Devarajan Arun Kumar, Truu Marika, Gopalasubramaniam Sabarinathan Kuttalingam, Muthukrishanan Gomathy, Truu Jaak
Institute of Molecular and Cell Biology, University of Tartu, Tartu, Estonia.
Department of Plant Pathology, Agricultural College and Research Institute, Tamil Nadu Agricultural University, Killikulam, Tuticorin, India.
Front Microbiol. 2022 Dec 15;13:1058772. doi: 10.3389/fmicb.2022.1058772. eCollection 2022.
Agricultural application of plant-beneficial bacteria to improve crop yield and alleviate the stress caused by environmental conditions, pests, and pathogens is gaining popularity. However, before using these bacterial strains in plant experiments, their environmental stress responses and plant health improvement potential should be examined. In this study, we explored the applicability of three unsupervised machine learning-based data integration methods, including principal component analysis (PCA) of concatenated data, multiple co-inertia analysis (MCIA), and multiple kernel learning (MKL), to select osmotic stress-tolerant plant growth-promoting (PGP) bacterial strains isolated from the rice phyllosphere. The studied datasets consisted of direct and indirect PGP activity measurements and osmotic stress responses of eight bacterial strains previously isolated from the phyllosphere of drought-tolerant rice cultivar. The production of phytohormones, such as indole-acetic acid (IAA), gibberellic acid (GA), abscisic acid (ABA), and cytokinin, were used as direct PGP traits, whereas the production of hydrogen cyanide and siderophore and antagonistic activity against the foliar pathogens and were evaluated as measures of indirect PGP activity. The strains were subjected to a range of osmotic stress levels by adding PEG 6000 (0, 11, 21, and 32.6%) to their growth medium. The results of the osmotic stress response experiments showed that all bacterial strains accumulated endogenous proline and glycine betaine (GB) and exhibited an increase in growth, when osmotic stress levels were increased to a specific degree, while the production of IAA and GA considerably decreased. The three applied data integration methods did not provide a similar grouping of the strains. Especially deviant was the ordination of microbial strains based on the PCA of concatenated data. However, all three data integration methods indicated that the strains PB46 and . PB50 shared high similarity in PGP traits and osmotic stress response. Overall, our results indicate that data integration methods complement the single-table data analysis approach and improve the selection process for PGP microbial strains.
利用对植物有益的细菌进行农业应用,以提高作物产量并减轻环境条件、害虫和病原体所造成的压力,正变得越来越流行。然而,在将这些细菌菌株用于植物实验之前,应先考察它们对环境胁迫的反应以及改善植物健康的潜力。在本研究中,我们探索了三种基于无监督机器学习的数据整合方法的适用性,包括拼接数据的主成分分析(PCA)、多重协惯性分析(MCIA)和多核学习(MKL),以从水稻叶际中筛选出耐渗透胁迫的植物促生(PGP)细菌菌株。所研究的数据集包括八个先前从耐旱水稻品种叶际中分离出的细菌菌株的直接和间接PGP活性测量值以及渗透胁迫反应。植物激素如吲哚-3-乙酸(IAA)、赤霉素(GA)、脱落酸(ABA)和细胞分裂素的产生被用作直接PGP特性,而氰化氢和铁载体的产生以及对叶部病原体的拮抗活性则被评估为间接PGP活性的指标。通过向生长培养基中添加聚乙二醇6000(0%、11%、21%和32.6%),使菌株经受一系列渗透胁迫水平。渗透胁迫反应实验结果表明,当渗透胁迫水平增加到一定程度时,所有细菌菌株都会积累内源性脯氨酸和甘氨酸甜菜碱(GB),并且生长有所增加,而IAA和GA的产生则显著减少。所应用的三种数据整合方法并未对菌株提供相似的分组。基于拼接数据的PCA对微生物菌株的排序尤其偏离。然而,所有三种数据整合方法均表明,菌株PB46和PB50在PGP特性和渗透胁迫反应方面具有高度相似性。总体而言,我们的结果表明,数据整合方法补充了单表数据分析方法,并改进了PGP微生物菌株的筛选过程。