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Statistical Detection of Short Periodic Gene Expression Time Series Profiles
Author(s) -
Alan WeeChung Liew,
Ngai-Fong Law,
Hong Yan,
Tuan D. Pham,
Xiaobo Zhou
Publication year - 2007
Publication title -
aip conference proceedings
Language(s) - English
Resource type - Conference proceedings
SCImago Journal Rank - 0.177
H-Index - 75
eISSN - 1551-7616
pISSN - 0094-243X
DOI - 10.1063/1.2816619
Subject(s) - statistic , series (stratigraphy) , false discovery rate , statistical hypothesis testing , signal (programming language) , expression (computer science) , noise (video) , time series , computer science , detection theory , test statistic , algorithm , gene , gene expression , statistics , pattern recognition (psychology) , mathematics , biology , artificial intelligence , genetics , detector , telecommunications , paleontology , image (mathematics) , programming language
Many cellular processes exhibit periodic behaviors. Hence, one of the important tasks in gene expression data analysis is to detect subset of genes that exhibit cyclicity or periodicity in their gene expression time series profiles. Unfortunately, gene expression time series profiles are usually of very short length and highly contaminated with noise. This makes detection of periodic profiles a very difficult problem. Recently, a hypothesis testing method based on the Fisher g-statistic with correction for multiple testing has been proposed to detect periodic gene expression profiles. However, it was observed that the test is not reliable if the signal length is too short. In this paper, we performed extensive simulation study to investigate the statistical power of the test as a function of signal length, SNR, and the false discovery rate. We found that the number of periodic profiles can be severely underestimated for short length signal. The findings indicated that caution needs to be exercised when interpreting the test result for very short length signals.Griffith Sciences, School of Information and Communication TechnologyFull Tex

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