García-Reiriz Alejandro, Damiani Patricia C, Olivieri Alejandro C
Departamento de Química Analítica, Facultad de Ciencias Bioquímicas y Farmacéuticas, Universidad Nacional de Rosario, Suipacha 531, Rosario S2002LRK, Argentina.
Anal Chim Acta. 2007 Apr 11;588(2):192-9. doi: 10.1016/j.aca.2007.02.020. Epub 2007 Feb 20.
Fluorescence excitation-emission data recorded for amoxicillin after photo-activated reaction with periodate have been processed by a novel second-order multivariate method based on the combination of artificial neural networks and residual bilinearization (ANN/RBL), since the signals bear a strong non-linear relation with the analyte concentration. The selected chemometric methodology is employed for the first time to evaluate experimental non-linear second-order spectral information. Due to severe overlapping between the emission profiles for the analyte reaction product and for the urine background, calibration was done using different spiked urine samples. This allowed for the determination of amoxicillin in test spiked urines, other than those employed for calibration. When new urine samples containing a fluorescent anti-inflammatory were analyzed, accurate prediction in the presence of unexpected components required the achievement of the second-order advantage, which is provided by the post-training RBL procedure. Amoxicillin was also determined by ANN/RBL in a series of real urine samples, which allowed one to perform a comparison study with the reference high-performance liquid chromatographic technique.
对阿莫西林与高碘酸盐光激活反应后记录的荧光激发-发射数据,采用了一种基于人工神经网络和残差双线性化相结合的新型二阶多元方法(ANN/RBL)进行处理,因为信号与分析物浓度具有很强的非线性关系。所选用的化学计量学方法首次用于评估实验性非线性二阶光谱信息。由于分析物反应产物和尿液背景的发射谱严重重叠,使用不同的加标尿液样本进行校准。这使得除了用于校准的样本外,还能测定加标测试尿液中的阿莫西林。当分析含有荧光抗炎剂的新尿液样本时,在存在意外成分的情况下进行准确预测需要实现二阶优势,这由训练后的RBL程序提供。还通过ANN/RBL测定了一系列实际尿液样本中的阿莫西林,从而能够与参考高效液相色谱技术进行比较研究。