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Application of a benthic observed/expected-type model for assessing Central Appalachian streams influenced by regional stressors in West Virginia and Kentucky

机译:底栖观测/预期类型模型在评估西弗吉尼亚州和肯塔基州受区域压力因素影响的中阿巴拉契亚河流中的应用

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摘要

Stream bioassessments rely on taxonomic composition at sites compared with natural, reference conditions. We developed and tested an observed/expected (O/E) predictive model of taxonomic completeness and an index of compositional dissimilarity (BC index) for Central Appalachian streams using combined macroinvertebrate datasets from riffle habitats in West Virginia (WV) and Kentucky (KY). A total of 102 reference sites were used to calibrate the O/E model, which was then applied to assess over 1,200 sites sampled over a 10-year period. Using an all subsets discriminant function analysis (DFA) procedure, we tested combinations of 14 predictor variables that produced DF and O/E models of varying performance. We selected the most precise model using a probability of capture at >0.5 (O/E_(0.5), SD=0.159); this model was constructed with only three simple predictor variables-Julian day, latitude, and whether a site was in ecoregion 69a. We evaluated O/E and BC indices between reference and test sites and compared their response to regional stressors, including coal mining, residential development, and acid deposition. The Central Appalachian O/E and BC indices both showed excellent discriminatory power and were significantly correlated to a variety of regional stressors; in some instances, the BC index was slightly more sensitive and responsive than the O/E_(0.5) model. These indices can be used to supplement existing bioassessment tools crucial to detecting and diagnosing stream impacts in the Central Appalachian region of WVand KY.
机译:与自然参考条件相比,溪流生物评价依赖于现场的生物分类组成。我们使用来自西弗吉尼亚州(WV)和肯塔基州(KY)浅滩生境的大型无脊椎动物数据集,开发并测试了观测/预期(O / E)分类学完整性预测模型和中阿巴拉契亚河流成分差异指数(BC指数) 。总共使用了102个参考位点来校准O / E模型,然后将其用于评估在10年期间采样的1,200多个位点。使用所有子集判别函数分析(DFA)程序,我们测试了14个预测变量的组合,这些变量产生了性能各异的DF和O / E模型。我们使用捕获概率> 0.5(O / E_(0.5),SD = 0.159)选择最精确的模型;该模型仅使用三个简单的预测变量构建而成,即朱利安天数,纬度和站点是否在生态区69a中。我们评估了参考点和测试点之间的O / E和BC指数,并比较了它们对区域压力源(包括煤炭开采,住宅开发和酸沉降)的响应。阿巴拉契亚中部的O / E和BC指数均显示出出色的歧视能力,并且与各种区域性压力源显着相关。在某些情况下,BC指数比O / E_(0.5)模型更为敏感和敏感。这些指数可用于补充现有的生物评估工具,这些工具对于在WVand KY的阿巴拉契亚中部地区检测和诊断河流影响至关重要。

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