Southern Swedish Forest Research Centre, Swedish University of Agricultural Sciences, Box 190, 234 22, Lomma, Sweden.
Department of Plant Protection Biology, Swedish University of Agricultural Sciences, Box 102, 234 22, Lomma, Sweden.
Sci Rep. 2022 Dec 15;12(1):21661. doi: 10.1038/s41598-022-26078-1.
Fusarium circinatum, a fungal pathogen deadly to many Pinus species, can cause significant economic and ecological losses, especially if it were to become more widely established in Europe. Early detection tools with high-throughput capacity can increase our readiness to implement mitigation actions against new incursions. This study sought to develop a disease detection method based on volatile organic compound (VOC) emissions to detect F. circinatum on different Pinus species. The complete pipeline applied here, entailing gas chromatography-mass spectrometry of VOCs, automated data analysis and machine learning, distinguished diseased from healthy seedlings of Pinus sylvestris and Pinus radiata. In P. radiata, this distinction was possible even before the seedlings became visibly symptomatic, suggesting the possibility for this method to identify latently infected, yet healthy looking plants. Pinus pinea, which is known to be relatively resistant to F. circinatum, remained asymptomatic and showed no changes in VOCs over 28 days. In a separate analysis of in vitro VOCs collected from different species of Fusarium, we showed that even closely related Fusarium spp. can be readily distinguished based on their VOC profiles. The results further substantiate the potential for volatilomics to be used for early disease detection and diagnostic recognition.
尖孢镰刀菌是一种对许多松属物种具有致命性的真菌病原体,如果它在欧洲更广泛地建立,可能会造成重大的经济和生态损失。具有高通量能力的早期检测工具可以提高我们对新入侵采取缓解措施的准备程度。本研究旨在开发一种基于挥发性有机化合物(VOC)排放的疾病检测方法,以检测不同松属物种上的尖孢镰刀菌。这里应用的完整流程包括 VOC 的气相色谱-质谱分析、自动数据分析和机器学习,可以区分健康和患病的欧洲赤松和辐射松幼苗。在辐射松中,甚至在幼苗出现明显症状之前,就可以进行这种区分,这表明该方法有可能识别潜伏感染但外观健康的植物。众所周知,欧洲赤松对尖孢镰刀菌具有相对抗性,在 28 天内仍然无症状,VOC 没有变化。在对来自不同镰刀菌属的体外 VOC 进行的单独分析中,我们表明,即使是密切相关的镰刀菌属也可以根据其 VOC 图谱轻松区分。这些结果进一步证实了挥发组学在早期疾病检测和诊断识别中的应用潜力。