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Featured researches published by James T. Morton.


Nature | 2016

Microbiome-wide association studies link dynamic microbial consortia to disease

Jack A. Gilbert; Robert A. Quinn; Justine W. Debelius; Zhenjiang Zech Xu; James T. Morton; Neha Garg; Janet K. Jansson; Pieter C. Dorrestein; Rob Knight

Rapid advances in DNA sequencing, metabolomics, proteomics and computational tools are dramatically increasing access to the microbiome and identification of its links with disease. In particular, time-series studies and multiple molecular perspectives are facilitating microbiome-wide association studies, which are analogous to genome-wide association studies. Early findings point to actionable outcomes of microbiome-wide association studies, although their clinical application has yet to be approved. An appreciation of the complexity of interactions among the microbiome and the hosts diet, chemistry and health, as well as determining the frequency of observations that are needed to capture and integrate this dynamic interface, is paramount for developing precision diagnostics and therapies that are based on the microbiome.


mSystems | 2017

Deblur Rapidly Resolves Single-Nucleotide Community Sequence Patterns

Amnon Amir; Daniel McDonald; Jose A. Navas-Molina; Evguenia Kopylova; James T. Morton; Zhenjiang Zech Xu; Eric P. Kightley; Luke R. Thompson; Embriette R. Hyde; Antonio González; Rob Knight

Deblur provides a rapid and sensitive means to assess ecological patterns driven by differentiation of closely related taxa. This algorithm provides a solution to the problem of identifying real ecological differences between taxa whose amplicons differ by a single base pair, is applicable in an automated fashion to large-scale sequencing data sets, and can integrate sequencing runs collected over time. ABSTRACT High-throughput sequencing of 16S ribosomal RNA gene amplicons has facilitated understanding of complex microbial communities, but the inherent noise in PCR and DNA sequencing limits differentiation of closely related bacteria. Although many scientific questions can be addressed with broad taxonomic profiles, clinical, food safety, and some ecological applications require higher specificity. Here we introduce a novel sub-operational-taxonomic-unit (sOTU) approach, Deblur, that uses error profiles to obtain putative error-free sequences from Illumina MiSeq and HiSeq sequencing platforms. Deblur substantially reduces computational demands relative to similar sOTU methods and does so with similar or better sensitivity and specificity. Using simulations, mock mixtures, and real data sets, we detected closely related bacterial sequences with single nucleotide differences while removing false positives and maintaining stability in detection, suggesting that Deblur is limited only by read length and diversity within the amplicon sequences. Because Deblur operates on a per-sample level, it scales to modern data sets and meta-analyses. To highlight Deblur’s ability to integrate data sets, we include an interactive exploration of its application to multiple distinct sequencing rounds of the American Gut Project. Deblur is open source under the Berkeley Software Distribution (BSD) license, easily installable, and downloadable from https://github.com/biocore/deblur . IMPORTANCE Deblur provides a rapid and sensitive means to assess ecological patterns driven by differentiation of closely related taxa. This algorithm provides a solution to the problem of identifying real ecological differences between taxa whose amplicons differ by a single base pair, is applicable in an automated fashion to large-scale sequencing data sets, and can integrate sequencing runs collected over time.


Movement Disorders | 2017

Parkinson's disease and Parkinson's disease medications have distinct signatures of the gut microbiome

Erin M. Hill-Burns; Justine W. Debelius; James T. Morton; William T. Wissemann; Matthew R. Lewis; Zachary D. Wallen; Shyamal D. Peddada; Stewart A. Factor; Eric Molho; Cyrus P. Zabetian; Rob Knight; Haydeh Payami

There is mounting evidence for a connection between the gut and Parkinsons disease (PD). Dysbiosis of gut microbiota could explain several features of PD.


Proceedings of the National Academy of Sciences of the United States of America | 2016

Immunization with a heat-killed preparation of the environmental bacterium Mycobacterium vaccae promotes stress resilience in mice

Stefan O. Reber; Philip H. Siebler; Nina C. Donner; James T. Morton; David G. Smith; Jared M. Kopelman; Kenneth R. Lowe; Kristen J. Wheeler; James H. Fox; James E. Hassell; Benjamin N. Greenwood; Charline Jansch; Anja Lechner; Dominic Schmidt; Nicole Uschold-Schmidt; Andrea M. Füchsl; Dominik Langgartner; Frederick R. Walker; Matthew W. Hale; Gerardo Lopez Perez; Will Van Treuren; Antonio González; Andrea L. Halweg-Edwards; Monika Fleshner; Charles L. Raison; G. A. W. Rook; Shyamal D. Peddada; Rob Knight; Christopher A. Lowry

Significance The hygiene, or “old friends,” hypothesis proposes that lack of exposure to immunoregulatory microorganisms in modern urban societies is resulting in an epidemic of inflammatory disease, as well as psychiatric disorders in which chronic, low-level inflammation is a risk factor. An important determinant of immunoregulation is the microbial community occupying the host organism, collectively referred to as the microbiota. Here we show that stress disrupts the homeostatic relationship between the microbiota and the host, resulting in exaggerated inflammation. Treatment of mice with a heat-killed preparation of an immunoregulatory environmental microorganism, Mycobacterium vaccae, prevents stress-induced pathology. These data support a strategy of “reintroducing” humans to their old friends to promote optimal health and wellness. The prevalence of inflammatory diseases is increasing in modern urban societies. Inflammation increases risk of stress-related pathology; consequently, immunoregulatory or antiinflammatory approaches may protect against negative stress-related outcomes. We show that stress disrupts the homeostatic relationship between the microbiota and the host, resulting in exaggerated inflammation. Repeated immunization with a heat-killed preparation of Mycobacterium vaccae, an immunoregulatory environmental microorganism, reduced subordinate, flight, and avoiding behavioral responses to a dominant aggressor in a murine model of chronic psychosocial stress when tested 1–2 wk following the final immunization. Furthermore, immunization with M. vaccae prevented stress-induced spontaneous colitis and, in stressed mice, induced anxiolytic or fear-reducing effects as measured on the elevated plus-maze, despite stress-induced gut microbiota changes characteristic of gut infection and colitis. Immunization with M. vaccae also prevented stress-induced aggravation of colitis in a model of inflammatory bowel disease. Depletion of regulatory T cells negated protective effects of immunization with M. vaccae on stress-induced colitis and anxiety-like or fear behaviors. These data provide a framework for developing microbiome- and immunoregulation-based strategies for prevention of stress-related pathologies.


mSystems | 2017

Balance Trees Reveal Microbial Niche Differentiation

James T. Morton; Jon G. Sanders; Robert A. Quinn; Daniel McDonald; Antonio González; Yoshiki Vázquez-Baeza; Jose A. Navas-Molina; Se Jin Song; Jessica L. Metcalf; Embriette R. Hyde; Manuel E. Lladser; Pieter C. Dorrestein; Rob Knight

By explicitly accounting for the compositional nature of 16S rRNA gene data through the concept of balances, balance trees yield novel biological insights into niche differentiation. The software to perform this analysis is available under an open-source license and can be obtained at https://github.com/biocore/gneiss . ABSTRACT Advances in sequencing technologies have enabled novel insights into microbial niche differentiation, from analyzing environmental samples to understanding human diseases and informing dietary studies. However, identifying the microbial taxa that differentiate these samples can be challenging. These issues stem from the compositional nature of 16S rRNA gene data (or, more generally, taxon or functional gene data); the changes in the relative abundance of one taxon influence the apparent abundances of the others. Here we acknowledge that inferring properties of individual bacteria is a difficult problem and instead introduce the concept of balances to infer meaningful properties of subcommunities, rather than properties of individual species. We show that balances can yield insights about niche differentiation across multiple microbial environments, including soil environments and lung sputum. These techniques have the potential to reshape how we carry out future ecological analyses aimed at revealing differences in relative taxonomic abundances across different samples. IMPORTANCE By explicitly accounting for the compositional nature of 16S rRNA gene data through the concept of balances, balance trees yield novel biological insights into niche differentiation. The software to perform this analysis is available under an open-source license and can be obtained at https://github.com/biocore/gneiss . Author Video: An author video summary of this article is available.


Mbio | 2017

Impact of Dietary Resistant Starch on the Human Gut Microbiome, Metaproteome, and Metabolome

Tanja Verena Maier; Marianna Lucio; Lang Ho Lee; Nathan C. VerBerkmoes; Colin J. Brislawn; Jörg Bernhardt; Regina Lamendella; Jason McDermott; Nathalie Bergeron; Silke S. Heinzmann; James T. Morton; Antonio Gonzalez; Gail Ackermann; Rob Knight; Katharina Riedel; Ronald M. Krauss; Philippe Schmitt-Kopplin; Janet K. Jansson

ABSTRACT Diet can influence the composition of the human microbiome, and yet relatively few dietary ingredients have been systematically investigated with respect to their impact on the functional potential of the microbiome. Dietary resistant starch (RS) has been shown to have health benefits, but we lack a mechanistic understanding of the metabolic processes that occur in the gut during digestion of RS. Here, we collected samples during a dietary crossover study with diets containing large or small amounts of RS. We determined the impact of RS on the gut microbiome and metabolic pathways in the gut, using a combination of “omics” approaches, including 16S rRNA gene sequencing, metaproteomics, and metabolomics. This multiomics approach captured changes in the abundance of specific bacterial species, proteins, and metabolites after a diet high in resistant starch (HRS), providing key insights into the influence of dietary interventions on the gut microbiome. The combined data showed that a high-RS diet caused an increase in the ratio of Firmicutes to Bacteroidetes, including increases in relative abundances of some specific members of the Firmicutes and concurrent increases in enzymatic pathways and metabolites involved in lipid metabolism in the gut. IMPORTANCE This work was undertaken to obtain a mechanistic understanding of the complex interplay between diet and the microorganisms residing in the intestine. Although it is known that gut microbes play a key role in digestion of the food that we consume, the specific contributions of different microorganisms are not well understood. In addition, the metabolic pathways and resultant products of metabolism during digestion are highly complex. To address these knowledge gaps, we used a combination of molecular approaches to determine the identities of the microorganisms in the gut during digestion of dietary starch as well as the metabolic pathways that they carry out. Together, these data provide a more complete picture of the function of the gut microbiome in digestion, including links between an RS diet and lipid metabolism and novel linkages between specific gut microbes and their metabolites and proteins produced in the gut. This work was undertaken to obtain a mechanistic understanding of the complex interplay between diet and the microorganisms residing in the intestine. Although it is known that gut microbes play a key role in digestion of the food that we consume, the specific contributions of different microorganisms are not well understood. In addition, the metabolic pathways and resultant products of metabolism during digestion are highly complex. To address these knowledge gaps, we used a combination of molecular approaches to determine the identities of the microorganisms in the gut during digestion of dietary starch as well as the metabolic pathways that they carry out. Together, these data provide a more complete picture of the function of the gut microbiome in digestion, including links between an RS diet and lipid metabolism and novel linkages between specific gut microbes and their metabolites and proteins produced in the gut.


Bioinformatics | 2016

Rail-RNA: Scalable analysis of RNA-seq splicing and coverage

Abhinav Nellore; Leonardo Collado-Torres; Andrew E. Jaffe; José Alquicira-Hernández; Christopher Wilks; Jacob Pritt; James T. Morton; Jeffrey T. Leek; Ben Langmead

Motivation: RNA sequencing (RNA‐seq) experiments now span hundreds to thousands of samples. Current spliced alignment software is designed to analyze each sample separately. Consequently, no information is gained from analyzing multiple samples together, and it requires extra work to obtain analysis products that incorporate data from across samples. Results: We describe Rail‐RNA, a cloud‐enabled spliced aligner that analyzes many samples at once. Rail‐RNA eliminates redundant work across samples, making it more efficient as samples are added. For many samples, Rail‐RNA is more accurate than annotation‐assisted aligners. We use Rail‐RNA to align 667 RNA‐seq samples from the GEUVADIS project on Amazon Web Services in under 16 h for US


Psychosomatic Medicine | 2017

The Microbiome in Posttraumatic Stress Disorder and Trauma-exposed Controls: An Exploratory Study

Sian Hemmings; Stefanie Malan-Müller; Leigh van den Heuvel; Brittany A. Demmitt; Maggie A. Stanislawski; David G. Smith; Adam D. Bohr; Christopher E. Stamper; Embriette R. Hyde; James T. Morton; Clarisse Marotz; Philip H. Siebler; Maarten Braspenning; Wim Van Criekinge; Andrew J. Hoisington; Lisa A. Brenner; Teodor T. Postolache; Matthew B. McQueen; Kenneth S. Krauter; Rob Knight; Soraya Seedat; Christopher A. Lowry

0.91 per sample. Rail‐RNA outputs alignments in SAM/BAM format; but it also outputs (i) base‐level coverage bigWigs for each sample; (ii) coverage bigWigs encoding normalized mean and median coverages at each base across samples analyzed; and (iii) exon‐exon splice junctions and indels (features) in columnar formats that juxtapose coverages in samples in which a given feature is found. Supplementary outputs are ready for use with downstream packages for reproducible statistical analysis. We use Rail‐RNA to identify expressed regions in the GEUVADIS samples and show that both annotated and unannotated (novel) expressed regions exhibit consistent patterns of variation across populations and with respect to known confounding variables. Availability and Implementation: Rail‐RNA is open‐source software available at http://rail.bio. Contacts: [email protected] or [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Nature Reviews Microbiology | 2018

Best practices for analysing microbiomes

Rob Knight; Alison Vrbanac; Bryn C. Taylor; Alexander A. Aksenov; Chris Callewaert; Justine W. Debelius; Antonio González; Tomasz Kosciolek; Laura-Isobel McCall; Daniel McDonald; Alexey V. Melnik; James T. Morton; Jose Navas; Robert A. Quinn; Jon G. Sanders; Austin D. Swafford; Luke R. Thompson; Anupriya Tripathi; Zhenjiang Zech Xu; Jesse Zaneveld; Qiyun Zhu; J. Gregory Caporaso; Pieter C. Dorrestein

Objective Inadequate immunoregulation and elevated inflammation may be risk factors for posttraumatic stress disorder (PTSD), and microbial inputs are important determinants of immunoregulation; however, the association between the gut microbiota and PTSD is unknown. This study investigated the gut microbiome in a South African sample of PTSD-affected individuals and trauma-exposed (TE) controls to identify potential differences in microbial diversity or microbial community structure. Methods The Clinician-Administered PTSD Scale for DSM-5 was used to diagnose PTSD according to Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition criteria. Microbial DNA was extracted from stool samples obtained from 18 individuals with PTSD and 12 TE control participants. Bacterial 16S ribosomal RNA gene V3/V4 amplicons were generated and sequenced. Microbial community structure, &agr;-diversity, and &bgr;-diversity were analyzed; random forest analysis was used to identify associations between bacterial taxa and PTSD. Results There were no differences between PTSD and TE control groups in &agr;- or &bgr;-diversity measures (e.g., &agr;-diversity: Shannon index, t = 0.386, p = .70; &bgr;-diversity, on the basis of analysis of similarities: Bray-Curtis test statistic = –0.033, p = .70); however, random forest analysis highlighted three phyla as important to distinguish PTSD status: Actinobacteria, Lentisphaerae, and Verrucomicrobia. Decreased total abundance of these taxa was associated with higher Clinician-Administered PTSD Scale scores (r = –0.387, p = .035). Conclusions In this exploratory study, measures of overall microbial diversity were similar among individuals with PTSD and TE controls; however, decreased total abundance of Actinobacteria, Lentisphaerae, and Verrucomicrobia was associated with PTSD status.


BMC Bioinformatics | 2015

A large scale prediction of bacteriocin gene blocks suggests a wide functional spectrum for bacteriocins

James T. Morton; Stefan D. Freed; Shaun W. Lee; Iddo Friedberg

Complex microbial communities shape the dynamics of various environments, ranging from the mammalian gastrointestinal tract to the soil. Advances in DNA sequencing technologies and data analysis have provided drastic improvements in microbiome analyses, for example, in taxonomic resolution, false discovery rate control and other properties, over earlier methods. In this Review, we discuss the best practices for performing a microbiome study, including experimental design, choice of molecular analysis technology, methods for data analysis and the integration of multiple omics data sets. We focus on recent findings that suggest that operational taxonomic unit-based analyses should be replaced with new methods that are based on exact sequence variants, methods for integrating metagenomic and metabolomic data, and issues surrounding compositional data analysis, where advances have been particularly rapid. We note that although some of these approaches are new, it is important to keep sight of the classic issues that arise during experimental design and relate to research reproducibility. We describe how keeping these issues in mind allows researchers to obtain more insight from their microbiome data sets.Complex microbial communities shape the dynamics of various environments. In this Review, Knight and colleagues discuss the best practices for performing a microbiome study, including experimental design, choice of molecular analysis technology, methods for data analysis and the integration of multiple omics data sets.

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Rob Knight

University of California

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Amnon Amir

University of California

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Luke R. Thompson

Atlantic Oceanographic and Meteorological Laboratory

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Jon G. Sanders

University of California

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