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1.
Infect Immun ; 79(11): 4286-98, 2011 Nov.
Article in English | MEDLINE | ID: mdl-21896772

ABSTRACT

Funded by the National Institute of Allergy and Infectious Diseases, the Pathosystems Resource Integration Center (PATRIC) is a genomics-centric relational database and bioinformatics resource designed to assist scientists in infectious-disease research. Specifically, PATRIC provides scientists with (i) a comprehensive bacterial genomics database, (ii) a plethora of associated data relevant to genomic analysis, and (iii) an extensive suite of computational tools and platforms for bioinformatics analysis. While the primary aim of PATRIC is to advance the knowledge underlying the biology of human pathogens, all publicly available genome-scale data for bacteria are compiled and continually updated, thereby enabling comparative analyses to reveal the basis for differences between infectious free-living and commensal species. Herein we summarize the major features available at PATRIC, dividing the resources into two major categories: (i) organisms, genomes, and comparative genomics and (ii) recurrent integration of community-derived associated data. Additionally, we present two experimental designs typical of bacterial genomics research and report on the execution of both projects using only PATRIC data and tools. These applications encompass a broad range of the data and analysis tools available, illustrating practical uses of PATRIC for the biologist. Finally, a summary of PATRIC's outreach activities, collaborative endeavors, and future research directions is provided.


Subject(s)
Bacteria/pathogenicity , Bacterial Infections/microbiology , Computational Biology , Databases, Factual , Genomics , Humans
2.
J Virol ; 83(13): 6957-62, 2009 Jul.
Article in English | MEDLINE | ID: mdl-19386712

ABSTRACT

Coronaviruses encode large replicase polyproteins which are proteolytically processed by viral proteases to generate mature nonstructural proteins (nsps) that form the viral replication complex. Mouse hepatitis virus (MHV) replicase products nsp3, nsp4, and nsp6 are predicted to act as membrane anchors during assembly of the viral replication complexes. We report the first antibody-mediated Western blot detection of nsp6 from MHV-infected cells. The nsp6-specific peptide antiserum detected the replicase intermediate p150 (nsp4 to nsp11) and two nsp6 products of approximately 23 and 25 kDa. Analysis of nsp6 transmembrane topology revealed six membrane-spanning segments and a conserved hydrophobic domain in the C-terminal cytosolic tail.


Subject(s)
Computational Biology , Murine hepatitis virus/metabolism , Viral Nonstructural Proteins/chemistry , Amino Acid Sequence , Animals , Cell Line , Glycosylation , Mice , Molecular Sequence Data , Murine hepatitis virus/genetics , Mutagenesis, Site-Directed , Protein Structure, Secondary , Sequence Alignment , Viral Nonstructural Proteins/genetics , Viral Nonstructural Proteins/isolation & purification
3.
Proteins ; 53(4): 806-16, 2003 Dec 01.
Article in English | MEDLINE | ID: mdl-14635123

ABSTRACT

An automated, active site-focused, computational method is described for use in predicting the effects of engineered amino acid mutations on enzyme catalytic activity. The method uses structure-based function descriptors (Fuzzy Functional Forms trade mark or FFFs trade mark ) to automatically identify enzyme functional sites in proteins. Three-dimensional sequence profiles are created from the surrounding active site structure. The computationally derived active site profile is used to analyze the effect of each amino acid change by defining three key features: proximity of the change to the active site, degree of amino acid conservation at the position in related proteins, and compatibility of the change with residues observed at that position in similar proteins. The features were analyzed using a data set of individual amino acid mutations occurring at 128 residue positions in 14 different enzymes. The results show that changes at key active site residues and at highly conserved positions are likely to have deleterious effects on the catalytic activity, and that non-conservative mutations at highly conserved residues are even more likely to be deleterious. Interestingly, the study revealed that amino acid substitutions at residues in close contact with the key active site residues are not more likely to have deleterious effects than mutations more distant from the active site. Utilization of the FFF-derived structural information yields a prediction method that is accurate in 79-83% of the test cases. The success of this method across all six EC classes suggests that it can be used generally to predict the effects of mutations and nsSNPs for enzymes. Future applications of the approach include automated, large-scale identification of deleterious nsSNPs in clinical populations and in large sets of disease-associated nsSNPs, and identification of deleterious nsSNPs in drug targets and drug metabolizing enzymes.


Subject(s)
Amino Acids/genetics , Computational Biology/methods , Mutation , Proteins/genetics , Algorithms , Amino Acids/chemistry , Aspartate Aminotransferases/chemistry , Aspartate Aminotransferases/genetics , Aspartate Aminotransferases/metabolism , Binding Sites/genetics , Escherichia coli Proteins/chemistry , Escherichia coli Proteins/genetics , Escherichia coli Proteins/metabolism , Protein Structure, Tertiary , Proteins/chemistry , Proteins/metabolism , Reproducibility of Results
4.
J Mol Biol ; 334(3): 387-401, 2003 Nov 28.
Article in English | MEDLINE | ID: mdl-14623182

ABSTRACT

In previous work, structure-based functional site descriptors, fuzzy functional forms (FFFs), were developed to recognize structurally conserved active sites in proteins. These descriptors identify members of protein families according to active-site structural similarity, rather than overall sequence or structure similarity. FFFs are defined by a minimal number of highly conserved residues and their three-dimensional arrangement. This approach is advantageous for function assignment across broad families, but is limited when applied to detailed subclassification within these families. In the work described here, we developed a method of three-dimensional, or structure-based, active-site profiling that utilizes FFFs to identify residues located in the spatial environment around the active site. Three-dimensional active-site profiling reveals similarities and differences among active sites across protein families. Using this approach, active-site profiles were constructed from known structures for 193 functional families, and these profiles were verified as distinct and characteristic. To achieve this result, a scoring function was developed that discriminates between true functional sites and those that are geometrically most similar, but do not perform the same function. In a large-scale retrospective analysis of human genome sequences, this profile score was shown to identify specific functional families correctly. The method is effective at recognizing the likely subtype of structurally uncharacterized members of the diverse family of protein kinases, categorizing sequences correctly that were misclassified by global sequence alignment methods. Subfamily information provided by this three-dimensional active-site profiling method yields key information for specific and selective inhibitor design for use in the pharmaceutical industry.


Subject(s)
Binding Sites , Genome, Human , Proteins/chemistry , Algorithms , Amino Acid Sequence , Humans , Models, Molecular , Molecular Sequence Data , Protein Folding , Protein Structure, Tertiary , Proteins/classification , Proteins/physiology , Sequence Alignment , Sequence Homology, Amino Acid , Structure-Activity Relationship
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