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題名 Inferring Genetic Interactions via A Data-driven Second Order Model
作者 洪英超
Jiang,Ci-Ren ; Hung,Ying-Chao ; Chen, Chung-Ming ; Shieh, Grace S.
貢獻者 統計系
關鍵詞 gene expression;genetic interaction;microarray data;pathway;regression;transcriptional regulatory interaction
日期 2012.05
上傳時間 11-Nov-2013 17:45:26 (UTC+8)
摘要 Genetic/transcriptional regulatory interactions are shown to predict partial components of signaling pathways, which have been recognized as vital to complex human diseases. Both activator (A) and repressor (R) are known to coregulate their common target gene (T). Xu et al. (2002) proposed to model this coregulation by a fixed second order response surface (called the RS algorithm), in which T is a function of A, R, and AR. Unfortunately, the RS algorithm did not result in a sufficient number of genetic interactions (GIs) when it was applied to a group of 51 yeast genes in a pilot study. Thus, we propose a data-driven second order model (DDSOM), an approximation to the non-linear transcriptional interactions, to infer genetic and transcriptional regulatory interactions. For each triplet of genes of interest (A, R, and T), we regress the expression of T at time t + 1 on the expression of A, R, and AR at time t. Next, these well-fitted regression models (viewed as points in R(3)) are collected, and the center of these points is used to identify triples of genes having the A-R-T relationship or GIs. The DDSOM and RS algorithms are first compared on inferring transcriptional compensation interactions of a group of yeast genes in DNA synthesis and DNA repair using microarray gene expression data; the DDSOM algorithm results in higher modified true positive rate (about 75%) than that of the RS algorithm, checked against quantitative RT-polymerase chain reaction results. These validated GIs are reported, among which some coincide with certain interactions in DNA repair and genome instability pathways in yeast. This suggests that the DDSOM algorithm has potential to predict pathway components. Further, both algorithms are applied to predict transcriptional regulatory interactions of 63 yeast genes. Checked against the known transcriptional regulatory interactions queried from TRANSFAC, the proposed also performs better than the RS algorithm.
關聯 Frontiers in Statistical Genetics and Methodology, 3, Article 71
資料類型 article
dc.contributor 統計系en_US
dc.creator (作者) 洪英超zh_TW
dc.creator (作者) Jiang,Ci-Ren ; Hung,Ying-Chao ; Chen, Chung-Ming ; Shieh, Grace S.-
dc.date (日期) 2012.05en_US
dc.date.accessioned 11-Nov-2013 17:45:26 (UTC+8)-
dc.date.available 11-Nov-2013 17:45:26 (UTC+8)-
dc.date.issued (上傳時間) 11-Nov-2013 17:45:26 (UTC+8)-
dc.identifier.uri (URI) http://nccur.lib.nccu.edu.tw/handle/140.119/61604-
dc.description.abstract (摘要) Genetic/transcriptional regulatory interactions are shown to predict partial components of signaling pathways, which have been recognized as vital to complex human diseases. Both activator (A) and repressor (R) are known to coregulate their common target gene (T). Xu et al. (2002) proposed to model this coregulation by a fixed second order response surface (called the RS algorithm), in which T is a function of A, R, and AR. Unfortunately, the RS algorithm did not result in a sufficient number of genetic interactions (GIs) when it was applied to a group of 51 yeast genes in a pilot study. Thus, we propose a data-driven second order model (DDSOM), an approximation to the non-linear transcriptional interactions, to infer genetic and transcriptional regulatory interactions. For each triplet of genes of interest (A, R, and T), we regress the expression of T at time t + 1 on the expression of A, R, and AR at time t. Next, these well-fitted regression models (viewed as points in R(3)) are collected, and the center of these points is used to identify triples of genes having the A-R-T relationship or GIs. The DDSOM and RS algorithms are first compared on inferring transcriptional compensation interactions of a group of yeast genes in DNA synthesis and DNA repair using microarray gene expression data; the DDSOM algorithm results in higher modified true positive rate (about 75%) than that of the RS algorithm, checked against quantitative RT-polymerase chain reaction results. These validated GIs are reported, among which some coincide with certain interactions in DNA repair and genome instability pathways in yeast. This suggests that the DDSOM algorithm has potential to predict pathway components. Further, both algorithms are applied to predict transcriptional regulatory interactions of 63 yeast genes. Checked against the known transcriptional regulatory interactions queried from TRANSFAC, the proposed also performs better than the RS algorithm.en_US
dc.format.extent 741140 bytes-
dc.format.mimetype application/pdf-
dc.language.iso en_US-
dc.relation (關聯) Frontiers in Statistical Genetics and Methodology, 3, Article 71en_US
dc.subject (關鍵詞) gene expression;genetic interaction;microarray data;pathway;regression;transcriptional regulatory interactionen_US
dc.title (題名) Inferring Genetic Interactions via A Data-driven Second Order Modelen_US
dc.type (資料類型) articleen