2024
DOI: 10.1021/acs.est.3c09653
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Unveiling Microbial Nitrogen Metabolism in Rivers using a Machine Learning Approach

Yuying Jia,
Xiangang Hu,
Weilu Kang
et al.

Abstract: Microbial nitrogen metabolism is a complicated and key process in mediating environmental pollution and greenhouse gas emissions in rivers. However, the interactive drivers of microbial nitrogen metabolism in rivers have not been identified. Here, we analyze the microbial nitrogen metabolism patterns in 105 rivers in China driven by 26 environmental and socioeconomic factors using an interpretable causal machine learning (ICML) framework. ICML better recognizes the complex relationships between factors and mic… Show more

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Cited by 12 publications
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References 66 publications
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