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Comparing analysis methods for mutation-accumulation data: a simulation study.

机译:比较突变累积数据的分析方法:模拟研究。

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摘要

We simulated single-generation data for a fitness trait in mutation-accumulation (MA) experiments, and we compared three methods of analysis. Bateman-Mukai (BM) and maximum likelihood (ML) need information on both the MA lines and control lines, while minimum distance (MD) can be applied with or without the control. Both MD and ML assume gamma-distributed mutational effects. ML estimates of the rate of deleterious mutation had larger mean square error (MSE) than MD or BM had due to large outliers. MD estimates obtained by ignoring the mean decline observed from comparison to a control are often better than those obtained using that information. When effects are simulated using the gamma distribution, reducing the precision with which the trait is assayed increases the probability of obtaining no ML or MD estimates but causes no appreciable increase of the MSE. When the residual errors for the means of the simulated lines are sampled from the empirical distribution in a MA experiment, instead of from a normal one, the MSEs of BM, ML, and MD are practically unaffected. When the simulated gamma distribution accounts for a high rate of mild deleterious mutation, BM detects only approximately 30% of the true deleterious mutation rate, while MD or ML detects substantially larger fractions. To test the robustness of the methods, we also added a high rate of common contaminant mutations with constant mild deleterious effect to a low rate of mutations with gamma-distributed deleterious effects and moderate average. In that case, BM detects roughly the same fraction as before, regardless of the precision of the assay, while ML fails to provide estimates. However, MD estimates are obtained by ignoring the control information, detecting approximately 70% of the total mutation rate when the mean of the lines is assayed with good precision, but only 15% for low-precision assays. Contaminant mutations with only tiny deleterious effects could not be detected with acceptable accuracy by any of the above methods.
机译:我们在突变累积(MA)实验中模拟了适合性状的单代数据,并比较了三种分析方法。 Bateman-Mukai(BM)和最大似然(ML)在MA线和控制线上都需要信息,而最小距离(MD)可以在有或没有控制的情况下应用。 MD和ML均具有伽马分布的突变效应。由于离群值较大,ML估计的有害突变率比MD或BM具有更大的均方误差(MSE)。通过忽略与对照相比观察到的平均下降而获得的MD估计值通常比使用该信息获得的估计值更好。当使用伽玛分布模拟效果时,降低性状分析的精度会增加无法获得ML或MD估计值的可能性,但不会导致MSE明显增加。在MA实验中从经验分布中抽样模拟线均值的残留误差而不是从正态分布中抽样时,BM,ML和MD的MSE实际上不受影响。当模拟的伽玛分布说明轻度有害突变率很高时,BM仅检测到真实有害突变率的大约30%,而MD或ML检测到的分数要大得多。为了测试该方法的鲁棒性,我们还添加了具有恒定的轻度有害作用的高常见污染物突变率,以及具有伽玛分布的有害作用和中等平均值的低突变率。在那种情况下,无论检测的精度如何,BM都可以检测到与以前大致相同的分数,而ML无法提供估计值。但是,MD估计值是通过忽略对照信息而获得的,当以较高的精确度测定品系的平均值时,检测到总突变率的大约70%,而对于低精确度的测定只有15%。上述任何方法都无法以可接受的准确性检测出仅具有微小有害影响的污染物突变。

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