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A rank-based algorithm of differential expression analysis for small cell line data with statistical control

机译:一种基于级别表达分析的基于级别级别表达分析算法,具有统计控制的小型电池线数据

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摘要

To detect differentially expressed genes (DEGs) in small-scale cell line experiments, usually with only two or three technical replicates for each state, the commonly used statistical methods such as significance analysis of microarrays (SAM), limma and RankProd (RP) lack statistical power, while the fold change method lacks any statistical control. In this study, we demonstrated that the within-sample relative expression orderings (REOs) of gene pairs were highly stable among technical replicates of a cell line but often widely disrupted after certain treatments such like gene knockdown, gene transfection and drug treatment. Based on this finding, we customized the RankComp algorithm, previously designed for individualized differential expression analysis through REO comparison, to identify DEGs with certain statistical control for small-scale cell line data. In both simulated and real data, the new algorithm, named CellComp, exhibited high precision with much higher sensitivity than the original RankComp, SAM, limma and RP methods. Therefore, CellComp provides an efficient tool for analyzing small-scale cell line data.
机译:为了检测小型细胞系实验中的差异表达基因(DEGS),通常只有两个或三个技术复制,每个状态只有两种技术复制,常用的统计方法如微阵列(SAM),雷玛和ranchProd(RP)缺乏的常用统计方法统计功率,而折叠变化方法缺乏任何统计控制。在这项研究中,我们证明了基因对的样本相对表达排序(REOS)在细胞系的技术复制中具有高度稳定的,但在某些治疗之后常被广泛破坏,例如基因敲除,基因转染和药物处理。基于此发现,我们通过REO比较定制了以前为个性化差异表达分析设计的Rankcomp算法,以识别小型细胞系数据的某些统计控制的DEG。在模拟和实际数据的两个中,名为CellComp的新算法表现出高精度,灵敏度高于原始RankComp,SAM,Limma和RP方法。因此,CellComp提供了一种有效的工具,用于分析小规模的小区数据数据。

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