Reed J Michael, Harris David R, Romero L Michael
Department of Biology, Tufts University, Medford, MA, USA.
Department of Biology, Tufts University, Medford, MA, USA.
Gen Comp Endocrinol. 2019 Jan 1;270:1-9. doi: 10.1016/j.ygcen.2018.09.015. Epub 2018 Sep 28.
There is broad interest in determining repeatability of individual responses. Current methods calculate repeatability of individual points (initial and/or peak), time to peak value, or a single measure of the integrated total response (area under the curve), rather than the shape of the response profile. Repeatability estimates of response profiles using linear mixed models (LMM) generate an average repeatability for an aggregate of individuals, rather than an estimate of individual repeatability. Here we use a novel ad hoc method to calculate repeatability of individual response profiles and demonstrate the need for a more rigorous assessment protocol. Response profile repeatability has not been defined at the individual level. We do this using a new metric, Profile Repeatability (PR), which incorporates components of variance and the degree to which response profiles cross each other in a time series. Values range from 0 (no repeatability) to 1 (complete repeatability). We created synthetic data to represent a range of apparent time series repeatability, and 20 independent observers visually ranked those data sets by degree of repeatability. We also applied the method to real data on stress responses of European starlings Sturnus vulgaris. We then computed PR scores for the synthetic data and for real data from European starling corticosterone responses over time, and contrast the results to those from LMM. Finally, we assessed the sensitivity of PR to reductions in the number of time points in the corticosterone response, as well as reductions in the number of replicates per individual. We found the average PR scores for a group of individuals to be somewhat robust to reductions in points in the time series; however, the ranks of individuals (PR values relative to one another) could change substantially with reduction in the number of values in a time series. PR showed threshold sensitivity to losing replicate time series between 6 and 4 replicates. Surprisingly, human observers fell into two disparate groups when ranking repeatability of the synthetic data, and the PR score indicated that human observers may underestimate repeatability of data where replicates cross each other. In contrast to the average profile repeatability estimated using LMMs, our approach calculates individual repeatability. From our perspective, LMM does not provide a definitive idea of repeatability at the individual level; in essence, it concludes that suites of time series with low within-individual variance has high repeatability, regardless of replicate trajectories. LMM and PR have non-linear relationships between 0 and 1, but PR has greater discrimination for mid-values of repeatability. Consistent average group repeatability can be associated with substantial differences in individual ranks suggests that estimating individual repeatability is critical. The PR score should be useful in comparing repeatability of any type of nonlinear, including non-monotonic, response profiles over time, which are common in both physiology and behavior, and it demonstrates the specific needs for future improvements of a profile repeatability metric.
确定个体反应的可重复性受到广泛关注。当前的方法计算的是各个点(初始值和/或峰值)的可重复性、达到峰值的时间,或者对综合总反应的单一测量值(曲线下面积),而不是反应曲线的形状。使用线性混合模型(LMM)对反应曲线的可重复性估计得出的是一组个体的平均可重复性,而不是个体可重复性的估计值。在这里,我们使用一种新颖的临时方法来计算个体反应曲线的可重复性,并证明需要一个更严格的评估方案。反应曲线的可重复性在个体层面尚未得到定义。我们通过一种新的指标——曲线可重复性(PR)来做到这一点,该指标纳入了方差成分以及反应曲线在时间序列中相互交叉的程度。其值范围从0(无重复性)到1(完全重复性)。我们创建了合成数据来代表一系列明显的时间序列可重复性,20名独立观察者根据可重复性程度对这些数据集进行了视觉排序。我们还将该方法应用于欧洲椋鸟(Sturnus vulgaris)应激反应的真实数据。然后,我们计算了合成数据以及欧洲椋鸟随时间变化的皮质酮反应的真实数据的PR分数,并将结果与LMM的结果进行对比。最后,我们评估了PR对应激皮质酮反应中时间点数减少以及每个个体重复次数减少的敏感性。我们发现,一组个体的平均PR分数对时间序列中数据点的减少在一定程度上具有稳健性;然而,个体的排名(PR值相互之间)可能会随着时间序列中数值数量的减少而发生显著变化。PR对失去6到4次重复的重复时间序列表现出阈值敏感性。令人惊讶的是,人类观察者在对合成数据的可重复性进行排名时分为两个不同的组,并且PR分数表明人类观察者可能会低估重复相互交叉的数据的可重复性。与使用LMM估计的平均曲线可重复性不同我们的方法计算个体可重复性。从我们的角度来看,LMM在个体层面并不能提供关于可重复性的确切概念;本质上,它得出的结论是,个体内部方差低的时间序列组具有高可重复性,而不管重复轨迹如何。LMM和PR在0到1之间具有非线性关系,但PR对可重复性的中间值具有更大的区分度。一致的平均组可重复性可能与个体排名的显著差异相关,这表明估计个体可重复性至关重要。PR分数在比较任何类型的非线性(包括非单调)随时间变化的反应曲线的可重复性方面应该是有用的,这种曲线在生理学和行为学中都很常见,并且它展示了未来改进曲线可重复性指标的具体需求。