Research Institute for Pesticides and Water, University Jaume I, Avda. Sos Baynat s/n, E-12071 Castellón, Spain.
Research Institute for Pesticides and Water, University Jaume I, Avda. Sos Baynat s/n, E-12071 Castellón, Spain.
Talanta. 2015 Jul 1;139:143-9. doi: 10.1016/j.talanta.2015.02.055. Epub 2015 Mar 9.
There has been great interest in environmental analytical chemistry in developing screening methods based on liquid chromatography-high resolution mass spectrometry (LC-HRMS) for emerging contaminants. Using HRMS, compound identification relies on the high mass resolving power and mass accuracy attainable by these analyzers. When dealing with wide-scope screening, retention time prediction can be a complementary tool for the identification of compounds, and can also reduce tedious data processing when several peaks appear in the extracted ion chromatograms. There are many in silico, Quantitative Structure-Retention Relationship methods available for the prediction of retention time for LC. However, most of these methods use commercial software to predict retention time based on various molecular descriptors. This paper explores the applicability and makes a critical discussion on a far simpler and cheaper approach to predict retention times by using LogKow. The predictor was based on a database of 595 compounds, their respective LogKow values and a chromatographic run time of 18min. Approximately 95% of the compounds were found within 4.0min of their actual retention times, and 70% within 2.0min. A predictor based purely on pesticides was also made, enabling 80% of these compounds to be found within 2.0min of their actual retention times. To demonstrate the utility of the predictors, they were successfully used as an additional tool in the identification of 30 commonly found emerging contaminants in water. Furthermore, a comparison was made by using different mass extraction windows to minimize the number of false positives obtained.
人们对环境分析化学领域产生了浓厚的兴趣,致力于开发基于液相色谱-高分辨质谱(LC-HRMS)的新兴污染物筛选方法。在使用 HRMS 时,化合物的鉴定依赖于这些分析器所能达到的高质量分辨率和质量精度。在进行广泛筛选时,保留时间预测可以作为化合物鉴定的辅助工具,并且当提取离子色谱图中出现多个峰时,还可以减少繁琐的数据处理。有许多用于 LC 保留时间预测的计算定量构效关系方法。然而,这些方法中的大多数使用商业软件基于各种分子描述符来预测保留时间。本文探讨了这种更简单、更经济的预测保留时间的方法(即 LogKow)的适用性,并对此进行了批判性讨论。该预测器基于包含 595 种化合物的数据库,这些化合物各自的 LogKow 值和 18 分钟的色谱运行时间。大约 95%的化合物与其实际保留时间相差 4.0 分钟以内,70%的化合物相差 2.0 分钟以内。还制作了一个仅基于农药的预测器,使得其中 80%的化合物能够在其实际保留时间的 2.0 分钟内被找到。为了证明预测器的实用性,成功地将其用作鉴定水中 30 种常见新兴污染物的辅助工具。此外,还通过使用不同的质量提取窗口进行了比较,以最小化获得的假阳性数量。