Wacker Chemie AG, Johannes-Hess-Strasse 24, D-84489 Burghausen, Germany.
Anal Chem. 2010 Oct 1;82(19):8169-75. doi: 10.1021/ac101526w.
In recent years, matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) has become a powerful tool for the study of synthetic polymers although its mechanism is still not understood in detail. Sample preparation plays the key role in obtaining reliable MALDI mass spectra, in particular, the proper choice of matrix, cationization reagent, and solvent. There is still no general sample preparation protocol for MALDI analysis of synthetic polymers. For known synthetic polymers, such as polystyrenes and other frequently investigated polymers, application tables in review articles might be a guide for selecting a MALDI matrix, cationization reagent, and solvent. For unknown polymers (polymers which were not analyzed by MALDI-TOF MS before but whose structures are in part known from the manufacturing process and from NMR analysis as well), the selection of matrix and solvent is based upon the polarity-similarity principle. Chemometric methods provide a useful tool for the investigation of sample preparation because huge data sets can be evaluated in short time, that is, for extracting relevant information and for classification of samples, as well. Furthermore, chemometrics provide a suitable way for the selection of a proper matrix, cationization reagent, and solvent. In this paper, a prediction model is presented using the partial least-squares (PLS) regression. By applying the model, the suitability of appropriate (nontested) combinations (matrix, cationization reagent, solvent) can be predicted for a certain synthetic polymer based upon the investigation of a few combinations. This model may help find suitable combinations in a short time and serve as a starting point for the investigation of unknown polymers. Results are exemplary presented for polystyrene PS2850.
近年来,基质辅助激光解吸/电离飞行时间质谱(MALDI-TOF MS)已成为研究合成聚合物的有力工具,尽管其机制尚未详细了解。样品制备在获得可靠的 MALDI 质谱中起着关键作用,特别是基质、阳离子化试剂和溶剂的选择。目前还没有用于合成聚合物 MALDI 分析的通用样品制备方案。对于已知的合成聚合物,如聚苯乙烯和其他经常研究的聚合物,可以参考综述文章中的应用表格来选择 MALDI 基质、阳离子化试剂和溶剂。对于未知聚合物(以前未通过 MALDI-TOF MS 分析过但结构部分来自制造过程和 NMR 分析的聚合物),基质和溶剂的选择基于极性相似性原则。化学计量学方法为样品制备的研究提供了有用的工具,因为可以在短时间内评估庞大的数据集,即用于提取相关信息和对样品进行分类。此外,化学计量学还为选择合适的基质、阳离子化试剂和溶剂提供了合适的方法。本文提出了一种使用偏最小二乘(PLS)回归的预测模型。通过应用该模型,可以根据对少数组合的研究,预测特定合成聚合物的适当(未经测试)组合(基质、阳离子化试剂、溶剂)的适用性。该模型可以帮助在短时间内找到合适的组合,并为未知聚合物的研究提供起点。本文以聚苯乙烯 PS2850 为例进行了说明。