从大规模基因组学数据中学习有向无环图。

Fabio Nikolay, Marius Pesavento, George Kritikos, Nassos Typas
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摘要

在本文中,我们考虑的问题是学习基因相互作用图谱,即从嘈杂的双基因敲除(DK)数据中学习基因相互作用有向无环图(DAG)的拓扑结构。基于一套成熟的生物相互作用模型,我们对基因间的相互作用进行了检测和分类。我们提出了一种名为基因相互作用检测器(GENIE)的新型线性整数优化程序,用于识别基因间复杂的生物依赖关系,并计算出与 DK 测量结果最匹配的 DAG 拓扑。此外,我们还扩展了 GENIE 程序,纳入了基因相互作用图谱(GI-profile)数据,以进一步提高检测性能。此外,我们还提出了一种针对大型研究基因集的顺序扩展技术,以便为真实测量数据提供具有统计意义的结果。最后,我们通过数字模拟表明,GENIE 程序和 GI-profile 数据扩展 GENIE(GI-GENIE)程序明显优于传统技术,并展示了我们提出的顺序可扩展性技术的真实数据结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Learning directed acyclic graphs from large-scale genomics data.

In this paper, we consider the problem of learning the genetic interaction map, i.e., the topology of a directed acyclic graph (DAG) of genetic interactions from noisy double-knockout (DK) data. Based on a set of well-established biological interaction models, we detect and classify the interactions between genes. We propose a novel linear integer optimization program called the Genetic-Interactions-Detector (GENIE) to identify the complex biological dependencies among genes and to compute the DAG topology that matches the DK measurements best. Furthermore, we extend the GENIE program by incorporating genetic interaction profile (GI-profile) data to further enhance the detection performance. In addition, we propose a sequential scalability technique for large sets of genes under study, in order to provide statistically significant results for real measurement data. Finally, we show via numeric simulations that the GENIE program and the GI-profile data extended GENIE (GI-GENIE) program clearly outperform the conventional techniques and present real data results for our proposed sequential scalability technique.

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