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Discovering graphical Granger causality using the truncating lasso penalty.

机译:使用截短的套索罚分发现图形化的格兰杰因果关系。

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MOTIVATION: Components of biological systems interact with each other in order to carry out vital cell functions. Such information can be used to improve estimation and inference, and to obtain better insights into the underlying cellular mechanisms. Discovering regulatory interactions among genes is therefore an important problem in systems biology. Whole-genome expression data over time provides an opportunity to determine how the expression levels of genes are affected by changes in transcription levels of other genes, and can therefore be used to discover regulatory interactions among genes. RESULTS: In this article, we propose a novel penalization method, called truncating lasso, for estimation of causal relationships from time-course gene expression data. The proposed penalty can correctly determine the order of the underlying time series, and improves the performance of the lasso-type estimators. Moreover, the resulting estimate provides information on the time lag between activation of transcription factors and their effects on regulated genes. We provide an efficient algorithm for estimation of model parameters, and show that the proposed method can consistently discover causal relationships in the large p, small n setting. The performance of the proposed model is evaluated favorably in simulated, as well as real, data examples. AVAILABILITY: The proposed truncating lasso method is implemented in the R-package 'grangerTlasso' and is freely available at http://www.stat.lsa.umich.edu/~shojaie/.
机译:动机:生物系统的各个组成部分相互相互作用,以执行重要的细胞功能。此类信息可用于改善估计和推断,并获得对潜在细胞机制的更好了解。因此,发现基因之间的调控相互作用是系统生物学中的重要问题。随着时间的推移,全基因组表达数据为确定基因表达水平如何受到其他基因转录水平变化的影响提供了机会,因此可用于发现基因之间的调控相互作用。结果:在本文中,我们提出了一种新颖的惩罚方法,称为截短套索,用于根据时程基因表达数据估算因果关系。建议的惩罚可以正确确定基础时间序列的顺序,并提高套索类型估计器的性能。而且,所得估计值提供了有关转录因子激活与其对调控基因的影响之间的时间间隔的信息。我们提供了一种用于估计模型参数的有效算法,并证明了该方法可以在大p,小n设置中一致地发现因果关系。拟议模型的性能在仿真和实际数据示例中均得到良好评估。可用性:拟议的截短套索方法在R包“ grangerTlasso”中实现,可以从http://www.stat.lsa.umich.edu/~shojaie/免费获得。

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