Documentdetail
ID kaart

oai:pubmedcentral.nih.gov:9170...

Onderwerp
Biological, Health, and Medical Sc...
Auteur
Du, Zhanwei Bai, Yuan Wang, Lin Herrera-Diestra, Jose L Yuan, Zhilu Guo, Renzhong Cowling, Benjamin J Meyers, Lauren A Holme, Petter
Langue
en
Editor

Oxford University Press

Categorie

Oxford Open

Jaar

2022

vermelding datum

13-01-2023

Trefwoorden
health individuals acquaintance random influenza method infection covid-19 peak warning surveillance strategy ehr-based
Metriek

Beschrijving

Targeting surveillance resources toward individuals at high risk of early infection can accelerate the detection of emerging outbreaks.

However, it is unclear which individuals are at high risk without detailed data on interpersonal and physical contacts.

We propose a data-driven COVID-19 surveillance strategy using Electronic Health Record (EHR) data that identifies the most vulnerable individuals who acquired the earliest infections during historical influenza seasons.

Our simulations for all three networks demonstrate that the EHR-based strategy performs as well as the most-connected strategy.

Compared to the random acquaintance surveillance, our EHR-based strategy detects the early warning signal and peak timing much earlier.

On average, the EHR-based strategy has 9.8 days of early warning and 13.5 days of peak timings, respectively, before the whole population.

For the urban network, the expected values of our method are better than the random acquaintance strategy (24% for early warning and 14% in-advance for peak time).

For a scale-free network, the average performance of the EHR-based method is 75% of the early warning and 109% in-advance when compared with the random acquaintance strategy.

If the contact structure is persistent enough, it will be reflected by their history of infection.

Our proposed approach suggests that seasonal influenza infection records could be used to monitor new outbreaks of emerging epidemics, including COVID-19.

This is a method that exploits the effect of contact structure without considering it explicitly.

Du, Zhanwei,Bai, Yuan,Wang, Lin,Herrera-Diestra, Jose L,Yuan, Zhilu,Guo, Renzhong,Cowling, Benjamin J,Meyers, Lauren A,Holme, Petter, 2022, Optimizing COVID-19 surveillance using historical electronic health records of influenza infections, Oxford University Press

Delen

Bron

Artikelen aanbevolen door ES/IODE AI

Systematic druggable genome-wide Mendelian randomization identifies therapeutic targets for lung cancer
agphd1 subtypes replication hykk squamous cell gene carcinoma causal targets mendelian randomization cancer analysis