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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >Beta-Binomial Model for the Detection of Rare Mutations in Pooled Next-Generation Sequencing Experiments
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Beta-Binomial Model for the Detection of Rare Mutations in Pooled Next-Generation Sequencing Experiments

机译:β-二项式模型,用于检测汇集的下一代测序实验中的罕见突变

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摘要

Against diminishing costs, next-generation sequencing (NGS) still remains expensive for studies with a large number of individuals. As cost saving, sequencing genome of pools containing multiple samples might be used. Currently, there are many software available for the detection of single-nucleotide polymorphisms (SNPs). Sensitivity and specificity depend on themodel used and data analyzed, indicating that all software have space for improvement. We use betabinomial model to detect rare mutations in untagged pooled NGS experiments. We propose a multireference framework for pooled data with ability being specific up to two patients affected by neuromuscular disorders (NMD). We assessed the results comparing with The Genome Analysis Toolkit (GATK), CRISP, SNVer, and FreeBayes. Our results show that the multireference approach applying beta-binomial model is accurate in predicting rare mutations at 0.01 fraction. Finally, we explored the concordance of mutations between the model and software, checking their involvement in anyNMD-related gene. We detected seven novel SNPs, for which the functional analysis produced enriched terms related to locomotion and musculature.
机译:针对减少成本,下一代测序(NGS)对于具有大量个人的研究仍然昂贵。作为节省成本,可以使用含有多个样品的池的测序。目前,有许多可用于检测单核苷酸多态性(SNP)的软件。灵敏度和特异性取决于使用的主题和分析的数据,表明所有软件都有改进空间。我们使用Betabinomial模型来检测未标记的合并NGS实验中的罕见突变。我们为汇集数据提出了一种多引用框架,该数据具有特异性最多可通过神经肌肉障碍(NMD)影响的两名患者。我们评估了与基因组分析工具包(GATK),清洁,SNVVER和免费面巾纸相比的结果。我们的研究结果表明,应用β二项式模型的多推导方法是准确的,准确地预测0.01分的罕见突变。最后,我们探讨了模型和软件之间的突变的一致性,检查他们参与与任何相关的基因。我们检测到七种新型SNP,功能分析为与运动和肌肉组织有关的丰富术语。

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