The Novo Nordisk Foundation Center of Biosustainability, Technical University of Denmark , Hørsholm , Denmark.
Department of Systems Biology, Technical University of Denmark , Lyngby , Denmark.
Front Bioeng Biotechnol. 2015 Feb 16;3:13. doi: 10.3389/fbioe.2015.00013. eCollection 2015.
Genetic variation is the motor of evolution and allows organisms to overcome the environmental challenges they encounter. It can be both beneficial and harmful in the process of engineering cell factories for the production of proteins and chemicals. Throughout the history of biotechnology, there have been efforts to exploit genetic variation in our favor to create strains with favorable phenotypes. Genetic variation can either be present in natural populations or it can be artificially created by mutagenesis and selection or adaptive laboratory evolution. On the other hand, unintended genetic variation during a long term production process may lead to significant economic losses and it is important to understand how to control this type of variation. With the emergence of next-generation sequencing technologies, genetic variation in microbial strains can now be determined on an unprecedented scale and resolution by re-sequencing thousands of strains systematically. In this article, we review challenges in the integration and analysis of large-scale re-sequencing data, present an extensive overview of bioinformatics methods for predicting the effects of genetic variants on protein function, and discuss approaches for interfacing existing bioinformatics approaches with genome-scale models of cellular processes in order to predict effects of sequence variation on cellular phenotypes.
遗传变异是进化的动力,使生物体能够克服所遇到的环境挑战。在工程细胞工厂生产蛋白质和化学品的过程中,遗传变异既可能有益,也可能有害。纵观生物技术的历史,人们一直努力利用遗传变异来创造具有有利表型的菌株。遗传变异可以存在于自然种群中,也可以通过诱变和选择或适应性实验室进化人为地产生。另一方面,在长期的生产过程中,非预期的遗传变异可能导致重大的经济损失,因此了解如何控制这种类型的变异非常重要。随着下一代测序技术的出现,现在可以通过系统地重新测序数千个菌株,以前所未有的规模和分辨率来确定微生物菌株中的遗传变异。在本文中,我们综述了整合和分析大规模重测序数据所面临的挑战,广泛概述了预测遗传变异对蛋白质功能影响的生物信息学方法,并讨论了将现有的生物信息学方法与细胞过程的基因组规模模型接口的方法,以便预测序列变异对细胞表型的影响。