作物建模和传感技术在营养品质和抗逆性分子育种中的应用。

IF 4.2 1区 农林科学 Q1 AGRONOMY
Jonathan Berlingeri, Abelina Fuentes, Earl Ranario, Heesup Yun, Ellen Y Rim, Oscar Garrett, Alexander Howard, Mary-Francis LaPorte, Sassoum Lo, Duke Pauli, Jenna Hershberger, Mason Earles, Allen Van Deynze, Edward Charles Brummer, Richard Michelmore, Christopher Y S Wong, Troy S Magney, Pamela C Ronald, Daniel E Runcie, Brian N Bailey, Christine H Diepenbrock
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引用次数: 0

摘要

将创新技术整合到植物育种中,对于在气候变化的生物和非生物胁迫下加强粮食和营养安全至关重要。虽然育种工作主要集中在产量和抗逆性上,但新出现的证据强调,还需要优先考虑营养质量。先进的分子育种方法提高了我们开发改良作物品种的能力,并且可以通过作物建模和遥感技术的常规集成来提供大量信息。本文综述了作物建模和传感与分子育种相结合的潜力,以解决营养品质和抗逆性的双重挑战。我们概述了胁迫反应策略,质量性状育种中的挑战,以及环境数据在基因组预测中的应用。我们还描述了谷物豆类、水稻和绿叶蔬菜作物建模和传感技术的现状,以及这些作物中-组学工具的现状,以及人工智能与定向进化的使用来识别新的抗性基因。我们描述了人工智能传感与生物物理和经验约束作物建模在育种中的两两和三向整合,从而能够预测表型和育种值,并通过提高保真度、效率和时间/空间分辨率来解剖基因型-环境-管理的相互作用,从而为选择决策提供信息。本文重点介绍了当前的举措和未来的趋势,重点是利用这些进步来开发更具气候适应性和营养密度的作物,最终提高分子育种的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Integration of crop modeling and sensing into molecular breeding for nutritional quality and stress tolerance.

Integration of crop modeling and sensing into molecular breeding for nutritional quality and stress tolerance.

Integration of crop modeling and sensing into molecular breeding for nutritional quality and stress tolerance.

Integration of crop modeling and sensing into molecular breeding for nutritional quality and stress tolerance.

Integrating innovative technologies into plant breeding is critical to bolster food and nutritional security under biotic and abiotic stresses in changing climates. While breeding efforts have focused primarily on yield and stress tolerance, emerging evidence highlights the need to also prioritize nutritional quality. Advanced molecular breeding approaches have enhanced our ability to develop improved crop varieties and could be substantially informed by the routine integration of crop modeling and remote sensing technologies. This review article discusses the potential of combining crop modeling and sensing with molecular breeding to address the dual challenge of nutritional quality and stress tolerance. We provide overviews of stress response strategies, challenges in breeding for quality traits, and the use of environmental data in genomic prediction. We also describe the status of crop modeling and sensing technologies in grain legumes, rice, and leafy greens, alongside the status of -omics tools in these crops and the use of AI with directed evolution to identify novel resistance genes. We describe the pairwise and three-way integration of AI-enabled sensing and biophysically and empirically constrained crop modeling into breeding to enable prediction of phenotypic and breeding values and dissection of genotype-by-environment-by-management interactions with increasing fidelity, efficiency, and temporal/spatial resolution to inform selection decisions. This article highlights current initiatives and future trends that focus on leveraging these advancements to develop more climate-resilient and nutritionally dense crops, ultimately enhancing the effectiveness of molecular breeding.

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来源期刊
CiteScore
9.60
自引率
7.40%
发文量
241
审稿时长
2.3 months
期刊介绍: Theoretical and Applied Genetics publishes original research and review articles in all key areas of modern plant genetics, plant genomics and plant biotechnology. All work needs to have a clear genetic component and significant impact on plant breeding. Theoretical considerations are only accepted in combination with new experimental data and/or if they indicate a relevant application in plant genetics or breeding. Emphasizing the practical, the journal focuses on research into leading crop plants and articles presenting innovative approaches.
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