to validate and identify PPIs, but that such data must be analyzed carefully to minimize the FDR.


Molecular BioSystems | 2009

Systems-level approaches for identifying and analyzing genetic interaction networks in Escherichia coli and extensions to other prokaryotes

Mohan Babu; Gabriel Musso; J. Javier Díaz-Mejía; Gareth Butland; Jack Greenblatt; Andrew Emili


The FASEB Journal | 2014

Novel aspects of iron sulfur cluster biosynthesis in sulfate reducing bacteria (768.17)

Gareth Butland; Avneesh Saini; Vv Trotter; Morgan N. Price; Jennifer He; Jennifer V. Kuehl; Nancy Liu; Grant M. Zane; Samuel R. Fels; Thomas R. Juba; Maxim Shatsky; Adam P. Arkin; John-Marc Chandonia; Judy D. Wall; Adam M. Deutschbauer


The FASEB Journal | 2014

Physical and Functional Interactions of the E. coli Monothiol Glutaredoxin GrxD Suggest a Role in FeS Apoprotein Maturation (LB132)

Avneesh Saini; Sylvain Boutigny; Edward E. K. Baidoo; Natasha Yeung; Jay D. Keasling; Gareth Butland


Archive | 2007

High-throughput identification of multi-protein complexes via TAP tagging in Desulfovibrio vulgaris

Dwayne A. Elias; Gareth Butland; Grant M. Zane; Isaac B. Hilton; Terry C. Hazen; Mark D. Biggin; Judy D. Wall

Collaboration


Dive into the Gareth Butland's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Dwayne A. Elias

Oak Ridge National Laboratory

View shared research outputs
Top Co-Authors

Avatar

John-Marc Chandonia

Lawrence Berkeley National Laboratory

View shared research outputs
Top Co-Authors

Avatar

Mark D. Biggin

Lawrence Berkeley National Laboratory

View shared research outputs
Top Co-Authors

Avatar

Mary E. Singer

Lawrence Berkeley National Laboratory

View shared research outputs
Top Co-Authors

Avatar

Steven C. Hall

University of California

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Adam P. Arkin

Lawrence Berkeley National Laboratory

View shared research outputs
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge