Paradowska Katarzyna, Jamróz Marta Katarzyna, Kobyłka Mariola, Gowin Ewelina, Maczka Paulina, Skibiński Robert, Komsta Łukasz
Medical University of Warsaw, Department of Physical Chemistry, Warsaw, Poland.
J AOAC Int. 2012 May-Jun;95(3):704-7. doi: 10.5740/jaoacint.sge_paradowska.
This paper presents a preliminary study in building discriminant models from solid-state NMR spectrometry data to detect the presence of acetaminophen in over-the-counter pharmaceutical formulations. The dataset, containing 11 spectra of pure substances and 21 spectra of various formulations, was processed by partial least squares discriminant analysis (PLS-DA). The model found coped with the discrimination, and its quality parameters were acceptable. It was found that standard normal variate preprocessing had almost no influence on unsupervised investigation of the dataset. The influence of variable selection with the uninformative variable elimination by PLS method was studied, reducing the dataset from 7601 variables to around 300 informative variables, but not improving the model performance. The results showed the possibility to construct well-working PLS-DA models from such small datasets without a full experimental design.
本文介绍了一项初步研究,该研究旨在从固态核磁共振光谱数据构建判别模型,以检测非处方药物制剂中对乙酰氨基酚的存在。该数据集包含11个纯物质光谱和21个各种制剂的光谱,通过偏最小二乘判别分析(PLS-DA)进行处理。所建立的模型能够应对判别任务,其质量参数是可接受的。研究发现,标准正态变量预处理对数据集的无监督研究几乎没有影响。研究了采用PLS方法的无信息变量消除法进行变量选择的影响,将数据集从7601个变量减少到约300个信息变量,但并未提高模型性能。结果表明,在没有完整实验设计的情况下,利用如此小的数据集构建良好运行的PLS-DA模型是有可能的。