Study protocol: Comparison of different risk prediction modelling approaches for COVID-19 related death using the OpenSAFELY platform

Elizabeth J Williamson ORCID logo; John Tazare ORCID logo; Krishnan Bhaskaran ORCID logo; Alex J Walker; Helen I McDonald ORCID logo; Laurie Tomlinson ORCID logo; Sebastian Bacon; Chris Bates; Helen J Curtis ORCID logo; Harriet Forbes ORCID logo; +32 more... Caroline Minassian ORCID logo; Caroline E Morton; Emily Nightingale ORCID logo; Amir Mehrkar; Dave Evans; Brian D Nicholson; David Leon ORCID logo; Peter Inglesby; Brian MacKenna; Jonathan Cockburn; Nicholas G Davies ORCID logo; William Hulme ORCID logo; Jessica Morley; Ian J Douglas ORCID logo; Christopher T Rentsch ORCID logo; Rohini Mathur ORCID logo; Angel Wong ORCID logo; Anna Schultze ORCID logo; Richard Croker ORCID logo; John Parry ORCID logo; Frank Hester; Sam Harper; Rafael Perera; Richard Grieve ORCID logo; David Harrison; Ewout Steyerberg; Rosalind M Eggo ORCID logo; Karla Diaz-Ordaz ORCID logo; Ruth Keogh ORCID logo; Stephen JW Evans ORCID logo; Liam Smeeth ORCID logo; Ben Goldacre ORCID logo; (2020) Study protocol: Comparison of different risk prediction modelling approaches for COVID-19 related death using the OpenSAFELY platform. Wellcome Open Research, 5. p. 243. DOI: 10.12688/wellcomeopenres.16353.1
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<ns4:p>On March 11th 2020, the World Health Organization characterised COVID-19 as a pandemic. Responses to containing the spread of the virus have relied heavily on policies involving restricting contact between people. Evolving policies regarding shielding and individual choices about restricting social contact will rely heavily on perceived risk of poor outcomes from COVID-19. In order to make informed decisions, both individual and collective, good predictive models are required.  </ns4:p><ns4:p> For outcomes related to an infectious disease, the performance of any risk prediction model will depend heavily on the underlying prevalence of infection in the population of interest. Incorporating measures of how this changes over time may result in important improvements in prediction model performance. </ns4:p><ns4:p> This protocol reports details of a planned study to explore the extent to which incorporating time-varying measures of infection burden over time improves the quality of risk prediction models for COVID-19 death in a large population of adult patients in England. To achieve this aim, we will compare the performance of different modelling approaches to risk prediction, including static cohort approaches typically used in chronic disease settings and landmarking approaches incorporating time-varying measures of infection prevalence and policy change, using COVID-19 related deaths data linked to longitudinal primary care electronic health records data within the OpenSAFELY secure analytics platform.</ns4:p>


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