Charbonnier Camille, Chiquet Julien, Ambroise Christophe
University of Evry-Val-d'Essonne.
Stat Appl Genet Mol Biol. 2010;9:Article 15. doi: 10.2202/1544-6115.1519. Epub 2010 Feb 1.
We present a weighted-LASSO method to infer the parameters of a first-order vector auto-regressive model that describes time course expression data generated by directed gene-to-gene regulation networks. These networks are assumed to own prior internal structures of connectivity which drive the inference method. This prior structure can be either derived from prior biological knowledge or inferred by the method itself. We illustrate the performance of this structure-based penalization both on synthetic data and on two canonical regulatory networks (the yeast cell cycle regulation network and the E. coli S.O.S. DNA repair network).
我们提出了一种加权最小绝对收缩和选择算子(weighted-LASSO)方法,用于推断一阶向量自回归模型的参数,该模型描述了由定向基因到基因调控网络生成的时间序列表达数据。假设这些网络具有驱动推理方法的先验内部连接结构。这种先验结构既可以从先前的生物学知识中推导出来,也可以由该方法本身推断出来。我们在合成数据以及两个典型调控网络(酵母细胞周期调控网络和大肠杆菌S.O.S. DNA修复网络)上展示了这种基于结构的惩罚方法的性能。