about
Gender differences in genetic risk profiles for cardiovascular diseaseWeighted change-point method for detecting differential gene expression in breast cancer microarray dataDetection of simultaneous group effects in microRNA expression and related target gene setsThe Use of Multiplicity Corrections, Order Statistics and Generalized Family-Wise Statistics with Application to Genome-Wide StudiesProteomics and metabolomics in renal transplantation-quo vadis?Key aspects of analyzing microarray gene-expression dataWeb-based inference of biological patterns, functions and pathways from metabolomic data using MetaboAnalystRank products: a simple, yet powerful, new method to detect differentially regulated genes in replicated microarray experimentsBeyond the E-Value: Stratified Statistics for Protein Domain Prediction.Interaction-based feature selection and classification for high-dimensional biological dataA new genome-wide method to track horizontally transferred sequences: application to DrosophilaA decision-theory approach to interpretable set analysis for high-dimensional dataIdentification of significant features in DNA microarray data.Some Statistical Strategies for DAE-seq Data Analysis: Variable Selection and Modeling Dependencies among Observations.Robustly detecting differential expression in RNA sequencing data using observation weights.Modeling microarray data using a threshold mixture model.EBprot: Statistical analysis of labeling-based quantitative proteomics data.Computational strategies for analyzing data in gene expression microarray experiments.Empirical bayes gene screening tool for time-course or dose-response microarray data.Data quality aware analysis of differential expression in RNA-seq with NOISeq R/Bioc packageAn ancova approach to normalize microarray data, and its performance to existing methods.Using weighted permutation scores to detect differential gene expression with microarray data.A note on using permutation-based false discovery rate estimates to compare different analysis methods for microarray data.Comparison of various statistical methods for identifying differential gene expression in replicated microarray data.Evidence-based annotation of gene function in Shewanella oneidensis MR-1 using genome-wide fitness profiling across 121 conditions.Selection of differentially expressed genes in microarray data analysis.Shrunken p-values for assessing differential expression with applications to genomic data analysis.Domain-enhanced analysis of microarray data using GO annotations.A Markov random field model for network-based analysis of genomic data.A new efficient statistical test for detecting variability in the gene expression data.Using MetaboAnalyst 3.0 for Comprehensive Metabolomics Data Analysis.Semiparametric regression of multidimensional genetic pathway data: least-squares kernel machines and linear mixed modelsIncorporating gene networks into statistical tests for genomic data via a spatially correlated mixture model.Unequal group variances in microarray data analyses.Microarray data analysis: from disarray to consolidation and consensus.Hormone-replacement therapy influences gene expression profiles and is associated with breast-cancer prognosis: a cohort study.Three allele combinations associated with multiple sclerosisThe clustering of regression models method with applications in gene expression data.Transcriptional profiling uncovers a network of cholesterol-responsive atherosclerosis target genes.Transition dependency: a gene-gene interaction measure for times series microarray data.
P2860
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P2860
description
article
@en
im Dezember 2001 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована в грудні 2001
@uk
name
Empirical Bayes Analysis of a Microarray Experiment
@en
Empirical Bayes Analysis of a Microarray Experiment
@nl
type
label
Empirical Bayes Analysis of a Microarray Experiment
@en
Empirical Bayes Analysis of a Microarray Experiment
@nl
prefLabel
Empirical Bayes Analysis of a Microarray Experiment
@en
Empirical Bayes Analysis of a Microarray Experiment
@nl
P50
P1476
Empirical Bayes Analysis of a Microarray Experiment
@en
P2093
Virginia Tusher
P304
P356
10.1198/016214501753382129
P407
P577
2001-12-01T00:00:00Z