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Impact of human activities on groundwater biogeochemical cycles and microbial communities: Insights from metagenomic analysis

Zhengxing Chen, Xiufeng Tang, Yirui Su, Tao Liu, Uli Klümper, Feng Ju, Min Liu*, Ping Han*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Anthropogenic nitrogen pollution poses a systemic threat to microbial interaction networks and biogeochemical cycling in groundwater ecosystems, yet the underlying mechanisms remain poorly understood. Employing an endpoint gradient comparison, we conducted metagenomic analyses of urban groundwater under severe nitrogen stress (Shanghai, China; with NH4+ and NO3 concentrations ∼28× and ∼10× background levels, respectively) versus a near-pristine mountain aquifer (Calistoga, USA). This revealed a multi-level collapse and adaptive restructuring of microbial communities under nitrogen stress. Pollution triggered a fundamental restructuring of bacterial communities, with system type (urban vs. mountain) explaining 74 % of the compositional variation, accompanied by a significant reduction in bacterial alpha-diversity (Shannon index decreased by 34 %) and a taxonomic shift from Actinomycetota-dominated mutualistic networks in the mountain system to Pseudomonadota-dominated communities (> 0.86 relative abundance) in urban groundwater. Functionally, urban systems exhibited multi-pathway suppression of energy-intensive processes, including nitrification (e.g., hao, nxrB genes), methanogenesis, and inorganic sulfur oxidation, aligning with the theory of "pollution-induced metabolic decoupling." To survive, the microbial community pivoted to low-energy strategies, significantly enriching genes for organic sulfur metabolism (e.g., dddT, tsdB), which may exacerbate nitrogen retention by inhibiting denitrifiers via metabolites like H2S. Co-occurrence network topology analysis indicated a catastrophic loss of complexity in urban groundwater, with a ∼90 % reduction in connectivity and a collapse in modularity (from 19.94 to 3.33), alongside an abnormally high proportion of positive correlations (94.4 %), signaling a major loss of ecosystem stability and functional redundancy. Random Forest and redundancy analyses jointly identified ammonium (NH4+) as the core environmental driver of this cascading failure, explaining 86 % of the variance in functional gene profiles and likely disrupting the nitrification pathway through specific suppression of the rate-limiting hao gene (which explained 76 % of the variance in nitrification rates). Based on these insights, we propose a dual-track restoration framework that couples external NH4+ source control with internal microbial network rewiring (e.g., restoring keystone taxa, regulating sulfur feedback loops) to break the nitrogen-sulfur inhibition cycle and restore ecological function. Our findings underscore the critical importance of integrating microbial network resilience into strategies for managing and rehabilitating contaminated groundwater ecosystems. © 2026 Elsevier Ltd.
Original languageEnglish
Article number125493
Number of pages11
JournalWater Research
Volume294
Online published2 Feb 2026
DOIs
Publication statusPublished - 15 Apr 2026

Funding

This work was financially supported by the National Key Technologies Research and Development Program of China (2024YFF0808804 and 2023YFC3208404), the National Natural Science Foundation of China (NSFC) (Nos. 42573078 and 42371064) and Fundamental Research Funds for the Central Universities.

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 6 - Clean Water and Sanitation
    SDG 6 Clean Water and Sanitation

Research Keywords

  • Groundwater microbiome
  • Nitrogen pollution
  • Ammonium stress
  • Network topology collapse
  • Ecological resilience

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