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KDDN: an open-source Cytoscape app for constructing differential dependency networks with significant rewiring

机译:KDDN:Cytoscape开源应用程序用于构建具有大量重新布线的差分依赖网络

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摘要

>Summary: We have developed an integrated molecular network learning method, within a well-grounded mathematical framework, to construct differential dependency networks with significant rewiring. This knowledge-fused differential dependency networks (KDDN) method, implemented as a Java Cytoscape app, can be used to optimally integrate prior biological knowledge with measured data to simultaneously construct both common and differential networks, to quantitatively assign model parameters and significant rewiring p-values and to provide user-friendly graphical results. The KDDN algorithm is computationally efficient and provides users with parallel computing capability using ubiquitous multi-core machines. We demonstrate the performance of KDDN on various simulations and real gene expression datasets, and further compare the results with those obtained by the most relevant peer methods. The acquired biologically plausible results provide new insights into network rewiring as a mechanistic principle and illustrate KDDN’s ability to detect them efficiently and correctly. Although the principal application here involves microarray gene expressions, our methodology can be readily applied to other types of quantitative molecular profiling data.>Availability: Source code and compiled package are freely available for download at >Contact: >Supplementary information: are available at Bioinformatics online.
机译:>摘要:我们已经在一个有充分基础的数学框架内开发了一种集成的分子网络学习方法,以构建具有大量重新布线的差分依赖网络。这种知识融合的差分依赖网络(KDDN)方法,已实现为Java Cytoscape应用,可用于最佳地整合先验生物学知识与测量数据,以同时构建通用和差分网络,定量分配模型参数并重新布线p-值并提供用户友好的图形结果。 KDDN算法的计算效率很高,并且可以使用无处不在的多核计算机为用户提供并行计算功能。我们展示了KDDN在各种模拟和真实基因表达数据集上的性能,并将结果与​​通过最相关的对等方法获得的结果进行了比较。所获得的生物学上合理的结果为以机制原理进行网络重新布线提供了新的见解,并说明了KDDN有效且正确地检测到它们的能力。尽管此处的主要应用涉及微阵列基因表达,但我们的方法可轻松应用于其他类型的定量分子谱分析数据。>可用性:源代码和编译包可从>免费下载。 >补充信息:可在线访问生物信息学。

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