对大豆嵌套关联图谱群体进行基因型估算,以提高 QTL 检测的精度。

Q4 Agricultural and Biological Sciences Acta Arachnologica Pub Date : 2022-05-01 Epub Date: 2022-03-11 DOI:10.1007/s00122-022-04070-7
Linfeng Chen, Shouping Yang, Susan Araya, Charles Quigley, Earl Taliercio, Rouf Mian, James E Specht, Brian W Diers, Qijian Song
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引用次数: 2

摘要

关键信息:发现了大豆高估算精度软件。估算数据集可显著减少控制性状的基因组区域的间隔,从而大大提高候选基因鉴定的效率。基因型估算是在不增加额外基因分型的情况下提高现有数据集标记密度的一种策略。我们比较了 BEAGLE 5.0、IMPUTE 5 和 AlphaPlantImpute 软件的估算性能,并测试了有助于提高大豆群体估算准确性的软件参数。研究了不同软件中标记密度、连锁不平衡程度(LD)、小等位基因频率(MAF)等因素对估算准确性的影响。结果表明,在每个大豆家系中,AlphaPlantImpute 的估算准确率都高于 BEAGLE 5.0 或 IMPUTE 5,尤其是当研究后代的基因分型标记数量极少时。LD 程度、MAF 和参考面板大小与估算准确性呈正相关,要避免估算准确性的显著降低,大豆品系中每条染色体至少要有 50 个标记,且 SNP 的 MAF 要大于 0.2。利用该软件,我们用 40 个亲本的高密度标记对大豆嵌套作图群体(NAM)中的 5176 个大豆品系进行了估算。数据集包含 5176 个品系和 40 个亲本的 423,419 个标记,已存入 Soybase。为改进控制大豆籽粒蛋白质含量的数量性状位点(QTL)的作图工作,对估算的 NAM 数据集进行了进一步研究。根据初始数据集和估算数据集,确定的大多数 QTL 位于相同或相似的位置;但是,QTL 的间隔大大缩小。由此产生的 NAM 群体基因型数据集将有助于性状的 QTL 图谱绘制和下游应用。这些信息还将有助于提高自花授粉作物的基因分型归因精度。
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Genotype imputation for soybean nested association mapping population to improve precision of QTL detection.

Key message: Software for high imputation accuracy in soybean was identified. Imputed dataset could significantly reduce the interval of genomic regions controlling traits, thus greatly improve the efficiency of candidate gene identification. Genotype imputation is a strategy to increase marker density of existing datasets without additional genotyping. We compared imputation performance of software BEAGLE 5.0, IMPUTE 5 and AlphaPlantImpute and tested software parameters that may help to improve imputation accuracy in soybean populations. Several factors including marker density, extent of linkage disequilibrium (LD), minor allele frequency (MAF), etc., were examined for their effects on imputation accuracy across different software. Our results showed that AlphaPlantImpute had a higher imputation accuracy than BEAGLE 5.0 or IMPUTE 5 tested in each soybean family, especially if the study progeny were genotyped with an extremely low number of markers. LD extent, MAF and reference panel size were positively correlated with imputation accuracy, a minimum number of 50 markers per chromosome and MAF of SNPs > 0.2 in soybean line were required to avoid a significant loss of imputation accuracy. Using the software, we imputed 5176 soybean lines in the soybean nested mapping population (NAM) with high-density markers of the 40 parents. The dataset containing 423,419 markers for 5176 lines and 40 parents was deposited at the Soybase. The imputed NAM dataset was further examined for the improvement of mapping quantitative trait loci (QTL) controlling soybean seed protein content. Most of the QTL identified were at identical or at similar position based on initial and imputed datasets; however, QTL intervals were greatly narrowed. The resulting genotypic dataset of NAM population will facilitate QTL mapping of traits and downstream applications. The information will also help to improve genotyping imputation accuracy in self-pollinated crops.

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来源期刊
Acta Arachnologica
Acta Arachnologica Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
0.80
自引率
0.00%
发文量
10
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