遗传调控网络重建方法的拓扑评价

Jakub Olczak, N. Kiani, H. Zenil, J. Tegnér
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引用次数: 0

摘要

网络推理发展迅速,不断有新的方法被提出。了解不同网络推理方法的优点和局限性是在不同情况下有效应用的关键。当涉及到设计准确的推理方法时,不同网络共享的共同结构属性自然构成了挑战,但令人惊讶的是,缺乏比较和评估方法。从历史上看,每一种新方法都只经过“黄金标准”的测试,即专门设计的合成和现实世界(经过验证的)生物网络。在本文中,我们旨在评估考虑拓扑方面对推理过程最终准确性评估的影响。具体来说,我们将比较最佳的推理方法,在统计方面,以保持合成和生物网络的拓扑特性。借鉴基因集富集分析的思想,提出了一种新的性能比较方法。实验结果表明,在评估的三个推理任务中,没有一个单独的算法脱颖而出,并且网络推理的挑战性本质在一些算法的性能优于随机猜测的斗争中是显而易见的。因此,应注意使所使用的方法适合于特定目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topological Evaluation of Methods for Reconstruction of Genetic Regulatory Networks
Network inference is advancing rapidly, and new methods are proposed on a regular basis. Understanding the advantages and limitations of different network inference methods is key to their effective application in different circumstances. The common structural properties shared by diverse networks naturally pose a challenge when it comes to devising accurate inference methods, but surprisingly, there is a paucity of comparison and evaluation methods. Historically, every new methodology has only been tested against "gold standard" purpose-designed synthetic and real-world (validated) biological networks. In this paper we aim to assess the impact of taking into consideration topological aspects on the evaluation of the final accuracy of an inference procedure. Specifically, we will compare the best inference methods, in statistical terms, for preserving the topological properties of synthetic and biological networks. A new method for performance comparison is introduced by borrowing ideas from gene set enrichment analysis. Experimental results show that no individual algorithm stands out among the three inference tasks assessed, and the challenging nature of network inference is evident in the struggle of some of the algorithms to turn in a performance that's better than random guesswork. Therefore care should be taken to suit the method used to the specific purpose.
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