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Robust rank aggregation for gene list integration and meta-analysis

机译:稳健的秩聚合可进行基因列表整合和荟萃分析

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摘要

>Motivation: The continued progress in developing technological platforms, availability of many published experimental datasets, as well as different statistical methods to analyze those data have allowed approaching the same research question using various methods simultaneously. To get the best out of all these alternatives, we need to integrate their results in an unbiased manner. Prioritized gene lists are a common result presentation method in genomic data analysis applications. Thus, the rank aggregation methods can become a useful and general solution for the integration task.>Results: Standard rank aggregation methods are often ill-suited for biological settings where the gene lists are inherently noisy. As a remedy, we propose a novel robust rank aggregation (RRA) method. Our method detects genes that are ranked consistently better than expected under null hypothesis of uncorrelated inputs and assigns a significance score for each gene. The underlying probabilistic model makes the algorithm parameter free and robust to outliers, noise and errors. Significance scores also provide a rigorous way to keep only the statistically relevant genes in the final list. These properties make our approach robust and compelling for many settings.>Availability: All the methods are implemented as a GNU R package RobustRankAggreg, freely available at the Comprehensive R Archive Network .>Contact: >Supplementary information are available at Bioinformatics online.
机译:>动机:技术平台的不断发展,许多已发布的实验数据集的可用性以及用于分析这些数据的不同统计方法都允许同时使用各种方法来解决同一研究问题。为了从所有这些选择中获得最大的收益,我们需要以公正的方式整合它们的结果。优先排序的基因列表是基因组数据分析应用程序中常见的结果表示方法。因此,等级聚合方法可以成为整合任务的有用且通用的解决方案。>结果:标准等级聚合方法通常不适用于基因清单固有噪声的生物学环境。作为一种补救措施,我们提出了一种新颖的鲁棒秩聚合(RRA)方法。我们的方法可以检测出在不相关输入的零假设下始终比预期更好地排名的基因,并为每个基因分配显着性得分。潜在的概率模型使算法参数自由且对异常值,噪声和错误具有鲁棒性。重要性评分还提供了一种严格的方法,可以仅将统计相关的基因保留在最终列表中。这些属性使我们的方法在许多设置下均具有强大的功能和吸引力。>可用性:所有方法均以GNU R包RobustRankAggreg的形式实现,可从Composite R存档网络免费获得。>联系方式: >补充信息可从在线生物信息学获得。

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