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Differential Gene Co-expression Network using BicMix

机译:使用BICMIX的差分基因共表达网络

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Alzheimer's is a dangerous disease that causes dementia. Malfunctioned gene in the brain caused by Alzheimer Disease (AD) make some problem in the brain (e.g memory). Recovering network of the gene in the AD from Alzheimer's gene expression data is essential to understand the information about AD. In this research, we want to find groups of genes that co-expressed in some condition, called biclusters, and find the network of those genes based on that group. The problem to find the accurate network/information is the unknown external factor that affects the measurement. Here we use probability-based biclustering to cover the uncertainty. We use BicMix, a new probabilistic-based biclustering method to find biclusters of gene and the gene expression network. This method use a Bayesian framework and models the data as a result of the multiplication of two sparse matrices. The value of these matrices represents whether or not a gene or a condition included in a bicluster. Three-Parameter Beta (TPB) distribution and variational expectation maximization (VEM) is respectively used to induce the sparsity of these matrices and to estimate the parameters. Once we get the biclusters, the result can be used to build the gene co-expression network.
机译:阿尔茨海默氏症是一种危险的疾病,导致痴呆症。由阿尔茨海默病(AD)引起的脑中的故障基因在大脑中产生一些问题(例如记忆)。从Alzheimer的基因表达数据中恢复基因网络的基因网络对于了解广告的信息至关重要。在这项研究中,我们希望在某些条件下,称为Biclusters的基因组,并根据该组找到这些基因的网络。找到准确的网络/信息的问题是影响测量的未知外部因素。在这里,我们使用基于概率的双板来覆盖不确定性。我们使用BICMIX,一种基于概率的基于概率的BIClustering方法来寻找基因的双板和基因表达网络。此方法使用贝叶斯框架并模拟数据作为两个稀疏矩阵的乘法的结果。这些矩阵的值表示基因或条件是否包括在双板中。三参数β(TPB)分布和变分期预期最大化(VEM)分别用于诱导这些矩阵的稀疏性并估计参数。一旦我们获得了Biclusters,就可以使用结果来构建基因共表达网络。

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