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Estimating mutation rate: how to count mutations?

机译:估算突变率:如何计算突变?

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摘要

Mutation rate is an essential parameter in genetic research. Counting the number of mutant individuals provides information for a direct estimate of mutation rate. However, mutant individuals in the same family can share the same mutations due to premeiotic mutation events, so that the number of mutant individuals can be significantly larger than the number of mutation events observed. Since mutation rate is more closely related to the number of mutation events, whether one should count only independent mutation events or the number of mutants remains controversial. We show in this article that counting mutant individuals is a correct approach for estimating mutation rate, while counting only mutation events will result in underestimation. We also derived the variance of the mutation-rate estimate, which allows us to examine a number of important issues about the design of such experiments. The general strategy of such an experiment should be to sample as many families as possible and not to sample much more offspring per family than the reciprocal of the pairwise correlation coefficient within each family. To obtain a reasonably accurate estimate of mutation rate, the number of sampled families needs to be in the same or higher order of magnitude as the reciprocal of the mutation rate.
机译:突变率是遗传研究中必不可少的参数。计算突变个体的数量可提供信息,以直接估算突变率。但是,由于减数分裂前的突变事件,同一家族中的突变个体可以共享相同的突变,因此,突变个体的数量可能明显大于观察到的突变事件的数量。由于突变率与突变事件的数量密切相关,因此是否只应计数独立的突变事件或突变体的数量仍存在争议。我们在本文中表明,对突变个体进行计数是估计突变率的正确方法,而仅对突变事件进行计数会导致低估。我们还推导了突变率估算值的方差,这使我们可以检查有关此类实验设计的许多重要问题。这种实验的一般策略应该是对尽可能多的家庭进行采样,并且每个家庭的后代采样率不应超过每个家庭中成对相关系数的倒数。为了获得合理准确的突变率估计值,采样家庭的数量必须与突变率的倒数相同或更高数量级。

著录项

  • 期刊名称 Genetics
  • 作者

    Yun-Xin Fu; Haying Huai;

  • 作者单位
  • 年(卷),期 2003(164),2
  • 年度 2003
  • 页码 797–805
  • 总页数 10
  • 原文格式 PDF
  • 正文语种
  • 中图分类 遗传学;
  • 关键词

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