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Quantitative assessment of single-cell whole genome amplification methods for detecting copy number variation using hippocampal neurons

机译:定量评估海马神经元检测拷贝数变异的单细胞全基因组扩增方法

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摘要

Single-cell genomic analysis has grown rapidly in recent years and finds widespread applications in various fields of biology, including cancer biology, development, immunology, pre-implantation genetic diagnosis, and neurobiology. To date, the amplification bias, amplification uniformity and reproducibility of the three major single cell whole genome amplification methods (GenomePlex WGA4, MDA and MALBAC) have not been systematically investigated using mammalian cells. In this study, we amplified genomic DNA from individual hippocampal neurons using three single-cell DNA amplification methods, and sequenced them at shallow depth. We then systematically evaluated the GC-bias, reproducibility, and copy number variations among individual neurons. Our results showed that single-cell genome sequencing results obtained from the MALBAC and WGA4 methods are highly reproducible and have a high success rate. The MALBAC displays significant biases towards high GC content. We then attempted to correct the GC bias issue by developing a bioinformatics pipeline, which allows us to call CNVs in single cell sequencing data, and chromosome level and sub-chromosomal level CNVs among individual neurons can be detected. We also proposed a metric to determine the CNV detection limits. Overall, MALBAC and WGA4 have better performance than MDA in detecting CNVs.
机译:近年来,单细胞基因组分析发展迅速,并在生物学的各个领域获得了广泛的应用,包括癌症生物学,发育,免疫学,植入前遗传学诊断和神经生物学。迄今为止,尚未使用哺乳动物细胞系统地研究三种主要的单细胞全基因组扩增方法(GenomePlex WGA4,MDA和MALBAC)的扩增偏差,扩增均匀性和可重复性。在这项研究中,我们使用三种单细胞DNA扩增方法扩增了单个海马神经元的基因组DNA,并对其进行了浅层测序。然后,我们系统地评估了单个神经元之间的GC偏倚,重现性和拷贝数变异。我们的结果表明,从MALBAC和WGA4方法获得的单细胞基因组测序结果具有很高的可重复性,并且成功率很高。 MALBAC对高GC含量显示出明显的偏见。然后,我们尝试通过开发生物信息学流水线来纠正GC偏倚问题,该流水线使我们可以在单细胞测序数据中调用CNV,并且可以检测单个神经元之间的染色体水平和亚染色体水平CNV。我们还提出了一种确定CNV检测限的指标。总体而言,MALBAC和WGA4在检测CNV方面具有优于MDA的性能。

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