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A strategy to incorporate prior knowledge into correlation network cutoff selection

机译:将事先知识纳入相关网络截止选择的策略

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Correlation networks are frequently used to statistically extract biological interactions between omics markers. Network edge selection is typically based on the statistical significance of the correlation coefficients. This procedure, however, is not guaranteed to capture biological mechanisms. We here propose an alternative approach for network reconstruction: a cutoff selection algorithm that maximizes the overlap of the inferred network with available prior knowledge. We first evaluate the approach on IgG glycomics data, for which the biochemical pathway is known and well-characterized. Importantly, even in the case of incomplete or incorrect prior knowledge, the optimal network is close to the true optimum. We then demonstrate the generalizability of the approach with applications to untargeted metabolomics and transcriptomics data. For the transcriptomics case, we demonstrate that the optimized network is superior to statistical networks in systematically retrieving interactions that were not included in the biological reference used for optimization. Correlation network inference is typically based on the significance of the correlation coefficients, but this procedure is not guaranteed to capture biological mechanisms. Here, the authors develop a cutoff selection algorithm that maximizes the overlap between inferred networks and prior knowledge.
机译:相关网络经常用于统计上提取常规标记之间的生物相互作用。网络边缘选择通常基于相关系数的统计显着性。然而,该程序不保证捕获生物机制。我们在此提出了一种网络重建的替代方法:一种截止选择算法,可以通过可用的先验知识来最大化推断网络的重叠。我们首先评估IgG族数据上的方法,其中生物化学途径是已知的和良好的表征。重要的是,即使在先前知识不完整或不正确的情况下,最佳网络也接近真正的最佳状态。然后,我们展示了对未确定代谢组和转录组织数据的应用的概括性。对于转录组织的情况,我们证明优化的网络优于系统地检索不包括在用于优化的生物参考中的相互作用。相关网络推断通常基于相关系数的重要性,但是该过程不保证捕获生物机制。在这里,作者开发了一种截止选择算法,可以最大化推断网络和先前知识之间的重叠。

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