Key Laboratory of Bioprocess of Beijing, Beijing University of Chemical Technology, Beijing, China.
Appl Biochem Biotechnol. 2010 Jan;160(1):269-79. doi: 10.1007/s12010-009-8581-4. Epub 2009 Mar 6.
Polymerase chain reaction (PCR) is one of the most powerful techniques in a variety of clinical and biological research fields. In this paper, a chemometrics approach, combining experimental design (ED) and artificial neural network (ANN), was proposed for optimization of PCR amplification of lycopene cyclase gene carRA in Blakeslea Trispora. Five-level star design was carried out to obtain experimental information and provide data source for ANN modeling. Nine variables were used as inputs in ANN, including the added amount of template, primer, dNTP, polymerase and magnesium ion, the temperature of denaturating, annealing and extension, and the number of cycles. The output variable was the efficiency (yield) of the PCR. Based on the developed model, the effects of each parameter on PCR efficiency were predicted and the most suitable operation condition for present system was determined. At last, the validation experiment was performed under the optimized condition, and the expectant results were produced. The results obtained in this paper showed that the combination of ANN and ED provided a satisfactory optimization model with good descriptive and predictive abilities, indicating that the method of combining ANN and ED can be a useful tool in PCR optimization and other biological applications.
聚合酶链式反应(PCR)是临床和生物学研究领域中最强大的技术之一。在本文中,提出了一种化学计量学方法,将实验设计(ED)和人工神经网络(ANN)相结合,用于优化 Blakeslea Trispora 中番茄红素环化酶基因 carRA 的 PCR 扩增。采用五水平星型设计获取实验信息,为 ANN 建模提供数据来源。九个变量被用作 ANN 的输入,包括模板、引物、dNTP、聚合酶和镁离子的添加量、变性、退火和延伸的温度,以及循环次数。输出变量是 PCR 的效率(产量)。基于开发的模型,预测了每个参数对 PCR 效率的影响,并确定了当前系统的最适操作条件。最后,在优化条件下进行了验证实验,得到了预期的结果。本文的结果表明,ANN 和 ED 的结合提供了一个具有良好描述和预测能力的令人满意的优化模型,表明 ANN 和 ED 的结合方法可以成为 PCR 优化和其他生物应用的有用工具。