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Identifying and Classifying Trait Linked Polymorphisms in Non-Reference Species by Walking Coloured de Bruijn Graphs

机译:通过走色de Bruijn图识别和分类非参考物种的性状连锁多态性

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摘要

Single Nucleotide Polymorphisms are invaluable markers for tracing the genetic basis of inheritable traits and the ability to create marker libraries quickly is vital for timely identification of target genes. Next-generation sequencing makes it possible to sample a genome rapidly, but polymorphism detection relies on having a reference genome to which reads can be aligned and variants detected. We present Bubbleparse, a method for detecting variants directly from next-generation reads without a reference sequence. Bubbleparse uses the de Bruijn graph implementation in the Cortex framework as a basis and allows the user to identify bubbles in these graphs that represent polymorphisms, quickly, easily and sensitively. We show that the Bubbleparse algorithm is sensitive and can detect many polymorphisms quickly and that it performs well when compared with polymorphism detection methods based on alignment to a reference in Arabidopsis thaliana. We show that the heuristic can be used to maximise the number of true polymorphisms returned, and with a proof-of-principle experiment show that Bubbleparse is very effective on data from unsequenced wild relatives of potato and enabled us to identify disease resistance linked genes quickly and easily.
机译:单核苷酸多态性是追踪可遗传性状遗传基础的宝贵标记,快速创建标记库的能力对于及时识别靶基因至关重要。下一代测序使快速采样基因组成为可能,但是多态性检测依赖于具有参考基因组,可以将读取序列与参考基因组进行比对并检测变异。我们提出了Bubbleparse,这是一种无需参考序列即可直接从下一代读数中检测变体的方法。 Bubbleparse使用Cortex框架中的de Bruijn图实现作为基础,并允许用户快速,轻松且灵敏地识别这些图中表示多态性的气泡。我们表明,Bubbleparse算法是灵敏的,可以快速检测到许多多态性,与基于拟南芥中参照的比对的多态性检测方法相比,它的性能很好。我们证明了启发式方法可以用来最大化返回的真实多态性的数量,并且通过原理证明实验表明,Bubbleparse对未排序的马铃薯野生亲缘种的数据非常有效,并使我们能够快速识别与疾病抗性相关的基因轻松地

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