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Recalculation of 23 mouse HDL QTL datasets improves accuracy and allows for better candidate gene analysis

机译:重新计算23个小鼠HDL QTL数据集可提高准确性并可以进行更好的候选基因分析

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摘要

In the past 15 years, the quantitative trait locus (QTL) mapping approach has been applied to crosses between different inbred mouse strains to identify genetic loci associated with plasma HDL cholesterol levels. Although successful, a disadvantage of this method is low mapping resolution, as often several hundred candidate genes fall within the confidence interval for each locus. Methods have been developed to narrow these loci by combining the data from the different crosses, but they rely on the accurate mapping of the QTL and the treatment of the data in a consistent manner. We collected 23 raw datasets used for the mapping of previously published HDL QTL and reanalyzed the data from each cross using a consistent method and the latest mouse genetic map. By utilizing this approach, we identified novel QTL and QTL that were mapped to the wrong part of chromosomes. Our new HDL QTL map allows for reliable combining of QTL data and candidate gene analysis, which we demonstrate by identifying Grin3a and Etv6, as candidate genes for QTL on chromosomes 4 and 6, respectively. In addition, we were able to narrow a QTL on Chr 19 to five candidates.
机译:在过去的15年中,定量性状基因座(QTL)定位方法已应用于不同近交小鼠品系之间的杂交,以鉴定与血浆HDL胆固醇水平相关的遗传基因座。尽管成功,但该方法的缺点是定位分辨率低,因为通常有数百个候选基因落入每个基因座的置信区间内。已经开发了通过组合来自不同杂交的数据来缩小这些基因座的方法,但是它们依赖于QTL的精确映射和以一致的方式处理数据。我们收集了23个原始数据集,用于映射先前发布的HDL QTL,并使用一致的方法和最新的小鼠遗传图谱重新分析了每个杂交的数据。通过使用这种方法,我们确定了新的QTL和QTL,它们被映射到染色体的错误部分。我们新的HDL QTL图谱可实现QTL数据与候选基因分析的可靠结合,我们通过将Grin3a和Etv6分别鉴定为4号和6号染色体上QTL的候选基因来证明这一点。此外,我们还能够将19号Chr的QTL范围缩小到五名候选人。

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