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首页> 外文期刊>BMC Bioinformatics >Discovering biological connections between experimental conditions based on common patterns of differential gene expression
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Discovering biological connections between experimental conditions based on common patterns of differential gene expression

机译:基于差异基因表达的常见模式发现实验条件之间的生物学联系

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Background Identifying similarities between patterns of differential gene expression provides an opportunity to identify similarities between the experimental and biological conditions that give rise to these gene expression alterations. The growing volume of gene expression data in open data repositories such as the NCBI Gene Expression Omnibus (GEO) presents an opportunity to identify these gene expression similarities on a large scale across a diverse collection of datasets. We have developed a fast, pattern-based computational approach, named openSESAME (Search of Expression Signatures Across Many Experiments), that identifies datasets enriched in samples that display coordinate differential expression of a query signature. Importantly, openSESAME performs this search without prior knowledge of the phenotypic or experimental groups in the datasets being searched. This allows openSESAME to identify perturbations of gene expression that are due to phenotypic attributes that may not have been described in the sample annotation included in the repository. To demonstrate the utility of openSESAME, we used gene expression signatures of two biological perturbations to query a set of 75,164 human expression profiles that were generated using Affymetrix microarrays and deposited in GEO. The first query, using a signature of estradiol treatment, identified experiments in which estrogen signaling was perturbed and also identified differences in estrogen signaling between estrogen receptor-positive and -negative breast cancers. The second query, which used a signature of silencing of the transcription factor p63 (a key regulator of epidermal differentiation), identified datasets related to stratified squamous epithelia or epidermal diseases such as melanoma. Conclusions openSESAME is a tool for leveraging the growing body of publicly available microarray data to discover relationships between different biological states based on common patterns of differential gene expression. These relationships may serve to generate hypotheses about the causes and consequences of specific patterns of observed differential gene expression. To encourage others to explore the utility of this approach, we have made a website for performing openSESAME queries freely available at http://opensesame.bu.edu webcite .
机译:背景技术鉴定差异基因表达模式之间的相似性提供了机会来鉴定引起这些基因表达改变的实验条件与生物学条件之间的相似性。在诸如NCBI基因表达综合库(GEO)之类的开放数据存储库中,基因表达数据的数量不断增长,这提供了一个机会,可以跨各种数据集大规模地识别这些基因表达相似性。我们已经开发了一种基于模式的快速计算方法,名为openSESAME(跨多个实验搜索表达签名),该方法可识别富含样本的数据集,这些样本可显示查询签名的坐标差分表达式。重要的是,openSESAME无需事先了解要搜索的数据集中的表型或实验组就可以执行此搜索。这使openSESAME可以识别由于表型属性引起的基因表达扰动,而表型属性可能未在存储库中包含的样本注释中进行描述。为了证明openSESAME的实用性,我们使用了两种生物扰动的基因表达特征来查询一组使用Affymetrix微阵列生成并存放在GEO中的75,164个人表达谱。第一个查询使用雌二醇治疗的签名,确定了其中雌激素信号受到干扰的实验,还确定了雌激素受体阳性和阴性乳腺癌之间雌激素信号的差异。第二个查询使用了转录因子p63(表皮分化的关键调节因子)沉默的特征,确定了与分层鳞状上皮或表皮疾病(例如黑素瘤)相关的数据集。结论openSESAME是一种工具,用于利用不断增长的可公开获得的微阵列数据,以基于差异基因表达的常见模式发现不同生物学状态之间的关系。这些关系可以用来产生关于观察到的差异基因表达的特定模式的原因和后果的假设。为了鼓励其他人探索这种方法的实用性,我们在http://opensesame.bu.edu webcite上免费提供了一个执行openSESAME查询的网站。

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