Markus Krummenacker
SRI International
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Featured researches published by Markus Krummenacker.
Molecular Systems Biology | 2007
Adam M. Feist; Christopher S. Henry; Jennifer L. Reed; Markus Krummenacker; Andrew R. Joyce; Peter D. Karp; Linda J. Broadbelt; Vassily Hatzimanikatis; Bernhard O. Palsson
An updated genome‐scale reconstruction of the metabolic network in Escherichia coli K‐12 MG1655 is presented. This updated metabolic reconstruction includes: (1) an alignment with the latest genome annotation and the metabolic content of EcoCyc leading to the inclusion of the activities of 1260 ORFs, (2) characterization and quantification of the biomass components and maintenance requirements associated with growth of E. coli and (3) thermodynamic information for the included chemical reactions. The conversion of this metabolic network reconstruction into an in silico model is detailed. A new step in the metabolic reconstruction process, termed thermodynamic consistency analysis, is introduced, in which reactions were checked for consistency with thermodynamic reversibility estimates. Applications demonstrating the capabilities of the genome‐scale metabolic model to predict high‐throughput experimental growth and gene deletion phenotypic screens are presented. The increased scope and computational capability using this new reconstruction is expected to broaden the spectrum of both basic biology and applied systems biology studies of E. coli metabolism.
Nucleic Acids Research | 2013
Ingrid M. Keseler; Amanda Mackie; Martín Peralta-Gil; Alberto Santos-Zavaleta; Socorro Gama-Castro; César Bonavides-Martínez; Carol A. Fulcher; Araceli M. Huerta; Anamika Kothari; Markus Krummenacker; Mario Latendresse; Luis Muñiz-Rascado; Quang Ong; Suzanne M. Paley; Imke Schröder; Alexander Glennon Shearer; Pallavi Subhraveti; Michael Travers; Deepika Weerasinghe; Verena Weiss; Julio Collado-Vides; Robert P. Gunsalus; Ian T. Paulsen; Peter D. Karp
EcoCyc (http://EcoCyc.org) is a model organism database built on the genome sequence of Escherichia coli K-12 MG1655. Expert manual curation of the functions of individual E. coli gene products in EcoCyc has been based on information found in the experimental literature for E. coli K-12-derived strains. Updates to EcoCyc content continue to improve the comprehensive picture of E. coli biology. The utility of EcoCyc is enhanced by new tools available on the EcoCyc web site, and the development of EcoCyc as a teaching tool is increasing the impact of the knowledge collected in EcoCyc.
Briefings in Bioinformatics | 2010
Peter D. Karp; Suzanne M. Paley; Markus Krummenacker; Mario Latendresse; Joseph M. Dale; Thomas J. Lee; Pallavi Kaipa; Fred Gilham; Aaron Spaulding; Liviu Popescu; Tomer Altman; Ian T. Paulsen; Ingrid M. Keseler; Ron Caspi
Pathway Tools is a production-quality software environment for creating a type of model-organism database called a Pathway/Genome Database (PGDB). A PGDB such as EcoCyc integrates the evolving understanding of the genes, proteins, metabolic network and regulatory network of an organism. This article provides an overview of Pathway Tools capabilities. The software performs multiple computational inferences including prediction of metabolic pathways, prediction of metabolic pathway hole fillers and prediction of operons. It enables interactive editing of PGDBs by DB curators. It supports web publishing of PGDBs, and provides a large number of query and visualization tools. The software also supports comparative analyses of PGDBs, and provides several systems biology analyses of PGDBs including reachability analysis of metabolic networks, and interactive tracing of metabolites through a metabolic network. More than 800 PGDBs have been created using Pathway Tools by scientists around the world, many of which are curated DBs for important model organisms. Those PGDBs can be exchanged using a peer-to-peer DB sharing system called the PGDB Registry.
Nucleic Acids Research | 2011
Ingrid M. Keseler; Julio Collado-Vides; Alberto Santos-Zavaleta; Martín Peralta-Gil; Socorro Gama-Castro; Luis Muñiz-Rascado; César Bonavides-Martínez; Suzanne M. Paley; Markus Krummenacker; Tomer Altman; Pallavi Kaipa; Aaron Spaulding; John Pacheco; Mario Latendresse; Carol A. Fulcher; Malabika Sarker; Alexander Glennon Shearer; Amanda Mackie; Ian T. Paulsen; Robert P. Gunsalus; Peter D. Karp
EcoCyc (http://EcoCyc.org) is a comprehensive model organism database for Escherichia coli K-12 MG1655. From the scientific literature, EcoCyc captures the functions of individual E. coli gene products; their regulation at the transcriptional, post-transcriptional and protein level; and their organization into operons, complexes and pathways. EcoCyc users can search and browse the information in multiple ways. Recent improvements to the EcoCyc Web interface include combined gene/protein pages and a Regulation Summary Diagram displaying a graphical overview of all known regulatory inputs to gene expression and protein activity. The graphical representation of signal transduction pathways has been updated, and the cellular and regulatory overviews were enhanced with new functionality. A specialized undergraduate teaching resource using EcoCyc is being developed.
Genome Biology | 2004
Pedro Romero; Jonathan Wagg; Michelle Green; Dale Kaiser; Markus Krummenacker; Peter D. Karp
BackgroundWe present a computational pathway analysis of the human genome that assigns enzymes encoded therein to predicted metabolic pathways. Pathway assignments place genes in their larger biological context, and are a necessary first step toward quantitative modeling of metabolism.ResultsOur analysis assigns 2,709 human enzymes to 896 bioreactions; 622 of the enzymes are assigned roles in 135 predicted metabolic pathways. The predicted pathways closely match the known nutritional requirements of humans. This analysis identifies probable omissions in the human genome annotation in the form of 203 pathway holes (missing enzymes within the predicted pathways). We have identified putative genes to fill 25 of these holes. The predicted human metabolic map is described by a Pathway/Genome Database called HumanCyc, which is available at http://HumanCyc.org/. We describe the generation of HumanCyc, and present an analysis of the human metabolic map. For example, we compare the predicted human metabolic pathway complement to the pathways of Escherichia coli and Arabidopsis thaliana and identify 35 pathways that are shared among all three organisms.ConclusionsOur analysis elucidates a significant portion of the human metabolic map, and also indicates probable unidentified genes in the genome. HumanCyc provides a genome-based view of human nutrition that associates the essential dietary requirements of humans with a set of metabolic pathways whose existence is supported by the human genome. The database places many human genes in a pathway context, thereby facilitating analysis of gene expression, proteomics, and metabolomics datasets through a publicly available online tool called the Omics Viewer.
Nucleic Acids Research | 2009
Ingrid M. Keseler; César Bonavides-Martínez; Julio Collado-Vides; Socorro Gama-Castro; Robert P. Gunsalus; D. Aaron Johnson; Markus Krummenacker; Laura M. Nolan; Suzanne M. Paley; Ian T. Paulsen; Martín Peralta-Gil; Alberto Santos-Zavaleta; Alexander Glennon Shearer; Peter D. Karp
EcoCyc (http://EcoCyc.org) provides a comprehensive encyclopedia of Escherichia coli biology. EcoCyc integrates information about the genome, genes and gene products; the metabolic network; and the regulatory network of E. coli. Recent EcoCyc developments include a new initiative to represent and curate all types of E. coli regulatory processes such as attenuation and regulation by small RNAs. EcoCyc has started to curate Gene Ontology (GO) terms for E. coli and has made a dataset of E. coli GO terms available through the GO Web site. The curation and visualization of electron transfer processes has been significantly improved. Other software and Web site enhancements include the addition of tracks to the EcoCyc genome browser, in particular a type of track designed for the display of ChIP-chip datasets, and the development of a comparative genome browser. A new Genome Omics Viewer enables users to paint omics datasets onto the full E. coli genome for analysis. A new advanced query page guides users in interactively constructing complex database queries against EcoCyc. A Macintosh version of EcoCyc is now available. A series of Webinars is available to instruct users in the use of EcoCyc.
Nucleic Acids Research | 1996
Peter D. Karp; Monica Riley; Suzanne M. Paley; Alida Pellegrini-Toole; Markus Krummenacker
The encyclopedia of Escherichia coli genes and metabolism (EcoCyc) is a database that combines information about the genome and the intermediary metabolism of E.coli. It describes 2034 genes, 306 enzymes encoded by these genes, 580 metabolic reactions that occur in E.coli and the organization of these reactions into 100 metabolic pathways. The EcoCyc graphical user interface allows query and exploration of the EcoCyc database using visualization tools such as genomic map browsers and automatic layouts of metabolic pathways. EcoCyc spans the space from sequence to function to allow investigation of an unusually broad range of questions. EcoCyc can be thought of as both an electronic review article, because of its copious references to the primary literature, and as an in silico model of E.coli that can be probed and analyzed through computational means.
Trends in Biotechnology | 1999
Peter D. Karp; Markus Krummenacker; Suzanne M. Paley; Jonathan Wagg
Integrated pathway-genome databases describe the genes and genome of an organism, as well as its predicted pathways, reactions, enzymes and metabolites. In conjunction with visualization and analysis software, these databases provide a framework for improved understanding of microbial physiology and for antimicrobial drug discovery. We describe pathway-based analyses of the genomes of a number of medically relevant microorganisms and a novel software tool that visualizes gene-expression data on a diagram showing the whole metabolic network of the microorganism.
Nucleic Acids Research | 2007
Peter D. Karp; Ingrid M. Keseler; Alexander Glennon Shearer; Mario Latendresse; Markus Krummenacker; Suzanne M. Paley; Ian T. Paulsen; Julio Collado-Vides; Socorro Gama-Castro; Martín Peralta-Gil; Alberto Santos-Zavaleta; Mónica I Peñaloza-Spínola; César Bonavides-Martínez; John B Ingraham
The annotation of the Escherichia coli K-12 genome in the EcoCyc database is one of the most accurate, complete and multidimensional genome annotations. Of the 4460 E. coli genes, EcoCyc assigns biochemical functions to 76%, and 66% of all genes had their functions determined experimentally. EcoCyc assigns E. coli genes to Gene Ontology and to MultiFun. Seventy-five percent of gene products contain reviews authored by the EcoCyc project that summarize the experimental literature about the gene product. EcoCyc information was derived from 15 000 publications. The database contains extensive descriptions of E. coli cellular networks, describing its metabolic, transport and transcriptional regulatory processes. A comparison to genome annotations for other model organisms shows that the E. coli genome contains the most experimentally determined gene functions in both relative and absolute terms: 2941 (66%) for E. coli, 2319 (37%) for Saccharomyces cerevisiae, 1816 (5%) for Arabidopsis thaliana, 1456 (4%) for Mus musculus and 614 (4%) for Drosophila melanogaster. Database queries to EcoCyc survey the global properties of E. coli cellular networks and illuminate the extent of information gaps for E. coli, such as dead-end metabolites. EcoCyc provides a genome browser with novel properties, and a novel interactive display of transcriptional regulatory networks.
Bioinformatics | 2005
Markus Krummenacker; Suzanne M. Paley; Lukas A. Mueller; Thomas Yan; Peter D. Karp
We describe multiple methods for accessing and querying the complex and integrated cellular data in the BioCyc family of databases: access through multiple file formats, access through Application Program Interfaces (APIs) for LISP, Perl and Java, and SQL access through the BioWarehouse relational database.