Evaluation of bias associated with high-multiplex, target-specific pre-amplification

Q1 Biochemistry, Genetics and Molecular Biology
Steven T. Okino , Michelle Kong , Haya Sarras , Yan Wang
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引用次数: 25

Abstract

We developed a novel PCR-based pre-amplification (PreAmp) technology that can increase the abundance of over 350 target genes one million-fold. To assess potential bias introduced by PreAmp we utilized ERCC RNA reference standards, a model system that quantifies measurement error in RNA analysis. We assessed three types of bias: amplification bias, dynamic range bias and fold-change bias. We show that our PreAmp workflow introduces only minimal amplification and fold-change bias under stringent conditions. We do detect dynamic range bias if a target gene is highly abundant and PreAmp occurred for 16 or more PCR cycles; however, this type of bias is easily correctable. To assess PreAmp bias in a gene expression profiling experiment, we analyzed a panel of genes that are regulated during differentiation using the NTera2 stem cell model system. We find that results generated using PreAmp are similar to results obtained using standard qPCR (without the pre-amplification step). Importantly, PreAmp maintains patterns of gene expression changes across samples; the same biological insights would be derived from a PreAmp experiment as with a standard gene expression profiling experiment. We conclude that our PreAmp technology can facilitate analysis of extremely limited samples in gene expression quantification experiments.

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评价与高倍数、目标特异性预扩增相关的偏倚
我们开发了一种新的基于pcr的预扩增(PreAmp)技术,可以将350多个靶基因的丰度提高100万倍。为了评估PreAmp引入的潜在偏倚,我们使用了ERCC RNA参比标准,这是一种量化RNA分析测量误差的模型系统。我们评估了三种类型的偏倚:放大偏倚、动态范围偏倚和折叠变化偏倚。我们表明,在严格的条件下,我们的PreAmp工作流程只引入最小的放大和折叠变化偏置。如果目标基因非常丰富,并且PreAmp发生了16个或更多的PCR循环,我们会检测到动态范围偏差;然而,这种偏见是很容易纠正的。为了评估基因表达谱实验中的PreAmp偏差,我们使用NTera2干细胞模型系统分析了在分化过程中受调控的一组基因。我们发现使用PreAmp产生的结果与使用标准qPCR获得的结果相似(没有预扩增步骤)。重要的是,PreAmp维持了样本间基因表达变化的模式;从PreAmp实验中可以获得与标准基因表达谱实验相同的生物学见解。我们的结论是,我们的PreAmp技术可以在基因表达定量实验中方便地分析极有限的样品。
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来源期刊
Biomolecular Detection and Quantification
Biomolecular Detection and Quantification Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
14.20
自引率
0.00%
发文量
0
审稿时长
8 weeks
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