about
e-Fungi: a data resource for comparative analysis of fungal genomesErratum to: Making sense of big data in health research: towards an EU action planMaking sense of big data in health research: Towards an EU action planTFInfer: a tool for probabilistic inference of transcription factor activities.Mining regulatory network connections by ranking transcription factor target genes using time series expression data.Making sense of microarray data distributions.Inference of RNA polymerase II transcription dynamics from chromatin immunoprecipitation time course dataA comparison of microarray and MPSS technology platforms for expression analysis of Arabidopsis.Fast and accurate approximate inference of transcript expression from RNA-seq data.Accounting for probe-level noise in principal component analysis of microarray data.A tumor progression model for hepatocellular carcinoma: bioinformatic analysis of genomic data.Analysis of tag-position bias in MPSS technologyPropagating uncertainty in microarray data analysis.Including probe-level uncertainty in model-based gene expression clustering.A kingdom-specific protein domain HMM library for improved annotation of fungal genomesComparative genome analysis of filamentous fungi reveals gene family expansions associated with fungal pathogenesis.puma: a Bioconductor package for propagating uncertainty in microarray analysis.Model-based method for transcription factor target identification with limited data.Evolutionary systems biology of amino acid biosynthetic cost in yeast.Identifying stochastic oscillations in single-cell live imaging time series using Gaussian processes.Identifying differentially expressed transcripts from RNA-seq data with biological variation.puma 3.0: improved uncertainty propagation methods for gene and transcript expression analysis.Hierarchical Bayesian modelling of gene expression time series across irregularly sampled replicates and clusters.C9ORF72 GGGGCC Expanded Repeats Produce Splicing Dysregulation which Correlates with Disease Severity in Amyotrophic Lateral SclerosisNeuronal DNA damage response-associated dysregulation of signalling pathways and cholesterol metabolism at the earliest stages of Alzheimer-type pathologyGenome-wide occupancy links Hoxa2 to Wnt-β-catenin signaling in mouse embryonic development.Inferring the perturbation time from biological time course data.Distinguishing Asthma Phenotypes Using Machine Learning ApproachesComparative genome analysis across a kingdom of eukaryotic organisms: specialization and diversification in the fungi.Genome-wide modeling of transcription kinetics reveals patterns of RNA production delays.Reconstruction of ancestral protein interaction networks for the bZIP transcription factors.A genetic study of Wilson's disease in the United KingdomStochasticity in the miR-9/Hes1 oscillatory network can account for clonal heterogeneity in the timing of differentiationGene expression profiling in human neurodegenerative disease.Probabilistic inference of transcription factor concentrations and gene-specific regulatory activities.A tractable probabilistic model for Affymetrix probe-level analysis across multiple chips.Hoxa2 selectively enhances Meis binding to change a branchial arch ground state.A model-based analysis of microarray experimental error and normalisationFast Nonparametric Clustering of Structured Time-Series.A non-transcriptional role for the glucocorticoid receptor in mediating the cell stress response.
P50
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description
Professor of Computational and Systems Biology at the University of Manchester
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wetenschapper
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հետազոտող
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name
Magnus Rattray
@ast
Magnus Rattray
@en
Magnus Rattray
@es
Magnus Rattray
@nl
Magnus Rattray
@sl
type
label
Magnus Rattray
@ast
Magnus Rattray
@en
Magnus Rattray
@es
Magnus Rattray
@nl
Magnus Rattray
@sl
prefLabel
Magnus Rattray
@ast
Magnus Rattray
@en
Magnus Rattray
@es
Magnus Rattray
@nl
Magnus Rattray
@sl
P1053
B-4393-2009
P106
P21
P31
P3829
P496
0000-0001-8196-5565