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CTen: a web-based platform for identifying enriched cell types from heterogeneous microarray data

机译:CTen:基于网络的平台,可从异源微阵列数据中识别富集的细胞类型

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Background Interpreting in vivo sampled microarray data is often complicated by changes in the cell population demographics. To put gene expression into its proper biological context, it is necessary to distinguish differential gene transcription from artificial gene expression induced by changes in the cellular demographics. Results CTen ( c ell t ype en richment) is a web-based analytical tool which uses our highly expressed, cell specific (HECS) gene database to identify enriched cell types in heterogeneous microarray data. The web interface is designed for differential expression and gene clustering studies, and the enrichment results are presented as heatmaps or downloadable text files. Conclusions In this work, we use an independent, cell-specific gene expression data set to assess CTen's performance in accurately identifying the appropriate cell type and provide insight into the suggested level of enrichment to optimally minimize the number of false discoveries. We show that CTen, when applied to microarray data developed from infected lung tissue, can correctly identify the cell signatures of key lymphocytes in a highly heterogeneous environment and compare its performance to another popular bioinformatics tool. Furthermore, we discuss the strong implications cell type enrichment has in the design of effective microarray workflow strategies and show that, by combining CTen with gene expression clustering, we may be able to determine the relative changes in the number of key cell types. CTen is available at http://www.influenza-x.org/~jshoemaker/cten/ webcite
机译:背景技术解释体内采样的微阵列数据通常因细胞种群人口统计学的变化而变得复杂。为了将基因表达置于其适当的生物学环境中,有必要将差异基因转录与由细胞人口统计学变化诱导的人工基因表达区分开来。结果CTen(细胞富集)是一种基于网络的分析工具,它使用我们高度表达的细胞特异性(HECS)基因数据库来识别异质微阵列数据中富集的细胞类型。 Web界面专为差异表达和基因聚类研究而设计,并且富集结果以热图或可下载的文本文件形式显示。结论在这项工作中,我们使用独立的细胞特异性基因表达数据集来评估CTen在准确识别合适细胞类型中的表现,并深入了解建议的富集水平,以最大程度地减少错误发现的数量。我们显示,当CTen应用于从受感染的肺组织发育而来的微阵列数据时,可以在高度异质的环境中正确识别关键淋巴细胞的细胞特征,并将其性能与另一种流行的生物信息学工具进行比较。此外,我们讨论了细胞类型富集对有效微阵列工作流程策略设计的强烈影响,并表明,通过将CTen与基因表达聚类结合起来,我们可能能够确定关键细胞类型数量的相对变化。可从以下网址获取CTen:http://www.influenza-x.org/~jshoemaker/cten/ webcite

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