Vishwesh V Kulkarni, Reza Arastoo, Anupama Bhat, Kalyansundaram Subramanian, Mayuresh V Kothare, Marc C Riedel
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引用次数: 0
摘要
基于 Zavlanos 等人(Automatica: Special Issue Syst Biol 47(6):1113-1122, 2011)最近开发的线性矩阵不等式(LMI)公式,我们提出了一种理论框架和算法,利用文献策划数据和微阵列数据推导出一类基因调控网络的常微分方程(ODE)模型。Zavlanos 等人(Automatica: Special Issue Syst Biol 47(6):1113-1122, 2011)提出的解决方案要求微阵列数据必须是一系列受控实验的结果,在这些实验中,通过每次过度表达一个基因来扰动网络。我们注意到,在某些应用中可以放宽这一限制,此外,我们还演示了如何通过使用佩伦-弗罗贝纽斯对角优势条件作为稳定性限制来降低这些算法的保守性。由于采用了 LMI 形式,因此有界实数两难可以很容易地用于利用附加信息。我们将介绍一些案例研究,说明如何在数据集上使用这些算法来推导底层调控网络的 ODE 模型。
Gene regulatory network modeling using literature curated and high throughput data.
Building on the linear matrix inequality (LMI) formulation developed recently by Zavlanos et al. (Automatica: Special Issue Syst Biol 47(6):1113-1122, 2011), we present a theoretical framework and algorithms to derive a class of ordinary differential equation (ODE) models of gene regulatory networks using literature curated data and microarray data. The solution proposed by Zavlanos et al. (Automatica: Special Issue Syst Biol 47(6):1113-1122, 2011) requires that the microarray data be obtained as the outcome of a series of controlled experiments in which the network is perturbed by over-expressing one gene at a time. We note that this constraint may be relaxed for some applications and, in addition, demonstrate how the conservatism in these algorithms may be reduced by using the Perron-Frobenius diagonal dominance conditions as the stability constraints. Due to the LMI formulation, it follows that the bounded real lemma may easily be used to make use of additional information. We present case studies that illustrate how these algorithms can be used on datasets to derive ODE models of the underlying regulatory networks.