Prevalence of ongoing symptoms following coronavirus (COVID-19) infection in the UK: 3 November 2022

Estimates of the prevalence of self-reported long COVID and associated activity limitation, using UK Coronavirus (COVID-19) Infection Survey data. Experimental Statistics.

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Contact:
Email Daniel Ayoubkhani and Sasha King

Release date:
3 November 2022

Next release:
1 December 2022

1. Main points

  • An estimated 2.1 million people living in private households in the UK (3.3% of the population) were experiencing self-reported long COVID (symptoms continuing for more than four weeks after the first confirmed or suspected coronavirus (COVID-19) infection not explained by something else) as of 1 October 2022; these estimates are only fully comparable with those in the October 2022 bulletin, when prevalence was 2.3 million, and not with any other previous bulletins because of changes in data collection methods.

  • Of people with self-reported long COVID, 262,000 (12%) first had (or suspected they had) COVID-19 less than 12 weeks previously, 1.8 million people (83%) at least 12 weeks previously, 1.1 million (50%) at least one year previously and 507,000 (24%) at least two years previously.

  • Of people with self-reported long COVID, 641,000 (30%) first had (or suspected they had) COVID-19 before Alpha became the main variant; this figure was 257,000 (12%) in the Alpha period, 395,000 (19%) in the Delta period and 749,000 (35%) in the Omicron period.

  • Long COVID symptoms adversely affected the day-to-day activities of 1.6 million people (73% of those with self-reported long COVID), with 333,000 (16%) reporting that their ability to undertake their day-to-day activities had been "limited a lot".

  • Fatigue continued to be the most common symptom reported as part of individuals' experience of long COVID (70% of those with self-reported long COVID), followed by difficulty concentrating (45%), shortness of breath (42%) and muscle ache (42%).

  • As a proportion of the UK population, the prevalence of self-reported long COVID was greatest in people aged 35 to 69 years, females, people living in more deprived areas, those working in social care, those aged 16 years or over who were not working and not looking for work, and those with another activity-limiting health condition or disability.

  • The estimates presented in this analysis relate to self-reported long COVID, as experienced by study participants who responded to a representative survey, rather than clinically diagnosed ongoing symptomatic COVID-19 or post-COVID-19 syndrome in the full population.

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Warning: We have recently moved to a more flexible, remote data collection method. Participants can complete the survey online or by telephone, and swab and blood sample kits are sent through the post and returned by post (or by courier for some participants). The results in this bulletin are based on remote data collection only. Therefore, the published estimates are only comparable with the previous bulletin (6 October 2022) and not with those before October 2022.

If you are worried about new or ongoing symptoms four or more weeks after having COVID-19, there are resources available to help. See Long-term effects of coronavirus (NHS) and Your COVID Recovery (NHS), which can help you to understand what has happened and what you might expect as part of your recovery. The time it takes to recover from COVID-19 is different for everyone and the length of your recovery is not necessarily related to the severity of your initial illness or whether you were in hospital.

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Warning: Long COVID is an emerging phenomenon that is not yet fully understood. These are Experimental Statistics. The estimates are currently under development, which means that they may change as scientific understanding of long COVID improves. We advise caution when using the data.

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2. Prevalence of ongoing symptoms following coronavirus infection in the UK data

Prevalence of ongoing symptoms following coronavirus (COVID-19) infection in the UK
Dataset | Published 3 November 2022
Estimates of the prevalence and characteristics of people with self-reported long COVID and associated activity limitation, using UK Coronavirus (COVID-19) Infection Survey data.

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3. Measuring the data

This analysis was based on 226,223 responses to our Coronavirus (COVID-19) Infection Survey (CIS) collected over the four-week period ending 1 October 2022, weighted to represent people aged 2 years and over living in private households in the UK.

All participants provided responses remotely during the current four-week period. The estimates reported in last month's Prevalence of ongoing symptoms following COVID-19 infection in the UK bulletin were also based on remotely-collected data, however, the estimates reported in September's bulletin were based on a mixture of remote and face-to-face data collection. Estimates in earlier bulletins were based entirely on face-to-face responses. Therefore, these estimates are only fully comparable with those in October's bulletin and not with those in earlier bulletins.

Self-reported long COVID was defined as symptoms persisting for more than four weeks after the first confirmed or suspected COVID-19 infection that were not explained by something else. Parents and carers answered the survey questions on behalf of children aged under 12 years.

Date of first (suspected) COVID-19 infection was taken to be the earliest of:

  • the date of first positive test for COVID-19 during study follow-up

  • the date of first self-reported positive test for COVID-19 outside of study follow-up

  • the date of first suspected COVID-19 infection, as reported by the participant

Those with an unknown date of first (suspected) COVID-19 infection are in the estimates for "any duration" but not in duration-specific estimates. All estimates by duration are calculated from the date of the first (suspected) COVID-19 infection and reinfections are not taken into consideration.

The survey questions relating to self-reported long COVID can be found in Section F of the enrolment and Section D of the follow-up CIS questionnaires.

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4. Strengths and limitations

Strengths

This analysis is based on data from the Coronavirus (COVID-19) Infection Survey (CIS), a large study that provides an important indicator of national COVID-19 positivity. CIS responses are weighted to represent the UK population in private households according to age group, sex, and region. The sampling weights are adjusted to account for non-response to the survey over the reference period.

All participants had the opportunity to answer the survey questions relating to long COVID, regardless of whether they had previously tested positive for COVID-19.

Limitations

Like all household surveys, not all sampled households invited to participate in the study actually enrol and individuals may drop out over time (see Tables 2a to 2f of the technical dataset accompanying the latest Coronavirus (COVID-19) Infection Survey statistical bulletin for survey response rates). Our estimates are weighted to account for non-response. However, bias may be introduced if non-response is related to long COVID, for example, participants being more willing, or less able, to continue in the study because of their symptoms.

Long COVID status was self-reported by study participants and so misclassification is possible. For example, some participants may be experiencing symptoms because of a health condition unrelated to COVID-19 infection. Others who do have symptoms caused by COVID-19 may not describe themselves as experiencing long COVID (for example, because of lack of awareness of the term or not knowing they were initially infected with COVID-19).

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6. Cite this statistical bulletin

Office for National Statistics (ONS), released 3 November 2022, ONS website, statistical bulletin, Prevalence of ongoing symptoms following coronavirus (COVID-19) infection in the UK: 3 November 2022

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Contact details for this Statistical bulletin

Daniel Ayoubkhani and Sasha King
health.data@ons.gov.uk
Telephone: +44 1633 455825