Palásti Dávid Jenő, Kopniczky Judit, Vörös Tamás, Metzinger Anikó, Galbács Gábor
Department of Inorganic and Analytical Chemistry, University of Szeged, Dóm Square 7, 6720 Szeged, Hungary.
Department of Optics and Quantum Electronics, University of Szeged, Dóm Square 9, 6720 Szeged, Hungary.
Sensors (Basel). 2022 Apr 15;22(8):3045. doi: 10.3390/s22083045.
We have successfully demonstrated that although there are significant analytical challenges involved in the qualitative discrimination analysis of sub-mm sized (microfragment) glass samples, the task can be solved with very good accuracy and reliability with the multivariate chemometric evaluation of laser-induced breakdown spectroscopy (LIBS) data or in combination with pre-screening based on refractive index (RI) data. In total, 127 glass samples of four types (fused silica, flint, borosilicate and soda-lime) were involved in the tests. Four multivariate chemometric data evaluation methods (linear discrimination analysis, quadratic discrimination analysis, classification tree and random forest) for LIBS data were evaluated with and without data compression (principal component analysis). Classification tree and random forest methods were found to give the most consistent and most accurate results, with classifications/identifications correct in 92 to 99% of the cases for soda-lime glasses. The developed methods can be used in forensic analysis.
我们已成功证明,尽管对亚毫米尺寸(微碎片)玻璃样品进行定性鉴别分析存在重大分析挑战,但通过对激光诱导击穿光谱(LIBS)数据进行多变量化学计量学评估或结合基于折射率(RI)数据的预筛选,该任务能够以非常高的准确性和可靠性得到解决。总共127个四种类型(熔融石英、燧石、硼硅酸盐和钠钙)的玻璃样品参与了测试。对LIBS数据的四种多变量化学计量学数据评估方法(线性判别分析、二次判别分析、分类树和随机森林)在有无数据压缩(主成分分析)的情况下进行了评估。结果发现,分类树和随机森林方法给出的结果最为一致和准确,钠钙玻璃的分类/识别在92%至99%的情况下是正确的。所开发的方法可用于法医分析。