Bayesian Modeling of MPSS Data: Gene Expression Analysis of BovineSalmonellaInfectionстатья из журнала
Аннотация: Abstract Massively Parallel Signature Sequencing (MPSS) is a high-throughput, counting-based technology available for gene expression profiling. It produces output that is similar to Serial Analysis of Gene Expression and is ideal for building complex relational databases for gene expression. Our goal is to compare the in vivo global gene expression profiles of tissues infected with different strains of Salmonella obtained using the MPSS technology. In this article, we develop an exact ANOVA type model for this count data using a zero-inflated Poisson distribution, different from existing methods that assume continuous densities. We adopt two Bayesian hierarchical models—one parametric and the other semiparametric with a Dirichlet process prior that has the ability to "borrow strength" across related signatures, where a signature is a specific arrangement of the nucleotides, usually 16–21 base pairs long. We utilize the discreteness of Dirichlet process prior to cluster signatures that exhibit similar differential expression profiles. Tests for differential expression are carried out using nonparametric approaches, while controlling the false discovery rate. We identify several differentially expressed genes that have important biological significance and conclude with a summary of the biological discoveries. This article has supplementary materials online. Keywords: : Bayesian semiparametric modelingDirichlet process mixtureMarkov chain Monte CarloZero-inflated Poisson
Год издания: 2010
Авторы: Soma S. Dhavala, Sujay Datta, Bani K. Mallick, Raymond J. Carroll, Sangeeta Khare, Sara D. Lawhon, L. Garry Adams
Источник: Journal of the American Statistical Association
Ключевые слова: Bayesian Methods and Mixture Models, Genetic and phenotypic traits in livestock, Molecular Biology Techniques and Applications
Другие ссылки: Journal of the American Statistical Association (HTML)
Europe PMC (PubMed Central) (PDF)
Europe PMC (PubMed Central) (HTML)
PubMed Central (HTML)
CiteSeer X (The Pennsylvania State University) (HTML)
PubMed (HTML)
Europe PMC (PubMed Central) (PDF)
Europe PMC (PubMed Central) (HTML)
PubMed Central (HTML)
CiteSeer X (The Pennsylvania State University) (HTML)
PubMed (HTML)
Открытый доступ: green
Том: 105
Выпуск: 491
Страницы: 956–967