Revealing antibiotic cross-resistance patterns in hospitalized patients through Bayesian network modelling

2020
Objectives: Microbial resistance exhibits dependency patterns between different antibiotics, termed cross-resistance and cross-sensitivity. These patterns differ between experimental and clinical settings. It is unclear whether the differences result from biological reasons or from confounding, biasing results found in clinical settings. We set out to elucidate the underlying dependency patterns between resistance to different antibiotics from clinical data, while accounting for patient characteristics and previous antibiotic usage. Methods: Additive Bayesian network modelling was employed to simultaneously estimate relationships between variables in a dataset of bacterial cultures derived from hospitalized patients and tested for resistance to multiple antibiotics. Data contained resistance results, patient demographics, and previous antibiotic usage, for five bacterial species: E. coli (n=1054), K. pneumoniae (n=664), P. aeruginosa (n=571), CoNS (n=495), and P. mirabilis (n=415). Results: All links between resistance to the various antibiotics were positive. Multiple direct links between resistance of antibiotics from different classes were observed across bacterial species. For example, resistance to gentamicin in E.coli was directly linked with resistance to ciprofloxacin (OR = 8.39, 95%CI[5.58, 13.30]) and sulfamethoxazole-trimethoprim (OR = 2.95, 95%CI[1,97, 4.51]). In addition, resistance to various antibiotics was directly linked with previous antibiotic usage. Conclusions: Robust relationships among resistance to antibiotics belonging to different classes, as well as resistance being linked to having taken antibiotics of a different class, exist even when taking into account multiple covariate dependencies. These relationships could help inform choices of antibiotic treatment in clinical settings.
    • Correction
    • Source
    • Cite
    • Save
    43
    References
    3
    Citations
    NaN
    KQI
    []
    Baidu
    map