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Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study

BACKGROUND: Real-time prediction is key to prevention and control of infections associated with health-care settings. Contacts enable spread of many infections, yet most risk prediction frameworks fail to account for their dynamics. We developed, tested, and internationally validated a real-time mac...

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Autores principales: Myall, Ashleigh, Price, James R, Peach, Robert L, Abbas, Mohamed, Mookerjee, Sid, Zhu, Nina, Ahmad, Isa, Ming, Damien, Ramzan, Farzan, Teixeira, Daniel, Graf, Christophe, Weiße, Andrea Y, Harbarth, Stephan, Holmes, Alison, Barahona, Mauricio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Author(s). Published by Elsevier Ltd. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9296105/
https://www.ncbi.nlm.nih.gov/pubmed/35868812
http://dx.doi.org/10.1016/S2589-7500(22)00093-0
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author Myall, Ashleigh
Price, James R
Peach, Robert L
Abbas, Mohamed
Mookerjee, Sid
Zhu, Nina
Ahmad, Isa
Ming, Damien
Ramzan, Farzan
Teixeira, Daniel
Graf, Christophe
Weiße, Andrea Y
Harbarth, Stephan
Holmes, Alison
Barahona, Mauricio
author_facet Myall, Ashleigh
Price, James R
Peach, Robert L
Abbas, Mohamed
Mookerjee, Sid
Zhu, Nina
Ahmad, Isa
Ming, Damien
Ramzan, Farzan
Teixeira, Daniel
Graf, Christophe
Weiße, Andrea Y
Harbarth, Stephan
Holmes, Alison
Barahona, Mauricio
author_sort Myall, Ashleigh
collection PubMed
description BACKGROUND: Real-time prediction is key to prevention and control of infections associated with health-care settings. Contacts enable spread of many infections, yet most risk prediction frameworks fail to account for their dynamics. We developed, tested, and internationally validated a real-time machine-learning framework, incorporating dynamic patient-contact networks to predict hospital-onset COVID-19 infections (HOCIs) at the individual level. METHODS: We report an international retrospective cohort study of our framework, which extracted patient-contact networks from routine hospital data and combined network-derived variables with clinical and contextual information to predict individual infection risk. We trained and tested the framework on HOCIs using the data from 51 157 hospital inpatients admitted to a UK National Health Service hospital group (Imperial College Healthcare NHS Trust) between April 1, 2020, and April 1, 2021, intersecting the first two COVID-19 surges. We validated the framework using data from a Swiss hospital group (Department of Rehabilitation, Geneva University Hospitals) during a COVID-19 surge (from March 1 to May 31, 2020; 40 057 inpatients) and from the same UK group after COVID-19 surges (from April 2 to Aug 13, 2021; 43 375 inpatients). All inpatients with a bed allocation during the study periods were included in the computation of network-derived and contextual variables. In predicting patient-level HOCI risk, only inpatients spending 3 or more days in hospital during the study period were examined for HOCI acquisition risk. FINDINGS: The framework was highly predictive across test data with all variable types (area under the curve [AUC]-receiver operating characteristic curve [ROC] 0·89 [95% CI 0·88–0·90]) and similarly predictive using only contact-network variables (0·88 [0·86–0·90]). Prediction was reduced when using only hospital contextual (AUC-ROC 0·82 [95% CI 0·80–0·84]) or patient clinical (0·64 [0·62–0·66]) variables. A model with only three variables (ie, network closeness, direct contacts with infectious patients [network derived], and hospital COVID-19 prevalence [hospital contextual]) achieved AUC-ROC 0·85 (95% CI 0·82–0·88). Incorporating contact-network variables improved performance across both validation datasets (AUC-ROC in the Geneva dataset increased from 0·84 [95% CI 0·82–0·86] to 0·88 [0·86–0·90]; AUC-ROC in the UK post-surge dataset increased from 0·49 [0·46–0·52] to 0·68 [0·64–0·70]). INTERPRETATION: Dynamic contact networks are robust predictors of individual patient risk of HOCIs. Their integration in clinical care could enhance individualised infection prevention and early diagnosis of COVID-19 and other nosocomial infections. FUNDING: Medical Research Foundation, WHO, Engineering and Physical Sciences Research Council, National Institute for Health Research (NIHR), Swiss National Science Foundation, and German Research Foundation.
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spelling pubmed-92961052022-07-20 Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study Myall, Ashleigh Price, James R Peach, Robert L Abbas, Mohamed Mookerjee, Sid Zhu, Nina Ahmad, Isa Ming, Damien Ramzan, Farzan Teixeira, Daniel Graf, Christophe Weiße, Andrea Y Harbarth, Stephan Holmes, Alison Barahona, Mauricio Lancet Digit Health Articles BACKGROUND: Real-time prediction is key to prevention and control of infections associated with health-care settings. Contacts enable spread of many infections, yet most risk prediction frameworks fail to account for their dynamics. We developed, tested, and internationally validated a real-time machine-learning framework, incorporating dynamic patient-contact networks to predict hospital-onset COVID-19 infections (HOCIs) at the individual level. METHODS: We report an international retrospective cohort study of our framework, which extracted patient-contact networks from routine hospital data and combined network-derived variables with clinical and contextual information to predict individual infection risk. We trained and tested the framework on HOCIs using the data from 51 157 hospital inpatients admitted to a UK National Health Service hospital group (Imperial College Healthcare NHS Trust) between April 1, 2020, and April 1, 2021, intersecting the first two COVID-19 surges. We validated the framework using data from a Swiss hospital group (Department of Rehabilitation, Geneva University Hospitals) during a COVID-19 surge (from March 1 to May 31, 2020; 40 057 inpatients) and from the same UK group after COVID-19 surges (from April 2 to Aug 13, 2021; 43 375 inpatients). All inpatients with a bed allocation during the study periods were included in the computation of network-derived and contextual variables. In predicting patient-level HOCI risk, only inpatients spending 3 or more days in hospital during the study period were examined for HOCI acquisition risk. FINDINGS: The framework was highly predictive across test data with all variable types (area under the curve [AUC]-receiver operating characteristic curve [ROC] 0·89 [95% CI 0·88–0·90]) and similarly predictive using only contact-network variables (0·88 [0·86–0·90]). Prediction was reduced when using only hospital contextual (AUC-ROC 0·82 [95% CI 0·80–0·84]) or patient clinical (0·64 [0·62–0·66]) variables. A model with only three variables (ie, network closeness, direct contacts with infectious patients [network derived], and hospital COVID-19 prevalence [hospital contextual]) achieved AUC-ROC 0·85 (95% CI 0·82–0·88). Incorporating contact-network variables improved performance across both validation datasets (AUC-ROC in the Geneva dataset increased from 0·84 [95% CI 0·82–0·86] to 0·88 [0·86–0·90]; AUC-ROC in the UK post-surge dataset increased from 0·49 [0·46–0·52] to 0·68 [0·64–0·70]). INTERPRETATION: Dynamic contact networks are robust predictors of individual patient risk of HOCIs. Their integration in clinical care could enhance individualised infection prevention and early diagnosis of COVID-19 and other nosocomial infections. FUNDING: Medical Research Foundation, WHO, Engineering and Physical Sciences Research Council, National Institute for Health Research (NIHR), Swiss National Science Foundation, and German Research Foundation. The Author(s). Published by Elsevier Ltd. 2022-08 2022-07-19 /pmc/articles/PMC9296105/ /pubmed/35868812 http://dx.doi.org/10.1016/S2589-7500(22)00093-0 Text en © 2022 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active.
spellingShingle Articles
Myall, Ashleigh
Price, James R
Peach, Robert L
Abbas, Mohamed
Mookerjee, Sid
Zhu, Nina
Ahmad, Isa
Ming, Damien
Ramzan, Farzan
Teixeira, Daniel
Graf, Christophe
Weiße, Andrea Y
Harbarth, Stephan
Holmes, Alison
Barahona, Mauricio
Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title_full Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title_fullStr Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title_full_unstemmed Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title_short Prediction of hospital-onset COVID-19 infections using dynamic networks of patient contact: an international retrospective cohort study
title_sort prediction of hospital-onset covid-19 infections using dynamic networks of patient contact: an international retrospective cohort study
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9296105/
https://www.ncbi.nlm.nih.gov/pubmed/35868812
http://dx.doi.org/10.1016/S2589-7500(22)00093-0
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