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Differential Shannon entropy and differential coefficient of variation:alternatives and augmentations to differential expression in the search fordisease-related genes

机译:微分香农熵和微分变异系数:搜索中差异表达的替代方案和扩充疾病相关基因

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摘要

Differential expression has been a standard tool for analysing case-control transcriptomic data since the advent of microarray technology. It has proved invaluable in characterising the molecular mechanisms of disease. Nevertheless, the expression profile of a gene across samples can be perturbed in ways that leave the expression level unaltered, while a biological effect is nonetheless present. This paper describes and analyses differential Shannon entropy and differential coefficient of variation, two alternate techniques for identifying genes of interest. Ontological analysis across 16 human disease datasets demonstrates that these alternatives are effective at identifying disease-related genes not found by mere differential expression alone. Because the two alternate techniques are based on somewhat different mathematical formulations, they tend to produce somewhat different gene lists. Moreover, each may pinpoint genes completely overlooked by the other. Thus, measures of entropy and variation can be used to replace or better yet augment standard differential expression computations.
机译:自微阵列技术问世以来,差异表达已成为分析病例对照转录组数据的标准工具。它已被证明在表征疾病的分子机制方面具有不可估量的价值。尽管如此,可以通过保持样本水平不变的方式来干扰基因在样品中的表达谱,尽管如此,仍存在生物学效应。本文描述并分析了微分香农熵和微分变异系数,这是鉴定目标基因的两种替代技术。对16种人类疾病数据集的本体分析表明,这些替代方法可以有效地识别仅通过差异表达无法发现的疾病相关基因。因为这两种替代技术基于一些不同的数学公式,所以它们倾向于产生一些不同的基因列表。而且,每个基因都可以精确定位被另一个基因完全忽略的基因。因此,熵和变化的量度可以用来代替或更好地增强标准差分表达式计算。

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