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Network-Based Interpretation of Diverse High-Throughput Datasets through the Omics Integrator Software Package

机译:通过Omics Integrator软件包基于网络的高通量数据集解释

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摘要

High-throughput, omic' methods provide sensitive measures of biological responses to perturbations. However, inherent biases in high-throughput assays make it difficult to interpret experiments in which more than one type of data is collected. In this work, we introduce Omics Integrator, a software package that takes a variety of omic' data as input and identifies putative underlying molecular pathways. The approach applies advanced network optimization algorithms to a network of thousands of molecular interactions to find high-confidence, interpretable subnetworks that best explain the data. These subnetworks connect changes observed in gene expression, protein abundance or other global assays to proteins that may not have been measured in the screens due to inherent bias or noise in measurement. This approach reveals unannotated molecular pathways that would not be detectable by searching pathway databases. Omics Integrator also provides an elegant framework to incorporate not only positive data, but also negative evidence. Incorporating negative evidence allows Omics Integrator to avoid unexpressed genes and avoid being biased toward highly-studied hub proteins, except when they are strongly implicated by the data. The software is comprised of two individual tools, Garnet and Forest, that can be run together or independently to allow a user to perform advanced integration of multiple types of high-throughput data as well as create condition-specific subnetworks of protein interactions that best connect the observed changes in various datasets. It is available at http://fraenkel.mit.edu/omicsintegrator and on GitHub at https://github.com/fraenkel-lab/OmicsIntegrator.
机译:高通量的omic方法提供了对扰动的生物学反应的灵敏测量。但是,高通量分析中的固有偏差使得难以解释其中收集了一种以上类型数据的实验。在这项工作中,我们介绍了Omics Integrator,这是一个软件包,该软件包将各种omic的数据作为输入并识别假定的潜在分子途径。该方法将先进的网络优化算法应用于成千上万个分子相互作用的网络,以找到最能解释数据的高可信度,可解释的子网。这些子网将在基因表达,蛋白质丰度或其他全局测定中观察到的变化与可能由于测量中固有的偏差或噪声而无法在屏幕上测量的蛋白质联系起来。这种方法揭示了通过路径数据库搜索无法检测到的未注释的分子路径。 Omics Integrator还提供了一个优雅的框架,不仅可以合并肯定数据,还可以合并否定证据。合并否定证据可以使Omics Integrator避免表达未表达的基因,并避免偏向于高度研究的中枢蛋白,除非数据强烈暗示了它们。该软件由石榴石(Garnet)和森林(Forest)这两个单独的工具组成,可以一起运行或独立运行,以使用户能够对多种类型的高通量数据进行高级集成,并创建特定条件的蛋白质相互作用子网,以实现最佳连接在各种数据集中观察到的变化。可从http://fraenkel.mit.edu/omicsintegrator和GitHub上的https://github.com/fraenkel-lab/OmicsIntegrator获得。

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