Litcius/Paper detail

The future of healthcare‐associated infection surveillance: Automated surveillance and using the potential of artificial intelligence

Suzanne D. van der Werff, Stephanie M. van Rooden, Aron Henriksson, Michael Behnke, Seven Johannes Sam Aghdassi, Maaike S. M. van Mourik, Pontus Nauclér

2025Journal of Internal Medicine14 citationsDOIOpen Access PDF

Abstract

Healthcare-associated infections (HAIs) are common adverse events, and surveillance is considered a core component of effective HAI reduction programmes. Recently, efforts have focused on automating the traditional manual surveillance process by utilizing data from electronic health record (EHR) systems. Using EHR data for automated surveillance, algorithms have been developed to identify patients with (ventilator-associated) pneumonia and (catheter-related) bloodstream, surgical site, (catheter-associated) urinary tract and Clostridioides difficile infections (sensitivity 54.2%-100%, specificity 63.5%-100%). Mostly methods based on natural language processing have been applied to extract information from unstructured clinical information. Further developments in artificial intelligence (AI), such as large language models, are expected to support and improve different aspects within the surveillance process; for example, more precise identification of patients with HAI. However, AI-based methods have been applied less frequently in automated surveillance and more frequently for (early) prediction, particularly for sepsis. Despite heterogeneity in settings, populations, definitions and model designs, AI-based models have shown promising results, with moderate to very good performance (accuracy 61%-99%) and predicted sepsis within 0-40 h before onset. AI-based prediction models detecting patients at risk of developing different HAIs should be explored further. The continuous evolution of AI and automation will transform HAI surveillance and prediction, offering more objective and timely infection rates and predictions. The implementation of (AI-supported) automated surveillance and prediction systems for HAI in daily practice remains scarce. Successful development and implementation of these systems demand meeting requirements related to technical capabilities, governance, practical and regulatory considerations and quality monitoring.

Topics & Concepts

MedicineHealth careElectronic surveillanceIntensive care medicineArtificial intelligenceMedical emergencyData scienceComputer scienceComputer securityEconomicsEconomic growthSepsis Diagnosis and TreatmentNosocomial Infections in ICUEmergency and Acute Care Studies