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Dive into the research topics where Janaka N. Edirisinghe is active.

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Featured researches published by Janaka N. Edirisinghe.


bioRxiv | 2016

The DOE Systems Biology Knowledgebase (KBase)

Adam P. Arkin; Rick Stevens; Robert W. Cottingham; Sergei Maslov; Christopher S. Henry; Paramvir Dehal; Doreen Ware; Fernando Perez; Nomi L. Harris; Shane Canon; Michael W Sneddon; Matthew L Henderson; William J Riehl; Dan Gunter; Dan Murphy-Olson; Stephen Chan; Roy T Kamimura; Thomas S Brettin; Folker Meyer; Dylan Chivian; David J. Weston; Elizabeth M. Glass; Brian H. Davison; Sunita Kumari; Benjamin H Allen; Jason K. Baumohl; Aaron A. Best; Ben Bowen; Steven E. Brenner; Christopher C Bun

The U.S. Department of Energy Systems Biology Knowledgebase (KBase) is an open-source software and data platform designed to meet the grand challenge of systems biology — predicting and designing biological function from the biomolecular (small scale) to the ecological (large scale). KBase is available for anyone to use, and enables researchers to collaboratively generate, test, compare, and share hypotheses about biological functions; perform large-scale analyses on scalable computing infrastructure; and combine experimental evidence and conclusions that lead to accurate models of plant and microbial physiology and community dynamics. The KBase platform has (1) extensible analytical capabilities that currently include genome assembly, annotation, ontology assignment, comparative genomics, transcriptomics, and metabolic modeling; (2) a web-browser-based user interface that supports building, sharing, and publishing reproducible and well-annotated analyses with integrated data; (3) access to extensive computational resources; and (4) a software development kit allowing the community to add functionality to the system.


PLOS ONE | 2014

Comparative genomics of cultured and uncultured strains suggests genes essential for free-living growth of Liberibacter.

Jennie R. Fagen; Michael T. Leonard; Connor M. McCullough; Janaka N. Edirisinghe; Christopher S. Henry; Michael Davis; Eric W. Triplett

The full genomes of two uncultured plant pathogenic Liberibacter, Ca. Liberibacter asiaticus and Ca. Liberibacter solanacearum, are publicly available. Recently, the larger genome of a closely related cultured strain, Liberibacter crescens BT-1, was described. To gain insights into our current inability to culture most Liberibacter, a comparative genomics analysis was done based on the RAST, KEGG, and manual annotations of these three organisms. In addition, pathogenicity genes were examined in all three bacteria. Key deficiencies were identified in Ca. L. asiaticus and Ca. L. solanacearum that might suggest why these organisms have not yet been cultured. Over 100 genes involved in amino acid and vitamin synthesis were annotated exclusively in L. crescens BT-1. However, none of these deficiencies are limiting in the rich media used to date. Other genes exclusive to L. crescens BT-1 include those involved in cell division, the stringent response regulatory pathway, and multiple two component regulatory systems. These results indicate that L. crescens is capable of growth under a much wider range of conditions than the uncultured Liberibacter strains. No outstanding differences were noted in pathogenicity-associated systems, suggesting that L. crescens BT-1 may be a plant pathogen on an as yet unidentified host.


Scientific Reports | 2017

Metabolic Reconstruction and Modeling Microbial Electrosynthesis

Christopher W. Marshall; Daniel E. Ross; Kim M. Handley; Pamela Weisenhorn; Janaka N. Edirisinghe; Christopher S. Henry; Jack A. Gilbert; Harold D. May; R. Sean Norman

Microbial electrosynthesis is a renewable energy and chemical production platform that relies on microbial cells to capture electrons from a cathode and fix carbon. Yet despite the promise of this technology, the metabolic capacity of the microbes that inhabit the electrode surface and catalyze electron transfer in these systems remains largely unknown. We assembled thirteen draft genomes from a microbial electrosynthesis system producing primarily acetate from carbon dioxide, and their transcriptional activity was mapped to genomes from cells on the electrode surface and in the supernatant. This allowed us to create a metabolic model of the predominant community members belonging to Acetobacterium, Sulfurospirillum, and Desulfovibrio. According to the model, the Acetobacterium was the primary carbon fixer, and a keystone member of the community. Transcripts of soluble hydrogenases and ferredoxins from Acetobacterium and hydrogenases, formate dehydrogenase, and cytochromes of Desulfovibrio were found in high abundance near the electrode surface. Cytochrome c oxidases of facultative members of the community were highly expressed in the supernatant despite completely sealed reactors and constant flushing with anaerobic gases. These molecular discoveries and metabolic modeling now serve as a foundation for future examination and development of electrosynthetic microbial communities.


Frontiers in Microbiology | 2016

From DNA to FBA: How to Build Your Own Genome-Scale Metabolic Model

Daniel A. Cuevas; Janaka N. Edirisinghe; Chris Henry; Ross Overbeek; Taylor G. O’Connell; Robert A. Edwards

Microbiological studies are increasingly relying on in silico methods to perform exploration and rapid analysis of genomic data, and functional genomics studies are supplemented by the new perspectives that genome-scale metabolic models offer. A mathematical model consisting of a microbe’s entire metabolic map can be rapidly determined from whole-genome sequencing and annotating the genomic material encoded in its DNA. Flux-balance analysis (FBA), a linear programming technique that uses metabolic models to predict the phenotypic responses imposed by environmental elements and factors, is the leading method to simulate and manipulate cellular growth in silico. However, the process of creating an accurate model to use in FBA consists of a series of steps involving a multitude of connections between bioinformatics databases, enzyme resources, and metabolic pathways. We present the methodology and procedure to obtain a metabolic model using PyFBA, an extensible Python-based open-source software package aimed to provide a platform where functional annotations are used to build metabolic models (http://linsalrob.github.io/PyFBA). Backed by the Model SEED biochemistry database, PyFBA contains methods to reconstruct a microbe’s metabolic map, run FBA upon different media conditions, and gap-fill its metabolism. The extensibility of PyFBA facilitates novel techniques in creating accurate genome-scale metabolic models.


eLife | 2017

Evolution of substrate specificity in a retained enzyme driven by gene loss

Ana Lilia Juárez-vazquez; Janaka N. Edirisinghe; Ernesto Alonso Verduzco-Castro; Karolina Michalska; Chenggang Wu; Lianet Noda-García; Gyorgy Babnigg; Michael Endres; Sofía Medina-Ruíz; Julián Santoyo-Flores; Mauricio Carrillo-Tripp; Hung Ton-That; Andrzej Joachimiak; Christopher S. Henry; Francisco Barona-Gómez

The connection between gene loss and the functional adaptation of retained proteins is still poorly understood. We apply phylogenomics and metabolic modeling to detect bacterial species that are evolving by gene loss, with the finding that Actinomycetaceae genomes from human cavities are undergoing sizable reductions, including loss of L-histidine and L-tryptophan biosynthesis. We observe that the dual-substrate phosphoribosyl isomerase A or priA gene, at which these pathways converge, appears to coevolve with the occurrence of trp and his genes. Characterization of a dozen PriA homologs shows that these enzymes adapt from bifunctionality in the largest genomes, to a monofunctional, yet not necessarily specialized, inefficient form in genomes undergoing reduction. These functional changes are accomplished via mutations, which result from relaxation of purifying selection, in residues structurally mapped after sequence and X-ray structural analyses. Our results show how gene loss can drive the evolution of substrate specificity from retained enzymes. DOI: http://dx.doi.org/10.7554/eLife.22679.001


BMC Genomics | 2016

Modeling central metabolism and energy biosynthesis across microbial life.

Janaka N. Edirisinghe; Pamela Weisenhorn; Neal Conrad; Fangfang Xia; Ross Overbeek; Rick Stevens; Christopher S. Henry

BackgroundAutomatically generated bacterial metabolic models, and even some curated models, lack accuracy in predicting energy yields due to poor representation of key pathways in energy biosynthesis and the electron transport chain (ETC). Further compounding the problem, complex interlinking pathways in genome-scale metabolic models, and the need for extensive gapfilling to support complex biomass reactions, often results in predicting unrealistic yields or unrealistic physiological flux profiles.ResultsTo overcome this challenge, we developed methods and tools (http://coremodels.mcs.anl.gov) to build high quality core metabolic models (CMM) representing accurate energy biosynthesis based on a well studied, phylogenetically diverse set of model organisms. We compare these models to explore the variability of core pathways across all microbial life, and by analyzing the ability of our core models to synthesize ATP and essential biomass precursors, we evaluate the extent to which the core metabolic pathways and functional ETCs are known for all microbes. 6,600 (80xa0%) of our models were found to have some type of aerobic ETC, whereas 5,100 (62xa0%) have an anaerobic ETC, and 1,279 (15xa0%) do not have any ETC. Using our manually curated ETC and energy biosynthesis pathways with no gapfilling at all, we predict accurate ATP yields for nearly 5586 (70xa0%) of the models under aerobic and anaerobic growth conditions. This study revealed gaps in our knowledge of the central pathways that result in 2,495 (30xa0%) CMMs being unable to produce ATP under any of the tested conditions. We then established a methodology for the systematic identification and correction of inconsistent annotations using core metabolic models coupled with phylogenetic analysis.ConclusionsWe predict accurate energy yields based on our improved annotations in energy biosynthesis pathways and the implementation of diverse ETC reactions across the microbial tree of life. We highlighted missing annotations that were essential to energy biosynthesis in our models. We examine the diversity of these pathways across all microbial life and enable the scientific community to explore the analyses generated from this large-scale analysis of over 8000 microbial genomes.


Nature Biotechnology | 2018

KBase: The United States Department of Energy Systems Biology Knowledgebase

Adam P. Arkin; Robert W. Cottingham; Christopher S. Henry; Nomi L. Harris; Rick Stevens; Sergei Maslov; Paramvir Dehal; Doreen Ware; Fernando Perez; Shane Canon; Michael W Sneddon; Matthew L Henderson; William J Riehl; Dan Murphy-Olson; Stephen Chan; Roy T Kamimura; Sunita Kumari; Meghan M Drake; Thomas Brettin; Elizabeth M. Glass; Dylan Chivian; Dan Gunter; David J. Weston; Benjamin H Allen; Jason K. Baumohl; Aaron A. Best; Ben Bowen; Steven E. Brenner; Christopher C Bun; John-Marc Chandonia

Author(s): Arkin, Adam P; Cottingham, Robert W; Henry, Christopher S; Harris, Nomi L; Stevens, Rick L; Maslov, Sergei; Dehal, Paramvir; Ware, Doreen; Perez, Fernando; Canon, Shane; Sneddon, Michael W; Henderson, Matthew L; Riehl, William J; Murphy-Olson, Dan; Chan, Stephen Y; Kamimura, Roy T; Kumari, Sunita; Drake, Meghan M; Brettin, Thomas S; Glass, Elizabeth M; Chivian, Dylan; Gunter, Dan; Weston, David J; Allen, Benjamin H; Baumohl, Jason; Best, Aaron A; Bowen, Ben; Brenner, Steven E; Bun, Christopher C; Chandonia, John-Marc; Chia, Jer-Ming; Colasanti, Ric; Conrad, Neal; Davis, James J; Davison, Brian H; DeJongh, Matthew; Devoid, Scott; Dietrich, Emily; Dubchak, Inna; Edirisinghe, Janaka N; Fang, Gang; Faria, Jose P; Frybarger, Paul M; Gerlach, Wolfgang; Gerstein, Mark; Greiner, Annette; Gurtowski, James; Haun, Holly L; He, Fei; Jain, Rashmi; Joachimiak, Marcin P; Keegan, Kevin P; Kondo, Shinnosuke; Kumar, Vivek; Land, Miriam L; Meyer, Folker; Mills, Marissa; Novichkov, Pavel S; Oh, Taeyun; Olsen, Gary J; Olson, Robert; Parrello, Bruce; Pasternak, Shiran; Pearson, Erik; Poon, Sarah S; Price, Gavin A; Ramakrishnan, Srividya; Ranjan, Priya; Ronald, Pamela C; Schatz, Michael C; Seaver, Samuel MD; Shukla, Maulik; Sutormin, Roman A; Syed, Mustafa H; Thomason, James; Tintle, Nathan L; Wang, Daifeng; Xia, Fangfang; Yoo, Hyunseung; Yoo, Shinjae; Yu, Dantong


Frontiers in Microbiology | 2016

Computing and Applying Atomic Regulons to Understand Gene Expression and Regulation

José P. Faria; James J. Davis; Janaka N. Edirisinghe; Ronald C. Taylor; Pamela Weisenhorn; Robert Olson; Rick Stevens; Miguel Rocha; Isabel Rocha; Aaron A. Best; Matthew DeJongh; Nathan L. Tintle; Bruce Parrello; Ross Overbeek; Christopher S. Henry

Understanding gene function and regulation is essential for the interpretation, prediction, and ultimate design of cell responses to changes in the environment. An important step toward meeting the challenge of understanding gene function and regulation is the identification of sets of genes that are always co-expressed. These gene sets, Atomic Regulons (ARs), represent fundamental units of function within a cell and could be used to associate genes of unknown function with cellular processes and to enable rational genetic engineering of cellular systems. Here, we describe an approach for inferring ARs that leverages large-scale expression data sets, gene context, and functional relationships among genes. We computed ARs for Escherichia coli based on 907 gene expression experiments and compared our results with gene clusters produced by two prevalent data-driven methods: Hierarchical clustering and k-means clustering. We compared ARs and purely data-driven gene clusters to the curated set of regulatory interactions for E. coli found in RegulonDB, showing that ARs are more consistent with gold standard regulons than are data-driven gene clusters. We further examined the consistency of ARs and data-driven gene clusters in the context of gene interactions predicted by Context Likelihood of Relatedness (CLR) analysis, finding that the ARs show better agreement with CLR predicted interactions. We determined the impact of increasing amounts of expression data on AR construction and find that while more data improve ARs, it is not necessary to use the full set of gene expression experiments available for E. coli to produce high quality ARs. In order to explore the conservation of co-regulated gene sets across different organisms, we computed ARs for Shewanella oneidensis, Pseudomonas aeruginosa, Thermus thermophilus, and Staphylococcus aureus, each of which represents increasing degrees of phylogenetic distance from E. coli. Comparison of the organism-specific ARs showed that the consistency of AR gene membership correlates with phylogenetic distance, but there is clear variability in the regulatory networks of closely related organisms. As large scale expression data sets become increasingly common for model and non-model organisms, comparative analyses of atomic regulons will provide valuable insights into fundamental regulatory modules used across the bacterial domain.


3 Biotech | 2015

Enabling comparative modeling of closely related genomes: example genus Brucella

José P. Faria; Janaka N. Edirisinghe; James J. Davis; Terrence Disz; Anna Hausmann; Christopher S. Henry; Robert Olson; Ross Overbeek; Gordon D. Pusch; Maulik Shukla; Veronika Vonstein; Alice R. Wattam

Abstract For many scientific applications, it is highly desirable to be able to compare metabolic models of closely related genomes. In this short report, we attempt to raise awareness to the fact that taking annotated genomes from public repositories and using them for metabolic model reconstructions is far from being trivial due to annotation inconsistencies. We are proposing a protocol for comparative analysis of metabolic models on closely related genomes, using fifteen strains of genus Brucella, which contains pathogens of both humans and livestock. This study lead to the identification and subsequent correction of inconsistent annotations in the SEED database, as well as the identification of 31 biochemical reactions that are common to Brucella, which are not originally identified by automated metabolic reconstructions. We are currently implementing this protocol for improving automated annotations within the SEED database and these improvements have been propagated into PATRIC, Model-SEED, KBase and RAST. This method is an enabling step for the future creation of consistent annotation systems and high-quality model reconstructions that will support in predicting accurate phenotypes such as pathogenicity, media requirements or type of respiration.


bioRxiv | 2018

Memote: A community-driven effort towards a standardized genome-scale metabolic model test suite

Christian Lieven; Moritz Emanuel Beber; Brett G. Olivier; Frank Bergmann; Meric Ataman; Parizad Babaei; Jennifer A. Bartell; Lars M. Blank; Siddharth Chauhan; Kevin Correia; Christian Diener; Andreas Dräger; Birgitta E. Ebert; Janaka N. Edirisinghe; José P. Faria; Adam M. Feist; Georgios Fengos; Ronan M. T. Fleming; Beatriz Garćıa-Jiménez; Vassily Hatzimanikatis; Wout van Helvoirt; Christopher S. Henry; Henning Hermjakob; Markus Herrgard; Hyun Uk Kim; Zachary A. King; Jasper J. Koehorst; Steffen Klamt; Edda Klipp; Meiyappan Lakshmanan

Several studies have shown that neither the formal representation nor the functional requirements of genome-scale metabolic models (GEMs) are precisely defined. Without a consistent standard, comparability, reproducibility, and interoperability of models across groups and software tools cannot be guaranteed. Here, we present memote (https://github.com/opencobra/memote) an open-source software containing a community-maintained, standardized set of metabolic model tests. The tests cover a range of aspects from annotations to conceptual integrity and can be extended to include experimental datasets for automatic model validation. In addition to testing a model once, memote can be configured to do so automatically, i.e., while building a GEM. A comprehensive report displays the model’s performance parameters, which supports informed model development and facilitates error detection. Memote provides a measure for model quality that is consistent across reconstruction platforms and analysis software and simplifies collaboration within the community by establishing workflows for publicly hosted and version controlled models.

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José P. Faria

Argonne National Laboratory

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Nomi L. Harris

Lawrence Berkeley National Laboratory

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Rick Stevens

Argonne National Laboratory

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Ross Overbeek

Argonne National Laboratory

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Benjamin H Allen

Oak Ridge National Laboratory

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Adam P. Arkin

Lawrence Berkeley National Laboratory

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Ben Bowen

Lawrence Berkeley National Laboratory

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