Potsdam Institute for Climate Impact Research (PIK), Potsdam, Germany.
Phys Rev Lett. 2011 Jul 29;107(5):054101. doi: 10.1103/PhysRevLett.107.054101. Epub 2011 Jul 26.
Identifying causal links (couplings) is a fundamental problem that facilitates the understanding of emerging structures in complex networks. We propose and analyze inner composition alignment-a novel, permutation-based asymmetric association measure to detect regulatory links from very short time series, currently applied to gene expression. The measure can be used to infer the direction of couplings, detect indirect (superfluous) links, and account for autoregulation. Applications to the gene regulatory network of E. coli are presented.
识别因果关系(耦合)是一个基本问题,有助于理解复杂网络中新兴的结构。我们提出并分析了内部组成对齐——一种新颖的基于排列的不对称关联度量方法,用于从非常短的时间序列中检测调节链接,目前应用于基因表达。该度量方法可用于推断耦合的方向、检测间接(多余)链接,并考虑自调节。我们将该方法应用于大肠杆菌的基因调控网络。