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MATRIX FACTORIZATION-BASED DATA FUSION FOR GENE FUNCTION PREDICTION IN BAKER'S YEAST AND SLIME MOLD

机译:基于基于基于基于基于Baker酵母和粘液模具的基于基因功能预测的数据融合

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摘要

The development of effective methods for the characterization of gene functions that are able to combine diverse data sources in a sound and easily-extendible way is an important goal in computational biology. We have previously developed a general matrix factorization-based data fusion approach for gene function prediction. In this manuscript, we show that this data fusion approach can be applied to gene function prediction and that it can fuse various heterogeneous data sources, such as gene expression profiles, known protein annotations, interaction and literature data. The fusion is achieved by simultaneous matrix tri-factorization that shares matrix factors between sources. We demonstrate the effectiveness of the approach by evaluating its performance on predicting ontological annotations in slime mold D. discoideum and on recognizing proteins of baker's yeast S. cerevisiae that participate in the ribosome or are located in the cell membrane. Our approach achieves predictive performance comparable to that of the state-of-the-art kernel-based data fusion, but requires fewer data preprocessing steps.
机译:在能够以声音和易伸缩的方式结合不同数据源的基因函数表征的有效方法的发展是计算生物学中的重要目标。我们以前开发了一种基于基于基于矩阵的基于基于基于基于基因的数据融合方法。在该稿件中,我们表明该数据融合方法可以应用于基因功能预测,并且它可以融合各种异质数据源,例如基因表达谱,已知的蛋白质注释,相互作用和文献数据。融合是通过同时矩阵三分化来实现源之间的矩阵因子。我们通过评估其对预测粘液模具D的性能的性能,并识别参与核糖体或位于细胞膜中的贝克酵母菌群蛋白蛋白质的性能来证明该方法的有效性。我们的方法实现了与最先进的内核数据融合相当的预测性能,但需要更少的数据预处理步骤。

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