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Maximizing microbial degradation of perchlorate using a genetic algorithm: Media optimization

机译:使用遗传算法最大化高氯酸盐的微生物降解:培养基优化

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摘要

Microbial communities are under constant influence of physical and chemical components in ecosystems. Shifts in conditions such as pH, temperature or carbon source concentration can translate into shifts in overall ecosystem functioning. These conditions can be manipulated in a laboratory setup using evolutionary computation methods such as genetic algorithms (GAs). In work described here, a GA methodology was successfully applied to define sets of environmental conditions for microbial enrichments and pure cultures to achieve maximum rates of perchlorate degradation. Over the course of 11 generations of optimization using a GA, we saw a statistically significant 16.45 and 16.76-fold increases in average perchlorate degradation rates by Dechlorosoma sp. strain KJ and Dechloromonas sp. strain Miss R, respectively. For two bacterial consortia, Pl6 and Cw3, 5.79 and 5.75-fold increases in average perchlorate degradation were noted. Comparison of zero-order kinetic rate constants for environmental conditions in GA-determined first and last generations of all bacterial cultures additionally showed marked increases. (C) 2011 Elsevier B.V. All rights reserved.
机译:微生物群落不断受到生态系统中物理和化学成分的影响。 pH,温度或碳源浓度等条件的变化可以转化为整个生态系统功能的变化。这些条件可以在实验室中使用进化计算方法(例如遗传算法(GA))进行操纵。在这里描述的工作中,GA方法成功地应用于定义微生物富集和纯培养的环境条件集,以实现最大的高氯酸盐降解率。在使用GA优化11代的过程中,我们看到Dechlorosoma sp。的平均高氯酸盐降解率在统计学上显着增加16.45和16.76倍。 KJ菌株和Dechloromonas sp。应变小姐小姐,分别。对于两个细菌聚生体,Pl6和Cw3,平均高氯酸盐降解率分别提高了5.79和5.75倍。在GA决定的所有细菌培养的第一代和最后一代中,环境条件下零级动力学速率常数的比较还显示出明显的增加。 (C)2011 Elsevier B.V.保留所有权利。

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