Combining gene expression data from different generations of oligonucleotide arrays
about
Integrating probe-level expression changes across generations of Affymetrix arraysTransformation of expression intensities across generations of Affymetrix microarrays using sequence matching and regression modeling.Analysis of kinase gene expression patterns across 5681 human tissue samples reveals functional genomic taxonomy of the kinomevirtualArray: a R/bioconductor package to merge raw data from different microarray platforms.Biomedical data integration: using XML to link clinical and research data sets.An annotation infrastructure for the analysis and interpretation of Affymetrix exon array data.Identical probes on different high-density oligonucleotide microarrays can produce different measurements of gene expression.Transcript-level annotation of Affymetrix probesets improves the interpretation of gene expression data.Comparison of Affymetrix data normalization methods using 6,926 experiments across five array generations.Development and evaluation of new mask protocols for gene expression profiling in humans and chimpanzees.A cross-study transcriptional analysis of Parkinson's disease.Comparison of three microarray probe annotation pipelines: differences in strategies and their effect on downstream analysis.Integration of heterogeneous expression data sets extends the role of the retinol pathway in diabetes and insulin resistance.CrossChip: a system supporting comparative analysis of different generations of Affymetrix arrays.Standards affecting the consistency of gene expression arrays in clinical applications.Amacrine cell gene expression and survival signaling: differences from neighboring retinal ganglion cells.Generalization of DNA microarray dispersion properties: microarray equivalent of t-distributionMembers of the glutathione and ABC-transporter families are associated with clinical outcome in patients with diffuse large B-cell lymphoma.Probe mapping across multiple microarray platforms.Genome-scale assessment of molecular pathology in systemic autoimmune diseases using microarray technology: a potential breakthrough diagnostic and individualized therapy-design tool.Modeling and analysis of retinoic acid induced differentiation of uncommitted precursor cellsSystematic bioinformatic analysis of expression levels of 17,330 human genes across 9,783 samples from 175 types of healthy and pathological tissuesMeta-analysis of glioblastoma multiforme versus anaplastic astrocytoma identifies robust gene markers.Application of a correlation correction factor in a microarray cross-platform reproducibility studyFunctional Annotation: extracting functional and regulatory order from microarrays.ECM1 and TMPRSS4 are diagnostic markers of malignant thyroid neoplasms and improve the accuracy of fine needle aspiration biopsy.
P2860
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P2860
Combining gene expression data from different generations of oligonucleotide arrays
description
2004 nî lūn-bûn
@nan
2004 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2004 թվականի հոտեմբերին հրատարակված գիտական հոդված
@hy
2004年の論文
@ja
2004年論文
@yue
2004年論文
@zh-hant
2004年論文
@zh-hk
2004年論文
@zh-mo
2004年論文
@zh-tw
2004年论文
@wuu
name
Combining gene expression data from different generations of oligonucleotide arrays
@ast
Combining gene expression data from different generations of oligonucleotide arrays
@en
Combining gene expression data from different generations of oligonucleotide arrays
@nl
type
label
Combining gene expression data from different generations of oligonucleotide arrays
@ast
Combining gene expression data from different generations of oligonucleotide arrays
@en
Combining gene expression data from different generations of oligonucleotide arrays
@nl
prefLabel
Combining gene expression data from different generations of oligonucleotide arrays
@ast
Combining gene expression data from different generations of oligonucleotide arrays
@en
Combining gene expression data from different generations of oligonucleotide arrays
@nl
P2093
P2860
P356
P1433
P1476
Combining gene expression data from different generations of oligonucleotide arrays
@en
P2093
Kyu-Baek Hwang
Peter J Park
Sek Won Kong
Steve A Greenberg
P2860
P2888
P356
10.1186/1471-2105-5-159
P407
P577
2004-10-25T00:00:00Z
P5875
P6179
1043234725