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Fish mercury levels in lakes―adjusting for Hg and fish-size covariation

机译:湖泊中鱼类汞含量的调整(针对汞和鱼类大小的协变)

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Accurate estimates of lake-specific mercury levels are vital in assessing the environmental impact on the mercury content in fish. The intercepts of lake-specific regressions of Hg concentration in fish vs. fish length provide accurate estimates when there is a prominent Hg and fish-size covariation. Commonly used regression methods, such as analysis of covariance (ANCOVA) and various standardization techniques are less suitable, since they do not completely remove the fish-size covariation when regression slopes are not parallel. Partial least squares (PLS) regression analysis reveals that catchment area and water chemistry have the strongest influence on the Hg level in fish in circumneutral lakes. PLS is a multivariate projection method that allows biased linear regression analysis of multicollinear data. The method is applicable to statistical and visual exploration of large data sets, even if there are more variables than observations. Environmental descriptors have no significant impact on the slopes of linear regressions of the Hg concentration in perch (Perca fluviatilis L.) vs. fish length, suggesting that the slopes mainly reflect ontogenetic dietary shifts during the perch life span.
机译:准确估计湖泊中特定汞含量对评估环境对鱼类中汞含量的影响至关重要。当存在显着的汞和鱼大小协变时,鱼中汞浓度与鱼长的湖泊特异性回归的截距可提供准确的估计值。常用的回归方法(例如协方差分析(ANCOVA))和各种标准化技术不太适用,因为当回归斜率不平行时,它们不能完全消除鱼大小的协方差。偏最小二乘(PLS)回归分析表明,流域面积和水化学性质对中性湖中鱼类的汞含量影响最大。 PLS是一种多变量投影方法,允许对多共线性数据进行有偏线性回归分析。该方法适用于大型数据集的统计和视觉探索,即使变量多于观测值。环境描述因素对鲈鱼(Perca fluviatilis L.)中汞浓度与鱼类长度的线性回归斜率没有显着影响,表明该斜率主要反映了鲈鱼生命周期内的个体发育饮食变化。

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