Machine learning predicts the impact of antibiotic properties on the composition and functioning of bacterial community in aquatic habitats.
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Authors
Kang, JianZhang, Zhenyan
Chen, Yiling
Zhou, Zhigao
Zhang, Jinfeng
Xu, Nuohan
Zhang, Qi
Lu, Tao
Peijnenburg, W J G M
Qian, Haifeng
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ArticleLanguage
en
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Show full item recordTitle
Machine learning predicts the impact of antibiotic properties on the composition and functioning of bacterial community in aquatic habitats.Published in
The Science of the total environment 2022;828:154412PMID
35276139ae974a485f413a2113503eed53cd6c53
10.1016/j.scitotenv.2022.154412
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