Characteristic microbiome and synergistic mechanism by engineering agent MAB-1 to evaluate oil-contaminated soil biodegradation in different layer soil

Environmental Science and Pollution Research(2024)

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摘要
Bioremediation is a sustainable and pollution-free technology for crude oil–contaminated soil. However, most studies are limited to the remediation of shallow crude oil–contaminated soil, while ignoring the deeper soil. Here, a high-efficiency composite microbial agent MAB-1 was provided containing Bacillus (naphthalene and pyrene), Acinetobacter (cyclohexane), and Microbacterium (xylene) to be synergism degradation of crude oil components combined with other treatments. According to the crude oil degradation rate, the up-layer (63.64%), middle-layer (50.84%), and underlying-layer (54.21%) crude oil–contaminated soil are suitable for bioaugmentation (BA), biostimulation (BS), and biostimulation+bioventing (BS+BV), respectively. Combined with GC-MS and carbon number distribution analysis, under the optimal biotreatment, the degradation rates of 2-ring and 3-ring PAHs in layers soil were about 70% and 45%, respectively, and the medium and long-chain alkanes were reduced during the remediation. More importantly, the relative abundance of bacteria associated with crude oil degradation increased in each layer after the optimal treatment, such as Microbacterium (2.10–14%), Bacillus (2.56–12.1%), and Acinetobacter (0.95–12.15%) in the up-layer soil; Rhodococcus (1.5–6.9%) in the middle-layer soil; and Pseudomonas (3–5.4%) and Rhodococcus (1.3–13.2%) in the underlying-layer soil. Our evaluation results demonstrated that crude oil removal can be accelerated by adopting appropriate bioremediation approach for different depths of soil, providing a new perspective for the remediation of actual crude oil–contaminated sites. Graphical abstract
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关键词
Composite microbial agent MAB-1,Synergistic degradation,Crude oil–contaminated soil,Layer remediation,Polycyclic aromatic hydrocarbons (PAHs),Microbial diversity
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