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Annotation concept synthesis and enrichment analysis: a logic-based approach to the interpretation of high-throughput experiments

机译:注释概念的综合和富集分析:基于逻辑的方法来解释高通量实验

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摘要

>Motivation: Annotation Enrichment Analysis (AEA) is a widely used analytical approach to process data generated by high-throughput genomic and proteomic experiments such as gene expression microarrays. The analysis uncovers and summarizes discriminating background information (e.g. GO annotations) for sets of genes identified by experiments (e.g. a set of differentially expressed genes, a cluster). The discovered information is utilized by human experts to find biological interpretations of the experiments.However, AEA isolates and tests for overrepresentation only individual annotation terms or groups of similar terms and is limited in its ability to uncover complex phenomena involving relationship between multiple annotation terms from various knowledge bases. Also, AEA assumes that annotations describe the whole object of interest, which makes it difficult to apply it to sets of compound objects (e.g. sets of protein–protein interactions) and to sets of objects having an internal structure (e.g. protein complexes).>Results: We propose a novel logic-based Annotation Concept Synthesis and Enrichment Analysis (ACSEA) approach. ACSEA fuses inductive logic reasoning with statistical inference to uncover more complex phenomena captured by the experiments. We evaluate our approach on large-scale datasets from several microarray experiments and on a clustered genome-wide genetic interaction network using different biological knowledge bases. The discovered interpretations have lower P-values than the interpretations found by AEA, are highly integrative in nature, and include analysis of quantitative and structured information present in the knowledge bases. The results suggest that ACSEA can boost effectiveness of the processing of high-throughput experiments.>Contact:
机译:>动机:注释富集分析(AEA)是一种广泛使用的分析方法,用于处理由高通量基因组和蛋白质组学实验(例如基因表达微阵列)生成的数据。该分析揭示并总结了通过实验识别的基因集(例如一组差异表达的基因,一个簇)的区分背景信息(例如GO注释)。人类专家利用发现的信息来寻找实验的生物学解释,但是,AEA仅隔离和测试单个注释项或相似术语组的过度表示,并且其发现涉及多个注释项之间关系的复杂现象的能力有限各种知识库。同样,AEA假定注释描述了整个感兴趣的对象,这使得很难将其应用于复合对象集(例如,蛋白质与蛋白质相互作用的集合)和具有内部结构的对象集(例如,蛋白质复合物)。 strong>结果:我们提出了一种新颖的基于逻辑的注释概念综合与富集分析(ACSEA)方法。 ACSEA将归纳逻辑推理与统计推断融合在一起,以发现实验捕获的更复杂的现象。我们评估了来自数个微阵列实验的大规模数据集以及使用不同的生物学知识库的全基因组遗传相互作用网络上的聚类方法。与AEA所发现的解释相比,所发现的解释具有更低的P值,本质上是高度集成的,并且包括对知识库中存在的定量和结构化信息的分析。结果表明,ACSEA可以提高高通量实验的处理效率。>联系方式:

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