Peek Michael S, Russek-Cohen Estelle, Wait Alexander D, Forseth Irwin N
Department of Biology, University of Maryland, College Park, MD, 20742, USA.
Department of Animal and Avian Sciences, University of Maryland, College Park, MD, 20742, USA.
Oecologia. 2002 Jul;132(2):175-180. doi: 10.1007/s00442-002-0954-0. Epub 2002 Jul 1.
Nonlinear response curves are often used to model the physiological responses of plants. These models are preferable to polynomials because the coefficients fit to the curves have biological meaning. The response curves are often generated by repeated measurements on one subject, over a range of values for the environmental variable of interest. However, the typical analysis of differences in coefficients between experimental groups does not include a repeated measures approach. This may lead to inappropriate estimation of error terms. Here, we show how to combine mixed model analysis, available in SAS, that allows for repeated observations on the same experimental unit, with nonlinear response curves. We illustrate the use of this nonlinear mixed model with a study in which two plant species were grown under contrasting light environments. We recorded light levels and net photosynthetic response on anywhere from 8 to 10 points per plant and fit a Mitscherlich model in which each plant has its own coefficients. The coefficients for the photosynthetic light-response curve for each plant were assumed to follow a multivariate normal distribution in which the mean was determined by the treatment. The approach yielded biologically relevant coefficients and unbiased standard error estimates for multiple treatment comparisons.
非线性响应曲线常用于模拟植物的生理响应。这些模型比多项式更可取,因为拟合曲线的系数具有生物学意义。响应曲线通常是通过对一个研究对象在感兴趣的环境变量的一系列值上进行重复测量而生成的。然而,对实验组之间系数差异的典型分析并不包括重复测量方法。这可能导致误差项的估计不当。在这里,我们展示了如何将SAS中可用的混合模型分析与非线性响应曲线相结合,该分析允许对同一实验单元进行重复观测。我们通过一项研究来说明这种非线性混合模型的使用,在该研究中,两种植物物种在对比鲜明的光照环境下生长。我们记录了每株植物8到10个点的光照水平和净光合响应,并拟合了一个米氏模型,其中每株植物都有自己的系数。假设每株植物光合光响应曲线的系数服从多元正态分布,其均值由处理决定。该方法为多重处理比较产生了具有生物学相关性的系数和无偏标准误差估计。