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Early detection of ICU-acquired infections using high-frequency electronic health record data

Title: Early detection of ICU-acquired infections using high-frequency electronic health record data
Authors: Varkila, Meri R J; Lancia,Giacomo; van Smeden, Maarten; Bonten, Marc J M; Spitoni, Cristian; Cremer, Olaf L; Infection & Immunity; Sepsis and Inflammation; Datascience; Onderwijscentrum; Epi Infectieziekten; Epidemiology of Sepsis & Inflammation in Critically Ill Patients; JC onderzoeksprogramma Infectious Diseases; Epi Infectieziekten Team 1; Medische Staf Intensive Care
Publication Year: 2025
Subject Terms: Adult; Aged; Cross Infection/diagnosis; Early Diagnosis; Electronic Health Records/statistics & numerical data; Female; Humans; Intensive Care Units/statistics & numerical data; Male; Middle Aged; Netherlands; Neural Networks; Computer; Risk Assessment/methods; Sepsis/diagnosis; Journal Article
Description: BACKGROUND: Nosocomial infections are a major cause of morbidity and mortality in the ICU. Earlier identification of these complications may facilitate better clinical management and improve outcomes. We developed a dynamic prediction model that leveraged high-frequency longitudinal data to estimate infection risk 48 h ahead of clinically overt deterioration. METHODS: We used electronic health record data from consecutive adults who had been treated for > 48 h in a mixed tertiary ICU in the Netherlands enrolled in the Molecular Diagnosis and Risk Stratification of Sepsis (MARS) cohort from 2011 to 2018. All infectious episodes were prospectively adjudicated. ICU-acquired infection (ICU-AI) risk was estimated using a Cox landmark model with high-resolution vital sign data processed via a convolutional neural network (CNN). RESULTS: We studied 32,178 observation days in 4444 patients and observed 1197 infections, yielding an overall infection risk of 3.5% per ICU day. Discrimination of the composite model was moderate with c-index values varying between 0.64 (95%CI: 0.58-0.69) and 0.72 (95%CI: 0.66-0.78) across timepoints, with some overestimation of ICU-AI risk overall (mean calibration slope 0.58). Compared to 38 common features of infection, a CNN risk score derived from five vital sign signals consistently ranked as a strong predictor of ICU-AI across all time points but did not substantially change risk prediction of ICU-AI. CONCLUSION: A dynamic modelling approach that incorporates machine learning of high-frequency vital sign data shows promise as a continuous bedside index of infection risk. Further validation is needed to weigh added complexity and interpretability of the deep learning model against potential benefits for clinical decision support in the ICU.
Document Type: article in journal/newspaper
File Description: application/pdf
Language: English
ISSN: 1472-6947
Relation: https://dspace.library.uu.nl/handle/1874/466992
Availability: https://dspace.library.uu.nl/handle/1874/466992
Rights: info:eu-repo/semantics/OpenAccess
Accession Number: edsbas.A37F27F4
Database: BASE