» Articles » PMID: 10070945

Statistical Analysis of Array Expression Data As Applied to the Problem of Tamoxifen Resistance

Overview
Specialty Oncology
Date 1999 Mar 10
PMID 10070945
Citations 27
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Although the emerging complementary DNA (cDNA) array technology holds great promise to discern complex patterns of gene expression, its novelty means that there are no well-established standards to guide analysis and interpretation of the data that it produces. We have used preliminary data generated with the CLONTECH Atlas human cDNA array to develop a practical approach to the statistical analysis of these data by studying changes in gene expression during the development of acquired tamoxifen resistance in breast cancer.

Methods: For hybridization to the array, we prepared RNA from MCF-7 human breast cell tumors, isolated from our athymic nude mouse xenograft model of acquired tamoxifen resistance during estrogen-stimulated, tamoxifen-sensitive, and tamoxifen-resistant growth. Principal components analysis was used to identify genes with altered expression.

Results And Conclusions: Principal components analysis yielded three principal components that are interpreted as 1) the average level of gene expression, 2) the difference between estrogen-stimulated gene expression and the average of tamoxifen-sensitive and tamoxifen-resistant gene expression, and 3) the difference between tamoxifen-sensitive and tamoxifen-resistant gene expression. A bivariate (second and third principal components) 99% prediction region was used to identify outlier genes that exhibit altered expression. Two representative outlier genes, erk-2 and HSF-1 (heat shock transcription factor-1), were chosen for confirmatory study, and their predicted relative expression levels were confirmed in western blot analysis, suggesting that semiquantitative estimates are possible with array technology.

Implications: Principal components analysis provides a useful and practical method to analyze gene expression data from a cDNA array. The method can identify broad patterns of expression alteration and, based on a small simulation study, will likely provide reasonable power to detect moderate-sized alterations in clinically relevant genes.

Citing Articles

Gene Chips: Applications to Neuroscience.

Fields R, Ozsarac N Neuroscientist. 2019; 6(5):310-314.

PMID: 31548785 PMC: 6756193. DOI: 10.1177/107385840000600505.


Adaptation of a RAS pathway activation signature from FF to FFPE tissues in colorectal cancer.

Omolo B, Yang M, Lo F, Schell M, Austin S, Howard K BMC Med Genomics. 2016; 9(1):65.

PMID: 27756306 PMC: 5069826. DOI: 10.1186/s12920-016-0225-2.


Comparison of the Transcriptional Profiles of Melanocytes from Dark and Light Skinned Individuals under Basal Conditions and Following Ultraviolet-B Irradiation.

Lopez S, Smith-Zubiaga I, Garcia de Galdeano A, Boyano M, Garcia O, Gardeazabal J PLoS One. 2015; 10(8):e0134911.

PMID: 26244334 PMC: 4526690. DOI: 10.1371/journal.pone.0134911.


Integrative omics analysis. A study based on Plasmodium falciparum mRNA and protein data.

Tomescu O, Mattanovich D, Thallinger G BMC Syst Biol. 2014; 8 Suppl 2:S4.

PMID: 25033389 PMC: 4101701. DOI: 10.1186/1752-0509-8-S2-S4.


Therapeutic target database update 2014: a resource for targeted therapeutics.

Qin C, Zhang C, Zhu F, Xu F, Chen S, Zhang P Nucleic Acids Res. 2013; 42(Database issue):D1118-23.

PMID: 24265219 PMC: 3964951. DOI: 10.1093/nar/gkt1129.