Ali Tariq, Rehman Saif Ur, Ali Shamshair, Mahmood Khalid, Obregon Silvia Aparicio, Iglesias Rubén Calderón, Khurshaid Tahir, Ashraf Imran
University Institute of Information Technology, PMAS-Arid Agriculture University, Rawalpindi, Pakistan.
Institute of Computing and Information Technology, Gomal University, D.I. Khan, Pakistan.
Sci Rep. 2024 Dec 3;14(1):30062. doi: 10.1038/s41598-024-74127-8.
Plant stress reduction research has advanced significantly with the use of Artificial Intelligence (AI) techniques, such as machine learning and deep learning. This is a significant step toward sustainable agriculture. Innovative insights into the physiological responses of plants mostly crops to drought stress have been revealed through the use of complex algorithms like gradient boosting, support vector machines (SVM), recurrent neural network (RNN), and long short-term memory (LSTM), combined with a thorough examination of the TYRKC and RBR-E3 domains in stress-associated signaling proteins across a range of crop species. Modern resources were used in this study, including the UniProt protein database for crop physiochemical properties associated with specific signaling domains and the SMART database for signaling protein domains. These insights were then applied to deep learning and machine learning techniques after careful data processing. The rigorous metric evaluations and ablation analysis that typified the study's approach highlighted the algorithms' effectiveness and dependability in recognizing and classifying stress events. Notably, the accuracy of SVM was 82%, while gradient boosting and RNN showed 96%, and 94%, respectively and LSTM obtained an astounding 97% accuracy. The study observed these successes but also highlights the ongoing obstacles to AI adoption in agriculture, emphasizing the need for creative thinking and interdisciplinary cooperation. In addition to its scholarly value, the collected data has significant implications for improving resource efficiency, directing precision agricultural methods, and supporting global food security programs. Notably, the gradient boosting and LSTM algorithm outperformed the others with an exceptional accuracy of 96% and 97%, demonstrating their potential for accurate stress categorization. This work highlights the revolutionary potential of AI to completely disrupt the agricultural industry while simultaneously advancing our understanding of plant stress responses.
利用机器学习和深度学习等人工智能(AI)技术,植物应激减轻研究取得了显著进展。这是迈向可持续农业的重要一步。通过使用梯度提升、支持向量机(SVM)、递归神经网络(RNN)和长短期记忆(LSTM)等复杂算法,并结合对一系列作物品种中与应激相关信号蛋白的TYRKC和RBR-E3结构域的全面研究,揭示了植物(主要是作物)对干旱胁迫的生理反应的创新见解。本研究使用了现代资源,包括用于与特定信号结构域相关的作物理化性质的UniProt蛋白质数据库和用于信号蛋白结构域的SMART数据库。经过仔细的数据处理后,这些见解被应用于深度学习和机器学习技术。该研究方法所特有的严格度量评估和消融分析突出了算法在识别和分类应激事件方面的有效性和可靠性。值得注意的是,支持向量机的准确率为82%,而梯度提升和递归神经网络分别为96%和94%,长短期记忆则达到了惊人的97%的准确率。该研究看到了这些成功,但也强调了人工智能在农业中应用的持续障碍,强调了创造性思维和跨学科合作的必要性。除了学术价值外,所收集的数据对于提高资源利用效率、指导精准农业方法和支持全球粮食安全计划具有重要意义。值得注意的是,梯度提升和长短期记忆算法以96%和97%的卓越准确率优于其他算法,证明了它们在准确应激分类方面的潜力。这项工作突出了人工智能彻底改变农业产业的革命潜力,同时推进了我们对植物应激反应理解。