Malovaná Sabina, Frías-García Sergio, Havel Josef
Department of Analytical Chemistry, Faculty of Science, Masaryk University, Brno, Czech Republic.
Electrophoresis. 2002 Jun;23(12):1815-21. doi: 10.1002/1522-2683(200206)23:12<1815::AID-ELPS1815>3.0.CO;2-9.
Electrophoretic mobility of various analytes can be modeled and thus also predicted using artificial neural networks (ANNs) evaluating experiments done according to a suitable experimental design. In contrast to response surfaces modeling which can be used to predict optimal separation conditions, ANNs combined with experimental design were shown to be efficient for modeling and prediction of optimal separation conditions, while no explicit model and any knowledge of the physicochemical constants is needed. Methodology has been developed and demonstrated on separation of inorganic cations and organic oximes while various additives (methanol, complexation agent), pH or buffer concentration were followed. In our approach proposed the number of experiments necessary to find optimal separation conditions can be reduced significantly.
可以使用人工神经网络(ANNs)对各种分析物的电泳迁移率进行建模,从而也能进行预测,这些人工神经网络会根据合适的实验设计对所做的实验进行评估。与可用于预测最佳分离条件的响应面建模不同,已证明将人工神经网络与实验设计相结合对于最佳分离条件的建模和预测是有效的,同时不需要明确的模型和任何物理化学常数知识。已经开发并在无机阳离子和有机肟的分离中展示了该方法,同时跟踪了各种添加剂(甲醇、络合剂)、pH值或缓冲液浓度。在我们提出的方法中,找到最佳分离条件所需的实验次数可以显著减少。