Department of Biological Sciences, California State University Los Angeles, Los Angeles, CA 90032, USA.
Anal Bioanal Chem. 2010 Jul;397(6):2367-74. doi: 10.1007/s00216-010-3778-5. Epub 2010 May 21.
Cholesteryl esters have antimicrobial activity and likely contribute to the innate immunity system. Improved separation techniques are needed to characterize these compounds. In this study, optimization of the reversed-phase high-performance liquid chromatography separation of six analyte standards (four cholesteryl esters plus cholesterol and tri-palmitin) was accomplished by modeling with an artificial neural network-genetic algorithm (ANN-GA) approach. A fractional factorial design was employed to examine the significance of four experimental factors: organic component in the mobile phase (ethanol and methanol), column temperature, and flow rate. Three separation parameters were then merged into geometric means using Derringer's desirability function and used as input sources for model training and testing. The use of genetic operators proved valuable for the determination of an effective neural network structure. Implementation of the optimized method resulted in complete separation of all six analytes, including the resolution of two previously co-eluting peaks. Model validation was performed with experimental responses in good agreement with model-predicted responses. Improved separation was also realized in a complex biological fluid, human milk. Thus, the first known use of ANN-GA modeling for improving the chromatographic separation of cholesteryl esters in biological fluids is presented and will likely prove valuable for future investigators involved in studying complex biological samples.
胆固醇酯具有抗菌活性,可能有助于先天免疫系统。需要改进分离技术来对这些化合物进行表征。在这项研究中,采用人工神经网络-遗传算法 (ANN-GA) 方法对模型进行优化,实现了六种分析物标准品(四种胆固醇酯加上胆固醇和三棕榈酸甘油酯)的反相高效液相色谱分离的优化。采用部分因子设计考察了四个实验因素的重要性:流动相中的有机成分(乙醇和甲醇)、柱温、流速。然后使用 Derringer 的适宜性函数将三个分离参数合并为几何平均值,并将其用作模型训练和测试的输入源。遗传算子的使用对于确定有效的神经网络结构非常有价值。实施优化方法可实现所有六种分析物的完全分离,包括以前两个共洗脱峰的分辨率。实验响应与模型预测响应吻合良好,验证了模型的有效性。在复杂的生物流体(人乳)中也实现了更好的分离。因此,本文首次提出了使用 ANN-GA 模型来改进生物流体中胆固醇酯的色谱分离,这对于未来研究复杂生物样本的研究人员可能非常有价值。