Atlantic Coastal Environmental Sciences Division, US EPA, ORD, CEMM, Narragansett, RI, USA.
General Dynamics Corporation, Narragansett, RI, USA.
Mar Pollut Bull. 2023 Jan;186:114456. doi: 10.1016/j.marpolbul.2022.114456. Epub 2022 Dec 8.
M-AMBI, a multivariate benthic index, has been used by European and American (U.S.) authorities to assess estuarine and coastal health and has been used in scientific studies throughout the world. It has been shown to be related to multiple pressures and stressors, but the relative importance of individual stressors within a multiple stressor context has not generally been assessed. In this study, we assembled data collected between 1999 and 2015 by the U.S. Environmental Protection Agency using consistent methods. These data included sediment and water quality measures and benthic invertebrate data which were used to calculate M-AMBI. We further assembled watersheds for all US estuaries with benthic data and calculated land use metrics. Random forest (RF) was used to identify those variables most strongly related to M-AMBI. Because RF is a compilation of multiple, nonlinear models, we then assessed which of these variables had a direct relationship with M-AMBI. The resulting variables were then assessed using RF to identify the subsets of variables that produced an effective and parsimonious model. This process was conducted at the national and ecoregional scale and the variables identified as being most important to predict M-AMBI were compared with literature reports of ecological patterns in a given area. At the national scale, better condition was correlated with clearer waters, lower amounts of agriculture in the watershed, and lower carbon and metal concentrations in estuarine sediments. Other stressors were identified as being important at the ecoregional scale, although sediment metal concentrations and watershed agriculture were identified as being important in most ecoregions. Our results suggest that this technique is useful to identify the most important variables impacting M-AMBI at broad spatial scales, even when the percentage of sites in Bad or Poor condition is low. This technique also provides an initial identification of important stressors that can be used to target more intensive local studies.
M-AMBI 是一种多变量底栖指数,已被欧美(美国)当局用于评估港湾和沿海地区的健康状况,并在世界各地的科学研究中得到应用。研究表明,它与多种压力和胁迫因素有关,但在多胁迫环境下,个别胁迫因素的相对重要性尚未得到普遍评估。在这项研究中,我们汇集了美国环境保护署在 1999 年至 2015 年间使用一致方法收集的数据。这些数据包括沉积物和水质测量值以及底栖无脊椎动物数据,这些数据用于计算 M-AMBI。我们进一步为所有具有底栖数据的美国港湾汇集了流域,并计算了土地利用指标。随机森林(RF)用于确定与 M-AMBI 最相关的变量。由于 RF 是多个非线性模型的组合,我们评估了这些变量中哪些与 M-AMBI 有直接关系。然后,使用 RF 评估这些变量,以确定产生有效且简约模型的变量子集。这个过程在国家和生态区域尺度上进行,并比较了确定为对预测 M-AMBI 最重要的变量与特定区域的生态模式文献报告。在国家尺度上,更好的条件与更清澈的水、流域中较少的农业以及港湾沉积物中较低的碳和金属浓度相关。在生态区域尺度上,还确定了其他胁迫因素很重要,尽管沉积物金属浓度和流域农业在大多数生态区域中都被确定为重要因素。我们的研究结果表明,即使在不良或较差条件的站点比例较低的情况下,这种技术也可用于识别在广泛空间尺度上影响 M-AMBI 的最重要变量。该技术还可以初步确定重要的胁迫因素,从而可以针对更密集的局部研究进行目标定位。