Automatic case cluster detection using hospital electronic health record data.

Biol Methods Protoc

Department of Internal Medicine, Section on Infectious Disease, Wake Forest University School of Medicine, Winston-Salem, North Carolina, USA.

Published: March 2023

AI Article Synopsis

  • Contact tracing is crucial for identifying and managing infectious disease outbreaks but can be resource-intensive as it involves locating confirmed cases and their contacts, often using manual data recording.
  • Emerging outbreaks can lead to a rapid increase in contacts, making it challenging to see larger patterns or links between cases.
  • The proposed algorithm employs Bayesian probabilistic case linking using electronic health records to automatically identify case clusters, improving outbreak responses when human contact tracing resources are limited.

Article Abstract

Case detection through contact tracing is a key intervention during an infectious disease outbreak. However, contact tracing is an intensive process where a given contact tracer must locate not only confirmed cases but also identify and interview known contacts. Often these data are manually recorded. During emerging outbreaks, the number of contacts could expand rapidly and beyond this, when focused on individual transmission chains, larger patterns may not be identified. Understanding if particular cases can be clustered and linked to a common source can help to prioritize contact tracing effects and understand underlying risk factors for large spreading events. Electronic health records systems are used by the vast majority of private healthcare systems across the USA, providing a potential way to automatically detect outbreaks and connect cases through already collected data. In this analysis, we propose an algorithm to identify case clusters within a community during an infectious disease outbreak using Bayesian probabilistic case linking and explore how this approach could supplement outbreak responses; especially when human contact tracing resources are limited.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10067150PMC
http://dx.doi.org/10.1093/biomethods/bpad004DOI Listing

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