首页> 外文期刊>Environmental toxicology and chemistry >APPLICATION OF RIDGE REGRESSION TO QUANTIFY MARGINAL EFFECTS OF COLLINEAR SOIL PROPERTIES ON PHYTOTOXICITY OF ARSENIC, CADMIUM, LEAD, AND ZINC
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APPLICATION OF RIDGE REGRESSION TO QUANTIFY MARGINAL EFFECTS OF COLLINEAR SOIL PROPERTIES ON PHYTOTOXICITY OF ARSENIC, CADMIUM, LEAD, AND ZINC

机译:脊回归法在定量评价胶质土壤对砷,镉,铅和锌的植物毒性中的边际效应中的应用

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Soil properties that the mitigate hazardous effects of environmental contaminants through soil chemical sequestration should be considered when evaluating ecological risk from terrestrial contamination. The objective of the present research was to identify predominant soil chemical and physical properties that modify the phytotoxicity of As, Cd, Pb, and Zn to the nonhyper-accumulating higher plant perennial ryegrass (Lolium perenne L.). Phytotoxicity parameters were estimated from a dose-response experiment using the aboveground dry matter growth endpoint and were correlated with an assortment of relevant soil property measurements, with the ultimate goal of developing statistical prediction models for soil-specific adjustments to ecological risk assessments. Significant correlations between soil properties and phytotoxicity estimates were observed for all four contaminants; however, intercorrelation was observed among soil properties, necessitating an alternative to the conventional multiple regression commonly used by ecotoxicologists. Ridge regression, a regression-based technique that suppresses the effects of multicollinearity and enables prediction, was used to assess the marginal contributions of all properties found to mitigate phytotoxicity. Ridge regression models are presented along with two common conventional regression methods and are collectively discussed within the context of the mitigating effects of soil properties on metal/metalloid phytotoxicity. Ridge regression appears to be a powerful alternative to conventional multiple regression for ecotoxicological studies when intercorrelation among predictors is experimentally unavoidable, such as with soil properties.
机译:在评估陆地污染带来的生态风险时,应考虑土壤特性,即通过土壤化学隔离来减轻环境污染物的有害影响。本研究的目的是确定主要的土壤化学和物理性质,从而改变As,Cd,Pb和Zn对非高积累的多年生黑麦草(Lolium perenne L.)的植物毒性。植物毒性参数是通过使用地上干物质生长终点的剂量反应实验估算的,并与各种相关的土壤特性测量值相关,最终目的是开发针对土壤生态风险评估的土壤特定调整的统计预测模型。观察到所有四种污染物的土壤性质和植物毒性估计值之间具有显着的相关性。然而,在土壤特性之间观察到相互关系,因此有必要替代生态毒理学家通常使用的常规多元回归。 Ridge回归是一种基于回归的技术,可以抑制多重共线性的影响并能够进行预测,该技术用于评估发现的所有减轻植物毒性的特性的边际贡献。提出了Ridge回归模型以及两种常见的常规回归方法,并在土壤性质对金属/准金属植物毒性的缓解影响的背景下进行了讨论。当预测因子之间的相互关系在实验上是不可避免的(例如与土壤性质)时,对于生态毒理学研究,Ridge回归似乎是常规多元回归的有力替代方法。

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