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How many specimens do I need? Sampling error in geometric morphometrics: testing the sensitivity of means and variances in simple randomized selection experiments

机译:我需要多少个标本?几何形态计量学中的抽样误差:在简单的随机选择实验中测试均值和方差的敏感性

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One of the most basic but problematic issues in modern morphometrics is how many specimens one needs to achieve accuracy in samples. Indeed, this is one of the most regularly posed questions in introductory courses. There is no simple and certainly no absolute answer to this question. However, there are a number of techniques for exploring the effect of sampling, and our aim is to provide an example of how this might function in a simplified but informative way. Thus, using resampling methods and sensitivity analyses based on randomized subsamples, we assessed sampling error in horse teeth from several modern and fossil populations. Centroid size and shape of an upper premolar (PM2) were captured using Procrustes geometric morphometrics. Means and variances (using three different statistics for shape variance) were estimated, as well as their confidence intervals. Also, the largest population sample was randomly split into progressively smaller subsamples to assess how reducing sample size affects statistical parameters. Results indicate that mean centroid size is highly accurate; even when sample size is small, errors are generally considerably smaller than differences among populations. In contrast, mean shape estimation requires large samples of tens of specimens (ca. > 20), although this requirement may be less stringent when variance in a population is very small (e.g. populations that underwent strong genetic bottlenecks). Variance in either centroid size or shape can be highly inaccurate in small samples, to the point that sampling error makes it as variable as differences among spatially and chronologically well-separated populations, including two which are highly distinctive as a consequence of strong artificial selection. Likely, centroid size and shape variance require no 15-20 specimens to achieve a reasonable degree of accuracy. Results from the simplified sensitivity analysis were largely congruent with the pattern suggested by bootstrapped confidence intervals, as well as with the observations of a previous study on African monkeys. The analyses we performed, especially the sensitivity assessment, are simple and do not require much time or computational effort; however, they do necessitate that at least one sample is large (50 or more specimens). If this type of analyses became more common in geometric morphometrics, it could provide an effective tool for the preliminarily exploration of the effect of sampling on results and therefore assist in assessing their robustness. Finally, as the use of sensitivity studies increases, the present case could form part of a set of examples that allow us to better understand and estimate what a desirable sample size might be, depending on the scientific question, type of data and taxonomic level under investigation.
机译:现代形态计量学中最基本但最成问题的问题之一是需要多少个样本才能达到样本的准确性。实际上,这是入门课程中最常提出的问题之一。这个问题没有简单的答案,当然也没有绝对的答案。但是,有许多技术可以探索采样的效果,我们的目的是提供一个示例,说明如何以简化但有用的方式工作。因此,使用基于随机子样本的重采样方法和敏感性分析,我们评估了来自多个现代种群和化石种群的马牙抽样误差。使用Procrustes几何形态计量学捕获上前磨牙(PM2)的质心大小和形状。估计了均值和方差(使用三个不同的统计量进行形状方差)及其置信区间。同样,将最大的总体样本随机分为逐渐变小的子样本,以评估减少的样本量如何影响统计参数。结果表明,平均质心大小非常准确;即使样本量很小,误差也通常比总体差异小得多。相比之下,平均形状估计需要大量样本(约大于20个)的大样本,尽管当群体中的方差很小时(例如经历严重遗传瓶颈的群体),此要求可能不太严格。在小样本中,质心大小或形状的差异都可能非常不准确,以至于抽样误差使其随空间和时间上分隔良好的种群之间的差异而可变,其中包括由于强烈的人工选择而具有高度差异性的两个种群。可能,质心大小和形状变化不需要<15-20个样本即可达到合理的准确度。简化的敏感性分析的结果与自举置信区间所建议的模式以及先前对非洲猴子的一项研究的观察结果基本一致。我们进行的分析,尤其是敏感性评估,非常简单,不需要太多时间或计算量。但是,他们的确需要至少一个样本很大(50个或更多样本)。如果这种分析在几何形态计量学中变得更加普遍,则可以为初步探索采样对结果的影响提供有效的工具,从而有助于评估其鲁棒性。最后,随着敏感性研究的使用增加,本案例可以构成一组示例的一部分,这些示例使我们可以更好地理解和估计所需的样本量,这取决于科学问题,数据类型和分类标准。调查。

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