Hu Xiaohua, Wu Fang-Xiang
College of Information Science & Technology, Drexel University, Philadelphia, PA 19104, USA.
BMC Bioinformatics. 2007 Aug 31;8:324. doi: 10.1186/1471-2105-8-324.
Biomolecular networks dynamically respond to stimuli and implement cellular function. Understanding these dynamic changes is the key challenge for cell biologists. As biomolecular networks grow in size and complexity, the model of a biomolecular network must become more rigorous to keep track of all the components and their interactions. In general this presents the need for computer simulation to manipulate and understand the biomolecular network model.
In this paper, we present a novel method to model the regulatory system which executes a cellular function and can be represented as a biomolecular network. Our method consists of two steps. First, a novel scale-free network clustering approach is applied to the large-scale biomolecular network to obtain various sub-networks. Second, a state-space model is generated for the sub-networks and simulated to predict their behavior in the cellular context. The modeling results represent hypotheses that are tested against high-throughput data sets (microarrays and/or genetic screens) for both the natural system and perturbations. Notably, the dynamic modeling component of this method depends on the automated network structure generation of the first component and the sub-network clustering, which are both essential to make the solution tractable.
Experimental results on time series gene expression data for the human cell cycle indicate our approach is promising for sub-network mining and simulation from large-scale biomolecular network.
生物分子网络能动态响应刺激并实现细胞功能。理解这些动态变化是细胞生物学家面临的关键挑战。随着生物分子网络规模和复杂性的增加,生物分子网络模型必须更加严谨,以追踪所有组件及其相互作用。一般来说,这就需要计算机模拟来操纵和理解生物分子网络模型。
在本文中,我们提出了一种新颖的方法来对执行细胞功能且可表示为生物分子网络的调节系统进行建模。我们的方法包括两个步骤。首先,将一种新颖的无标度网络聚类方法应用于大规模生物分子网络以获得各种子网络。其次,为子网络生成状态空间模型并进行模拟,以预测它们在细胞环境中的行为。建模结果代表了针对自然系统和扰动的高通量数据集(微阵列和/或基因筛选)进行检验的假设。值得注意的是,该方法的动态建模组件依赖于第一个组件的自动网络结构生成和子网络聚类,这两者对于使解决方案易于处理都是必不可少的。
关于人类细胞周期时间序列基因表达数据的实验结果表明,我们的方法在从大规模生物分子网络中挖掘子网络和进行模拟方面很有前景。