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Identifying Gene Network Rewiring Using Robust Differential Graphical Model With Multivariate T-distribution

Posted on:2021-03-10Degree:MasterType:Thesis
Country:ChinaCandidate:R YuanFull Text:PDF
GTID:2370330605461655Subject:Mathematical Statistics
Abstract/Summary:PDF Full Text Request
Identifying gene network rewiring under different biological conditions is im-portant for understanding the mechanisms underlying complex diseases.Gaussian graphical models,which assume the data follow the multivariate normal distribu-tion,are widely used to identify gene network rewiring.However,the normality assume often fails in reality since the data are contaminated by extreme outliers in general.In this study,we propose a new robust differential graphical model to identify gene network rewiring between two conditions based on the multivariate t-distribution.The multivariate t-distribution is more robust to outliers than the normal distribution since it has heavy tails and allows values far from the mean.A fused lasso penalty is used to borrow information across conditions to improve the re-sults.We develop an expectation maximization algorithm to solve the optimization model.Experiment results on simulated data show that our method outperforms the state-of-the-art methods.Our method is also applied to identify gene network rewiring between luminal A and basal-like subtypes of breast cancer,and gene net-work rewiring between the proneural and mesenchymal subtypes of glioblastoma.Several key genes which drive gene network rewiring are discovered.
Keywords/Search Tags:Gene network rewiring, Differential graphical model, Multivariate t-distribution, Expectation maximization algorithm
PDF Full Text Request
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