Parbhane R V, Unniraman S, Tambe S S, Nagaraja V, Kulkarni B D
Chemical Engineering Division, National Chemical Laboratory, Pune, India.
J Biomol Struct Dyn. 2000 Feb;17(4):665-72. doi: 10.1080/07391102.2000.10506557.
In the present paper, a hybrid technique involving artificial neural network (ANN) and genetic algorithm (GA) has been proposed for performing modeling and optimization of complex biological systems. In this approach, first an ANN approximates (models) the nonlinear relationship(s) existing between its input and output example data sets. Next, the GA, which is a stochastic optimization technique, searches the input space of the ANN with a view to optimize the ANN output. The efficacy of this formalism has been tested by conducting a case study involving optimization of DNA curvature characterized in terms of the RL value. Using the ANN-GA methodology, a number of sequences possessing high RL values have been obtained and analyzed to verify the existence of features known to be responsible for the occurrence of curvature. A couple of sequences have also been tested experimentally. The experimental results validate qualitatively and also near-quantitatively, the solutions obtained using the hybrid formalism. The ANN-GA technique is a useful tool to obtain, ahead of experimentation, sequences that yield high RL values. The methodology is a general one and can be suitably employed for optimizing any other biological feature.
在本文中,提出了一种涉及人工神经网络(ANN)和遗传算法(GA)的混合技术,用于对复杂生物系统进行建模和优化。在这种方法中,首先由人工神经网络对其输入和输出示例数据集之间存在的非线性关系进行近似(建模)。接下来,作为一种随机优化技术的遗传算法,搜索人工神经网络的输入空间,以优化人工神经网络的输出。通过进行一个涉及以RL值表征的DNA曲率优化的案例研究,检验了这种形式主义的有效性。使用人工神经网络 - 遗传算法方法,获得并分析了许多具有高RL值的序列,以验证已知导致曲率出现的特征的存在。还对几个序列进行了实验测试。实验结果在定性和近定量方面都验证了使用混合形式主义获得的解决方案。人工神经网络 - 遗传算法技术是一种在实验之前获得产生高RL值序列的有用工具。该方法是通用的,可适用于优化任何其他生物特征。