Skip to main content
Navigate back to homepage
Open search bar.
Open main navigation menu

Main navigation

  • Study
    UCL Portico statue
    Study at UCL

    Being a student at UCL is about so much more than just acquiring knowledge. Studying here gives you the opportunity to realise your potential as an individual, and the skills and tools to thrive.

    • Undergraduate courses
    • Graduate courses
    • Short courses
    • Study abroad
    • Centre for Languages & International Education
  • Research
    Tree-of-Life-MehmetDavrandi-UCL-EastmanDentalInstitute-042_2017-18-800x500-withborder (1)
    Research at UCL

    Find out more about what makes UCL research world-leading, how to access UCL expertise, and teams in the Office of the Vice-Provost (Research, Innovation and Global Engagement).

    • Engage with us
    • Explore our Research
    • Initiatives and networks
    • Research news
  • Engage
    UCL Print room
    Engage with UCL

    Discover the many ways you can connect with UCL, and how we work with industry, government and not-for-profit organisations to tackle tough challenges.

    • Alumni
    • Business partnerships and collaboration
    • Global engagement
    • News and Media relations
    • Public Policy
    • Schools and priority groups
    • Visit us
  • About
    UCL welcome quad
    About UCL

    Founded in 1826 in the heart of London, UCL is London's leading multidisciplinary university, with more than 16,000 staff and 50,000 students from 150 different countries.

    • Who we are
    • Faculties
    • Governance
    • President and Provost
    • Strategy
  • Active parent page: Faculty of Medical Sciences
    • About
    • Study
    • Research
    • Active parent page: News
    • Events
    • Contacts
    • Divisions and Institutes

Analysis: Big data can help doctors predict which Covid patients will become seriously ill

Professor Mahdad Noursadeghi (UCL Division of Infection & Immunity) and Dr Rishi Gupta (UCL Institute for Global Health) discuss the importance of their new online 4C deterioration model, which is helping NHS doctors identify Covid-19 patients likely to deteriorate.

20 January 2021

Dr Rishi Gupta and Professor Mahdad Noursadeghi

Breadcrumb trail

  • Faculty of Medical Sciences

Faculty menu

  • About
  • Study
  • Research
  • Current page: News
  • Events
  • Contacts
  • Divisions and Institutes

The pandemic continues to pose huge challenges to health services worldwide. Hospitals are in crisis as the pace of new Covid-19 cases outstrips their capacity. What makes things particularly difficult is that the coronavirus doesn’t affect everyone in the same way.

Being able to better predict which patients will get seriously ill would allow hospitals to use their stretched resources more effectively. Armed with such information, hospitals could stop admitting patients who are at low risk of deteriorating and avoid administering unnecessary treatments. And for patients at high risk, this information could guide doctors on how and when to treat them.

Researchers have been racing to develop “prediction models” for this very purpose since the start of the pandemic. Prediction models are created by learning from previous patients, and they need to be fed a lot of data. Early models were found to be inadequate for clinical use, mainly because they didn’t include enough data to capture the variety of scenarios that occur among different patients and across different settings.

But there is a study – called ISARIC4C – that is collecting data on patients with Covid-19 from over 250 hospitals across the UK. We believed that this could be a powerful platform for addressing this problem. So, working with colleagues from across the UK, we set about creating a prediction model using ISARIC4C’s data that would be good enough to be used clinically.

Using big data to improve care

We used ISARIC4C data from approximately 75,000 patients across England, Scotland and Wales to develop our prediction tool, which we called the 4C deterioration model. It’s designed to predict the risk of an adult hospitalised with Covid-19 requiring breathing support, needing intensive care or dying during their hospital stay.

The model requires only routinely collected information. It needs to know the person’s age and sex, whether they developed their infection inside or outside hospital, their bedside assessments – such as oxygen level, rate of breathing and consciousness level – and a selection of common blood tests and chest X-ray findings. These 11 data inputs (or “predictors”) were included based on previous reports of them being associated with severeovid-19 together with evidence from the ISARIC4C study associating them with deterioration.

A patient’s predictors are combined together in the 4C deterioration model using an equation, which then provides the percentage likelihood of that patient’s condition worsening. The predictors aren’t equal, but are weighted according to their association with deterioration. For example, the strongest predictor in the model is blood oxygen level (measured using a finger probe). This is because a reduction in oxygen levels is the main mechanism through which Covid-19 causes critical illness.

We tested the accuracy of the predictions in hospitalised Covid-19 patients across nine NHS regions in England, Scotland and Wales. Our analyses showed that the model’s predictions closely matched the observed outcomes of patients. For example, using a measure called a “calibration slope” to see how well predictions matched up with real outcomes, the model scored 0.96 compared with a perfect score of 1. These results offered encouraging evidence that the model could usefully guide medical decision making in all regions.

How doctors can use the tool

January 2020. It’s available alongside our 4C mortality score, a model we made previously that predicts risk of death in Covid-19 patients, and which has been recommended by NHS England to help guide antiviral treatment.

Since age is a very strong predictor of whether a Covid-19 patient will die, we recommend using both models in parallel to ensure that risk isn’t underestimated among younger patients. Young people with Covid-19 can be at low risk of death but high risk of deterioration – a fact not picked up by the 4C mortality score on its own.

These prediction tools are intended to allow inherently subjective medical decision making – which may vary considerably between clinicians – to be more objective and evidence-based, particularly during challenging circumstances when resources are stretched. Predictions may be used to support discussions of prognosis with patients and families, estimate demand for resources, and inform decisions regarding keeping patients in hospital or admitting them to critical care.

Future clinical trials could also evaluate whether the tools might be useful for directing treatments with specific drugs (such as antivirals and immune modulators) towards patients who are most likely to benefit. The tools could even be used to analyse data from clinical trials that have already been run, to see if they can distinguish between patients who did and did not respond to treatment.

Importantly, the ISARIC4C study is ongoing. This means that we can continue to evaluate how the prediction tools are performing in recent groups of patients – and this will allow us to optimise them if required in the future. In addition, making the models freely available will allow researchers and policymakers worldwide to test how well our models work in their own populations.

This article was originally published in The Conversation on 19 January 2021.

Links

  • Read the research paper: Big data can help doctors predict which COVID patients will become seriously ill (The Conversation)
  • Profile: Professor Mahdad Noursadeghi
  • Profile: Dr Rishi Gupta
  • UCL Institute for Global Health

Further information

  • Source: UCL News

Highlights in Medical Sciences

New Dean of Medical Sciences appointed
Professor Emma Morris

Announcement

New Dean of Medical Sciences appointed

Internationally recognised clinician scientist, Professor Emma Morris, will take up the role of Dean of UCL's Faculty of Medical Sciences in August 2025.

28 February 2025

Lung cancer test better predicts survival in early stages of disease
Cancer Cells Dividing

Research breakthrough

Lung cancer test better predicts survival in early stages of disease

A new test developed by UCL Cancer Institute and the Francis Crick Institute can better predict lung cancer survival at diagnosis.

09 January 2025

The King and Queen meet UCL cancer specialists at UCLH
Professor Charles Swanton (left) and Professor Karl Peggs (right) meet with The King and Queen

Royal visits

The King and Queen meet UCL cancer specialists at UCLH

King Charles and Queen Camilla met UCL clinical researchers developing new cancer treatments, along with cancer patients receiving care and their families.

01 May 2024

UCL footer

Visit

  • Bloomsbury Theatre and Studio
  • Library, Museums and Collections
  • UCL Maps
  • UCL Shop
  • Contact UCL

Students

  • Accommodation
  • Current Students
  • Moodle
  • Students' Union

Staff

  • Inside UCL
  • Staff Intranet
  • Work at UCL
  • Human Resources

UCL social media menu

  • Link to Soundcloud
  • Link to Flickr
  • Link to TikTok
  • Link to Youtube
  • Link to Instagram
  • Link to Facebook
  • Link to Twitter

University College London, Gower Street, London, WC1E 6BT

Tel: +44 (0) 20 7679 2000

© 2025 UCL

Essential

  • Disclaimer
  • Freedom of Information
  • Accessibility
  • Cookies
  • Privacy
  • Slavery statement
  • Log in