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A non-Gaussian factor analysis approach to transcription Network Component Analysis

机译:转录网络成分分析的非高斯因素分析方法

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Transcription factor activities (TFAs), rather than expression levels, control gene expression and provide valuable information for investigating TF-gene regulations. Network Component Analysis (NCA) is a model based method to deduce TFAs and TF-gene control strengths from microarray data and a priori TF-gene connectivity data. We modify NCA to model gene expression regulation by non-Gaussian Factor Analysis (NFA), which assumes TFAs independently comes from Gaussian mixture densities. We properly incorporate a priori connectivity and/or sparsity on the mixing matrix of NFA, and derive, under Bayesian Ying-Yang (BYY) learning framework, a BYY-NFA algorithm that can not only uncover the latent TFA profile similar to NCA, but also is capable of automatically shutting off unnecessary connections. Simulation study demonstrates the effectiveness of BYY-NFA, and a preliminary application to two real world data sets shows that BYY-NFA improves NCA for the case when TF-gene connectivity is not available or not reliable, and may provide a preliminary set of candidate TF-gene interactions or double check unreliable connections for experimental verification.
机译:转录因子活性(TFA)而非表达水平可控制基因表达,并为研究TF基因调控提供有价值的信息。网络组件分析(NCA)是一种基于模型的方法,可从微阵列数据和先验TF基因连通性数据中推导出TFA和TF基因控制强度。我们通过非高斯因子分析(NFA)修改了NCA,以模拟基因表达调控,其中假定TFA独立地来自高斯混合密度。我们将先验连通性和/或稀疏性适当地合并到NFA的混合矩阵中,并在贝叶斯应阳(BYY)学习框架下得出BYY-NFA算法,该算法不仅可以发现类似于NCA的潜在TFA配置文件,而且还能够自动关闭不必要的连接。仿真研究证明了BYY-NFA的有效性,对两个现实世界数据集的初步应用表明,当TF基因连通性不可用或不可靠时,BYY-NFA可以改善NCA,并可以提供初步的候选对象TF基因相互作用或仔细检查不可靠的连接以进行实验验证。

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