[合成生物部件和电路的机器学习辅助设计]。

Q4 Biochemistry, Genetics and Molecular Biology
Ruichao Mao, Baojun Wang
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引用次数: 0

摘要

合成生物学是生物学、工程学和计算机科学融合的新兴跨学科领域。它采用自下而上的方法逐步设计生物部件、设备和电路,旨在创造自然界中不存在的人工生物系统或为特定目的重新设计现有的生物系统。随着合成生物学产业的迅速发展,对大型复杂遗传电路的需求日益增加。然而,传统的试错方法严重依赖经验知识,零件/电路构建的效率和成功率有限,从而阻碍了合成生物学的创新和技术转化。这些限制促使了从劳动密集型、经验驱动的试错模式向标准化、智能工程方法的范式转变。机器学习能够揭示生物数据中隐藏的结构和关系,为合成生物部件和遗传电路的智能设计提供了强大的支持。在这里,我们回顾了常用的机器学习算法,并分析了它们在设计生物部件(如合成启动子、RNA调控元件和转录因子)和简单遗传电路中的典型应用。此外,我们还讨论了机器学习辅助设计中的主要挑战,并提出了潜在的解决方案。最后,我们展望了将机器学习与合成生物系统设计相结合的未来趋势,强调了跨学科合作的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Machine learning-aided design of synthetic biological parts and circuits].

Synthetic biology is an emerging interdisciplinary field at the convergence of biology, engineering, and computer science. It employs a bottom-up approach to progressively design biological parts, devices, and circuits, aiming to create artificial biological systems not found in nature or to redesign existing biological systems for specific purposes. With the rapid development of the synthetic biology industry, there is an increasing demand for large complex genetic circuits. However, the traditional trial-and-error methods, heavily reliant on empirical knowledge, have limited efficiency and success rates of parts/circuits construction, thereby impeding the innovation and technology translation for synthetic biology. These limitations have prompted a paradigm shift from labor-intensive, experience-driven trial-and-error models towards standardized, intelligent engineering approaches. Machine learning, capable of uncovering hidden structures and relationships within biological data, offers robust support for the intelligent design of synthetic biological parts and genetic circuits. Here, we review commonly used machine learning algorithms and analyze their typical applications in designing biological parts (e.g., synthetic promoters, RNA regulatory elements, and transcription factors) and simple genetic circuits. Additionally, we discuss the primary challenges in machine learning-aided design and propose potential solutions. Lastly, we envision the future trend of integrating machine learning with synthetic biological system design, highlighting the importance of interdisciplinary collaboration.

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来源期刊
Sheng wu gong cheng xue bao = Chinese journal of biotechnology
Sheng wu gong cheng xue bao = Chinese journal of biotechnology Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
1.50
自引率
0.00%
发文量
298
期刊介绍: Chinese Journal of Biotechnology (Chinese edition) , sponsored by the Institute of Microbiology, Chinese Academy of Sciences and the Chinese Society for Microbiology, is a peer-reviewed international journal. The journal is cited by many scientific databases , such as Chemical Abstract (CA), Biology Abstract (BA), MEDLINE, Russian Digest , Chinese Scientific Citation Index (CSCI), Chinese Journal Citation Report (CJCR), and Chinese Academic Journal (CD version). The Journal publishes new discoveries, techniques and developments in genetic engineering, cell engineering, enzyme engineering, biochemical engineering, tissue engineering, bioinformatics, biochips and other fields of biotechnology.
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