Oktem Hakan, Pearson Ronald, Egiazarian Karen
Tampere University of Technology, Institute of Signal Processing, P.O. Box 553, Tampere 33101, Finland.
Chaos. 2003 Dec;13(4):1167-74. doi: 10.1063/1.1608671.
Following the complete sequencing of several genomes, interest has grown in the construction of genetic regulatory networks, which attempt to describe how different genes work together in both normal and abnormal cells. This interest has led to significant research in the behavior of abstract network models, with Boolean networks emerging as one particularly popular type. An important limitation of these networks is that their time evolution is necessarily periodic, motivating our interest in alternatives that are capable of a wider range of dynamic behavior. In this paper we examine one such class, that of continuous-time Boolean networks, a special case of the class of Boolean delay equations (BDEs) proposed for climatic and seismological modeling. In particular, we incorporate a biologically motivated refractory period into the dynamic behavior of these networks, which exhibit binary values like traditional Boolean networks, but which, unlike Boolean networks, evolve in continuous time. In this way, we are able to overcome both computational and theoretical limitations of the general class of BDEs while still achieving dynamics that are either aperiodic or effectively so, with periods many orders of magnitude longer than those of even large discrete time Boolean networks.
在多个基因组完成测序之后,人们对构建基因调控网络的兴趣与日俱增,基因调控网络试图描述不同基因在正常细胞和异常细胞中是如何协同工作的。这种兴趣引发了对抽象网络模型行为的大量研究,布尔网络成为一种特别流行的类型。这些网络的一个重要局限性在于其时间演化必然是周期性的,这激发了我们对能够展现更广泛动态行为的替代方案的兴趣。在本文中,我们研究了这样一类网络,即连续时间布尔网络,它是为气候和地震学建模而提出的布尔延迟方程(BDEs)类别的一个特殊情况。特别地,我们将一个具有生物学动机的不应期纳入这些网络的动态行为中,这些网络像传统布尔网络一样呈现二进制值,但与布尔网络不同的是,它们在连续时间中演化。通过这种方式,我们能够克服一般BDEs类别的计算和理论局限性,同时仍然实现非周期性或有效非周期性的动态,其周期比甚至大型离散时间布尔网络的周期还要长许多个数量级。