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Using a Seed-Network to Query Multiple Large-Scale Gene Expression Datasets from the Developing Retina in Order to Identify and Prioritize Experimental Targets

机译:使用种子网络从发育中的视网膜查询多个大规模基因表达数据集以便识别和确定实验目标的优先级

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摘要

Understanding the gene networks that orchestrate the differentiation of retinal progenitors into photoreceptors in the developing retina is important not only due to its therapeutic applications in treating retinal degeneration but also because the developing retina provides an excellent model for studying CNS development. Although several studies have profiled changes in gene expression during normal retinal development, these studies offer at best only a starting point for functional studies focused on a smaller subset of genes. The large number of genes profiled at comparatively few time points makes it extremely difficult to reliably infer gene networks from a gene expression dataset. We describe a novel approach to identify and prioritize from multiple gene expression datasets, a small subset of the genes that are likely to be good candidates for further experimental investigation. We report progress on addressing this problem using a novel approach to querying multiple large-scale expression datasets using a ‘seed network’ consisting of a small set of genes that are implicated by published studies in rod photoreceptor differentiation. We use the seed network to identify and sort a list of genes whose expression levels are highly correlated with those of multiple seed network genes in at least two of the five gene expression datasets. The fact that several of the genes in this list have been demonstrated, through experimental studies reported in the literature, to be important in rod photoreceptor function provides support for the utility of this approach in prioritizing experimental targets for further experimental investigation. Based on Gene Ontology and KEGG pathway annotations for the list of genes obtained in the context of other information available in the literature, we identified seven genes or groups of genes for possible inclusion in the gene network involved in differentiation of retinal progenitor cells into rod photoreceptors. Our approach to querying multiple gene expression datasets using a seed network constructed from known interactions between specific genes of interest provides a promising strategy for focusing hypothesis-driven experiments using large-scale ‘omics’ data.
机译:理解在发育中的视网膜中协调视网膜祖细胞分化为感光细胞的基因网络非常重要,这不仅是因为其在治疗视网膜变性中的治疗应用,而且因为发育中的视网膜为研究CNS发育提供了极好的模型。尽管有几项研究描述了正常视网膜发育过程中基因表达的变化,但这些研究充其量仅是针对较小基因子集的功能研究的起点。在相对较少的时间点分析大量基因,使从基因表达数据集可靠地推断基因网络变得极为困难。我们描述了一种从多种基因表达数据集中识别和确定优先顺序的新颖方法,其中一小部分基因可能是进一步实验研究的良好候选者。我们报告了使用一种新颖的方法来解决这个问题的进展,该方法使用“种子网络”来查询多个大规模表达数据集,“种子网络”由一小部分基因组成,这些基因与杆感光受体分化的已发表研究有牵连。我们使用种子网络来识别和排序一系列基因,这些基因的表达水平与五个基因表达数据集中至少两个的多个种子网络基因的表达水平高度相关。通过文献报道的实验研究,已经证明了该列表中的几个基因对杆感光细胞功能很重要的事实,为该方法在确定实验目标的优先级以进行进一步实验研究中的实用性提供了支持。基于基因本体论和KEGG途径注释,该文献列出了在文献中可获得的其他信息中获得的基因,我们确定了可能包含在与视网膜祖细胞分化为棒状光感受器有关的基因网络中的七个基因或基因组。我们使用由特定目的基因之间的已知相互作用构建的种子网络查询多个基因表达数据集的方法,为利用大规模“组学”数据聚焦由假设驱动的实验提供了一种有前途的策略。

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