Liu Hao-Qiang, Zhao Ze-Long, Li Hong-Jun, Yu Shi-Jiang, Cong Lin, Ding Li-Li, Ran Chun, Wang Xue-Feng
Citrus Research Institute, Southwest University/Chinese Academy of Agricultural Sciences, National Engineering Research Center for Citrus, Chongqing, China.
Shanghai BIOZERON Biotechnology Co., Ltd., Shanghai, China.
Front Plant Sci. 2023 May 29;14:1129508. doi: 10.3389/fpls.2023.1129508. eCollection 2023.
Huanglongbing (HLB), the most prevalent citrus disease worldwide, is responsible for substantial yield and economic losses. Phytobiomes, which have critical effects on plant health, are associated with HLB outcomes. The development of a refined model for predicting HLB outbreaks based on phytobiome markers may facilitate early disease detection, thus enabling growers to minimize damages. Although some investigations have focused on differences in the phytobiomes of HLB-infected citrus plants and healthy ones, individual studies are inappropriate for generating common biomarkers useful for detecting HLB on a global scale. In this study, we therefore obtained bacterial information from several independent datasets representing hundreds of citrus samples from six continents and used these data to construct HLB prediction models based on 10 machine learning algorithms. We detected clear differences in the phyllosphere and rhizosphere microbiomes of HLB-infected and healthy citrus samples. Moreover, phytobiome alpha diversity indices were consistently higher for healthy samples. Furthermore, the contribution of stochastic processes to citrus rhizosphere and phyllosphere microbiome assemblies decreased in response to HLB. Comparison of all constructed models indicated that a random forest model based on 28 bacterial genera in the rhizosphere and a bagging model based on 17 bacterial species in the phyllosphere predicted the health status of citrus plants with almost 100% accuracy. Our results thus demonstrate that machine learning models and phytobiome biomarkers may be applied to evaluate the health status of citrus plants.
黄龙病(HLB)是全球最普遍的柑橘类疾病,造成了巨大的产量损失和经济损失。植物微生物群落对植物健康有至关重要的影响,与黄龙病的发病结果相关。基于植物微生物群落标记物开发一种精确的黄龙病爆发预测模型,可能有助于早期疾病检测,从而使种植者能够将损失降至最低。尽管一些研究关注了感染黄龙病的柑橘植物和健康柑橘植物在植物微生物群落方面的差异,但个别研究并不适合生成可在全球范围内用于检测黄龙病的通用生物标志物。因此,在本研究中,我们从代表来自六大洲数百个柑橘样本的几个独立数据集中获取了细菌信息,并利用这些数据基于10种机器学习算法构建了黄龙病预测模型。我们检测到感染黄龙病的柑橘样本和健康柑橘样本在叶际和根际微生物群落上存在明显差异。此外,健康样本的植物微生物群落α多样性指数一直较高。此外,随机过程对柑橘根际和叶际微生物群落组装的贡献因黄龙病而降低。对所有构建模型的比较表明,基于根际28个细菌属构建的随机森林模型和基于叶际17个细菌物种构建的装袋模型预测柑橘植物健康状况的准确率几乎达到100%。因此,我们的结果表明,机器学习模型和植物微生物群落生物标志物可用于评估柑橘植物的健康状况。