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Simultaneous inference of biological networks of multiple species from genome-wide data and evolutionary information: a semi-supervised approach

机译:从全基因组数据和进化信息同时推断多个物种的生物网络:一种半监督方法

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Motivation: The existing supervised methods for biological network inference work on each of the networks individually based only on intra-species information such as gene expression data. We believe that it will be more effective to use genomic data and cross-species evolutionary information from different species simultaneously, rather than to use the genomic data alone.Results: We created a new semi-supervised learning method called Link Propagation for inferring biological networks of multiple species based on genome-wide data and evolutionary information. The new method was applied to simultaneous reconstruction of three metabolic networks of Caenorhabditis elegans, Helicobacter pylori and Saccharomyces cerevisiae, based on gene expression similarities and amino acid sequence similarities. The experimental results proved that the new simultaneous network inference method consistently improves the predictive performance over the individual network inferences, and it also outperforms in accuracy and speed other established methods such as the pairwise support vector machine.
机译:动机:现有的受监督的生物网络推理方法仅基于物种内部信息(例如基因表达数据)在每个网络上单独起作用。我们相信,同时使用来自不同物种的基因组数据和跨物种进化信息将比单独使用基因组数据更有效。结果:我们创建了一种称为链接传播的半监督学习新方法来推断生物网络。基于全基因组数据和进化信息的多种物种。基于基因表达相似性和氨基酸序列相似性,将该新方法应用于线虫秀丽隐杆线虫,幽门螺杆菌和酿酒酵母的三个代谢网络的同时重建。实验结果证明,新的同时网络推理方法在单个网络推理上不断提高了预测性能,并且在准确性和速度方面均优于其他已建立的方法,例如成对支持向量机。

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