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A modular framework for gene set analysis integrating multilevel omics data

机译:集成多级组学数据的基因组分析的模块化框架

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摘要

Modern high-throughput methods allow the investigation of biological functions across multiple ‘omics’ levels. Levels include mRNA and protein expression profiling as well as additional knowledge on, for example, DNA methylation and microRNA regulation. The reason for this interest in multi-omics is that actual cellular responses to different conditions are best explained mechanistically when taking all omics levels into account. To map gene products to their biological functions, public ontologies like Gene Ontology are commonly used. Many methods have been developed to identify terms in an ontology, overrepresented within a set of genes. However, these methods are not able to appropriately deal with any combination of several data types. Here, we propose a new method to analyse integrated data across multiple omics-levels to simultaneously assess their biological meaning. We developed a model-based Bayesian method for inferring interpretable term probabilities in a modular framework. Our Multi-level ONtology Analysis (MONA) algorithm performed significantly better than conventional analyses of individual levels and yields best results even for sophisticated models including mRNA fine-tuning by microRNAs. The MONA framework is flexible enough to allow for different underlying regulatory motifs or ontologies. It is ready-to-use for applied researchers and is available as a standalone application from .
机译:现代的高通量方法可以研究多个“组学”水平的生物学功能。级别包括mRNA和蛋白质表达谱以及有关其他知识,例如DNA甲基化和microRNA调控。对多组学感兴趣的原因是,在考虑所有组学水平时,最好用机械方式最好地解释对不同条件的实际细胞反应。为了将基因产物映射到其生物学功能,通常使用诸如基因本体论之类的公共本体论。已经开发出许多方法来识别一组基因中过度表达的本体中的术语。但是,这些方法不能适当地处理几种数据类型的任何组合。在这里,我们提出了一种新的方法来分析多个组学水平上的集成数据,以同时评估其生物学意义。我们开发了一种基于模型的贝叶斯方法,用于在模块化框架中推断可解释的术语概率。我们的多级本体分析(MONA)算法的性能明显优于常规的单个水平分析,即使对于包括通过microRNA进行mRNA微调的复杂模型,也能获得最佳结果。 MONA框架足够灵活,可以允许使用不同的基础监管主题或本体。它可供应用研究人员随时使用,并且可以作为独立应用程序从中获得。

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