A rapid approach with machine learning for quantifying the relative burden of antimicrobial resistance in natural aquatic environments.

Journal: Water research
PMID:

Abstract

The massive use and discharge of antibiotics have led to increasing concerns about antimicrobial resistance (AMR) in natural aquatic environments. Since the dose-response mechanisms of pathogens with AMR have not yet been fully understood, and the antibiotic resistance genes and bacteria-related data collection via field sampling and laboratory testing is time-consuming and expensive, designing a rapid approach to quantify the burden of AMR in the natural aquatic environment has become a challenge. To cope with such a challenge, a new approach involving an integrated machine-learning framework was developed by investigating the associations between the relative burden of AMR and easily accessible variables (i.e., relevant environmental variables and adjacent land-use patterns). The results, based on a real-world case analysis, demonstrate that the quantification speed has been reduced from 3-7 days, which is typical for traditional measurement procedures with field sampling and laboratory testing, to approximately 0.5 hours using the new approach. Moreover, all five metrics for AMR relative burden quantification exceed the threshold level of 85%, with F1-score surpassing 0.92. Compared to logistic regression, decision trees, and basic random forest, the adaptive random forest model within the framework significantly improves quantification accuracy without sacrificing model interpretability. Two environmental variables, dissolved oxygen and resistivity, along with the proportion of green areas were identified as three key feature variables for the rapid quantification. This study contributes to the enrichment of burden analyses and management practices for rapid quantification of the relative burden of AMR without dose-response information.

Authors

  • Peng Jiang
    Department of Joint Surgery, Shandong Provincial Hospital Affiliated to Shandong University, Jinan, Shandong 250021, China.
  • Shuyi Sun
    Department of Industrial Engineering and Management, Business School, Sichuan University, Chengdu 610064, China; Department of Industrial Systems Engineering & Management, National University of Singapore, Singapore 119260, Singapore.
  • Shin Giek Goh
    NUS Environmental Research Institute, National University of Singapore, Singapore 117411, Singapore.
  • Xuneng Tong
    Key Laboratory of Integrated Regulation and Resource Development on Shallow Lakes of Ministry of Education, College of Environment, Hohai University, Nanjing 210098, China; Department of Civil and Environmental Engineering, National University of Singapore, 1 Engineering Drive 2, Singapore, 117576, Singapore. Electronic address: xunengtong@u.nus.edu.
  • Yihan Chen
    Beijing Institute of Ophthalmology, Beijing Tongren Hospital, Capital Medical University, Beijing, China.
  • Kaifeng Yu
    School of Environmental Science and Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
  • Yiliang He
    School of Environmental Science and Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
  • Karina Yew-Hoong Gin
    Department of Civil & Environmental Engineering, National University of Singapore, E1A-07-03, 1 Engineering Drive 2, 117576, Singapore; NUS Environmental Research Institute (NERI), National University of Singapore, T-Lab Building (#02-01), 5A Engineering Drive 1, 117411, Singapore. Electronic address: ceeginyh@nus.edu.sg.