Dang Lanqing, Liu Jiao, Wang Cheng, Liu Huanhuan, Wen Jianping
Key Laboratory of System Bioengineering (Tianjin University), Ministry of Education, Tianjin, 300072, People's Republic of China.
School of Chemical Engineering and Technology, Tianjin University, Tianjin, 300072, People's Republic of China.
J Ind Microbiol Biotechnol. 2017 Feb;44(2):259-270. doi: 10.1007/s10295-016-1880-1. Epub 2016 Dec 1.
Rapamycin, as a macrocyclic polyketide with immunosuppressive, antifungal, and anti-tumor activity produced by Streptomyces hygroscopicus, is receiving considerable attention for its significant contribution in medical field. However, the production capacity of the wild strain is very low. Hereby, a computational guided engineering approach was proposed to improve the capability of rapamycin production. First, a genome-scale metabolic model of Streptomyces hygroscopicus ATCC 29253 was constructed based on its annotated genome and biochemical information. The model consists of 1003 reactions, 711 metabolites after manual refinement. Subsequently, several potential genetic targets that likely guaranteed an improved yield of rapamycin were identified by flux balance analysis and minimization of metabolic adjustment algorithm. Furthermore, according to the results of model prediction, target gene pfk (encoding 6-phosphofructokinase) was knocked out, and target genes dahP (encoding 3-deoxy-D-arabino-heptulosonate-7-phosphate synthase) and rapK (encoding chorismatase) were overexpressed in the parent strain ATCC 29253. The yield of rapamycin increased by 30.8% by knocking out gene pfk and increased by 36.2 and 44.8% by overexpression of rapK and dahP, respectively, compared with parent strain. Finally, the combined effect of the genetic modifications was evaluated. The titer of rapamycin reached 250.8 mg/l by knockout of pfk and co-expression of genes dahP and rapK, corresponding to a 142.3% increase relative to that of the parent strain. The relationship between model prediction and experimental results demonstrates the validity and rationality of this approach for target identification and rapamycin production improvement.
雷帕霉素是一种由吸水链霉菌产生的具有免疫抑制、抗真菌和抗肿瘤活性的大环聚酮化合物,因其在医学领域的重大贡献而备受关注。然而,野生菌株的生产能力非常低。因此,提出了一种计算引导工程方法来提高雷帕霉素的生产能力。首先,基于吸水链霉菌ATCC 29253的注释基因组和生化信息构建了一个基因组规模的代谢模型。该模型由1003个反应组成,经过人工优化后有711种代谢物。随后,通过通量平衡分析和代谢调节最小化算法确定了几个可能保证提高雷帕霉素产量的潜在遗传靶点。此外,根据模型预测结果,在亲本菌株ATCC 29253中敲除了靶基因pfk(编码6-磷酸果糖激酶),并过表达了靶基因dahP(编码3-脱氧-D-阿拉伯庚酮糖-7-磷酸合酶)和rapK(编码分支酸酶)。与亲本菌株相比,敲除基因pfk使雷帕霉素产量提高了30.8%,过表达rapK和dahP分别使产量提高了36.2%和44.8%。最后,评估了基因改造的综合效果。通过敲除pfk并共表达基因dahP和rapK,雷帕霉素的效价达到250.8mg/L,相对于亲本菌株提高了142.3%。模型预测与实验结果之间的关系证明了这种靶点鉴定和提高雷帕霉素产量方法的有效性和合理性。