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Teamwork: Improved eQTL Mapping Using Combinations of Machine Learning Methods

机译:团队合作:结合机器学习方法改进的eQTL映射

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摘要

Expression quantitative trait loci (eQTL) mapping is a widely used technique to uncover regulatory relationships between genes. A range of methodologies have been developed to map links between expression traits and genotypes. The DREAM (Dialogue on Reverse Engineering Assessments and Methods) initiative is a community project to objectively assess the relative performance of different computational approaches for solving specific systems biology problems. The goal of one of the DREAM5 challenges was to reverse-engineer genetic interaction networks from synthetic genetic variation and gene expression data, which simulates the problem of eQTL mapping. In this framework, we proposed an approach whose originality resides in the use of a combination of existing machine learning algorithms (committee). Although it was not the best performer, this method was by far the most precise on average. After the competition, we continued in this direction by evaluating other committees using the DREAM5 data and developed a method that relies on Random Forests and LASSO. It achieved a much higher average precision than the DREAM best performer at the cost of slightly lower average sensitivity.
机译:表达数量性状基因座(eQTL)映射是一种广泛使用的技术,用于发现基因之间的调节关系。已经开发了许多方法来映射表达性状和基因型之间的联系。 DREAM(逆向工程评估和方法对话)计划是一个社区项目,旨在客观地评估解决特定系统生物学问题的不同计算方法的相对性能。 DREAM5挑战之一的目标是从合成遗传变异和基因表达数据中逆向工程遗传相互作用网络,从而模拟eQTL定位问题。在此框架中,我们提出了一种方法,该方法的独创性在于结合使用现有的机器学习算法(委员会)。尽管它不是性能最好的方法,但平均而言,它是迄今为止最精确的方法。比赛结束后,我们通过使用DREAM5数据评估其他委员会,继续朝这个方向发展,并开发了一种基于Random Forests和LASSO的方法。与DREAM最佳性能相比,它的平均精度要高得多,但其平均灵敏度略低。

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