Biodiversity Institute and Department of Ecology and Evolutionary Biology, The University of Kansas, Lawrence, Kansas 66045 USA.
Int J Health Geogr. 2011 Mar 28;10:21. doi: 10.1186/1476-072X-10-21.
Ecological niche modeling integrates known sites of occurrence of species or phenomena with data on environmental variation across landscapes to infer environmental spaces potentially inhabited (i.e., the ecological niche) to generate predictive maps of potential distributions in geographic space. Key inputs to this process include raster data layers characterizing spatial variation in environmental parameters, such as vegetation indices from remotely sensed satellite imagery. The extent to which ecological niche models reflect real-world distributions depends on a number of factors, but an obvious concern is the quality and content of the environmental data layers.
We assessed ecological niche model predictions of H5N1 avian flu presence quantitatively within and among four geographic regions, based on models incorporating two means of summarizing three vegetation indices derived from the MODIS satellite. We evaluated our models for predictive ability using partial ROC analysis and GLM ANOVA to compare performance among indices and regions.
We found correlations between vegetation indices to be high, such that they contain information that overlaps broadly. Neither the type of vegetation index used nor method of summary affected model performance significantly. However, the degree to which model predictions had to be transferred (i.e., projected onto landscapes and conditions not represented on the landscape of training) impacted predictive strength greatly (within-region model predictions far out-performed models projected among regions).
Our results provide the first quantitative tests of most appropriate uses of different remotely sensed data sets in ecological niche modeling applications. While our testing did not result in a decisive "best" index product or means of summarizing indices, it emphasizes the need for careful evaluation of products used in modeling (e.g. matching temporal dimensions and spatial resolution) for optimum performance, instead of simple reliance on large numbers of data layers.
生态位模型将物种或现象的已知发生地点与景观上环境变化的数据相结合,以推断潜在的栖息地环境空间(即生态位),从而生成地理空间中潜在分布的预测图。该过程的关键输入包括描述环境参数空间变化的栅格数据层,例如来自遥感卫星图像的植被指数。生态位模型反映现实世界分布的程度取决于许多因素,但一个明显的关注点是环境数据层的质量和内容。
我们基于整合了三种源自 MODIS 卫星的植被指数的两种汇总方法的模型,在四个地理区域内和之间对 H5N1 禽流感存在的生态位模型预测进行了定量评估。我们使用部分 ROC 分析和 GLM ANOVA 来比较指数和区域之间的性能,评估我们模型的预测能力。
我们发现植被指数之间存在高度相关性,因此它们包含广泛重叠的信息。使用的植被指数类型或汇总方法都不会显著影响模型性能。然而,模型预测必须转移的程度(即投影到训练景观上未表示的景观和条件上)极大地影响了预测强度(区域内模型预测的性能远远超过了跨区域模型预测)。
我们的研究结果提供了对生态位建模应用中不同遥感数据集最适当用途的首次定量测试。虽然我们的测试没有导致一个决定性的“最佳”指数产品或汇总指数的方法,但它强调了在建模中需要仔细评估所使用的产品(例如,匹配时间维度和空间分辨率)以实现最佳性能,而不是简单依赖大量数据层。