M Z Man1, X Wang, Y Wang. 1. Biostatisties, PGRD, 2800 Plymouth Road, Ann Arbor, MI 48105, USA. michael.man@pfizer.com
Abstract
MOTIVATION: The Serial Analysis of Gene Expression (SAGE) technology determines the expression level of a gene by measuring the frequency of a sequence tag derived from the corresponding mRNA transcript. Several statistical tests have been developed to detect significant differences in tag frequency between two samples. However, which one of these tests has the greatest power to detect real changes remains undetermined. RESULTS: This paper compares three statistical tests for detecting significant changes of gene expression in SAGE experiments. The comparison makes use of Monte Carlo simulation that, in essence, generates "virtual" SAGE experiments. Our analysis shows that the Chi-square test has the best power and robustness. Since the POWER_ SAGE program can easily run "virtual" SAGE studies with different combinations of sample size and tag frequency and determine the power for each combination, it can serve as a useful tool for planning SAGE experiments. AVAILABILITY: The POWER_ SAGE software is available upon request from the authors. CONTACT: michael.man@pfizer.com
MOTIVATION: The Serial Analysis of Gene Expression (SAGE) technology determines the expression level of a gene by measuring the frequency of a sequence tag derived from the corresponding mRNA transcript. Several statistical tests have been developed to detect significant differences in tag frequency between two samples. However, which one of these tests has the greatest power to detect real changes remains undetermined. RESULTS: This paper compares three statistical tests for detecting significant changes of gene expression in SAGE experiments. The comparison makes use of Monte Carlo simulation that, in essence, generates "virtual" SAGE experiments. Our analysis shows that the Chi-square test has the best power and robustness. Since the POWER_ SAGE program can easily run "virtual" SAGE studies with different combinations of sample size and tag frequency and determine the power for each combination, it can serve as a useful tool for planning SAGE experiments. AVAILABILITY: The POWER_ SAGE software is available upon request from the authors. CONTACT: michael.man@pfizer.com
Authors: Sorin Draghici; Purvesh Khatri; Pratik Bhavsar; Abhik Shah; Stephen A Krawetz; Michael A Tainsky Journal: Nucleic Acids Res Date: 2003-07-01 Impact factor: 16.971
Authors: Zejuan Li; Roger T Luo; Shuangli Mi; Miao Sun; Ping Chen; Jingyue Bao; Mary Beth Neilly; Nimanthi Jayathilaka; Deborah S Johnson; Lili Wang; Catherine Lavau; Yanming Zhang; Charles Tseng; Xiuqing Zhang; Jian Wang; Jun Yu; Huanming Yang; San Ming Wang; Janet D Rowley; Jianjun Chen; Michael J Thirman Journal: Cancer Res Date: 2009-01-20 Impact factor: 12.701
Authors: Pu-Ting Xu; Yi-Ju Li; Xue-Jun Qin; Charles Kroner; Anya Green-Odlum; Hong Xu; Tian-Yuan Wang; Donald E Schmechel; Christine M Hulette; John Ervin; Mike Hauser; Jonathan Haines; Margaret A Pericak-Vance; John R Gilbert Journal: Mol Cell Neurosci Date: 2007-07-24 Impact factor: 4.314