Departamento de Química, Universidade Federal da Paraíba, João Pessoa, PB, Brazil.
Laboratorio FIA, INQUISUR-CONICET, Departamento de Química, Universidad Nacional del Sur, Av. Alem 1253, B8000CPB Bahía Blanca, Buenos Aires, Argentina.
Anal Chim Acta. 2017 Sep 1;984:76-85. doi: 10.1016/j.aca.2017.07.037. Epub 2017 Jul 22.
Multivariate models have been widely used in analytical problems involving quantitative and qualitative analyzes. However, there are cases in which a model is not applicable to spectra of samples obtained under new experimental conditions or in an instrument not involved in the modeling step. A solution to this problem is the transfer of multivariate models, usually performed using standardization of the spectral responses or enhancement of the robustness of the model. This present paper proposes two new criteria for selection of robust variables for classification transfer employing the successive projections algorithm (SPA). These variables are then used to build models based on linear discriminant analysis (LDA) with low sensitivity with respect to the differences between the responses of the instruments involved. For this purpose, transfer samples are included in the calculation of the cost for each subset of variables under consideration. The proposed methods are evaluated for two case studies involving identification of adulteration of extra virgin olive oil (EVOO) and hydrated ethyl alcohol fuel (HEAF) using UV-Vis and NIR spectroscopy, respectively. In both cases, similar or better classification transfer results (obtained for a test set measured on the secondary instrument) employing the two criteria were obtained in comparison with direct standardization (DS) and piecewise direct standardization (PDS). For the UV-Vis data, both proposed criteria achieved the correct classification rate (CCR) of 85%, while the best CCR obtained for the standardization methods was 81% for DS. For the NIR data, 92.5% of CCR was obtained by both criteria as well as DS. The results demonstrated the possibility of using either of the criteria proposed for building robust models as an alternative to the standardization of spectral responses for transfer of classification.
多元模型已广泛应用于涉及定量和定性分析的分析问题中。然而,在某些情况下,模型不适用于在新实验条件下获得的样品光谱或建模步骤中未涉及的仪器的光谱。解决此问题的方法是转移多元模型,通常使用光谱响应的标准化或模型的稳健性增强来实现。本文提出了两种使用连续投影算法(SPA)选择用于分类转移的稳健变量的新准则。然后,使用这些变量基于线性判别分析(LDA)构建模型,该模型对所涉及仪器的响应差异具有低敏感性。为此,将转移样品包含在计算中,以考虑的每个变量子集的成本。在所提出的方法中,使用 UV-Vis 和近红外光谱分别评估了两个案例研究,涉及鉴别特级初榨橄榄油(EVOO)和水合乙基醇燃料(HEAF)的掺假。在这两种情况下,与直接标准化(DS)和分段直接标准化(PDS)相比,使用这两种准则获得了类似或更好的分类转移结果(对于在次要仪器上测量的测试集获得)。对于 UV-Vis 数据,两个提出的准则均实现了 85%的正确分类率(CCR),而标准化方法的最佳 CCR 为 DS 的 81%。对于近红外数据,两个准则以及 DS 均获得了 92.5%的 CCR。结果表明,对于建立稳健模型,可以使用所提出的准则之一代替光谱响应的标准化来进行分类转移。