Gray Thomas N E, Borey Ro, Hout Seng Kim, Chamnan Hong, Collar Nigel J, Dolman Paul M
School of Environmental Sciences, University of East Anglia, Norwich NR4 7TJ, United Kingdom.
Conserv Biol. 2009 Apr;23(2):433-9. doi: 10.1111/j.1523-1739.2008.01112.x. Epub 2008 Nov 2.
Predictive models can help clarify the distribution of poorly known species but should display strong transferability when applied to independent data. Nevertheless, model transferability for threatened tropical species is poorly studied. We built models predicting the incidence of the critically endangered Bengal Florican (Houbaropsis bengalensis) within the Tonle Sap (TLS) floodplain, Cambodia. Separate models were constructed with soil, land-use, and landscape data and species incidence sampled over the entire floodplain (12,000 km(2)) and from the Kompong Thom (KT) province (4000 km(2)). In each case, the probability of Bengal Florican presence within randomly selected 1 x 1 km squares was modeled by binary logistic regression with multimodel inference. We assessed the transferability of the KT model by comparing predictions with observed incidence elsewhere in the floodplain. In terms of standard model-validation statistics, the KT model showed good spatial transferability. Nevertheless, it overpredicted florican presence outside the KT calibration region, classifying 491 km(2) as suitable habitat compared with 237 km(2) predicted as suitable by the TLS model. This resulted from higher species incidence within the calibration region, probably owing to a program of conservation education and enforcement that has reduced persecution there. Because both research and conservation activity frequently focus on areas with higher density, such effects could be widespread, reducing transferability of predictive distribution models.
预测模型有助于厘清鲜为人知物种的分布情况,但应用于独立数据时应具备较强的可转移性。然而,针对受威胁热带物种的模型可转移性研究甚少。我们构建了预测极度濒危的孟加拉鸨(Houbaropsis bengalensis)在柬埔寨洞里萨湖(TLS)洪泛平原出现概率的模型。利用土壤、土地利用和景观数据以及在整个洪泛平原(12,000平方公里)和磅通省(KT,4000平方公里)采集的物种出现情况样本构建了不同的模型。在每种情况下,通过二元逻辑回归和多模型推断对随机选取的1×1平方公里方格内出现孟加拉鸨的概率进行建模。我们通过将KT模型的预测结果与洪泛平原其他区域的实际出现情况进行比较,评估了该模型的可转移性。就标准的模型验证统计数据而言,KT模型显示出良好的空间可转移性。然而,它高估了KT校准区域以外鸨的出现情况,将491平方公里归类为适宜栖息地,而TLS模型预测的适宜栖息地为237平方公里。这是由于校准区域内物种出现频率较高,可能是因为一项保护教育和执法计划减少了该区域的迫害行为。由于研究和保护活动通常都集中在密度较高的区域,这种影响可能很普遍,会降低预测分布模型的可转移性。