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Statistical significance for hierarchical clustering in genetic association and microarray expression studies

机译:遗传关联和微阵列表达研究中层次聚类的统计意义

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摘要

BackgroundWith the increasing amount of data generated in molecular genetics laboratories, it is often difficult to make sense of results because of the vast number of different outcomes or variables studied. Examples include expression levels for large numbers of genes and haplotypes at large numbers of loci. It is then natural to group observations into smaller numbers of classes that allow for an easier overview and interpretation of the data. This grouping is often carried out in multiple steps with the aid of hierarchical cluster analysis, each step leading to a smaller number of classes by combining similar observations or classes. At each step, either implicitly or explicitly, researchers tend to interpret results and eventually focus on that set of classes providing the "best" (most significant) result. While this approach makes sense, the overall statistical significance of the experiment must include the clustering process, which modifies the grouping structure of the data and often removes variation.
机译:背景技术随着分子遗传学实验室中越来越多的数据产生,由于所研究的大量不同结果或变量,往往难以理解结果。例子包括大量基因的表达水平和大量基因座的单倍型。然后,很自然地将观察结果分组为较少的类,以便更轻松地查看和解释数据。这种分组通常是在分层聚类分析的帮助下分多个步骤进行的,每个步骤通过组合相似的观察值或类而导致较少的类。在每个步骤中,研究人员都倾向于隐式或显式地解释结果,并最终专注于提供“最佳”(最重要)结果的那一组类。虽然这种方法有意义,但实验的总体统计意义必须包括聚类过程,该过程会修改数据的分组结构,并且通常会消除变异。

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