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Transcriptome network component analysis with limited microarray data

机译:有限基因芯片数据的转录组网络成分分析

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Network component analysis (NCA) is a method to deduce transcription factor (TF) activities and TF-gene regulation control strengths from gene expression data and a TF-gene binding connectivity network. Previously, this method could analyze a maximum number of regulators equal to the total sample size because of the identifiability limit in data decomposition. As such, the total number of source signal components was limited to the total number of experiments rather than the total number of biological regulators. However, networks that have less transcriptome data points than the number of regulators are of interest. Thus it is imperative to develop a theoretical basis that allows realistic source signal extraction based on relatively few data points. On the other hand, such methods would inherently increase numerical challenges leading to multiple solutions. Therefore, solutions to both the problems are needed.
机译:网络成分分析(NCA)是一种从基因表达数据和TF基因结合连接网络推论转录因子(TF)活性和TF基因调控控制强度的方法。以前,由于数据分解中的可识别性限制,此方法可以分析等于总样本大小的最大数量的调节器。这样,源信号分量的总数被限制为实验的总数,而不是生物调节剂的总数。但是,感兴趣的是转录组数据点少于调节子数量的网络。因此,有必要发展一种理论基础,以允许基于相对较少的数据点提取现实的源信号。另一方面,这种方法会固有地增加数值挑战,从而导致多种解决方案。因此,需要解决这两个问题。

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