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A multiorganism based method for Bayesian gene network estimation
Authors:Dawy Zaher  Yaacoub Elias  Nassar Marcel  Abdallah Rami  Zeineddine Hady Ali
Institution:Department of Electrical and Computer Engineering, American University of Beirut, P.O. Box 11-0236, Riad El-Solh, Beirut 1107 2020, Lebanon
Abstract:The primary goal of this article is to infer genetic interactions based on gene expression data. A new method for multiorganism Bayesian gene network estimation is presented based on multitask learning. When the input datasets are sparse, as is the case in microarray gene expression data, it becomes difficult to separate random correlations from true correlations that would lead to actual edges when modeling the gene interactions as a Bayesian network. Multitask learning takes advantage of the similarity between related tasks, in order to construct a more accurate model of the underlying relationships represented by the Bayesian networks. The proposed method is tested on synthetic data to illustrate its validity. Then it is iteratively applied on real gene expression data to learn the genetic regulatory networks of two organisms with homologous genes.
Keywords:Gene networks  Homologous genes  Bayesian network estimation  Multitask learning
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