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Expression analysis of RNA sequencing data from human neural and glial cell lines depends on technical replication and normalization methods

机译:来自人类神经和胶质细胞系的RNA测序数据的表达分析取决于技术复制和归一化方法

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The potential for astrocyte participation in central nervous system recovery is highlighted by in vitro experiments demonstrating their capacity to transdifferentiate into neurons. Understanding astrocyte plasticity could be advanced by comparing astrocytes with stem cells. RNA sequencing (RNA-seq) is ideal for comparing differences across cell types. However, this novel multi-stage process has the potential to introduce unwanted technical variation at several points in the experimental workflow. Quantitative understanding of the contribution of experimental parameters to technical variation would facilitate the design of robust RNA-Seq experiments. RNA-Seq was used to achieve biological and technical objectives. The biological aspect compared gene expression between normal human fetal-derived astrocytes and human neural stem cells cultured in identical conditions. When differential expression threshold criteria of |log2 fold change|??2 were applied to the data, no significant differences were observed. The technical component quantified variation arising from particular steps in the research pathway, and compared the ability of different normalization methods to reduce unwanted variance. To facilitate this objective, a liberal false discovery rate of 10% and a |log2 fold change|??0.5 were implemented for the differential expression threshold. Data were normalized with RPKM, TMM, and UQS methods using JMP Genomics. The contributions of key replicable experimental parameters (cell lot; library preparation; flow cell) to variance in the data were evaluated using principal variance component analysis. Our analysis showed that, although the variance for every parameter is strongly influenced by the normalization method, the largest contributor to technical variance was library preparation. The ability to detect differentially expressed genes was also affected by normalization; differences were only detected in non-normalized and TMM-normalized data. The similarity in gene expression between astrocytes and neural stem cells supports the potential for astrocytic transdifferentiation into neurons, and emphasizes the need to evaluate the therapeutic potential of astrocytes for central nervous system damage. The choice of normalization method influences the contributions to experimental variance as well as the outcomes of differential expression analysis. However irrespective of normalization method, our findings illustrate that library preparation contributed the largest component of technical variance.
机译:体外实验证明了星形胶质细胞参与中枢神经系统恢复的潜力,证明了它们具有转分化为神经元的能力。通过比较星形胶质细胞与干细胞,可以进一步了解星形胶质细胞的可塑性。 RNA测序(RNA-seq)是比较各种细胞类型差异的理想选择。但是,这种新颖的多阶段过程可能会在实验工作流程的几个点引入不必要的技术变化。对实验参数对技术变化的贡献的定量理解将有助于设计稳健的RNA-Seq实验。 RNA-Seq用于达成生物学和技术目标。生物学方面比较了正常人胎儿来源的星形胶质细胞和在相同条件下培养的人神经干细胞之间的基因表达。当将| log 2倍变化|≥2的差异表达阈值标准应用于数据时,未观察到显着差异。技术成分量化了研究路径中特定步骤产生的变异,并比较了不同归一化方法减少不必要变异的能力。为了实现该目标,对于差异表达阈值,实现了10%的自由假发现率和| log2倍变化|≥0.5。使用JMP Genomics使用RPKM,TMM和UQS方法对数据进行标准化。使用主方差成分分析评估了关键可复制实验参数(细胞批次;文库制备;流通池)对数据方差的贡献。我们的分析表明,尽管每个参数的方差都受到归一化方法的影响,但技术方差最大的因素是库准备。检测差异表达基因的能力也受到标准化的影响;仅在非归一化和TMM归一化数据中检测到差异。星形胶质细胞和神经干细胞之间基因表达的相似性支持星形细胞向神经元转分化的潜力,并强调需要评估星形胶质细胞对中枢神经系统损伤的治疗潜力。归一化方法的选择会影响对实验方差的贡献以及差异表达分析的结果。但是,无论采用何种标准化方法,我们的发现都表明,图书馆准备工作是技术差异的最大组成部分。

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