Trotta-Moreu Nuria, Lobo Jorge M
Museo Nacional de Ciencias Naturales, CSIC, Department Biodiversidad y Biología Evolutiva, Madrid, Spain.
Environ Entomol. 2010 Feb;39(1):42-9. doi: 10.1603/EN08179.
Predictions from individual distribution models for Mexican Geotrupinae species were overlaid to obtain a total species richness map for this group. A database (GEOMEX) that compiles available information from the literature and from several entomological collections was used. A Maximum Entropy method (MaxEnt) was applied to estimate the distribution of each species, taking into account 19 climatic variables as predictors. For each species, suitability values ranging from 0 to 100 were calculated for each grid cell on the map, and 21 different thresholds were used to convert these continuous suitability values into binary ones (presence-absence). By summing all of the individual binary maps, we generated a species richness prediction for each of the considered thresholds. The number of species and faunal composition thus predicted for each Mexican state were subsequently compared with those observed in a preselected set of well-surveyed states. Our results indicate that the sum of individual predictions tends to overestimate species richness but that the selection of an appropriate threshold can reduce this bias. Even under the most optimistic prediction threshold, the mean species richness error is 61% of the observed species richness, with commission errors being significantly more common than omission errors (71 +/- 29 versus 18 +/- 10%). The estimated distribution of Geotrupinae species richness in Mexico in discussed, although our conclusions are preliminary and contingent on the scarce and probably biased available data.
将墨西哥大锹甲科物种的个体分布模型预测结果叠加,以获得该类群的物种丰富度总图。使用了一个数据库(GEOMEX),该数据库汇编了文献和多个昆虫学收藏中的可用信息。应用最大熵方法(MaxEnt)来估计每个物种的分布,将19个气候变量作为预测因子。对于每个物种,计算地图上每个网格单元的适宜性值,范围从0到100,并使用21个不同的阈值将这些连续的适宜性值转换为二元值(存在-不存在)。通过对所有个体二元地图求和,我们为每个考虑的阈值生成了物种丰富度预测。随后将每个墨西哥州预测的物种数量和动物区系组成与在一组预先选定的经过充分调查的州中观察到的情况进行比较。我们的结果表明,个体预测的总和往往会高估物种丰富度,但选择合适的阈值可以减少这种偏差。即使在最乐观的预测阈值下,平均物种丰富度误差也是观察到的物种丰富度的61%,其中误判误差比漏判误差更常见(71±29%对18±10%)。本文讨论了墨西哥大锹甲科物种丰富度的估计分布,尽管我们的结论是初步的,且取决于稀少且可能有偏差的现有数据。