Radde Nicole
Institute for Medical Informatics, Statistics and Epidemiology, University of Leipzig, Härtelstrasse 16-18, Leipzig, Germany.
EURASIP J Bioinform Syst Biol. 2009;2009(1):327503. doi: 10.1155/2009/327503. Epub 2008 Nov 19.
Differential equation models for biological oscillators are often not robust with respect to parameter variations. They are based on chemical reaction kinetics, and solutions typically converge to a fixed point. This behavior is in contrast to real biological oscillators, which work reliably under varying conditions. Moreover, it complicates network inference from time series data. This paper investigates differential equation models for biological oscillators from two perspectives. First, we investigate the effect of time delays on the robustness of these oscillator models. In particular, we provide sufficient conditions for a time delay to cause oscillations by destabilizing a fixed point in two-dimensional systems. Moreover, we show that the inclusion of a time delay also stabilizes oscillating behavior in this way in larger networks. The second part focuses on the inverse problem of estimating model parameters from time series data. Bifurcations are related to nonsmoothness and multiple local minima of the objective function.
生物振荡器的微分方程模型通常在参数变化方面不够稳健。它们基于化学反应动力学,其解通常会收敛到一个固定点。这种行为与真实的生物振荡器相反,真实的生物振荡器在不同条件下能可靠地工作。此外,这使得从时间序列数据进行网络推断变得复杂。本文从两个角度研究生物振荡器的微分方程模型。首先,我们研究时间延迟对这些振荡器模型稳健性的影响。特别地,我们给出了二维系统中时间延迟通过使固定点不稳定从而引发振荡的充分条件。此外,我们表明在更大的网络中,加入时间延迟也能以这种方式稳定振荡行为。第二部分聚焦于从时间序列数据估计模型参数的反问题。分岔与目标函数的非光滑性和多个局部最小值有关。