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Inference of Genetic Networks Using Random Forests: Use of Different Weights for Time-series and Static Gene Expression Data

机译:使用随机森林的遗传网络推断:使用不同权重的时间序列和静态基因表达数据

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Genetic network inference methods using random forests have shown promise. Some of the random-forest-based inference methods have an ability to analyze both time-series and static gene expression data. We think however that, as the gene expression levels at two adjacent measurements of a time-series data are often similar to each other, the gene expression levels at each measurement in the time-series data are less informative than those in the static data. On the basis of this idea, we proposed a new inference method that relies more on static gene expression data than time-series ones. Through the numerical experiments, we showed that the quality of the inferred genetic network is slightly improved by giving greater importance to static data than time-series ones. Although we develop the new method by modifying the random-forest-based inference method proposed by the authors, we could introduce the idea in this study into any inference method that is capable of analyzing both time-series and static gene expression data.
机译:使用随机森林遗传网络的推理方法有希望。一些基于随机森林的推理方法来分析这两个时间序列和静态的基因表达数据的能力。然而,我们认为,作为在时间序列数据中的两个相邻测量基因表达水平通常彼此相似,在时间序列数据中的每个测量的基因表达水平比在静态数据较少信息。在这一理念的基础上,我们提出了更多的依赖比时间序列那些静态的基因表达数据的新的推断方法。通过数值实验,我们发现,推断基因网络的质量稍微比时间序列的人给人以静态数据更重要的改进。虽然我们制定修改作者提出了基于随机森林推断方法,新方法,我们可以在这项研究中成能够分析两个时间序列和静态的基因表达数据的任何推理方法介绍的想法。

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