Network


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

Hotspot


Dive into the research topics where Adam Robbins-Pianka is active.

Publication


Featured researches published by Adam Robbins-Pianka.


PeerJ | 2014

Subsampled open-reference clustering creates consistent, comprehensive OTU definitions and scales to billions of sequences

Jai Ram Rideout; Yan He; Jose A. Navas-Molina; William A. Walters; Luke K. Ursell; Sean M. Gibbons; John Chase; Daniel McDonald; Antonio Gonzalez; Adam Robbins-Pianka; Jose C. Clemente; Jack A. Gilbert; Susan M. Huse; Hong Wei Zhou; Rob Knight; J. Gregory Caporaso

We present a performance-optimized algorithm, subsampled open-reference OTU picking, for assigning marker gene (e.g., 16S rRNA) sequences generated on next-generation sequencing platforms to operational taxonomic units (OTUs) for microbial community analysis. This algorithm provides benefits over de novo OTU picking (clustering can be performed largely in parallel, reducing runtime) and closed-reference OTU picking (all reads are clustered, not only those that match a reference database sequence with high similarity). Because more of our algorithm can be run in parallel relative to “classic” open-reference OTU picking, it makes open-reference OTU picking tractable on massive amplicon sequence data sets (though on smaller data sets, “classic” open-reference OTU clustering is often faster). We illustrate that here by applying it to the first 15,000 samples sequenced for the Earth Microbiome Project (1.3 billion V4 16S rRNA amplicons). To the best of our knowledge, this is the largest OTU picking run ever performed, and we estimate that our new algorithm runs in less than 1/5 the time than would be required of “classic” open reference OTU picking. We show that subsampled open-reference OTU picking yields results that are highly correlated with those generated by “classic” open-reference OTU picking through comparisons on three well-studied datasets. An implementation of this algorithm is provided in the popular QIIME software package, which uses uclust for read clustering. All analyses were performed using QIIME’s uclust wrappers, though we provide details (aided by the open-source code in our GitHub repository) that will allow implementation of subsampled open-reference OTU picking independently of QIIME (e.g., in a compiled programming language, where runtimes should be further reduced). Our analyses should generalize to other implementations of these OTU picking algorithms. Finally, we present a comparison of parameter settings in QIIME’s OTU picking workflows and make recommendations on settings for these free parameters to optimize runtime without reducing the quality of the results. These optimized parameters can vastly decrease the runtime of uclust-based OTU picking in QIIME.


The ISME Journal | 2014

Metagenomics reveals sediment microbial community response to Deepwater Horizon oil spill

Olivia U. Mason; Nicole M. Scott; Antonio Gonzalez; Adam Robbins-Pianka; Jacob Bælum; Jeffrey Kimbrel; Nicholas J. Bouskill; Emmanuel Prestat; Sharon E. Borglin; Dominique Joyner; Julian L. Fortney; Diogo Jurelevicius; William T. Stringfellow; Lisa Alvarez-Cohen; Terry C. Hazen; Rob Knight; Jack A. Gilbert; Janet K. Jansson

The Deepwater Horizon (DWH) oil spill in the spring of 2010 resulted in an input of ∼4.1 million barrels of oil to the Gulf of Mexico; >22% of this oil is unaccounted for, with unknown environmental consequences. Here we investigated the impact of oil deposition on microbial communities in surface sediments collected at 64 sites by targeted sequencing of 16S rRNA genes, shotgun metagenomic sequencing of 14 of these samples and mineralization experiments using 14C-labeled model substrates. The 16S rRNA gene data indicated that the most heavily oil-impacted sediments were enriched in an uncultured Gammaproteobacterium and a Colwellia species, both of which were highly similar to sequences in the DWH deep-sea hydrocarbon plume. The primary drivers in structuring the microbial community were nitrogen and hydrocarbons. Annotation of unassembled metagenomic data revealed the most abundant hydrocarbon degradation pathway encoded genes involved in degrading aliphatic and simple aromatics via butane monooxygenase. The activity of key hydrocarbon degradation pathways by sediment microbes was confirmed by determining the mineralization of 14C-labeled model substrates in the following order: propylene glycol, dodecane, toluene and phenanthrene. Further, analysis of metagenomic sequence data revealed an increase in abundance of genes involved in denitrification pathways in samples that exceeded the Environmental Protection Agency (EPA)’s benchmarks for polycyclic aromatic hydrocarbons (PAHs) compared with those that did not. Importantly, these data demonstrate that the indigenous sediment microbiota contributed an important ecosystem service for remediation of oil in the Gulf. However, PAHs were more recalcitrant to degradation, and their persistence could have deleterious impacts on the sediment ecosystem.


Microbial Biotechnology | 2013

Crystal ball - 2013.

Thomas P. Curtis; Jean-Marc Daran; Jack T. Pronk; Joachim Frey; Janet K. Jansson; Adam Robbins-Pianka; Rob Knight; Anna Schnürer; Barth F. Smets; Eddy J. Smid; Tjakko Abee; Miguel Vicente; Karsten Zengler

In this feature, leading researchers in the field of environmental microbiology speculate on the technical and conceptual developments that will drive innovative research and open new vistas over the next few years.


mSystems | 2017

Correcting for Microbial Blooms in Fecal Samples during Room-Temperature Shipping.

Amnon Amir; Daniel McDonald; Jose A. Navas-Molina; Justine W. Debelius; James T. Morton; Embriette R. Hyde; Adam Robbins-Pianka; Rob Knight

In many microbiome studies, the necessity to store samples at room temperature (i.e., remote fieldwork) and the ability to ship samples without hazardous materials that require special handling training, such as ethanol (i.e., citizen science efforts), is paramount. However, although room-temperature storage for a few days has been shown not to obscure physiologically relevant microbiome differences between comparison groups, there are still changes in specific bacterial taxa, notably, in members of the class Gammaproteobacteria, that can make microbiome profiles difficult to interpret. Here we identify the most problematic taxa and show that removing sequences from just a few fast-growing taxa is sufficient to correct microbiome profiles. ABSTRACT The use of sterile swabs is a convenient and common way to collect microbiome samples, and many studies have shown that the effects of room-temperature storage are smaller than physiologically relevant differences between subjects. However, several bacterial taxa, notably members of the class Gammaproteobacteria, grow at room temperature, sometimes confusing microbiome results, particularly when stability is assumed. Although comparative benchmarking has shown that several preservation methods, including the use of 95% ethanol, fecal occult blood test (FOBT) and FTA cards, and Omnigene-GUT kits, reduce changes in taxon abundance during room-temperature storage, these techniques all have drawbacks and cannot be applied retrospectively to samples that have already been collected. Here we performed a meta-analysis using several different microbiome sample storage condition studies, showing consistent trends in which specific bacteria grew (i.e., “bloomed”) at room temperature, and introduce a procedure for removing the sequences that most distort analyses. In contrast to similarity-based clustering using operational taxonomic units (OTUs), we use a new technique called “Deblur” to identify the exact sequences corresponding to blooming taxa, greatly reducing false positives and also dramatically decreasing runtime. We show that applying this technique to samples collected for the American Gut Project (AGP), for which participants simply mail samples back without the use of ice packs or other preservatives, yields results consistent with published microbiome studies performed with frozen or otherwise preserved samples. IMPORTANCE In many microbiome studies, the necessity to store samples at room temperature (i.e., remote fieldwork) and the ability to ship samples without hazardous materials that require special handling training, such as ethanol (i.e., citizen science efforts), is paramount. However, although room-temperature storage for a few days has been shown not to obscure physiologically relevant microbiome differences between comparison groups, there are still changes in specific bacterial taxa, notably, in members of the class Gammaproteobacteria, that can make microbiome profiles difficult to interpret. Here we identify the most problematic taxa and show that removing sequences from just a few fast-growing taxa is sufficient to correct microbiome profiles.


Algal Research-Biomass Biofuels and Bioproducts | 2018

Bacterial community changes in an industrial algae production system

Scott P. Fulbright; Adam Robbins-Pianka; Donna Berg-Lyons; Rob Knight; Kenneth F. Reardon; Stephen Chisholm

While microalgae are a promising feedstock for production of fuels and other chemicals, a challenge for the algal bioproducts industry is obtaining consistent, robust algae growth. Algal cultures include complex bacterial communities and can be difficult to manage because specific bacteria can promote or reduce algae growth. To overcome bacterial contamination, algae growers may use closed photobioreactors designed to reduce the number of contaminant organisms. Even with closed systems, bacteria are known to enter and cohabitate, but little is known about these communities. Therefore, the richness, structure, and composition of bacterial communities were characterized in closed photobioreactor cultivations of Nannochloropsis salina in F/2 medium at different scales, across nine months spanning late summer-early spring, and during a sequence of serially inoculated cultivations. Using 16S rRNA sequence data from 275 samples, bacterial communities in small, medium, and large cultures were shown to be significantly different. Larger systems contained richer bacterial communities compared to smaller systems. Relationships between bacterial communities and algae growth were complex. On one hand, blooms of a specific bacterial type were observed in three abnormal, poorly performing replicate cultivations, while on the other, notable changes in the bacterial community structures were observed in a series of serial large-scale batch cultivations that had similar growth rates. Bacteria common to the majority of samples were identified, including a single OTU within the class Saprospirae that was found in all samples. This study contributes important information for crop protection in algae systems, and demonstrates the complex ecosystems that need to be understood for consistent, successful industrial algae cultivation. This is the first study to profile bacterial communities during the scale-up process of industrial algae systems.


Biotechnology and Bioengineering | 2017

Multiplex growth rate phenotyping of synthetic mutants in selection to engineer glucose and xylose co-utilization in Escherichia coli.

Joost Groot; Sidney C. Cepress-Mclean; Adam Robbins-Pianka; Rob Knight; Ryan T. Gill

Engineering the simultaneous consumption of glucose and xylose sugars is critical to enable the sustainable production of biofuels from lignocellulosic biomass. In most major industrial microorganisms glucose completely inhibits the uptake of xylose, limiting efficient sugar mixture conversion. In E. coli removal of the major glucose transporter PTS allows for glucose and xylose co‐consumption but only after prolonged adaptation, which is an effective process but hard to control and prone to co‐evolving undesired traits. Here we synthetically engineer mutants to target sugar co‐consumption properties; we subject a PTS− mutant to a short adaptive step and subsequently either delete or overexpress key genes previously suggested to affect sugar consumption. Screening the co‐consumption properties of these mutants individually is very laborious. We show we can evaluate sugar co‐consumption properties in parallel by culturing the mutants in selection and applying a novel approach that computes mutant growth rates in selection using chromosomal barcode counts obtained from Next‐Generation Sequencing. We validate this multiplex growth rate phenotyping approach with individual mutant pure cultures, identify new instances of mutants cross‐feeding on metabolic byproducts, and, importantly, find that the rates of glucose and xylose co‐consumption can be tuned by altering glucokinase expression in our PTS− background. Biotechnol. Bioeng. 2017;114: 885–893.


Nature Methods | 2018

Qiita: rapid, web-enabled microbiome meta-analysis

Antonio González; Jose A. Navas-Molina; Tomasz Kosciolek; Daniel McDonald; Yoshiki Vázquez-Baeza; Gail Ackermann; Jeff DeReus; Stefan Janssen; Austin D. Swafford; Stephanie B. Orchanian; Jon G. Sanders; Joshua Shorenstein; Hannes Holste; Semar Petrus; Adam Robbins-Pianka; Colin J. Brislawn; Mingxun Wang; Jai Ram Rideout; Evan Bolyen; Matthew Dillon; J. Gregory Caporaso; Pieter C. Dorrestein; Rob Knight

Multi-omic insights into microbiome function and composition typically advance one study at a time. However, in order for relationships across studies to be fully understood, data must be aggregated into meta-analyses. This makes it possible to generate new hypotheses by finding features that are reproducible across biospecimens and data layers. Qiita dramatically accelerates such integration tasks in a web-based microbiome-comparison platform, which we demonstrate with Human Microbiome Project and Integrative Human Microbiome Project (iHMP) data.The Qiita web platform provides access to large amounts of public microbial multi-omic data and enables easy analysis and meta-analysis of standardized private and public data.


Microbial Biotechnology | 2013

Crystal ball - 2013: Crystal ball

Thomas P. Curtis; Jean-Marc Daran; Jack T. Pronk; Joachim Frey; Janet K. Jansson; Adam Robbins-Pianka; Rob Knight; Anna Schnürer; Barth F. Smets; Eddy J. Smid; Tjakko Abee; Miguel Vicente; Karsten Zengler

In this feature, leading researchers in the field of environmental microbiology speculate on the technical and conceptual developments that will drive innovative research and open new vistas over the next few years.


Archive | 2012

The future of sustainable fish production lies in vaccine research and development and revised regulatory measures

Thomas P. Curtis; Jean-Marc Daran; Jack T. Pronk; Joachim Frey; Janet K. Jansson; Adam Robbins-Pianka; Rob Knight; Anna Schnürer; Barth F. Smets; Eddy J. Smid; Tjakko Abee; Miguel Vicente; Karsten Zengler

In this feature, leading researchers in the field of environmental microbiology speculate on the technical and conceptual developments that will drive innovative research and open new vistas over the next few years.


Cell | 2014

Bacteria from Diverse Habitats Colonize and Compete in the Mouse Gut

Henning Seedorf; Nicholas W. Griffin; Vanessa K. Ridaura; Alejandro Reyes; Jiye Cheng; Federico E. Rey; Michelle I. Smith; Gabriel M. Simon; Rudolf H. Scheffrahn; Dagmar Woebken; Alfred M. Spormann; William Van Treuren; Luke K. Ursell; Megan Pirrung; Adam Robbins-Pianka; Brandi L. Cantarel; Vincent Lombard; Bernard Henrissat; Rob Knight; Jeffrey I. Gordon

Collaboration


Dive into the Adam Robbins-Pianka's collaboration.

Top Co-Authors

Avatar

Rob Knight

University of California

View shared research outputs
Top Co-Authors

Avatar

Antonio Gonzalez

University of Colorado Boulder

View shared research outputs
Top Co-Authors

Avatar

Daniel McDonald

University of Colorado Boulder

View shared research outputs
Top Co-Authors

Avatar

Janet K. Jansson

Pacific Northwest National Laboratory

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Luke K. Ursell

University of Colorado Boulder

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Eddy J. Smid

Wageningen University and Research Centre

View shared research outputs
Top Co-Authors

Avatar

Jack T. Pronk

Delft University of Technology

View shared research outputs
Researchain Logo
Decentralizing Knowledge