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Habitat Associations of Fish Species of Greatest Conservation Need at Multiple Spatial Scales in Wadeable Iowa Streams

机译:衣阿华河上游多个空间尺度上最需要保护的鱼类物种的栖息地协会

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摘要

Fish and habitat data were collected from 84 wadeable stream reaches in the Mississippi River drainage of Iowa to predict the occurrences of seven fish species of greatest conservation need and to identify the relative importance of habitat variables measured at small (e.g., depth, velocity, and substrate) and large (e.g., stream order, elevation, and gradient) scales in terms of their influence on species occurrences. Multiple logistic regression analysis was used to predict fish species occurrences, starting with all possible combinations of variables (5 large-scale variables, 13 small-scale variables, and all 18 variables) but limiting the final models to a maximum of five variables. Akaike’s information criterion was used to rank candidate models, weight model parameters, and calculate model-averaged predictions. On average, the correct classification rate (CCR = 80%) and Cohen’s kappa (κ = 0.59) were greatest for multiple-scale models (i.e., those including both large-scale and small-scale variables), intermediate for small-scale models (CCR = 75%; κ = 0.49), and lowest for large-scale models (CCR = 73%; κ = 0.44). The occurrence of each species was associated with a unique combination of large-scale and small-scale variables. Our results support the necessity of understanding factors that constrain the distribution of fishes across spatial scales to ensure that management decisions and actions occur at the appropriate scale.
机译:从爱荷华州密西西比河流域的84条可灌溉河段收集了鱼类和栖息地数据,以预测最需要保护的7种鱼类的发生,并确定在较小(例如深度,速度和底物)和大尺度(如河流阶次,海拔和坡度)对物种发生的影响。从所有可能的变量组合(5个大型变量,13个小规模变量和所有18个变量)开始,但将最终模型限制为最多五个变量,使用多元逻辑回归分析来预测鱼类的发生。 Akaike的信息标准用于对候选模型,权重模型参数进行排名,并计算模型平均预测。平均而言,正确的分类率(CCR = 80%)和Cohen的kappa(κ= 0.59)对于多尺度模型(即那些同时包含大规模变量和小规模变量的模型)最大,对于小规模模型则中等(CCR = 75%;κ= 0.49),在大型模型中最低(CCR = 73%;κ= 0.44)。每个物种的出现都与大规模和小规模变量的独特组合有关。我们的结果支持必须理解限制鱼类在空间尺度上的分布的因素的必要性,以确保管理决策和行动在适当的尺度上发生。

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