数字孪生能否塑造基于微生物的替代食品?

IF 7.1 2区 工程技术 Q1 BIOCHEMICAL RESEARCH METHODS
Mohamed Helmy , Hosam Elhalis , Md Mamunur Rashid , Kumar Selvarajoo
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引用次数: 0

摘要

随着全球人口的持续增长,加上劳动力短缺、气候变化影响、政治冲突、农业用地有限以及碳排放控制等因素造成的大流行后粮食安全挑战,以可持续的方式为子孙后代解决粮食生产问题至关重要。微生物是潜在的替代食物来源,有助于缩小粮食生产的差距。为了开发更高效、更高产的产品,有必要更好地了解微生物生长的基本调控分子途径。然而,由于微生物是在多组学尺度上进行调控的,目前的研究仅关注单一组学(基因组学、蛋白质组学或代谢组学)不足以优化生长和产品产出。在此,我们讨论数字孪生(DT)方法,这种方法在分析多组学数据集时整合了系统生物学和人工智能,从而产生一个微生物复制模型,用于生产前的硅测试。因此,数字孪生模型可以提供对微生物生长、代谢物生物合成机制的整体理解,并找出关键的生产瓶颈。因此,我们的论点是支持新型 DT 模型的开发,这种模型有可能彻底改变以微生物为基础的替代食品的生产效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can digital twin efforts shape microorganism-based alternative food?

With the continuous increment in global population growth, compounded by post-pandemic food security challenges due to labor shortages, effects of climate change, political conflicts, limited land for agriculture, and carbon emissions control, addressing food production in a sustainable manner for future generations is critical. Microorganisms are potential alternative food sources that can help close the gap in food production. For the development of more efficient and yield-enhancing products, it is necessary to have a better understanding on the underlying regulatory molecular pathways of microbial growth. Nevertheless, as microbes are regulated at multiomics scales, current research focusing on single omics (genomics, proteomics, or metabolomics) independently is inadequate for optimizing growth and product output. Here, we discuss digital twin (DT) approaches that integrate systems biology and artificial intelligence in analyzing multiomics datasets to yield a microbial replica model for in silico testing before production. DT models can thus provide a holistic understanding of microbial growth, metabolite biosynthesis mechanisms, as well as identifying crucial production bottlenecks. Our argument, therefore, is to support the development of novel DT models that can potentially revolutionize microorganism-based alternative food production efficiency.

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来源期刊
Current opinion in biotechnology
Current opinion in biotechnology 工程技术-生化研究方法
CiteScore
16.20
自引率
2.60%
发文量
226
审稿时长
4-8 weeks
期刊介绍: Current Opinion in Biotechnology (COBIOT) is renowned for publishing authoritative, comprehensive, and systematic reviews. By offering clear and readable syntheses of current advances in biotechnology, COBIOT assists specialists in staying updated on the latest developments in the field. Expert authors annotate the most noteworthy papers from the vast array of information available today, providing readers with valuable insights and saving them time. As part of the Current Opinion and Research (CO+RE) suite of journals, COBIOT is accompanied by the open-access primary research journal, Current Research in Biotechnology (CRBIOT). Leveraging the editorial excellence, high impact, and global reach of the Current Opinion legacy, CO+RE journals ensure they are widely read resources integral to scientists' workflows. COBIOT is organized into themed sections, each reviewed once a year. These themes cover various areas of biotechnology, including analytical biotechnology, plant biotechnology, food biotechnology, energy biotechnology, environmental biotechnology, systems biology, nanobiotechnology, tissue, cell, and pathway engineering, chemical biotechnology, and pharmaceutical biotechnology.
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