Minimising inequalities in care access and quality for patients with UTI in Brazil: application of intelligent data linkage and machine learning

Lead Research Organisation: Imperial College London
Department Name: Infectious Disease

Abstract

Brazil reported the highest UTI incidence and UTI-associated mortality and morbidity in the world. Treating UTI has become increasingly difficult to due to antimicrobial resistance (AMR) in the causative pathogens, predominantly Gram-negative bacteria. Inappropriately treated UTI leads to recurrent cases and bacterial invasion to other body parts and drives AMR emergence and spread. Diagnosing, prescribing, and follow-up of UTI remain sub-optimal, with half of the UTI antibiotic prescriptions in primary care being inappropriate. Limited data is available to evaluate of UTI management as it requires tracking patients along care pathway to identify re-prescribing, (re)admissions to primary care and hospitals, and deaths and disabilities due to UTI complications and AMR. Artificial intelligent (AI)/machine-learning (ML) supported by data integration can improve care for UTI by identifying cases, detecting AMR, and guiding patient stratification and antibiotic prescribing.

In this proposal, University of São Paulo (USP) and Imperial College London (ICL) team will co-develop data linkage and case identification algorithms to better monitor UTI across primary and secondary care in Brazil. The linked data enables piloting and validation of three ML-based algorithms to perform risk stratification, guide antibiotic prescribing, and predict adverse events in hospitals. Routine electronic health records (EHR) and laboratory data from primary care units and hospitals in São Caetano do Sul, covering a population of 165,655 residents, will be deterministically linked. Using the linked data, we will develop tiered-case identification algorithms to identify cases and risk factors of community-acquired UTI, assess antibiotic prescribing appropriateness, and evaluate patient outcomes including urine-sourced BSI and other UTI complications. Three ML-based tools will be piloted, including a support Vector Machine (SVM) classifier to estimate the likelihood of UTI and BSI using routine biomarkers, a case-based reasoning (CDR) decision support to guide antibiotic empiric prescribing and review, and a random forest model to predict patient's risk of experiencing acute kidney injury and other adverse events subsequent to antibiotic treatment. This proposal aims to minimise the inequalities in access and quality of care in different socioeconomic groups. The case identification algorithms with probable and definite ontological concepts mapping and automated natural language processing (NLP) will monitor patients who are particularly vulnerable, including those who are socially deprived, with low health or technology literacy, living in care homes, or with multiple long-term conditions.

Led by Dr Silvia Figueiredo Costa (USP) and Prof Alison Holmes (ICL), this multidisciplinary team has strong expertise in infectious disease epidemiology, data analytics, clinical microbiology, health economics, and health management, with a track record of ethical research and implementation of AI to address social determinants of health. São Caetano do Sul is one of the few cities in Brazil with fully implemented and routinised EHR. USP's established connection with local care providers and public health authorities will facilitate secure and timely access to data, and support validation and dissemination of the findings. This proposal is expected to generate direct benefit to patients in Brazil by enhancing surveillance and providing evidence to guide stewardship, infection prevention, and health service delivery. The co-developed, externally validated ML-based tools can be adopted/adapted for management of other infectious diseases and wider health systems strengthening. The USP-ICL partnership directly responds to the UK National Action Plan (NAP) by fostering a sustainable channel for knowledge exchange and innovation co-development, and engaging workforce and society within pluralistic health systems.

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