CCU004: COVID and cardiovascular disease risk prevention

Project lead:
Angela Wood, University of Cambridge

Cardiovascular disease (CVD), comprising mostly heart attacks and strokes, is one of the UK’s leading causes of death and disability. It is far better and cheaper to prevent CVD than to treat patients after they get sick. Consequently, doctors aim to identify patients at high risk of future CVD and offer healthy lifestyle advice and medication, such as statins.

However, studies have found that such advice is poorly communicated to patients. This has resulted in low numbers of patients choosing to make healthy lifestyle changes and take medication, especially amongst patients living in more deprived areas. It is important to improve the way CVD risk is communicated to patients across the whole of society so that more people benefit from advice and medication, and also to reduce inequalities in CVD.

Currently, doctors use risk prediction calculators to help decide whether a patient is at high risk of future CVD. The most commonly used risk prediction calculators in England were developed using data from 2004-2016 from 2.3 million patients in England. More current data is now available from over 56 million patients in England, as well as 10 million patients from Wales, Scotland and Northern Ireland. These datasets also include information about whether a patient has had COVID-19 and any related complications. Patients with COVID-19 complications may be at higher risk of future CVD than patients without COVID-19 complications. Therefore, COVID-19 information may be useful information for doctors in helping to identify the right patients at high risk of CVD.

We plan to validate existing risk prediction models and, where necessary, develop new risk prediction tools to assess and help communicate a patients’ future risk of CVD. Our aims are (i) to better identify patients at high risk of CVD in the UK before, during and post the COVID-19 pandemic and (ii) to improve communication of CVD risk to patients across the whole of society. Ultimately, this should reduce CVD in the UK.

View this project on the Health Data Research Gateway

Sub-projects

CCU004_01: Investigating short-term CVD risk calculated using SCORE2 in young adults with and without morbidities during the COVID-19 pandemic

CCU004_02: Prediction of stroke and COVID-19 death using deep learning and sequential medical histories in a nationwide atrial fibrillation cohort

CCU004_03: Investigating the performance of the SCORE2 family-of-models during different phases of the COVID-19 pandemic

CCU004_04: The role of severe COVID-19 infection in cardio-renal-metabolic syndrome risk and prevention

CCU004_05: Validation of the LIFE-Preserved model, a personalized lifetime prediction of survival and treatment benefit in patients with heart failure with preserved ejection fraction during and after the Covid-19 pandemic

Outputs

A nationwide deep learning pipeline to predict stroke and COVID-19 death in atrial fibrillation

  • Paper submitted to a journal (decision pending)
  • medRxiv preprint 21/12/21 can be viewed here
  • Code and phenotypes used to produce this paper are available in GitHub here

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