作者cyz ( )
看板NCTU-STAT96G
標題[情報] 1031演講公告@交大統研所
時間Wed Oct 22 10:19:15 2008
交通大學、清華大學
統計學研究所
專題演講
題 目:A Pattern Recognition Approach to Infer Genetic Interactions
主講人:謝淑蓉博士(中央研究院 統計科學研究所)
時 間:97年10月31日(星期五)上午10:40-11:30
(上午10:20-10:40茶會於交大統計所428室舉行)
地 點:交大綜合一館427室
Abstract
For any time course microarray data in which the gene interactions and the
associated paired patterns are dependent, the proposed pattern recognition
approach (PARE) can infer time-lagged genetic interactions, a challenging
task due to the small number of time points and large number of genes. PARE
utilizes a nonlinear score to identify subclasses of gene pairs with
different time lags. In each subclass, PARE extracts nonlinear
characteristics of paired gene expression curves and learns weights of the
decision score applying an optimization algorithm to microarray gene
expression data (MGED) of some known interactions, from biological
experiments or published literature. For both transcriptional compensation
(TC) and transcriptional interactions (TIs) in yeast, PARE outperforms a
time-lagged correlation approach and the latest advance in graphical Gaussian
models. Further, several predicted TC/TD interactions coincide with existing
pathways involving Sgs1, Srs2 and Mus81. This reinforces the possibility of
applying genetic interactions to predict pathways of protein complexes. We
further apply PARE to a human obese project. Using known 70 TIs and MGED of
human adipocytes-derived cell lines as training, we predict several genetic
interactions of interest; all the predicted TIs are consistent with existing
results from other studies, while some predicted interactions have biological
bearings.
This is a joint work (published in Bioinformatics, 2008) with Cheng-Long
Chuang, Chih-Hung Jen and Chung-Ming Chen.
敬 請 公 佈 歡 迎 參 加
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1F:→ cyz:這天是評鑑第二天。請大家踴躍出席,所長會關心出席人數喔!! 10/22 10:21