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Robust differential expression analysis by learning discriminant boundary in multi-dimensional space of statistical attributes

机译:通过学习统计属性多维空间中的判别边界进行鲁棒的差异表达分析

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摘要

BackgroundPerforming statistical tests is an important step in analyzing genome-wide datasets for detecting genomic features differentially expressed between conditions. Each type of statistical test has its own advantages in characterizing certain aspects of differences between population means and often assumes a relatively simple data distribution (e.g., Gaussian, Poisson, negative binomial, etc.), which may not be well met by the datasets of interest. Making insufficient distributional assumptions can lead to inferior results when dealing with complex differential expression patterns.
机译:背景技术进行统计测试是分析全基因组数据集的重要步骤,以检测条件之间差异表达的基因组特征。每种类型的统计检验在描述总体均值之间的差异的某些方面时都有其自身的优势,并且通常假定数据分布相对简单(例如,高斯,泊松,负二项式等),而数据集可能无法很好地满足这些需求。利益。在处理复杂的差异表达模式时,做出不充分的分布假设可能会导致较差的结果。

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