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Mining visualizing and comparing multidimensional biomolecular data using the Genomics Data Miner (GMine) Web-Server

机译:使用Genomics Data Miner(GMine)Web服务器对多维生物分子数据进行挖掘可视化和比较

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摘要

Genomics Data Miner (GMine) is a user-friendly online software that allows non-experts to mine, cluster and compare multidimensional biomolecular datasets. Various powerful visualization techniques are provided, generating high quality figures that can be directly incorporated into scientific publications. Robust and comprehensive analyses are provided via a broad range of data-mining techniques, including univariate and multivariate statistical analysis, supervised learning, correlation networks, clustering and multivariable regression. The software has a focus on multivariate techniques, which can attribute variance in the measurements to multiple explanatory variables and confounders. Various normalization methods are provided. Extensive help pages and a tutorial are available via a wiki server. Using GMine we reanalyzed proteome microarray data of host antibody response against Plasmodium falciparum. Our results support the hypothesis that immunity to malaria is a higher-order phenomenon related to a pattern of responses and not attributable to any single antigen. We also analyzed gene expression across resting and activated T cells, identifying many immune-related genes with differential expression. This highlights both the plasticity of T cells and the operation of a hardwired activation program. These application examples demonstrate that GMine facilitates an accurate and in-depth analysis of complex molecular datasets, including genomics, transcriptomics and proteomics data.
机译:Genomics Data Miner(GMine)是一种用户友好的在线软件,它允许非专家进行挖掘,聚类和比较多维生物分子数据集。提供了各种强大的可视化技术,可以生成可以直接合并到科学出版物中的高质量图形。通过广泛的数据挖掘技术来提供强大而全面的分析,包括单变量和多变量统计分析,监督学习,相关网络,聚类和多变量回归。该软件着重于多元技术,可以将测量中的差异归因于多个解释变量和混杂因素。提供了各种标准化方法。可通过Wiki服务器获得广泛的帮助页面和教程。使用GMine,我们重新分析了针对恶性疟原虫的宿主抗体反应的蛋白质组微阵列数据。我们的结果支持以下假设:对疟疾的免疫是一种与反应模式相关的高级现象,而不是由任何单一抗原引起的。我们还分析了静止和活化T细胞之间的基因表达,鉴定了许多具有差异表达的免疫相关基因。这既强调了T细胞的可塑性,又强调了硬接线激活程序的操作。这些应用实例证明GMine有助于准确而深入地分析复杂的分子数据集,包括基因组学,转录组学和蛋白质组学数据。

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