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Soil bacterial abundance and diversity better explained and predicted with spectro-transfer functions

机译:土壤细菌丰富和多样性更好地解释和预测光谱传递函数

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Soil bacteria play a critical role in the functioning of ecosystems but are challenging to investigate. We developed state-factor models with machine learning to understand better and to predict the abundance of 10 dominant phyla and bacterial diversities in Australian soils, the latter expressed by the Chao and Shannon indices. In the models, we used proxies for the edaphic, climatic, biotic and topographic factors, which included soil properties, environmental variables, and the absorbance at visible-near infrared (vis-NIR) wavelengths. From a cross-validation with all observations (n = 681), we found that our models explained 43-73% of the variance in bacterial phyla abundance and diversity. The vis-NIR spectra, which represent the organic and mineral composition of soil, were prominent drivers of abundance and diversity in the models, as were changes in the soil-water balance, potential evapotranspiration, and soil nutrients. From independent validations, we found that spectr-otransfer functions could predict well the phyla Acidobacteria and Actinobacteria (R-2 & 0.7) as well as other dominant phyla and the Chao and Shannon diversities (R-2 & 0.5). Predictions of the phyla Firmicutes were the poorest (R-2 = 0.42). The vis-NIR spectra markedly improved the explanatory power and predictability of the models.
机译:土壤细菌在生态系统的运作中发挥着关键作用,但正在挑战调查。我们开发了具有机器学习的国家因素模型,以了解更好并预测澳大利亚土壤中10个占优势植物和细菌多样性的丰富,后者由赵和香农指数表示。在模型中,我们使用了代表的代理,用于仿生,气候,生物和地形因素,包括土壤性质,环境变量和可见近红外(Vis-NIR)波长的吸光度。从所有观察到(n = 681)的交叉验证,我们发现我们的模型解释了细菌植物丰富和多样性方差的43-73%。代表土壤有机和矿物成分的Vis-nir光谱是模型中丰富和多样性的突出驱动因素,因此土壤 - 水平衡,潜在的蒸散和土壤营养素变化。从独立的验证,我们发现谱 - ot转移功能可以预测phyla accancobacteria和actinobacteria(R-2& 0.7)以及其他主要的植物和潮和子多样性(R-2& 0.5 )。 Phyla Fumporicutes的预测是最贫穷的(R-2 = 0.42)。 VIS-NIR光谱显着提高了模型的解释性力和可预测性。

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