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A Null Model for Pearson Coexpression Networks

机译:Pearson共表达网络的零模型

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摘要

Gene coexpression networks inferred by correlation from high-throughput profiling such as microarray data represent simple but effective structures for discovering and interpreting linear gene relationships. In recent years, several approaches have been proposed to tackle the problem of deciding when the resulting correlation values are statistically significant. This is most crucial when the number of samples is small, yielding a non-negligible chance that even high correlation values are due to random effects. Here we introduce a novel hard thresholding solution based on the assumption that a coexpression network inferred by randomly generated data is expected to be empty. The threshold is theoretically derived by means of an analytic approach and, as a deterministic independent null model, it depends only on the dimensions of the starting data matrix, with assumptions on the skewness of the data distribution compatible with the structure of gene expression levels data. We show, on synthetic and array datasets, that the proposed threshold is effective in eliminating all false positive links, with an offsetting cost in terms of false negative detected edges.
机译:从高通量分析(例如微阵列数据)的相关性推断出的基因共表达网络代表了用于发现和解释线性基因关系的简单但有效的结构。近年来,已经提出了几种方法来解决确定何时所得的相关值在统计上显着的问题。当样本数量很少时,这是至关重要的,因为即使是高相关值,也是由于随机效应而产生的不可忽略的机会。在此,我们基于一种假设,即由随机生成的数据推断出的共表达网络应该为空的情况下,介绍一种新颖的硬阈值解决方案。该阈值理论上是通过分析方法得出的,作为确定性独立的空模型,它仅取决于起始数据矩阵的维,并假设数据分布的偏斜度与基因表达水平数据的结构兼容。我们在合成和数组数据集上表明,提出的阈值可有效消除所有误报链接,并在误报检测到的边缘方面抵消成本。

著录项

  • 期刊名称 other
  • 作者

    Andrea Gobbi; Giuseppe Jurman;

  • 作者单位
  • 年(卷),期 -1(10),6
  • 年度 -1
  • 页码 e0128115
  • 总页数 21
  • 原文格式 PDF
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