Ma Juan, Cheng Zeqiang, Cao Yanyong
Institute of Cereal Crops, Henan Academy of Agricultural Sciences, Zhengzhou 450002, China.
Int J Mol Sci. 2025 Jun 1;26(11):5324. doi: 10.3390/ijms26115324.
Harnessing state-of-the-art technologies to improve disease resistance is a critical objective in modern plant breeding. Artificial intelligence (AI), particularly deep learning and big model (large language model and large multi-modal model), has emerged as a transformative tool to enhance disease detection and omics prediction in plant science. This paper provides a comprehensive review of AI-driven advancements in plant disease detection, highlighting convolutional neural networks and their linked methods and technologies through bibliometric analysis from recent research. We further discuss the groundbreaking potential of large language models and multi-modal models in interpreting complex disease patterns via heterogeneous data. Additionally, we summarize how AI accelerates genomic and phenomic selection by enabling high-throughput analysis of resistance-associated traits, and explore AI's role in harmonizing multi-omics data to predict plant disease-resistant phenotypes. Finally, we propose some challenges and future directions in terms of data, model, and privacy facets. We also provide our perspectives on integrating federated learning with a large language model for plant disease detection and resistance prediction. This review provides a comprehensive guide for integrating AI into plant breeding programs, facilitating the translation of computational advances into disease-resistant crop breeding.
利用最先进的技术提高抗病性是现代植物育种的一个关键目标。人工智能(AI),特别是深度学习和大模型(大语言模型和大型多模态模型),已成为植物科学中增强病害检测和组学预测的变革性工具。本文通过对近期研究的文献计量分析,全面回顾了人工智能驱动的植物病害检测进展,重点介绍了卷积神经网络及其相关方法和技术。我们进一步讨论了大语言模型和多模态模型在通过异构数据解释复杂病害模式方面的开创性潜力。此外,我们总结了人工智能如何通过对抗性相关性状进行高通量分析来加速基因组和表型选择,并探讨了人工智能在整合多组学数据以预测植物抗病表型方面的作用。最后,我们从数据、模型和隐私方面提出了一些挑战和未来方向。我们还阐述了将联邦学习与大语言模型整合用于植物病害检测和抗性预测的观点。本综述为将人工智能整合到植物育种计划中提供了全面指南,有助于将计算进展转化为抗病作物育种。