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Series GSE3933 Query DataSets for GSE3933
Status Public on Dec 30, 2005
Title Prostate Cancer
Organism Homo sapiens
Experiment type Expression profiling by array
Summary Prostate cancer, a leading cause of cancer death, displays a broad range of clinical behavior from relatively indolent to aggressive metastatic disease. To explore potential molecular variation underlying this clinical heterogeneity, we profiled gene expression in 62 primary prostate tumors, as well as 41 normal prostate specimens and nine lymph node metastases, using cDNA microarrays containing approximately 26,000 genes. Unsupervised hierarchical clustering readily distinguished tumors from normal samples, and further identified three subclasses of prostate tumors based on distinct patterns of gene expression. High-grade and advanced stage tumors, as well as tumors associated with recurrence, were disproportionately represented among two of the three subtypes, one of which also included most lymph node metastases. To further characterize the clinical relevance of tumor subtypes, we evaluated as surrogate markers two genes differentially expressed among tumor subgroups by using immunohistochemistry on tissue microarrays representing an independent set of 225 prostate tumors. Positive staining for MUC1, a gene highly expressed in the subgroups with "aggressive" clinicopathological features, was associated with an elevated risk of recurrence (P = 0.003), whereas strong staining for AZGP1, a gene highly expressed in the other subgroup, was associated with a decreased risk of recurrence (P = 0.0008). In multivariate analysis, MUC1 and AZGP1 staining were strong predictors of tumor recurrence independent of tumor grade, stage, and preoperative prostate-specific antigen levels. Our results suggest that prostate tumors can be usefully classified according to their gene expression patterns, and these tumor subtypes may provide a basis for improved prognostication and treatment stratification.
A disease state experiment design type is where the state of some disease such as infection, pathology, syndrome, etc is studied.
Keywords: disease_state_design
 
Overall design Using regression correlation
 
Contributor(s) Lapointe J
Citation(s) 14711987, 21629784
Submission date Dec 29, 2005
Last update date Sep 24, 2019
Organization Stanford Microarray Database (SMD)
E-mail(s) array@genome.stanford.edu
Phone 650-498-6012
URL http://genome-www5.stanford.edu/
Department Stanford University, School of Medicine
Street address 300 Pasteur Drive
City Stanford
State/province CA
ZIP/Postal code 94305
Country USA
 
Platforms (3)
GPL2695 SHBB
GPL3044 SHCQ
GPL3289 SHBW
Samples (112)
GSM90012 PT311_2
GSM90013 PT168_2
GSM90014 PN316_1
Relations
BioProject PRJNA94193

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Supplementary data files not provided

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