Université de Lyon, Institut des Sciences Analytiques, UMR5280 CNRS, Equipe TRACES, Université Lyon 1, ENS-Lyon, 5 rue de la Doua, 69100 Villeurbanne, France.
J Chromatogr A. 2013 Nov 8;1315:53-60. doi: 10.1016/j.chroma.2013.09.056. Epub 2013 Sep 19.
Numerous chemical products are dispersed in our environment. Many of them are recognized as harmful to humans and the ecosystem. Among these harmful substances are antibiotics and steroid hormones. Currently, very few data are available on the presence and fate of these substances in the environment, in particular for solid matrices, mainly due to a lack of analytical methodologies. Indeed, soil is a very complex matrix, and the nature and composition of the soil has a significant impact on the extraction efficiency and the sensitivity of the method. For this reason a statistical approach was performed to study the influence of soil parameters (clay, silt, sand and organic carbon percentages and cation exchange capacity (CEC)) on recoveries and matrix effects of various pharmaceuticals and steroids. Thus, an analysis of covariance (ANCOVA) was performed when several substances were analyzed simultaneously, whereas a Pearson correlation was used to study the compounds individually. To the best of our knowledge, this study is the first time such an experiment was performed. The results showed that clay and organic carbon percentages as well as the CEC have an impact on the recoveries of most of the target substances, the variables being anti-correlated. This result suggests that the compounds are trapped in soils with high levels of clay and organic carbon and a high CEC. For the matrix effects, it was shown that the organic carbon content has a significant effect on steroid hormones and penicillin G matrix effects (positive correlation). Finally, interaction effects (first order) were evaluated. This latter point corresponds to the crossed effects that occur between explanatory variables (soil parameters). Indeed, the value taken by an explanatory variable can have an influence on the effect that another explanatory variable has on a dependent variable. For instance, it was shown that some parameters (silt, sand) have an impact on the effect that clay content has on recoveries. Besides, CEC and silt affect the influence that organic carbon percentage has on matrix effect. This original approach provides a better understanding of the complex interactions that occur in soil and could be useful to understand and predict the performance of an analytical method.
环境中分散着许多化学产品。其中许多被认为对人类和生态系统有害。这些有害物质包括抗生素和类固醇激素。目前,关于这些物质在环境中的存在和命运的数据非常少,特别是对于固体基质,主要是由于缺乏分析方法。事实上,土壤是一种非常复杂的基质,土壤的性质和组成对提取效率和方法的灵敏度有很大的影响。因此,采用统计方法研究了土壤参数(粘土、粉砂、砂和有机碳百分比以及阳离子交换容量(CEC))对各种药物和类固醇回收率和基质效应的影响。因此,当同时分析多种物质时,进行了协方差分析(ANCOVA),而当单独研究化合物时,则使用 Pearson 相关性。据我们所知,这项研究是首次进行这样的实验。结果表明,粘土和有机碳百分比以及 CEC 对大多数目标物质的回收率有影响,变量呈负相关。这一结果表明,化合物被截留在粘土和有机碳含量高且 CEC 高的土壤中。对于基质效应,结果表明有机碳含量对类固醇激素和青霉素 G 的基质效应有显著影响(正相关)。最后,评估了相互作用效应(一阶)。这后一点对应于解释变量(土壤参数)之间发生的交叉效应。事实上,一个解释变量的值可以对另一个解释变量对因变量的影响产生影响。例如,结果表明,一些参数(粉砂、砂)对粘土含量对回收率的影响有影响。此外,CEC 和粉砂会影响有机碳百分比对基质效应的影响。这种原始方法提供了对土壤中复杂相互作用的更好理解,并有助于理解和预测分析方法的性能。