通过费米计算,可以在光合作用系统中快速向下选择目标基因并优化过程。

IF 6.5 1区 生物学 Q1 PLANT SCIENCES
Ratul Chowdhury, Wheaton Schroeder, Debolina Sarkar, Niaz Bahar Chowdhury, Supantha Dey, Rajib Saha
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引用次数: 0

摘要

了解包括植物和微生物在内的光合生物如何对其环境做出反应,对于优化农业实践和确保粮食和能源安全至关重要,特别是在气候变化和可持续性的背景下。这一观点将粗略的计算嵌入到光合作用生物的设计和放大工作流程中。从整个系统层面出发,我们提供了一个配方来确定关键的遗传靶点,检查详细的计算建模的物流,探索环境驱动的表型,以及作为工业生物燃料生产底盘的可行性。虽然复杂的计算机模型或高通量体内研究经常主导科学探究,但这一观点强调了简单计算作为初步探索和评估研究可行性的宝贵工具的力量。费米计算以物理学家恩里科·费米(Enrico Fermi)的名字命名,它被定义为使用粗略计算和直接推理来实现数量级精度的快速近似估计。我们展示了费米计算如何基于基本原理和现成的数据,可以提供对植物和微生物对环境和遗传变化的代谢变化的初步了解。我们还讨论了如何将费米检查嵌入到数据驱动的高级计算工作流程中,以实现生物感知机器学习。最后,了解最新的技术是必要的,以指导研究的可行性和确定关键杠杆,以最大限度地提高成本回报比。结合生物学和资源意识的费米计算,这种提出的方法使研究人员能够优先分配资源,识别预测和实验中的差距,并对观察到的植物在受控实验室环境和工业条件下的反应有什么不同产生直觉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fermi calculations enable quick downselection of target genes and process optimization in photosynthetic systems.

Understanding how photosynthetic organisms including plants and microbes respond to their environment is crucial for optimizing agricultural practices and ensuring food and energy security, particularly in the context of climactic change and sustainability. This perspective embeds back-of-the-envelope calculations across a photosynthetic organism design and scale up workflow. Starting from the whole system level, we provide a recipe to pinpoint key genetic targets, examine the logistics of detailed computational modeling, and explore environmentally driven phenotypes and feasibility as an industrial biofuel production chassis. While complex computer models or high-throughput in vivo studies often dominate scientific inquiry, this perspective highlights the power of simple calculations as a valuable tool for initial exploration and evaluating study feasibility. Fermi calculations are defined as quick, approximate estimations made using back-of-the-envelope calculations and straightforward reasoning to achieve order-of-magnitude accuracy, named after the physicist Enrico Fermi. We show how Fermi calculations, based on fundamental principles and readily available data, can offer a first-pass understanding of metabolic shifts in plants and microbes in response to environmental and genetic changes. We also discuss how Fermi checks can be embedded in data-driven advanced computing workflows to enable bio-aware machine learning. Lastly, an understanding of state of the art is necessary to guide study feasibility and identifying key levers to maximize cost to return ratios. Combining biology- and resource-aware Fermi calculations, this proposed approach enables researchers to prioritize resource allocation, identify gaps in predictions and experiments, and develop intuition about how observed responses of plants differ between controlled laboratory environments and industrial conditions.

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来源期刊
Plant Physiology
Plant Physiology 生物-植物科学
CiteScore
12.20
自引率
5.40%
发文量
535
审稿时长
2.3 months
期刊介绍: Plant Physiology® is a distinguished and highly respected journal with a rich history dating back to its establishment in 1926. It stands as a leading international publication in the field of plant biology, covering a comprehensive range of topics from the molecular and structural aspects of plant life to systems biology and ecophysiology. Recognized as the most highly cited journal in plant sciences, Plant Physiology® is a testament to its commitment to excellence and the dissemination of groundbreaking research. As the official publication of the American Society of Plant Biologists, Plant Physiology® upholds rigorous peer-review standards, ensuring that the scientific community receives the highest quality research. The journal releases 12 issues annually, providing a steady stream of new findings and insights to its readership.
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