Estrada-Peña Agustín, Estrada-Sánchez Adrián, de la Fuente José
Dept, of Animal Pathology, University of Zaragoza, Miguel Servet 177, Zaragoza 50013, Spain.
Parasit Vectors. 2014 Jul 2;7:302. doi: 10.1186/1756-3305-7-302.
Correlative modelling combines observations of species occurrence with environmental variables to capture the niche of organisms. It has been argued for the use of predictors that are ecologically relevant to the target species, instead of the automatic selection of variables. Without such biological background, the forced inclusion of numerous variables can produce models that are highly inflated and biologically irrelevant. The tendency in correlative modelling is to use environmental variables that are interpolated from climate stations, or monthly estimates of remotely sensed features.
We produced a global dataset of abiotic variables based on the transformation by harmonic regression (time series Fourier transform) of monthly data derived from the MODIS series of satellites at a nominal resolution of 0.1°. The dataset includes variables, such as day and night temperature or vegetation and water availability, which potentially could affect physiological processes and therefore are surrogates in tracking the abiotic niche. We tested the capacities of the dataset to describe the abiotic niche of parasitic organisms, applying it to discriminate five species of the globally distributed tick subgenus Boophilus and using more than 9,500 published records.
With an average reliability of 82%, the Fourier-transformed dataset outperformed the raw MODIS-derived monthly data for temperature and vegetation stress (62% of reliability) and other popular interpolated climate datasets, which had variable reliability (56%-65%). The transformed abiotic variables always had a collinearity of less than 3 (as measured by the variance inflation factor), in contrast with interpolated datasets, which had values as high as 300.
The new dataset of transformed covariates could address the tracking of abiotic niches without inflation of the models arising from internal issues with the descriptive variables, which appear when variance inflation is higher than 10. The coefficients of the harmonic regressions can also be used to reconstruct the complete original time series, being an adequate complement for ecological, epidemiological, or phylogenetic studies. We provide the dataset as a free download under the GNU general public license as well as the scripts necessary to integrate other time series of data into the calculations of the harmonic coefficients.
相关建模将物种出现的观测数据与环境变量相结合,以描绘生物体的生态位。有人主张使用与目标物种具有生态相关性的预测因子,而不是自动选择变量。如果没有这样的生物学背景,强行纳入大量变量可能会产生高度膨胀且与生物学无关的模型。相关建模的趋势是使用从气象站插值得到的环境变量,或遥感特征的月度估计值。
我们基于对来自MODIS系列卫星的月度数据进行谐波回归(时间序列傅里叶变换)转换,生成了一个全球非生物变量数据集,名义分辨率为0.1°。该数据集包括昼夜温度、植被和水资源可利用性等变量,这些变量可能会影响生理过程,因此是追踪非生物生态位的替代指标。我们测试了该数据集描述寄生生物非生物生态位的能力,将其应用于区分全球分布的牛蜱亚属的五个物种,并使用了超过9500条已发表的记录。
经傅里叶变换的数据集平均可靠性为82%,在温度和植被压力方面(可靠性为62%)优于原始的MODIS月度数据,也优于其他可靠性参差不齐(56%-65%)的常用插值气候数据集。与插值数据集高达300的值相比,转换后的非生物变量的共线性始终小于3(由方差膨胀因子衡量)。
新的转换协变量数据集可以解决非生物生态位的追踪问题,而不会因描述变量的内部问题导致模型膨胀,当方差膨胀高于10时就会出现这些问题。谐波回归的系数还可用于重建完整的原始时间序列,是生态、流行病学或系统发育研究的适当补充。我们根据GNU通用公共许可证提供该数据集供免费下载,以及将其他时间序列数据整合到谐波系数计算中所需的脚本。