A Combination of Few Physicochemical and Fungal Parameters Can Explain the Soil-Dependent Variation in Wheat Biomass After Inoculation With Cladosporium tenuissimum

Lena von Saldern, Loïc Thurre, Waelchli Jan, Judith Kobler, Juliane Krenz, Klaus Schlaeppi
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Abstract

Introduction

Intensive agriculture causes substantial negative impacts on agroecosystems. One approach to reduce impacts while maintaining productivity is the inoculation with beneficial microbes. Inoculants can positively affect crop growth for instance through enhancing nutrient uptake or pathogen protection. However, the efficacy of inoculants is inconsistent across different agricultural soils. In this study, we investigated to which degree the varying growth responses to an inoculant can be modelled from soil parameters.

Materials and Methods

As inoculant, we worked with the commercially available fungus Cladosporium tenuissimum and tested its effectivity on wheat plants. Variation between soils was specifically tested, while keeping other factors constant in pot experiments under controlled conditions. We assessed 25 field soils for their influence on wheat biomass response to inoculation (BRI). For each soil, we measured physicochemical parameters and characterised the soil fungal community composition. We then performed variable selection and exhaustive model screenings to find the best model explaining variations in BRI.

Results

A combined model incorporating physicochemical and fungal soil parameters outperformed models using only one of the two types of data. The best model was based on six predictors and explained 80% of the observed variability in BRI. Predictive parameters included water holding capacity and organic carbon levels as well as soil fungi of the taxa Alternaria, Cladosporium (another species than the inoculant), Acrostalagmus and Fusicolla. Organic carbon and Alternaria negatively affected the effectivity of the inoculant while the other parameters were positive predictors for inoculation success.

Conclusion

We showed that six soil parameters were sufficient to explain most of the variation of wheat responses to inoculation with C. tenuissimum. This result serves as proof-of-concept that the effectivity of inoculants can be modelled from soil parameters. It is now necessary to take this approach to practice and evaluate predictions for inoculant efficacy under field conditions.

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几种物理化学和真菌参数的组合可以解释接种枯枝孢霉后小麦生物量的土壤依赖性变化
集约化农业对农业生态系统造成严重的负面影响。在保持生产力的同时减少影响的一种方法是接种有益微生物。接种剂可以对作物生长产生积极影响,例如通过提高养分吸收或病原体保护。然而,接种剂的效果在不同的农业土壤中是不一致的。在这项研究中,我们研究了在多大程度上可以用土壤参数来模拟对接种剂的不同生长反应。材料与方法以市售真菌苔枝孢菌(Cladosporium tenuissimum)为接种剂,对其在小麦植株上的接种效果进行了试验。在控制条件下保持其他因素不变的盆栽试验中,专门测试了土壤之间的差异。研究了25种土壤对接种小麦生物量响应的影响。对每种土壤进行了理化参数测定,并对土壤真菌群落组成进行了表征。然后,我们进行了变量选择和详尽的模型筛选,以找到解释BRI变化的最佳模型。结果结合理化和真菌土壤参数的组合模型优于仅使用两种数据中的一种的模型。最佳模型基于六个预测因子,解释了BRI中观察到的80%的变异性。预测参数包括持水能力和有机碳水平,以及交替菌、枝孢菌(与接种剂不同)、Acrostalagmus和Fusicolla的土壤真菌类群。有机碳和交替菌对接种效果有负向影响,而其他参数对接种成功有正向影响。结论6个土壤参数足以解释小麦对接种曲霉的大部分反应变化。这一结果证明了接种剂的有效性可以通过土壤参数来模拟。现在有必要采用这种方法来实践和评估在现场条件下接种剂效果的预测。
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