Introduction
The Omicron variant of SARS-CoV-2 (B.1.1.529) was first detected in November 2021 in Botswana and soon gained global dominance over the previously dominant Delta variant [Reference Mallapaty1, 2]. Since then, several sub-lineages of Omicron have arisen and continuously displaced the previous sub-lineage in the United Kingdom [3]. In April 2022, the Omicron sub-lineage BA.5 emerged, and by June 2022, it had taken dominance over BA.1 and BA.2 in the United Kingdom. BA.5 has spike protein mutations similar to that of BA.1 and BA.2, in addition to others such as L452R and F486V, raising concerns that this sub-lineage had the potential for immune evasion to vaccines and therapeutic agents [Reference Wang4].
Several other sub-lineages have since emerged, with BA.2.75 being declared as a variant of concern in England on 18 July 2022, having first been detected in the country in June 2022. It has a reversion in the gene encoding the spike protein R493Q, similar to that seen in BA.5 [5]. After BA.2.75, the sub-lineage BA.4.6 was declared as a variant of concern on 1 September 2022, in England, having first been detected in the country on 12 May 2022. The BA.4.6 sub-lineage acquired a mutation in spike R346T, a site that has potential antigenic significance [5]. The most recent of the three sub-lineages to be declared as a variant of concern was BQ.1, declared in October 2022 after being first detected in England in April 2022. This sub-lineage has acquired spike mutations L452R and K44T, along with R346T as seen with previous sub-lineages, which is associated with a growth advantage [5, Reference Planas6]. All three Omicron sub-lineages, BA.4.6, BA.2.75, and BQ.1, carry the N460K mutation. In vitro studies suggest that this mutation may confer increased immune evasion, which could lead to increased transmissibility and potentially increased disease severity [Reference Planas6, Reference Qu7]. BQ.1 has a reported growth advantage of 38.6% (95% confidence interval (CI): 33.9–44.0) relative to BA.5.2; this significant growth advantage has also been observed in other countries and quickly became the most dominant variant in some regions globally [3].
Previous separate studies have indicated that the infection severity for Omicron is lower than for Delta, with BA.2 showing slightly lower severity than BA.1 and the BA.4 and BA.5 sub-lineages showing similar severity to BA.2 [Reference Webster8]. There is currently limited information about the severity of disease following infection with the most recent lineages of BA.4.6, BA.2.75, and BQ.1, with some evidence suggesting that there is no difference in severity between BQ.1 and BA.5 [9, 10].
Methods
Study design
We undertook a case–control study which included all episodes of PCR-confirmed SARS-CoV-2 infection in England between 1 August 2022, and 27 November 2022, for which whole-genome sequencing (WGS) indicated infection with Omicron sub-lineages BA.4.6, BA.5, BA.2.75, or BQ.1.1; these were restricted to those which occurred among individuals who attended a National Health Service (NHS) Emergency Department (ED) between one day before their positive test date and 14 days after their positive test date. A second population was used for sensitivity purposes, including only individuals who tested positive on the day of ED attendance.
Individuals were excluded if covariate information on age, sex, and vaccination status was missing. Healthcare workers identified via the SARS-CoV-2 immunity and reinfection evaluation (SIREN) study, which involves regular screening of healthcare workers whose test results thus are not representative of an infection in the wider population eligible for PCR testing, were also excluded [11].
Data sources
Individual-level data on laboratory-confirmed COVID-19 infections were extracted from the Second-Generation Surveillance System (SGSS), the national surveillance system that holds test results from diagnostic laboratories in England for a notifiable infectious disease, and linked to validated WGS data coordinated by the COVID-19 Genomics UK consortium, available on the Cloud Infrastructure for Big Data Microbial Bioinformatics database, using a unique identifier [Reference Twohig12, Reference Connor13].
The UK Health Security Agency (UKHSA) defines variants as genomes that contain a set of defining mutations, allowing consistent detection, monitoring, and surveillance of cases. UKHSA variants are not equivalent to lineages assigned by Pangolin [Reference O’Toole14]. The sequence data used in this analysis is classified using the UKHSA variant definitions for V-22APR-04 (BA.5), V-22SEP-01 (BA.4.6), V-22JUL-01 (BA.2.75), and V-22OCT-01 (BQ.1.1). Further information about variant definitions used in this analysis can be found in the Supplementary Material.
COVID-19 data were then linked to the Emergency Care Data Set and Secondary Uses Service dataset to obtain data on hospital attendance and admission [Reference Bhattacharya15]. Vaccination status was determined using data from the National Immunisation Management Service (NIMS) [16]. Data on COVID-19 deaths was sourced from the UKHSA COVID-19 mortality dataset [Reference Brown17].
Age, sex, and area of residence were extracted from SGSS. National-level index of multiple deprivation (IMD), an area-level measure of relative socioeconomic deprivation, was assigned using the lower super output area (LSOA) of residence association with the first positive specimen within an episode, using a 2019 LSOA lookup from the Office for National Statistics (ONS). Ethnicity was determined using either self-reported ethnicity through Pillar 2 testing or via linkage to the NHS Digital Hospital Episode Statistics Admitted patient care, Accident and Emergency, and Outpatient databases, using categories as classified by the 2001 ONS census [Reference Twohig12].
Outcome and adjustment variable definitions
The outcome used in this analysis has been previously used to assess the severity and it is defined as individuals having attended the ED and being transferred or admitted to a hospital and having a length of stay in the hospital for 2 or more days or those who died during their ED attendance or up to 2 days after their initial date of ED attendance [Reference Abdul Aziz18]. These cases were compared with a control group of COVID-19 patients whose ED attendance ended with discharge and who did not die in the 2 days following ED attendance.
Two population definitions were used in the analysis. Population 1 were individuals who attended the NHS ED between one day before the positive test date and 14 days after their positive test date, as previously described above. Population 2 included only individuals who tested positive on the day of ED attendance. The main analyses were performed using Population 1, and Population 2 was used for sensitivity purposes.
Vaccination status was defined as the time since the last vaccination received at least 14 days before an individual’s positive test. This included any vaccine dose including boosters.
Statistical analysis
Analyses were run separately for confirmed cases of BA.4.6, BA.2.75, or BQ.1.1 against BA.5. Odds ratios (OR) and 95% CI were estimated using conditional logistic regression. Each of the three models was stratified for the week of positive test and further adjusted for age using categorical 10-year age bands, sex, vaccination status, and NHS England region.
Results
Between 1 August 2022 and 27 November 2022, a total of 10,820 people had a sequenced PCR-positive COVID-19 sample and attended the ED according to the criteria described previously. About 445 episodes were excluded from the study (433 missing covariate information and 2 from the SIREN study). Throughout the study period, BA.4.6 episodes were steady between August and October 2022, while BQ.1 and BA.2.75 episodes rose during October and November 2022 (Figure 1).
A total of 10,375 episodes met the study criteria for the primary population, Population 1, and were included in the analysis; of which 5,207 (50.2%) were admitted or died. A total of 1,564 cases and controls were included for BQ.1, more than BA.4.6 and BA.2.75 combined. For all variants, those who experienced an outcome had a greater average age, with cases having an average age of 72.5 years, compared to controls with an average age of 56.8 years (difference 15.7, 95% CI: 14.8–16.7), and cases were more likely to be male than controls (51.4%, 95% CI: 50.0%–52.7%). Across all variants, and for both cases and controls, more than half had had a vaccine greater than or equal to 3 months ago (7,018, 67.6%, Table 1).
A total of 6,417 episodes met the study criteria for Population 2 and were included in the analysis; of which 3,150 (49.1%) were admitted or died. Similar patterns were seen among variants and cases and controls as in the primary population (Supplementary Table S1 and Supplementary Figure S1).
Severity results
There was no evidence for a difference in the odds of admission or death for BA.4.6 (OR = 0.94, 95% CI: 0.82–1.08), BA.2.75 (OR = 0.92, 95% CI: 0.80–1.05), and BQ.1 (OR = 1.02, 95% CI: 0.93–1.11) in an unadjusted analysis. Following adjustment for test week, age group, vaccination status, and NHS region, there remained no evidence for greater odds of admission or death among those infected with BA.2.75 (OR 0.96, 95% CI: 0.84–1.09), BA.4.6 (OR 1.02, 95% CI: 0.88–1.17), or BQ.1 (OR = 1.03, 95% CI: 0.94–1.13) compared to BA.5 (Figure 2).
The results for Population 2, those who tested positive on the same day of attendance to the ED, were similar to those in the primary definition. Following adjustment, there was some evidence for greater odds of admission or death among those infected with BQ.1 (OR = 1.08, 95% CI: 0.95–1.22); however, there was insufficient evidence to conclude that this was not a chance finding. Likewise, there remained no evidence for a difference in the odds of admission or death among those infected with BA.2.75 (OR = 0.94, 95% CI: 0.79–1.11) and BA.4.6 (OR = 1.02, 95% CI: 0.86–1.22) relative to BA.5 (Supplementary Figure S2).
Discussion
Severity of BA.2.75, BA.4.6, and BQ.1 compared to BA.5
The results do not suggest a difference in the risk of hospital admission or death, following attendance to emergency care, for individuals with BA.2.75, BA.4.6, or BQ.1 compared to individuals with BA.5. This follows similar findings seen among other Omicron sub-lineages of not showing evidence of being more severe than their predecessor. [Reference Bager19–Reference Vieillard-Baron21]
Strengths and limitations
This analysis benefitted from the large volumes of data available, including access to hospitalisation data in England and vaccination status. While previous estimates of the relative severity of SARS-CoV-2 variants have used cohort studies in which all people tested positive for a given variant, the reduction in community testing overall in England has meant that a more targeted approach was needed. WGS was prioritised for high-risk groups such as care home residents, individuals eligible for COVID-19 therapeutics, and people admitted to hospital [22]. For this reason, a case–control study design was used to assess the risk of admission for those presenting to the ED. With the change in testing implementation, there is a higher chance of hospital samples being sequenced, and the chosen population may reflect those who were already at a higher risk of hospital admission than the general population.
Presenting to emergency care is already a form of severe infection; therefore, the controls included in the study are likely to be those whose infection is more severe than those infections occurring among the general population. This restriction of only including episodes among people presenting to emergency care may mean that the results obtained here are less generalisable to the general population. However, in the absence of an observed difference in risk between variants and a lack of a mechanism by which one variant might more severely affect the general population and not a high-risk population, any lack of generalisability is of low concern to the validity of these results.
The second population definition is likely more representative of the general population, as it includes individuals who tested positive on attendance to the ED, suggesting that they have limited access to tests outside of healthcare or high-risk settings, indicating they are less likely to be pre-selected for anti-COVID-19 therapeutics. However, testing in this setting could be more sensitive to incidental COVID-19, in which COVID-19 is not the primary reason for attendance to emergency care. To investigate the sensitivity of our results to such factors, we used both definitions in the analysis and observed comparable results between the two definitions.
With the nature of how the sub-lineages of Omicron evolved and emerged over time, there were a limited number of observations in which new variants occurred in temporal proximity with BA.5 episodes, somewhat limiting the power of this analysis. However, the analysis accounted for this by stratifying by week, which also captures difficult-to-measure confounding factors such as hospital capacity, health-seeking behaviours, and risk avoidance behaviour in at-risk populations. Although the study was underpowered to detect the small difference in odds presented in the analysis, a further limitation of using surveillance data, the study was well powered to detect larger differences.
Conclusion
The results described do not indicate that there is a difference in the severity of the illness between the previously dominant Omicron BA.5 sub-lineage and the subsequent Omicron BA.4.6 and BA.2.75 or BQ.1 sub-lineages. These findings will provide key insights into the public health management of Omicron variants in England.
However, future lineages may not follow the same trend seen in the analysis presented. There remains a need for continued surveillance of COVID-19 variants and sub-lineages and their clinical outcomes to inform the public health response to future emerging variants and sub-lineages.
Supplementary material
The supplementary material for this article can be found at https://doi.org/10.1017/S0950268823001760.
Data availability statement
The individual-level nature of the data used risks individuals being identified, or being able to self-identify, if the data are released publicly. Requests for access to these non-publicly available data should be directed to UKHSA.
Acknowledgements
The authors acknowledge Tommy Nyberg, Anne Presanis, and Daniela De Angelis from the MRC Biostatistics Unit, University of Cambridge, for their expert advice.
Author contribution
S.T. and G.D. conceived and designed the study. G.S. prepared the datasets and performed the statistical analysis, supported by S.T. and N.A. G.S., S.T., and S.G.N. drafted the first version of the manuscript. All authors read, revised, and approved the final version of the manuscript.
Funding statement
This research received no specific grant from any funding agency, commercial, or not-for-profit sectors.
Competing interest
None declared.
Ethical standard
UKHSA has legal permission, provided by Regulation 3 of The Health Service (Control of Patient Information) Regulations 2002 to process confidential patient information under Sections 3(i) (a) to (c), 3(i)(d) (i) and (ii) and 3(iii) as part of its outbreak response activities. This study falls within the research activities approved by the UKHSA Research Ethics and Governance Group.