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1.
J Interferon Cytokine Res ; 36(6): 382-400, 2016 06.
Article in English | MEDLINE | ID: mdl-27035059

ABSTRACT

Dendritic cell (DC) maturation involves widespread changes in cellular function and gene expression. The regulatory role of IFNAR in the program of DC maturation remains incompletely defined. Thus, the time evolution impact of IFNAR on this process was evaluated. Changes in DC phenotype, function, and gene expression induced by poly I:C were measured in wild-type and IFNAR(-/-) DC at 9 time points over 24 h. Temporal gene expression profiles were filtered on consistency and response magnitude across replicates. The number of genes whose expression was altered by poly I:C treatment was greatly reduced in IFNAR(-/-) DC, including the majority of the downregulated gene expression program previously observed in wild-type (WT) DC. Furthermore, the number of genes upregulated was almost equal between WT and IFNAR(-/-) DC, yet the identities of those genes were distinct. Integrating these data with protein-protein interaction data revealed several novel subnetworks active during maturation, including nucleotide synthesis, metabolism, and repair. A subnetwork associated with redox activity was uniquely identified in IFNAR(-/-) DC. Overall, temporal gene expression and network analyses identified many genes regulated by the type I interferon response and revealed previously unidentified aspects of the DC maturation process.


Subject(s)
Cell Differentiation/genetics , Cell Differentiation/immunology , Dendritic Cells/cytology , Dendritic Cells/physiology , Gene Expression Regulation , Poly I-C/immunology , Receptor, Interferon alpha-beta/metabolism , Animals , Cell Differentiation/drug effects , Computational Biology/methods , Cytokines/biosynthesis , Female , Gene Expression Profiling , Lymphocyte Activation/immunology , Mice , Mice, Knockout , Molecular Sequence Annotation , Poly I-C/pharmacology , Receptor, Interferon alpha-beta/genetics , T-Lymphocytes/immunology , T-Lymphocytes/metabolism , Transcriptome
2.
Gene ; 542(1): 38-45, 2014 May 25.
Article in English | MEDLINE | ID: mdl-24630964

ABSTRACT

Osteoarthritis (OA) is characterized by remodeling and degradation of joint tissues. Microarray studies have led to a better understanding of the molecular changes that occur in tissues affected by conditions such as OA; however, such analyses are limited to the identification of a list of genes with altered transcript expression, usually at a single time point during disease progression. While these lists have identified many novel genes that are altered during the disease process, they are unable to identify perturbed relationships between genes and gene products. In this work, we have integrated a time course gene expression dataset with network analysis to gain a better systems level understanding of the early events that occur during the development of OA in a mouse model. The subnetworks that were enriched at one or more of the time points examined (2, 4, 8, and 16 weeks after induction of OA) contained genes from several pathways proposed to be important to the OA process, including the extracellular matrix-receptor interaction and the focal adhesion pathways and the Wnt, Hedgehog and TGF-ß signaling pathways. The genes within the subnetworks were most active at the 2 and 4 week time points and included genes not previously studied in the OA process. A unique pathway, riboflavin metabolism, was active at the 4 week time point. These results suggest that the incorporation of network-type analyses along with time series microarray data will lead to advancements in our understanding of complex diseases such as OA at a systems level, and may provide novel insights into the pathways and processes involved in disease pathogenesis.


Subject(s)
Arthritis, Experimental/genetics , Joints/pathology , Metabolic Networks and Pathways/genetics , Osteoarthritis/genetics , Animals , Arthritis, Experimental/metabolism , Arthritis, Experimental/pathology , Disease Models, Animal , Disease Progression , Focal Adhesions/genetics , Focal Adhesions/metabolism , Gene Expression , Gene Expression Profiling , Hedgehog Proteins/genetics , Hedgehog Proteins/metabolism , Joints/metabolism , Male , Mice , Mice, Inbred C57BL , Oligonucleotide Array Sequence Analysis , Osteoarthritis/metabolism , Osteoarthritis/pathology , Receptors, Cytoadhesin/genetics , Receptors, Cytoadhesin/metabolism , Riboflavin/metabolism , Transforming Growth Factor beta/genetics , Transforming Growth Factor beta/metabolism , Wnt Proteins/genetics , Wnt Signaling Pathway/genetics
3.
Plant Cell ; 25(9): 3329-46, 2013 Sep.
Article in English | MEDLINE | ID: mdl-24045021

ABSTRACT

To identify gene products that participate in auxin-dependent lateral root formation, a high temporal resolution, genome-wide transcript abundance analysis was performed with auxin-treated Arabidopsis thaliana roots. Data analysis identified 1246 transcripts that were consistently regulated by indole-3-acetic acid (IAA), partitioning into 60 clusters with distinct response kinetics. We identified rapidly induced clusters containing auxin-response functional annotations and clusters exhibiting delayed induction linked to cell division temporally correlated with lateral root induction. Several clusters were enriched with genes encoding proteins involved in cell wall modification, opening the possibility for understanding mechanistic details of cell structural changes that result in root formation following auxin treatment. Mutants with insertions in 72 genes annotated with a cell wall remodeling function were examined for alterations in IAA-regulated root growth and development. This reverse-genetic screen yielded eight mutants with root phenotypes. Detailed characterization of seedlings with mutations in cellulase3/glycosylhydrolase9b3 and leucine rich extensin2, genes not normally linked to auxin response, revealed defects in the early and late stages of lateral root development, respectively. The genes identified here using kinetic insight into expression changes lay the foundation for mechanistic understanding of auxin-mediated cell wall remodeling as an essential feature of lateral root development.


Subject(s)
Arabidopsis Proteins/genetics , Arabidopsis/genetics , Gene Expression Regulation, Plant , Indoleacetic Acids/pharmacology , Plant Growth Regulators/pharmacology , Transcriptome , Arabidopsis/cytology , Arabidopsis/growth & development , Arabidopsis/metabolism , Arabidopsis Proteins/metabolism , Cell Wall/metabolism , Gene Expression Profiling , Genes, Reporter , Glycoside Hydrolases/genetics , Glycoside Hydrolases/metabolism , Kinetics , Multigene Family , Mutagenesis, Insertional , Oligonucleotide Array Sequence Analysis , Phenotype , Plant Roots/cytology , Plant Roots/genetics , Plant Roots/growth & development , Plant Roots/metabolism , Reverse Genetics , Seedlings/cytology , Seedlings/genetics , Seedlings/growth & development , Seedlings/metabolism
4.
Article in English | MEDLINE | ID: mdl-27959971

ABSTRACT

Multiple approaches for reverse-engineering biological networks from time-series data have been proposed in the computational biology literature. These approaches can be classified by their underlying mathematical algorithms, such as Bayesian or algebraic techniques, as well as by their time paradigm, which includes next-state and co-temporal modeling. The types of biological relationships, such as parent-child or siblings, discovered by these algorithms are quite varied. It is important to understand the strengths and weaknesses of the various algorithms and time paradigms on actual experimental data. We assess how well the co-temporal implementations of three algorithms, continuous Bayesian, discrete Bayesian, and computational algebraic, can 1) identify two types of entity relationships, parent and sibling, between biological entities, 2) deal with experimental sparse time course data, and 3) handle experimental noise seen in replicate data sets. These algorithms are evaluated, using the shuffle index metric, for how well the resulting models match literature models in terms of siblings and parent relationships. Results indicate that all three co-temporal algorithms perform well, at a statistically significant level, at finding sibling relationships, but perform relatively poorly in finding parent relationships.

5.
Bioinformatics ; 21(8): 1349-57, 2005 Apr 15.
Article in English | MEDLINE | ID: mdl-15572467

ABSTRACT

MOTIVATION: In the event of an outbreak of a disease caused by an initially unknown pathogen, the ability to characterize anonymous sequences prior to isolation and culturing of the pathogen will be helpful. We show that it is possible to classify viral sequences by genome type (dsDNA, ssDNA, ssRNA positive strand, ssRNA negative strand, retroid) using amino acid distribution. RESULTS: In this paper we describe the results of analysis of amino acid preference in mammalian viruses. The study was carried out at the genome level as well as two shorter sequence levels: short (300 amino acids) and medium length (660 amino acids). The analysis indicates a correlation between the viral genome types dsDNA, ssDNA, ssRNA positive strand, ssRNA negative strand and retroid and amino acid preference. We investigated three different models of amino acid preference. The simplest amino acid preference model, 1-AAP, is a normalized description of the frequency of amino acids in genomes of a viral genome type. A slightly more complex model is the ordered pair amino acid preference model (2-AAP), which characterizes genomes of different viral genome types by the frequency of ordered pairs of amino acids. The most complex and accurate model is the ordered triple amino acid preference model (3-AAP), which is based on ordered triples of amino acids. The results demonstrate that mammalian viral genome types differ in their amino acid preference. AVAILABILITY: The tools used to format and analyze data and supplementary material are available at http://www.cse.sc.edu/~rose/aminoPreference/index.html CONTACT: rose@cse.sc.edu.


Subject(s)
Algorithms , Chromosome Mapping/methods , DNA, Viral/genetics , Genome, Viral , Sequence Alignment/methods , Sequence Analysis, DNA/methods , Viral Proteins/genetics , Amino Acid Sequence , Animals , Base Sequence , Mammals , Models, Genetic , Molecular Sequence Data , Species Specificity , Statistics as Topic
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