Bapat Prashant M, Wangikar Pramod P
Department of Chemical Engineering, Indian Institute of Technology, Bombay, Powai, Mumbai 400 076, India.
Biotechnol Bioeng. 2004 Apr 20;86(2):201-8. doi: 10.1002/bit.20056.
Rifamycin B is an important polyketide antibiotic used in the treatment of tuberculosis and leprosy. We present results on medium optimization for Rifamycin B production via a barbital insensitive mutant strain of Amycolatopsis mediterranei S699. Machine-learning approaches such as Genetic algorithm (GA), Neighborhood analysis (NA) and Decision Tree technique (DT) were explored for optimizing the medium composition. Genetic algorithm was applied as a global search algorithm while NA was used for a guided local search and to develop medium predictors. The fermentation medium for Rifamycin B consisted of nine components. A large number of distinct medium compositions are possible by variation of concentration of each component. This presents a large combinatorial search space. Optimization was achieved within five generations via GA as well as NA. These five generations consisted of 178 shake-flask experiments, which is a small fraction of the search space. We detected multiple optima in the form of 11 distinct medium combinations. These medium combinations provided over 600% improvement in Rifamycin B productivity. Genetic algorithm performed better in optimizing fermentation medium as compared to NA. The Decision Tree technique revealed the media-media interactions qualitatively in the form of sets of rules for medium composition that give high as well as low productivity.
利福霉素B是一种用于治疗结核病和麻风病的重要聚酮类抗生素。我们展示了通过地中海拟无枝酸菌S699的巴比妥不敏感突变株优化利福霉素B生产培养基的结果。探索了遗传算法(GA)、邻域分析(NA)和决策树技术(DT)等机器学习方法来优化培养基组成。遗传算法作为全局搜索算法,而NA用于有指导的局部搜索并开发培养基预测器。利福霉素B的发酵培养基由九种成分组成。通过改变每种成分的浓度,可以得到大量不同的培养基组成。这呈现出一个庞大的组合搜索空间。通过GA和NA在五代内实现了优化。这五代包括178次摇瓶实验,这只是搜索空间的一小部分。我们检测到11种不同培养基组合形式的多个最优解。这些培养基组合使利福霉素B的生产率提高了600%以上。与NA相比,遗传算法在优化发酵培养基方面表现更好。决策树技术以培养基组成规则集的形式定性地揭示了培养基与培养基之间的相互作用,这些规则集给出了高生产率和低生产率的情况。