对生物技术应用的综合系统生物学方法的需求

Kumar Selvarajoo
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引用次数: 4

摘要

生物技术的应用对“实验室中的工厂”研究做出了重大贡献。虽然广泛采用的设计-建造-测试-学习循环大大提高了合成生物学和代谢工程的能力,但我们离实现工业效率还很远。随着人口的急剧增长和气候的急剧变化对传统农业的影响,优化生物技术的应用迫在眉睫,特别是在替代食物来源的倡议方面,近年来受到了极大的关注。在这里,我强调了多学科研究的重要性,以及开发集成系统生物学方法的必要性,使用高通量组学数据,动态建模和机器学习技术,以进一步增强基于实验室的生产过程。朝着这个方向前进可能会降低总体成本,并在未来较长时间内增加产量。
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The need for integrated systems biology approaches for biotechnological applications

Biotechnology applications have contributed significantly to “factory in a lab” research. Although the largely adopted Design–Build–Test–Learn cycle has considerably improved synthetic biology and metabolic engineering capabilities, we are still far from achieving industrial efficiency. As we are now faced with the challenge of exponential population growth and drastic climatic changes affecting the traditional agriculture, there is an imminent need to optimize biotechnology applications, especially for the alternative food source initiative, which has received immense attention recently. Here, I highlight the importance of multi-disciplinary research, and the need to develop integrated systems biology methods, using high-throughput omics data, dynamic modelling and machine learning techniques, to further enhance the lab-based production process. Moving forward in this direction will likely reduce the overall cost and increase the output for the longer term future.

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