Soil microbiome prediction using traditional machine learning and deep learning models
摘要
The accuracy of macrobiological community predictions largely depends on the taxonomic scale considered. Nowadays, the applicability of such predictions remains an important challenge when extended to microbial soil communities. This is not only due to the lack of reliable benchmark data, but also to a greater diversity of the soil microorganisms compared to other environments. In this study, we use six traditional machine learning regression models and one deep learning regressor to predict relative frequencies of bacterial and fungal communities within the soil microbiome based on environmental factors. We analyze the data from two publicly available soil microbiome datasets: (1) Data collected by Averill and co-authors and analyzed in a recent Nature Ecology and Evolution article, and (2) Data extracted from the NEON database, to estimate the composition of bacterial and fungal communities at the functional (i.e. functional group level) and taxonomic scales (i.e. phylum, class, order, family, and genus levels). Our findings suggest the presence of a general pattern across the observed taxonomic scales according to which the predictability of the soil microbiome increases with taxonomic scale. However, a notable exception occurs when machine learning models are applied to predict bacterial communities at the functional group level for Averill et al.’s data when all of them fail to provide accurate predictions results. The best overall results obtained include the value of the coefficient of determination