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Exploring the functional landscape of gene expression: directed search of large microarray compendia

机译:探索基因表达的功能领域:大型微阵列汇编的定向搜索

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Motivation: The increasing availability of gene expression micro-array technology has resulted in the publication of thousands of microarray gene expression datasets investigating various biological conditions. This vast repository is still underutilized due to the lack of methods for fast, accurate exploration of the entire compendium. Results: We have collected Saccharomyces cerevisiae gene expression microarray data containing roughly 2400 experimental conditions. We analyzed the functional coverage of this collection and we designed a context-sensitive search algorithm for rapid exploration of the compendium. A researcher using our system provides a small set of query genes to establish a biological search context; based on this query, we weight each dataset's relevance to the context, and within these weighted datasets we identify additional genes that are co-expressed with the query set. Our method exhibits an average increase in accuracy of 273% compared to previous mega-clustering approaches when recapitulating known biology. Further, we find that our search paradigm identifies novel biological predictions that can be verified through further experimentation. Our methodology provides the ability for biological researchers to explore the totality of existing microarray data in a manner useful for drawing conclusions and formulating hypotheses, which we believe is invaluable for the research community.
机译:动机:基因表达微阵列技术的可用性不断提高,导致发布了数千种研究各种生物学状况的微阵列基因表达数据集。由于缺乏快速,准确地浏览整个汇编的方法,因此这个庞大的存储库仍未得到充分利用。结果:我们收集了大约2400个实验条件的啤酒酵母基因表达微阵列数据。我们分析了该馆藏的功能范围,并设计了上下文相关搜索算法来快速探索该纲要。使用我们系统的研究人员提供了一小组查询基因来建立生物学搜索环境;基于此查询,我们对每个数据集与上下文的相关性进行加权,并在这些加权数据集中,我们确定与查询集共表达的其他基因。当概述已知生物学时,与以前的大型聚类方法相比,我们的方法显示出平均273%的准确性提高。此外,我们发现我们的搜索范例确定了可以通过进一步实验验证的新颖生物学预测。我们的方法为生物学研究人员提供了以得出结论和提出假设有用的方式探索现有微阵列数据总数的能力,我们认为这对研究界来说是无价的。

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