Predicting future hospital antimicrobial resistance prevalence using machine learning

被引:0
|
作者
Vihta, Karina-Doris [1 ,2 ,3 ]
Pritchard, Emma [1 ,2 ]
Pouwels, Koen B. [2 ,4 ]
Hopkins, Susan [5 ]
Guy, Rebecca L. [5 ]
Henderson, Katherine [5 ]
Chudasama, Dimple [5 ]
Hope, Russell [5 ]
Muller-Pebody, Berit [5 ]
Walker, Ann Sarah [1 ,2 ,6 ]
Clifton, David [3 ,7 ]
Eyre, David W. [1 ,2 ,6 ,8 ,9 ]
机构
[1] Univ Oxford, John Radcliffe Hosp, Nuffield Dept Med, Modernising Med Microbiol,Expt Med,Res Off, Level 7,Headley Way, Oxford, England
[2] Univ Oxford, Natl Inst Hlth Res, Hlth Protect Res Unit Healthcare Associated Infect, Oxford, England
[3] Univ Oxford, Inst Biomed Engn, Dept Engn Sci, Oxford, England
[4] Univ Oxford, Hlth Econ Res Ctr, Nuffield Dept Populat Hlth, Oxford, England
[5] UK Hlth Secur Agcy, Healthcare Associated Infect Fungal Antimicrobial, London, England
[6] Univ Oxford, Natl Inst Hlth Res, Oxford Biomed Res Ctr, Oxford, England
[7] Univ Oxford, OSCAR Oxford Suzhou Ctr Adv Res, Suzhou, Peoples R China
[8] Univ Oxford, Big Data Inst, Nuffield Dept Populat Hlth, Oxford, England
[9] Oxford Univ Hosp NHS Fdn Trust, John Radcliffe Hosp, Dept Infect Dis & Microbiol, Oxford, England
来源
COMMUNICATIONS MEDICINE | 2024年 / 4卷 / 01期
关键词
ANTIBIOTIC USE; IMPACT;
D O I
10.1038/s43856-024-00606-8
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
BackgroundPredicting antimicrobial resistance (AMR), a top global health threat, nationwide at an aggregate hospital level could help target interventions. Using machine learning, we exploit historical AMR and antimicrobial usage to predict future AMR.MethodsAntimicrobial use and AMR prevalence in bloodstream infections in hospitals in England were obtained per hospital group (Trust) and financial year (FY, April-March) for 22 pathogen-antibiotic combinations (FY2016-2017 to FY2021-2022). Extreme Gradient Boosting (XGBoost) model predictions were compared to the previous value taken forwards, the difference between the previous two years taken forwards and linear trend forecasting (LTF). XGBoost feature importances were calculated to aid interpretability.ResultsHere we show that XGBoost models achieve the best predictive performance. Relatively limited year-to-year variability in AMR prevalence within Trust-pathogen-antibiotic combinations means previous value taken forwards also achieves a low mean absolute error (MAE), similar to or slightly higher than XGBoost. Using the difference between the previous two years taken forward or LTF performs consistently worse. XGBoost considerably outperforms all other methods in Trusts with a larger change in AMR prevalence from FY2020-2021 (last training year) to FY2021-2022 (held-out test set). Feature importance values indicate that besides historical resistance to the same pathogen-antibiotic combination as the outcome, complex relationships between resistance in different pathogens to the same antibiotic/antibiotic class and usage are exploited for predictions. These are generally among the top ten features ranked according to their mean absolute SHAP values.ConclusionsYear-to-year resistance has generally changed little within Trust-pathogen-antibiotic combinations. In those with larger changes, XGBoost models can improve predictions, enabling informed decisions, efficient resource allocation, and targeted interventions. Antibiotics play an important role in treating serious bacterial infections. However, with the increased usage of antibiotics, they are becoming less effective. In our study, we use machine learning to learn from past antibiotic resistance and usage in order to predict what resistance will look like in the future. Different hospitals across England have very different resistance levels, however, within each hospital, these levels remain stable over time. When larger changes in resistance occurred over time in individual hospitals, our methods were able to predict these. Understanding how much resistance there is in hospital populations, and what may occur in the future can help determine where resources and interventions should be directed. Vihta et al. use past hospital data including bloodstream infection cases, susceptibilities, and antimicrobial use to predict future resistance prevalence. Machine learning can improve the accuracy of predictions potentially impacting interventions.
引用
收藏
页数:14
相关论文
共 50 条
  • [1] Predicting Relative Risk of Antimicrobial Resistance using Machine Learning Methods
    Wu, Ying
    Jiang, Peng
    Goh, Shin Giek
    Yu, Kaifeng
    Chen, Yihan
    He, Yiliang
    Gin, Karina Y. H.
    IFAC PAPERSONLINE, 2022, 55 (10): : 1266 - 1271
  • [2] PREDICTING ANTIMICROBIAL RESISTANCE IN UNCOMPLICATED URINARY TRACT INFECTIONS USING MACHINE LEARNING
    Kponee-Shovein, K.
    Cheng, W. Y.
    Marijam, A.
    Schwab, P.
    Gao, C.
    Indacochea, D.
    Ferrinho, D.
    Mitrani-Gold, F. S.
    Pinheiro, L.
    Royer, J.
    Joshi, A., V
    VALUE IN HEALTH, 2022, 25 (12) : S357 - S357
  • [3] Antimicrobial resistance and machine learning: past, present, and future
    Farhat, Faiza
    Athar, Md Tanwir
    Ahmad, Sultan
    Madsen, Dag Oivind
    Sohail, Shahab Saquib
    FRONTIERS IN MICROBIOLOGY, 2023, 14
  • [4] Predicting and Identifying Antimicrobial Resistance in the Marine Environment Using AI & Machine Learning Algorithms
    Fough, Faranak
    Janjua, Ghalib
    Zhao, Yafan
    Don, Aakash Welgamage
    2023 IEEE INTERNATIONAL WORKSHOP ON METROLOGY FOR THE SEA; LEARNING TO MEASURE SEA HEALTH PARAMETERS, METROSEA, 2023, : 121 - 126
  • [5] Predicting antimicrobial phenotype resistance in Staphylococcus aureus by machine learning analysis
    Wang, Hui
    Wang, Shuyi
    Zhao, Chunjiang
    Yin, Yuyao
    Chen, Fengning
    Chen, Hongbin
    INTERNATIONAL JOURNAL OF ANTIMICROBIAL AGENTS, 2021, 58 : 75 - 75
  • [6] The role of artificial intelligence and machine learning in predicting and combating antimicrobial resistance
    Bilal, Hazrat
    Khan, Muhammad Nadeem
    Khan, Sabir
    Shafiq, Muhammad
    Fang, Wenjie
    Khan, Rahat Ullah
    Rahman, Mujeeb Ur
    Li, Xiaohui
    Lv, Qiao-Li
    Xu, Bin
    COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2025, 27 : 423 - 439
  • [7] Predicting Hospital No-Shows Using Machine Learning
    Batool, Tasneem
    Abuelnoor, Mostafa
    El Boutari, Omar
    Aloul, Fadi
    Sagahyroon, Assim
    2020 IEEE INTERNATIONAL CONFERENCE ON INTERNET OF THINGS AND INTELLIGENCE SYSTEM (IOTAIS), 2021, : 142 - 148
  • [8] Predicting Patient Hospital Charges Using Machine Learning
    Shukla D.
    Chandrakar P.
    Radioelectronics and Communications Systems, 2022, 65 (12) : 665 - 673
  • [9] PREDICTING FUTURE CITATION COUNTS USING MACHINE LEARNING
    Mansour, Khalid
    Al-Daoud, Essam
    Al-Karaky, Baha
    2021 22ND INTERNATIONAL ARAB CONFERENCE ON INFORMATION TECHNOLOGY (ACIT), 2021, : 102 - 106
  • [10] Machine learning to predict antimicrobial resistance: future applications in clinical practice?
    Kherabi, Yousra
    Thy, Michael
    Bouzid, Donia
    Antcliffe, David B.
    Rawson, Timothy Miles
    Peiffer-Smadja, Nathan
    INFECTIOUS DISEASES NOW, 2024, 54 (03):