Plant disease epidemiology in the age of artificial intelligence and machine learning

Ting Xiang Neik , Aria Dolatabadian , Monica F. Danilevicz , Shriprabha R. Upadhyaya , Fangning Zhang , Jacqueline Batley , David Edwards
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Abstract

Crop diseases pose a major threat to global food security, causing substantial yield losses and economic damage each year. Plant disease epidemiology studies the dynamics of plant-pathogen interactions and their impact on disease outcomes, considering environmental influences at a population level. While recent advances in artificial intelligence (AI) and machine learning (ML) have introduced innovative tools for disease prediction and management, most applications have focused on plant disease detection, classification and severity quantification using imaging technologies and sensor-based data. However, their use in plant disease epidemiology, particularly in understanding host-pathogen interactions and the ecology and evolution of the pathosystems remains limited due to the complexity of multi-scale interactions. In this review, we first propose an updated plant disease epidemiology ‘disease pyramid’ model, incorporating ecological and evolutionary components into the traditional ‘disease triangle’ model. Following this, we discuss current ML applications in plant disease epidemiology, while highlighting both challenges and opportunities. We offer insights into potential input datasets that could significantly enhance the predictability and accuracy of ML models, while also outlining future directions for this rapidly evolving field. The aim of this review is to draw the reader's attention to the knowledge gap in the application of ML in plant disease epidemiology and showcase the vast potential for expanding the scope of more in-depth and comprehensive research in this field in the future.
人工智能和机器学习时代的植物病害流行病学
作物病害对全球粮食安全构成重大威胁,每年造成大量产量损失和经济损失。植物疾病流行病学研究植物与病原体相互作用的动态及其对疾病结果的影响,考虑到种群水平上的环境影响。虽然人工智能(AI)和机器学习(ML)的最新进展为疾病预测和管理引入了创新工具,但大多数应用都集中在利用成像技术和基于传感器的数据进行植物疾病检测、分类和严重程度量化。然而,由于多尺度相互作用的复杂性,它们在植物疾病流行病学中的应用,特别是在了解宿主-病原体相互作用以及病理系统的生态学和进化方面的应用仍然有限。在这篇综述中,我们首先提出了一个更新的植物疾病流行病学“疾病金字塔”模型,将生态和进化成分纳入传统的“疾病三角”模型。在此之后,我们讨论了当前ML在植物疾病流行病学中的应用,同时强调了挑战和机遇。我们提供了对潜在输入数据集的见解,这些数据集可以显着提高机器学习模型的可预测性和准确性,同时也概述了这个快速发展领域的未来方向。这篇综述的目的是引起读者对ML在植物疾病流行病学应用中的知识差距的关注,并展示未来在该领域扩大更深入和全面研究范围的巨大潜力。
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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