基于邻域正则化三因子一类协同过滤算法的转录因子靶基因预测。

Hansaim Lim, Lei Xie
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引用次数: 6

摘要

确定转录因子的靶基因是了解转录调控的关键因素之一。然而,由于大规模实验的成本和内在的复杂性,我们对全基因组TF靶向谱的理解有限。因此,计算预测方法对于预测未观察到的关联是有用的。在这里,我们开发了一种新的一类协同过滤算法tREMAP,该算法基于正则化,加权非负矩阵三因子分解。该算法利用已知的基因- tf关联和蛋白-蛋白相互作用网络预测未观察到的tf靶基因。我们的基准研究表明,在所有四个性能指标AUC、MAP、MPR和HLU方面,tREMAP在转录因子靶基因预测方面都明显优于REMAP(一种基于双因子分解的算法)。当用独立数据集评估时,对前495个预测关联的预测准确率为37.8%,与随机猜测相比,富集系数为4.19。此外,tREMAP预测的许多新关联都得到了文献证据的支持。虽然我们在本研究中只使用了标准的tf靶基因相互作用数据,但tREMAP可以直接应用于组织特异性数据集。tREMAP为进一步完善TF靶基因预测提供了一个整合多组学数据的框架。因此,tREMAP是研究基因调控网络的潜在有用工具。tREMAP的基准数据集和源代码可以在https://github.com/hansaimlim/REMAP/tree/master/TriFacREMAP上免费获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Target Gene Prediction of Transcription Factor Using a New Neighborhood-regularized Tri-factorization One-class Collaborative Filtering Algorithm.

Target Gene Prediction of Transcription Factor Using a New Neighborhood-regularized Tri-factorization One-class Collaborative Filtering Algorithm.

Identifying the target genes of transcription factors (TFs) is one of the key factors to understand transcriptional regulation. However, our understanding of genome-wide TF targeting profile is limited due to the cost of large scale experiments and intrinsic complexity. Thus, computational prediction methods are useful to predict the unobserved associations. Here, we developed a new one-class collaborative filtering algorithm tREMAP that is based on regularized, weighted nonnegative matrix tri-factorization. The algorithm predicts unobserved target genes for TFs using known gene-TF associations and protein-protein interaction network. Our benchmark study shows that tREMAP significantly outperforms its counterpart REMAP, a bi-factorization-based algorithm, for transcription factor target gene prediction in all four performance metrics AUC, MAP, MPR, and HLU. When evaluated by independent data sets, the prediction accuracy is 37.8% on the top 495 predicted associations, an enrichment factor of 4.19 compared with the random guess. Furthermore, many of the predicted novel associations by tREMAP are supported by evidence from literature. Although we only use canonical TF-target gene interaction data in this study, tREMAP can be directly applied to tissue-specific data sets. tREMAP provides a framework to integrate multiple omics data for the further improvement of TF target gene prediction. Thus, tREMAP is a potentially useful tool in studying gene regulatory networks. The benchmark data set and the source code of tREMAP are freely available at https://github.com/hansaimlim/REMAP/tree/master/TriFacREMAP.

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