...
首页> 外文期刊>Journal of Biogeography >Geographical sampling bias in a large distributional database and its effects on species richness-environment models
【24h】

Geographical sampling bias in a large distributional database and its effects on species richness-environment models

机译:大型分布数据库中的地理采样偏差及其对物种丰富度-环境模型的影响

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Aim Recent advances in the availability of species distributional and high-resolution environmental data have facilitated the investigation of species richness-environment relationships. However, even exhaustive distributional databases are prone to geographical sampling bias. We aim to quantify the inventory incompleteness of vascular plant data across 2377 Chinese counties and to test whether inventory incompleteness affects the analysis of richness-environment relationships and spatial predictions of species richness. Location China. Methods We used the most comprehensive database of Chinese vascular plants, which includes county-level occurrences for 29,012 native species derived from 4,236,768 specimen and literature records. For each county, we computed smoothed species accumulation curves and used the mean slope of the last 10% of the curves as a proxy for inventory incompleteness. We created a series of data subsets with different levels of inventory incompleteness by excluding successively more under-sampled counties from the full data set. We then applied spatial and non-spatial regression models to each of these subsets to investigate relationships between the species richness of subsets and environmental factors, and to predict spatial patterns of vascular plant species richness in China. Results Log(10)-transformed numbers of records and documented species were strongly correlated (r=0.97). In total, 91% of Chinese counties were identified as under-sampled. After controlling for inventory incompleteness, the overall explanatory power of environmental factors markedly increased, and the strongest predictor of species richness switched from elevational range to annual wet days. Environmental models calibrated with more complete inventories yielded better spatial predictions of species richness. Main conclusions Our results indicate that inventory incompleteness strongly affects the explanatory power of environmental factors, the main determinants of species richness obtained from regression analyses, and the reliability of environment-based spatial predictions of species richness. We conclude that even large distributional databases are prone to geographical sampling bias, with far-reaching implications for the perception of and inferences about macroecological patterns.
机译:目的物种分布和高分辨率环境数据的可用性方面的最新进展促进了物种丰富度与环境关系的研究。但是,即使是详尽的分布数据库也容易出现地理抽样偏差。我们旨在量化2377个中国县的维管植物数据的库存不完整性,并检验库存不完整性是否会影响物种丰富度与环境关系的分析以及物种丰富度的空间预测。位置中国。方法我们使用了最全面的中国维管植物数据库,其中包括来自4,236,768个标本的29,012种本地物种的县级事件和文献记录。对于每个县,我们计算了平滑的物种积累曲线,并使用曲线的最后10%的平均斜率作为库存不完整性的代表。通过从完整数据集中连续排除更多欠采样县,我们创建了一系列具有不同库存不完备水平的数据子集。然后,我们将空间和非空间回归模型应用于这些子集,以研究子集的物种丰富度与环境因素之间的关系,并预测中国维管植物物种丰富度的空间格局。结果Log(10)转换的记录数与已记录的物种密切相关(r = 0.97)。总共有91%的中国县被确定为抽样不足。在控制了存货不完整之后,环境因素的总体解释力显着提高,物种丰富度的最强预测因子从海拔范围转换为年度湿日。用更完整的清单进行校准的环境模型对物种丰富度产生了更好的空间预测。主要结论我们的结果表明,库存不完备性强烈影响环境因素的解释能力,通过回归分析获得的物种丰富度的主要决定因素以及基于环境的物种丰富度空间预测的可靠性。我们得出的结论是,即使大型的分布式数据库也容易出现地理抽样偏差,这对宏观生态模式的感知和推断具有深远的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号