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A comparative study of rank aggregation methods for partial and top ranked lists in genomic applications

机译:基因组应用中部分和顶部排名列表的秩聚集方法的比较研究

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摘要

Rank aggregation (RA), the process of combining multiple ranked lists into a single ranking, has played an important role in integrating information from individual genomic studies that address the same biological question. In previous research, attention has been focused on aggregating full lists. However, partial and/or top ranked lists are prevalent because of the great heterogeneity of genomic studies and limited resources for follow-up investigation. To be able to handle such lists, some ad hoc adjustments have been suggested in the past, but how RA methods perform on them (after the adjustments) has never been fully evaluated. In this article, a systematic framework is proposed to define different situations that may occur based on the nature of individually ranked lists. A comprehensive simulation study is conducted to examine the performance characteristics of a collection of existing RA methods that are suitable for genomic applications under various settings simulated to mimic practical situations. A non-small cell lung cancer data example is provided for further comparison. Based on our numerical results, general guidelines about which methods perform the best/worst, and under what conditions, are provided. Also, we discuss key factors that substantially affect the performance of the different methods.
机译:排名聚合(RA),将多个排名列表组合成单个排名的过程在整合来自涉及相同生物问题的单个基因组研究的信息中发挥了重要作用。在以前的研究中,注意力集中在汇总全部列表上。然而,部分和/或顶部排名的列表是普遍的,因为基因组研究的巨大异质性和随访调查的资源有限。为了能够处理此类列表,过去已经提出了一些临时调整,但是如何对其进行RA方法(调整后)从未得到完全评估。在本文中,提出了一种系统框架来定义基于单独排名列表的性质可能发生的不同情况。进行了全面的仿真研究,以检查适用于模拟实际情况的各种环境中适用于基因组应用的现有RA方法的性能特征。提供非小细胞肺癌数据示例以进一步比较。根据我们的数值结果,提供了一般指南,其中关于哪种方法执行最佳/最差,在什么条件下提供。此外,我们讨论了基本上影响不同方法性能的关键因素。

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