[HTML][HTML] Estimating the impact of health systems factors on antimicrobial resistance in priority pathogens

R Awasthi, V Rakholia, S Agrawal, LS Dhingra… - Journal of Global …, 2022 - Elsevier
R Awasthi, V Rakholia, S Agrawal, LS Dhingra, A Nagori, H Kaur, T Sethi
Journal of Global Antimicrobial Resistance, 2022Elsevier
Objectives Antimicrobial resistance (AMR) is the next big pandemic that threatens humanity.
The One Health approach to AMR requires quantification of interactions between health,
demographic, socioeconomic, environmental, and geopolitical factors to design
interventions. This study is focused on learning health system factors on global AMR.
Methods This study analysed longitudinal data (2004–2017) of AMR having 6 33 820
isolates from 70 middle and high-income countries. We integrated AMR data with the Global …
Objectives
Antimicrobial resistance (AMR) is the next big pandemic that threatens humanity. The One Health approach to AMR requires quantification of interactions between health, demographic, socioeconomic, environmental, and geopolitical factors to design interventions. This study is focused on learning health system factors on global AMR.
Methods
This study analysed longitudinal data (2004–2017) of AMR having 6 33 820 isolates from 70 middle and high-income countries. We integrated AMR data with the Global Burden of Disease (GBD), Governance (WGI), and Finance data sets to find AMR's unbiased and actionable determinants. We chose a Bayesian decision network (BDN) approach within the causal modelling framework to quantify determinants of AMR. Further, we integrated Bayesian networks’ global knowledge discovery approach with discriminative machine learning to predict individual-level antibiotic susceptibility in patients.
Results
From MAR (multiple antibiotic resistance) scores, we found a non-uniform spread pattern of AMR. Components-level analysis revealed that governance, finance, and disease burden variables strongly correlate with AMR. From the Bayesian network analysis, we found that access to immunization, obstetric care, and government effectiveness are strong, actionable factors in reducing AMR, confirmed by what-if analysis. Finally, our discriminative machine learning models achieved an individual-level AUROC (Area under receiver operating characteristic curve) of 0.94 (SE = 0.01) and 0.89 (SE = 0.002) to predict Staphylococcus aureus resistance to ceftaroline and oxacillin, respectively.
Conclusion
Causal machine learning revealed that immunisation strategies and quality of governance are vital, actionable interventions to reduce AMR.
Elsevier
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