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Ensemble learning of genetic networks from time-series expression data

机译:从时序表达数据集中学习遗传网络

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Motivation: Inferring genetic networks from time-series expression data has been a great deal of interest. In most cases, however, the number of genes exceeds that of data points which, in principle, makes it impossible to recover the underlying networks. To address the dimensionality problem, we apply the subset selection method to a linear system of difference equations. Previous approaches assign the single most likely combination of regulators to each target gene, which often causes over-fitting of the small number of data. Results: Here, we propose a new algorithm, named LEARNe, which merges the predictions from all the combinations of regulators that have a certain level of likelihood. LEARNe provides more accurate and robust predictions than previous methods for the structure of genetic networks under the linear system model. We tested LEARNe for reconstructing the SOS regulatory network of Escherichia coli and the cell cycle regulatory network of yeast from real experimental data, where LEARNe also exhibited better performances than previous methods. Availabilty: The MATLAB codes are available upon request from the authors.
机译:动机:从时间序列表达数据推断遗传网络引起了极大的兴趣。但是,在大多数情况下,基因的数量超过了数据点的数量,从原则上讲,这使得无法恢复基础网络。为了解决维数问题,我们将子集选择方法应用于差分方程的线性系统。先前的方法将调节剂的最可能组合分配给每个靶基因,这通常会导致少量数据的过度拟合。结果:在这里,我们提出了一种新的算法,称为LEARNe,该算法合并了具有一定可能性的所有调节器组合的预测。对于线性系统模型下的遗传网络结构,LEARNe提供了比以前的方法更准确,更可靠的预测。我们从真实的实验数据中测试了LEARNe用于重建大肠杆菌的SOS调控网络和酵母的细胞周期调控网络,其中LEARNe还表现出比以前的方法更好的性能。可用性:可应作者要求提供MATLAB代码。

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