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QServer:一个用于共表达基因簇预测和评估的双聚类服务器。

QServer: a biclustering server for prediction and assessment of co-expressed gene clusters.

机构信息

Research Center for Biomedical Information Technology, Institute of Biomedical and Health Engineering, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, People's Republic of China.

出版信息

PLoS One. 2012;7(3):e32660. doi: 10.1371/journal.pone.0032660. Epub 2012 Mar 5.

DOI:10.1371/journal.pone.0032660
PMID:22403692
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3293860/
Abstract

BACKGROUND

Biclustering is a powerful technique for identification of co-expressed gene groups under any (unspecified) substantial subset of given experimental conditions, which can be used for elucidation of transcriptionally co-regulated genes.

RESULTS

We have previously developed a biclustering algorithm, QUBIC, which can solve more general biclustering problems than previous biclustering algorithms. To fully utilize the analysis power the algorithm provides, we have developed a web server, QServer, for prediction, computational validation and analyses of co-expressed gene clusters. Specifically, the QServer has the following capabilities in addition to biclustering by QUBIC: (i) prediction and assessment of conserved cis regulatory motifs in promoter sequences of the predicted co-expressed genes; (ii) functional enrichment analyses of the predicted co-expressed gene clusters using Gene Ontology (GO) terms, and (iii) visualization capabilities in support of interactive biclustering analyses. QServer supports the biclustering and functional analysis for a wide range of organisms, including human, mouse, Arabidopsis, bacteria and archaea, whose underlying genome database will be continuously updated.

CONCLUSION

We believe that QServer provides an easy-to-use and highly effective platform useful for hypothesis formulation and testing related to transcription co-regulation.

摘要

背景

分块聚类是一种强大的技术,可用于鉴定在任何(未指定)大量给定实验条件下共同表达的基因簇,这可用于阐明转录共调控的基因。

结果

我们之前开发了一种分块聚类算法 QUBIC,它可以解决比以前的分块聚类算法更通用的分块聚类问题。为了充分利用算法提供的分析能力,我们开发了一个 Web 服务器 QServer,用于预测、计算验证和共表达基因簇的分析。具体来说,除了 QUBIC 的分块聚类外,QServer 还具有以下功能:(i)在预测的共表达基因启动子序列中预测和评估保守顺式调控基序;(ii)使用基因本体论(GO)术语对预测的共表达基因簇进行功能富集分析,以及(iii)支持交互式分块聚类分析的可视化功能。QServer 支持广泛的生物体的分块聚类和功能分析,包括人类、小鼠、拟南芥、细菌和古菌,其基础基因组数据库将不断更新。

结论

我们相信 QServer 提供了一个易于使用且非常有效的平台,可用于与转录共调控相关的假设制定和测试。

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