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Differential genomic targeting of the transcription factor TAL1 in alternate haematopoietic lineagesDATABASE: A new forum for biological databases and curationCirculating microRNAs as stable blood-based markers for cancer detection.Orchestrating high-throughput genomic analysis with BioconductorTowards BioDBcore: a community-defined information specification for biological databasesComplex regulation of ADAR-mediated RNA-editing across tissuesTowards BioDBcore: a community-defined information specification for biological databasesiFlow: A Graphical User Interface for Flow Cytometry Tools in BioconductorAn extensible application for assembling annotation for genomic data.A graph-theoretic approach to testing associations between disparate sources of functional genomics data.Making sense of high-throughput protein-protein interaction data.Prediction and Quantification of Splice Events from RNA-Seq DataData quality assessment of ungated flow cytometry data in high throughput experiments.Making the most of high-throughput protein-interaction data.Declining plasma fibrinogen alpha fragment identifies HER2-positive breast cancer patients and reverts to normal levels after surgery.Coverage and error models of protein-protein interaction data by directed graph analysis.Graphs in molecular biologyRintact: enabling computational analysis of molecular interaction data from the IntAct repository.MicroRNA discovery and profiling in human embryonic stem cells by deep sequencing of small RNA librariesarrayQualityMetrics--a bioconductor package for quality assessment of microarray dataData structures and algorithms for analysis of genetics of gene expression with Bioconductor: GGtools 3.x.flowCore: a Bioconductor package for high throughput flow cytometry.Knowledge based identification of essential signaling from genome-scale siRNA experiments.ShortRead: a bioconductor package for input, quality assessment and exploration of high-throughput sequence dataPer-channel basis normalization methods for flow cytometry data.Independent filtering increases detection power for high-throughput experimentsAnalyzing biological data using R: methods for graphs and networks.The mutation spectrum revealed by paired genome sequences from a lung cancer patient.The anatomy of successful computational biology software.Software for computing and annotating genomic ranges.An integrative genomic approach identifies p73 and p63 as activators of miR-200 microRNA family transcription.Network structures and algorithms in Bioconductor.Comprehensive genomic analysis identifies SOX2 as a frequently amplified gene in small-cell lung cancer.GGtools: analysis of genetics of gene expression in bioconductor.Recurrent R-spondin fusions in colon cancer.Gene set enrichment analysis using linear models and diagnostics.Reproducible research: a bioinformatics case study.The graft response to transplantation: a gene expression profile analysis.gCMAP: user-friendly connectivity mapping with R.Modeling synthetic lethality.
P50
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P50
description
Canadees bioinformaticus
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Canadian statistician and bioinformatician
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kanadischer Bioinformatiker und Statistiker
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name
Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Clifford Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Gentleman
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Robert Clifford Gentleman
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no2005105262