生物
合成生物学
八氢番茄红素脱氢酶
表情盒
计算生物学
烟草
遗传学
载体(分子生物学)
基因
重组DNA
生物合成
作者
Xun Jiang,Zhuoxiang Zhang,Xiuming Wu,Changmei Li,Xuan Sun,Yiting Li,Aixia Chang,Aiguo Yang,Changqing Yang
摘要
Summary The manipulation of multiple transcription units for simultaneous and coordinated expression is not only key to building complex genetic circuits to accomplish diverse functions in synthetic biology, but is also important in crop breeding for significantly improved productivity and overall performance. However, building constructs with multiple independent transcription units for fine‐tuned and coordinated regulation is complicated and time‐consuming. Here, we introduce the Multiplex Expression Cassette Assembly (MECA) method, which modifies canonical vectors compatible with Golden Gate Assembly, and then uses them to produce multi‐cassette constructs. By embedding the junction syntax in primers that are used to amplify functional elements, MECA is able to make complex constructs using only one intermediate vector and one destination vector via two rounds of one‐pot Golden Gate assembly reactions, without the need for dedicated vectors and a coherent library of standardized modules. As a proof‐of‐concept, we modified eukaryotic and prokaryotic expression vectors to generate constructs for transient expression of green fluorescent protein and β‐glucuronidase in Nicotiana benthamiana , genome editing to block monoterpene metabolism in tomato glandular trichomes, production of betanin in tobacco and synthesis of β‐carotene in Escherichia coli . Additionally, we engineered the stable production of thymol and carvacrol, bioactive compounds from Lamiaceae family plants, in glandular trichomes of tobacco. These results demonstrate that MECA is a flexible, efficient and versatile method for building complex genetic circuits, which will not only play a critical role in plant synthetic biology, but also facilitate improving agronomic traits and pyramiding traits for the development of next‐generation elite crops.
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