Skip Navigation


Biostatistics Advance Access first published online on October 4, 2006
This version published online on May 14, 2007

Biostatistics, doi:10.1093/biostatistics/kxl029
This Article
Right arrow Full Text Freely available
Right arrow FREE Full Text (PDF) Freely available
Right arrow All Versions of this Article:
8/3/566    most recent
kxl029v2
kxl029v1
Right arrow Alert me when this article is cited
Right arrow Alert me if a correction is posted
Services
Right arrow Email this article to a friend
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Add to My Personal Archive
Right arrow Download to citation manager
Right arrowRequest Permissions
Right arrow Disclaimer
Google Scholar
Right arrow Articles by Wu, B.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Wu, B.
Social Bookmarking
 Add to CiteULike   Add to Connotea   Add to Del.icio.us  
What's this?

© The Author 2006. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oxfordjournals.org.

Cancer outlier differential gene expression detection

Baolin Wu

Division of Biostatistics, School of Public Health, University of Minnesota, A460 Mayo Building, MMC 303, Minneapolis, MN 55455, USA

baolin{at}biostat.umn.edu

We study statistical methods to detect cancer genes that are over- or down-expressed in some but not all samples in a disease group. This has proven useful in cancer studies where oncogenes are activated only in a small subset of samples. We propose the outlier robust t-statistic (ORT), which is intuitively motivated from the t-statistic, the most commonly used differential gene expression detection method. Using real and simulation studies, we compare the ORT to the recently proposed cancer outlier profile analysis (Tomlins and others, 2005) and the outlier sum statistic of Tibshirani and Hastie (2006). The proposed method often has more detection power and smaller false discovery rates. Supplementary information can be found at http://www.biostat.umn.edu/~baolin/research/ort.html.

Keywords: Cancer outlier profile analysis; Differential gene expression detection; Microarray; Robust; T-statistic

Received June 15, 2006; revised September 11, 2006; accepted for publication September 29, 2006.


Add to CiteULike CiteULike   Add to Connotea Connotea   Add to Del.icio.us Del.icio.us    What's this?


This article has been cited by other articles:


Home page
Brief BioinformHome page
B. Andreopoulos, A. An, X. Wang, and M. Schroeder
A roadmap of clustering algorithms: finding a match for a biomedical application
Brief Bioinform, May 1, 2009; 10(3): 297 - 314.
[Abstract] [Full Text] [PDF]


Home page
BiostatisticsHome page
D. Ghosh and A. M. Chinnaiyan
Genomic outlier profile analysis: mixture models, null hypotheses, and nonparametric estimation
Biostat., January 1, 2009; 10(1): 60 - 69.
[Abstract] [Full Text] [PDF]


Home page
BioinformaticsHome page
J. Hu
Cancer outlier detection based on likelihood ratio test
Bioinformatics, October 1, 2008; 24(19): 2193 - 2199.
[Abstract] [Full Text] [PDF]


Home page
BiostatisticsHome page
H. Lian
MOST: detecting cancer differential gene expression
Biostat., July 1, 2008; 9(3): 411 - 418.
[Abstract] [Full Text] [PDF]



Disclaimer: Please note that abstracts for content published before 1996 were created through digital scanning and may therefore not exactly replicate the text of the original print issues. All efforts have been made to ensure accuracy, but the Publisher will not be held responsible for any remaining inaccuracies. If you require any further clarification, please contact our Customer Services Department.