Environmental Stewardship Group, Los Alamos National Laboratory, Los Alamos, New Mexico, United States of America.
Department of Forestry and Natural Resources, University of Kentucky, Lexington, Kentucky, United States of America.
PLoS One. 2020 Sep 17;15(9):e0238870. doi: 10.1371/journal.pone.0238870. eCollection 2020.
Monitoring the ecological impacts of environmental pollution and the effectiveness of remediation efforts requires identifying relationships between contaminants and the disruption of biological processes in populations, communities, or ecosystems. Wildlife are useful bioindicators, but traditional comparative experimental approaches rely on a staunch and typically unverifiable assumption that, in the absence of contaminants, reference and contaminated sites would support the same densities of bioindicators, thereby inferring direct causation from indirect data. We demonstrate the utility of spatial capture-recapture (SCR) models for overcoming these issues, testing if community density of common small mammal bioindicators was directly influenced by soil chemical concentrations. By modeling density as an inhomogeneous Poisson point process, we found evidence for an inverse spatial relationship between Peromyscus density and soil mercury concentrations, but not other chemicals, such as polychlorinated biphenyls, at a site formerly occupied by a nuclear reactor. Although the coefficient point estimate supported Peromyscus density being lower where mercury concentrations were higher (β = -0.44), the 95% confidence interval overlapped zero, suggesting no effect was also compatible with our data. Estimated density from the most parsimonious model (2.88 mice/ha; 95% CI = 1.63-5.08), which did not support a density-chemical relationship, was within the range of reported densities for Peromyscus that did not inhabit contaminated sites elsewhere. Environmental pollution remains a global threat to biodiversity and ecosystem and human health, and our study provides an illustrative example of the utility of SCR models for investigating the effects that chemicals may have on wildlife bioindicator populations and communities.
监测环境污染的生态影响和补救措施的效果需要确定污染物与种群、群落或生态系统中生物过程中断之间的关系。野生动物是有用的生物指标,但传统的比较实验方法依赖于一个坚定且通常无法验证的假设,即在没有污染物的情况下,参照和污染地点将支持相同密度的生物指标,从而从间接数据推断直接因果关系。我们展示了空间捕获-再捕获 (SCR) 模型克服这些问题的实用性,测试常见小型哺乳动物生物指标的群落密度是否直接受到土壤化学浓度的影响。通过将密度建模为非均匀泊松点过程,我们发现了在一个曾经被核反应堆占据的地点,棉尾兔密度与土壤汞浓度之间存在反空间关系的证据,但与其他化学物质(如多氯联苯)没有关系。尽管系数点估计支持汞浓度较高的地方棉尾兔密度较低(β=-0.44),但 95%置信区间与零重叠,表明没有影响也与我们的数据兼容。最简约模型(2.88 只/公顷;95%CI=1.63-5.08)估计的密度不支持密度-化学关系,这在未受污染地点栖息的棉尾兔报告密度范围内。环境污染仍然是对生物多样性和生态系统以及人类健康的全球性威胁,我们的研究提供了一个说明性的例子,说明了 SCR 模型在调查化学物质可能对野生动物生物指标种群和群落产生的影响方面的实用性。