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Stability of building gene regulatory networks with sparse autoregressive models

机译:用稀疏自回归模型构建基因调控网络的稳定性

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摘要

BackgroundBiological networks are constantly subjected to random perturbations, and efficient feedback and compensatory mechanisms exist to maintain their stability. There is an increased interest in building gene regulatory networks (GRNs) from temporal gene expression data because of their numerous applications in life sciences. However, because of the limited number of time points at which gene expressions can be gathered in practice, computational techniques of building GRN often lead to inaccuracies and instabilities. This paper investigates the stability of sparse auto-regressive models of building GRN from gene expression data.
机译:背景技术生物网络经常受到随机扰动,并且存在有效的反馈和补偿机制来维持其稳定性。由于它们在生命科学中的众多应用,因此越来越需要根据时态基因表达数据构建基因调控网络(GRN)。但是,由于在实践中可以收集基因表达的时间点数量有限,因此构建GRN的计算技术通常会导致不准确和不稳定。本文从基因表达数据研究了构建GRN的稀疏自回归模型的稳定性。

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