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Accounting for Errors in Low Coverage High-Throughput Sequencing Data When Constructing Genetic Maps Using Biparental Outcrossed Populations

机译:当使用双亲交叉交配种群构建遗传图谱时,应考虑低覆盖率高通量测序数据中的错误

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Next-generation sequencing is an efficient method that allows for substantially more markers than previous technologies, providing opportunities for building high-density genetic linkage maps, which facilitate the development of nonmodel species’ genomic assemblies and the investigation of their genes. However, constructing genetic maps using data generated via high-throughput sequencing technology ( e.g. , genotyping-by-sequencing) is complicated by the presence of sequencing errors and genotyping errors resulting from missing parental alleles due to low sequencing depth. If unaccounted for, these errors lead to inflated genetic maps. In addition, map construction in many species is performed using full-sibling family populations derived from the outcrossing of two individuals, where unknown parental phase and varying segregation types further complicate construction. We present a new methodology for modeling low coverage sequencing data in the construction of genetic linkage maps using full-sibling populations of diploid species, implemented in a package called GUSMap. Our model is based on the Lander–Green hidden Markov model but extended to account for errors present in sequencing data. We were able to obtain accurate estimates of the recombination fractions and overall map distance using GUSMap, while most existing mapping packages produced inflated genetic maps in the presence of errors. Our results demonstrate the feasibility of using low coverage sequencing data to produce genetic maps without requiring extensive filtering of potentially erroneous genotypes, provided that the associated errors are correctly accounted for in the model.
机译:下一代测序是一种有效的方法,可以比以前的技术提供更多的标记,为建立高密度的遗传连锁图谱提供了机会,这有利于非模型物种的基因组装配体的开发及其基因的研究。然而,由于测序深度低,由于缺少亲本等位基因而导致的测序错误和基因分型错误的存在,使得使用通过高通量测序技术(例如,测序的基因分型)产生的数据构建遗传图谱变得复杂。如果无法解释,这些错误将导致遗传图谱膨胀。此外,许多物种的地图构建是使用源自两个个体异交的全兄弟家庭种群进行的,其中未知的亲本阶段和不同的隔离类型进一步使构建复杂化。我们提出了一种新的方法,用于在使用二倍体物种的全兄弟种群的遗传连锁图的构建中对低覆盖率测序数据进行建模,并在称为GUSMap的程序包中实现。我们的模型基于Lander-Green隐马尔可夫模型,但已扩展以解决排序数据中存在的错误。使用GUSMap,我们能够获得重组比例和总体图谱距离的准确估计值,而大多数现有的图谱包在存在错误的情况下,会产生膨胀的遗传图谱。我们的结果证明了使用低覆盖率测序数据来生成遗传图谱的可能性,而无需对潜在错误的基因型进行大量过滤,只要在模型中正确地解决了相关的错误。

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