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R. S. WebTool, a web server for random sampling-based significance evaluation of pairwise distances

机译:R. S. WebTool,一个用于基于随机采样的成对距离显着性评估的网络服务器

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摘要

Pairwise comparison of data vectors represents a large part of computational biology, especially with the continuous increase in genome-wide approaches yielding more information from more biological samples simultaneously. Gene clustering for function prediction as well as analyses of signalling pathways and the time-dependent dynamics of a system are common biological approaches that often rely on large dataset comparison. Different metrics can be used to evaluate the similarity between entities to be compared, such as correlation coefficients and distances. While the latter offers a more flexible way of measuring potential biological relationships between datasets, the significance of any given distance is highly dependent on the dataset and cannot be easily determined. Monte Carlo methods are robust approaches for evaluating the significance of distance values by multiple random permutations of the dataset followed by distance calculation. We have developed R. S. WebTool (http://rswebtool.kwaklab.org), a user-friendly online server for random sampling-based evaluation of distance significances that features an array of visualization and analysis tools to help non-bioinformaticist users extract significant relationships from random noise in distance-based dataset analyses.
机译:数据向量的成对比较代表了计算生物学的很大一部分,特别是随着全基因组方法的不断增加,同时从更多生物样本中产生了更多信息。用于功能预测的基因聚类以及信号通路的分析和系统的时间依赖性动力学是常见的生物学方法,通常依赖于大型数据集比较。可以使用不同的度量来评估要比较的实体之间的相似性,例如相关系数和距离。尽管后者提供了一种更灵活的方式来测量数据集之间的潜在生物学关系,但任何给定距离的重要性都高度依赖于数据集,因此无法轻松确定。蒙特卡洛方法是用于通过数据集的多个随机置换然后进行距离计算来评估距离值的重要性的可靠方法。我们已经开发了RS WebTool(http://rswebtool.kwaklab.org),这是一种用户友好的在线服务器,用于基于随机采样的距离重要性评估,具有一系列可视化和分析工具,可帮助非生物信息学家用户提取重要关系。基于距离的数据集分析中的随机噪声。

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