Deriving and validating a risk prediction model for long COVID-19 : protocol for an observational cohort study using linked Scottish data
Daines, Luke and Mulholland, Rachel H and Vasileiou, Eleftheria and Hammersley, Vicky and Weatherill, David and Katikireddi, Srinivasa Vittal and Kerr, Steven and Moore, Emily and Pesenti, Elisa and Quint, Jennifer K and Shah, Syed Ahmar and Shi, Ting and Simpson, Colin R and Robertson, Chris and Sheikh, Aziz (2022) Deriving and validating a risk prediction model for long COVID-19 : protocol for an observational cohort study using linked Scottish data. BMJ Open, 12 (7). e059385. ISSN 2044-6055 (https://doi.org/10.1136/bmjopen-2021-059385)
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Abstract
Introduction: COVID-19 is commonly experienced as an acute illness, yet some people continue to have symptoms that persist for weeks, or months (commonly referred to as ‘long-COVID’). It remains unclear which patients are at highest risk of developing long-COVID. In this protocol, we describe plans to develop a prediction model to identify individuals at risk of developing long-COVID. Methods and analysis: We will use the national Early Pandemic Evaluation and Enhanced Surveillance of COVID-19 (EAVE II) platform, a population-level linked dataset of routine electronic healthcare data from 5.4 million individuals in Scotland. We will identify potential indicators for long-COVID by identifying patterns in primary care data linked to information from out-of-hours general practitioner encounters, accident and emergency visits, hospital admissions, outpatient visits, medication prescribing/dispensing and mortality. We will investigate the potential indicators of long-COVID by performing a matched analysis between those with a positive reverse transcriptase PCR (RT-PCR) test for SARS-CoV-2 infection and two control groups: (1) individuals with at least one negative RT-PCR test and never tested positive; (2) the general population (everyone who did not test positive) of Scotland. Cluster analysis will then be used to determine the final definition of the outcome measure for long-COVID. We will then derive, internally and externally validate a prediction model to identify the epidemiological risk factors associated with long-COVID. Ethics and dissemination: The EAVE II study has obtained approvals from the Research Ethics Committee (reference: 12/SS/0201), and the Public Benefit and Privacy Panel for Health and Social Care (reference: 1920-0279). Study findings will be published in peer-reviewed journals and presented at conferences. Understanding the predictors for long-COVID and identifying the patient groups at greatest risk of persisting symptoms will inform future treatments and preventative strategies for long-COVID.
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Item type: Article ID code: 81430 Dates: DateEvent6 July 2022Published17 June 2022Accepted23 November 2021SubmittedSubjects: Science > Mathematics Department: Strategic Research Themes > Health and Wellbeing
Faculty of Science > Mathematics and StatisticsDepositing user: Pure Administrator Date deposited: 11 Jul 2022 15:27 Last modified: 11 Nov 2024 13:33 URI: https://strathprints.strath.ac.uk/id/eprint/81430