Accelerating crop improvement via integration of transcriptome-based network biology and genome editing.

IF 3.6 3区 生物学 Q1 PLANT SCIENCES
Planta Pub Date : 2025-03-17 DOI:10.1007/s00425-025-04666-5
Izreen Izzati Razalli, Muhammad-Redha Abdullah-Zawawi, Amin-Asyraf Tamizi, Sarahani Harun, Rabiatul-Adawiah Zainal-Abidin, Muhammad Irfan Abdul Jalal, Mohammad Asad Ullah, Zamri Zainal
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引用次数: 0

Abstract

Main conclusion: Big data and network biology infer functional coupling between genes. In combination with machine learning, network biology can dramatically accelerate the pace of gene discovery using modern transcriptomics approaches and be validated via genome editing technology for improving crops to stresses. Unlike other living things, plants are sessile and frequently face various environmental challenges due to climate change. The cumulative effects of combined stresses can significantly influence both plant growth and yields. In navigating the complexities of climate change, ensuring the nourishment of our growing population hinges on implementing precise agricultural systems. Conventional breeding methods have been commonly employed; however, their efficacy has been impeded by limitations in terms of time, cost, and infrastructure. Cutting-edge tools focussing on big data are being championed to usher in a new era in stress biology, aiming to cultivate crops that exhibit enhanced resilience to multifactorial stresses. Transcriptomics, combined with network biology and machine learning, is proving to be a powerful approach for identifying potential genes to target for gene editing, specifically to enhance stress tolerance. The integration of transcriptomic data with genome editing can yield significant benefits, such as gaining insights into gene function by modifying or manipulating of specific genes in the target plant. This review provides valuable insights into the use of transcriptomics platforms and the application of biological network analysis and machine learning in the discovery of novel genes, thereby enhancing the understanding of plant responses to combined or sequential stress. The transcriptomics as a forefront omics platform and how it is employed through biological networks and machine learning that lead to novel gene discoveries for producing multi-stress-tolerant crops, limitations, and future directions have also been discussed.

通过整合基于转录组的网络生物学和基因组编辑加速作物改良。
主要结论:大数据和网络生物学推断基因之间的功能耦合。与机器学习相结合,网络生物学可以使用现代转录组学方法大大加快基因发现的步伐,并通过基因组编辑技术来改善作物的压力。与其他生物不同,植物是无根的,由于气候变化,植物经常面临各种环境挑战。综合胁迫的累积效应对植物生长和产量均有显著影响。在应对气候变化的复杂性时,确保不断增长的人口的营养取决于实施精准的农业系统。传统的育种方法已被普遍采用;然而,它们的功效受到时间、成本和基础设施方面的限制。人们正在倡导以大数据为重点的尖端工具,以开创压力生物学的新时代,旨在培育出对多因素压力表现出更强抵御能力的作物。转录组学与网络生物学和机器学习相结合,被证明是一种有效的方法,可以识别基因编辑的潜在目标基因,特别是增强耐受性。转录组学数据与基因组编辑的整合可以产生显著的好处,例如通过修改或操纵目标植物中的特定基因来了解基因功能。这篇综述为转录组学平台的使用以及生物网络分析和机器学习在新基因发现中的应用提供了有价值的见解,从而增强了对植物对组合或顺序胁迫的反应的理解。转录组学作为一个前沿的组学平台,以及如何通过生物网络和机器学习来发现新的基因,以生产耐多逆境作物,局限性和未来的方向也进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Planta
Planta 生物-植物科学
CiteScore
7.20
自引率
2.30%
发文量
217
审稿时长
2.3 months
期刊介绍: Planta publishes timely and substantial articles on all aspects of plant biology. We welcome original research papers on any plant species. Areas of interest include biochemistry, bioenergy, biotechnology, cell biology, development, ecological and environmental physiology, growth, metabolism, morphogenesis, molecular biology, new methods, physiology, plant-microbe interactions, structural biology, and systems biology.
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