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The predictive role of symptoms in COVID-19 diagnostic models: A longitudinal insight

Published online by Cambridge University Press:  22 January 2024

Olivia Bird
Affiliation:
Vaccine Institute, St. George’s University of London, St. George’s University Hospitals National Health Service Foundation Trust, London, United Kingdom Oxford University Hospitals NHS Foundation Trust, Oxford, United Kingdom
Eva P. Galiza
Affiliation:
Vaccine Institute, St. George’s University of London, St. George’s University Hospitals National Health Service Foundation Trust, London, United Kingdom
David Neil Baxter
Affiliation:
Medical Education, Stockport National Health Service Foundation Trust, Stepping Hill Hospital, Stockport, United Kingdom
Marta Boffito
Affiliation:
Chelsea and Westminster Hospital, National Health Service Foundation Trust, London, United Kingdom
Duncan Browne
Affiliation:
Faculty of Medicine, Imperial College London, London, United Kingdom Endocrinology/Diabetes/General Medicine, Royal Cornwall Hospitals National Health Service Trust, Truro, United Kingdom
Fiona Burns
Affiliation:
Faculty of Population Health Sciences, Institute for Global Health, University College London, and Royal Free London National Health Service Foundation Trust, London, United Kingdom
David R. Chadwick
Affiliation:
Centre for Clinical Infection, South Tees Hospitals National Health Service Foundation Trust, James Cook University Hospital, Middlesbrough, United Kingdom
Rebecca Clark
Affiliation:
Layton Medical Centre, Blackpool, United Kingdom
Catherine A. Cosgrove
Affiliation:
Vaccine Institute, St. George’s University of London, St. George’s University Hospitals National Health Service Foundation Trust, London, United Kingdom
James Galloway
Affiliation:
Centre for Rheumatic Disease, Kings College London, London, United Kingdom
Anna L. Goodman
Affiliation:
Department of Infectious Diseases, Guy’s and St Thomas’ National Health Service Foundation Trust, London, United Kingdom Medical Research Council Clinical Trials Unit, University College London, London, United Kingdom
Amardeep Heer
Affiliation:
Lakeside Healthcare Research, Lakeside Surgeries Corby, Northants, United Kingdom
Andrew Higham
Affiliation:
Gastrointestinal and Liver Services, University Hospitals of Morecambe Bay National Health Service Foundation Trust, Kendal, United Kingdom
Shalini Iyengar
Affiliation:
Accelerated Enrollment Solutions, Synexus Hexham Dedicated Research Site, Hexham General Hospital, Hexham, United Kingdom
Christopher Jeanes
Affiliation:
Department of Microbiology, Norfolk and Norwich University Hospitals National Health Service Foundation Trust, Norfolk, United Kingdom
Philip A. Kalra
Affiliation:
Nephrology, Salford Royal Hospital, Northern Care Alliance National Health Service Foundation Trust, Salford, United Kingdom
Christina Kyriakidou
Affiliation:
Accelerated Enrollment Solutions, Synexus Midlands Dedicated Research Site, Birmingham, United Kingdom
Judy M. Bradley
Affiliation:
Dentistry and Biomedical Sciences, School of Medicine, Wellcome-Wolfson Institute for Experimental Medicine, Queen’s University of Belfast, Belfast, United Kingdom
Chigomezgo Munthali
Affiliation:
Accelerated Enrollment Solutions, Synexus Merseyside Dedicated Research Site, Burlington House, Liverpool, United Kingdom
Angela M. Minassian
Affiliation:
Centre for Clinical Vaccinology and Tropical Medicine, University of Oxford, Oxford, United Kingdom Oxford Health National Health Service Foundation Trust, Warneford Hospital, Oxford, United Kingdom
Fiona McGill
Affiliation:
Department of Microbiology, Leeds Teaching Hospitals National Health Service Trust, Leeds, United Kingdom
Patrick Moore
Affiliation:
The Adam Practice, Dorset, United Kingdom University Hospital Southampton National Health Service Foundation Trust, Southampton, United Kingdom
Imrozia Munsoor
Affiliation:
Accelerated Enrollment Solutions, Synexus Glasgow Dedicated Research Site, Glasgow, United Kingdom
Helen Nicholls
Affiliation:
Accelerated Enrollment Solutions, Synexus Wales Dedicated Research Site, Cardiff, United Kingdom
Orod Osanlou
Affiliation:
School of Medical Sciences (Pharmacology/Pharmacy), Bangor University, Wales, United Kingdom Clinical Pharmacology and Therapeutics/General Internal Medicine, Betsi Cadwaladr University Health Board, Wales, United Kingdom
Jonathan Packham
Affiliation:
Academic Unit of Population and Lifespan Sciences, University of Nottingham, Nottingham, United Kingdom Department of Rheumatology, Haywood Hospital, Midlands Partnership National Health Service Foundation Trust, Stafford, United Kingdom
Carol H. Pretswell
Affiliation:
Accelerated Enrollment Solutions, Synexus Lancashire Dedicated Research Site, Matrix Park Buckshaw Village, Chorley, United Kingdom
Alberto San Francisco Ramos
Affiliation:
Vaccine Institute, St. George’s University of London, St. George’s University Hospitals National Health Service Foundation Trust, London, United Kingdom
Dinesh Saralaya
Affiliation:
National Institute for Health Research, Patient Recruitment Centre, Bradford Teaching Hospitals National Health Service Foundation Trust, Bradford, United Kingdom
Ray P. Sheridan
Affiliation:
Geriatric Medicine, Royal Devon University Healthcare, Exeter, United Kingdom
Richard Smith
Affiliation:
Department of Nephrology, East Suffolk and North Essex National Health Service Foundation Trust, Colchester, United Kingdom
Roy L. Soiza
Affiliation:
Aberdeen Royal Infirmary and Ageing Clinical and Experimental Research Group, University of Aberdeen, Aberdeen, United Kingdom
Pauline A. Swift
Affiliation:
Renal Services, Epsom and St Helier University Hospitals National Health Service Trust, London, United Kingdom
Emma C. Thomson
Affiliation:
School of Infection & Immunity, Medical Research Council-University of Glasgow Centre for Virus Research, and Queen Elizabeth University Hospital, National Health Service Greater Glasgow & Clyde, Glasgow, United Kingdom
Jeremy Turner
Affiliation:
Department of Diabetes and Endocrinology, Norfolk and Norwich University Hospitals National Health Service Foundation Trust, Norfolk, United Kingdom
Marianne Elizabeth Viljoen
Affiliation:
Accelerated Enrollment Solutions, Synexus Manchester Dedicated Research Site, Kilburn House, Manchester, United Kingdom
Paul T. Heath
Affiliation:
Vaccine Institute, St. George’s University of London, St. George’s University Hospitals National Health Service Foundation Trust, London, United Kingdom
Irina Chis Ster*
Affiliation:
Institute of Infection and Immunity, George’s University of London, London, United Kingdom
*
Corresponding author: Irina Chis Ster; Email: ichisste@sgul.ac.uk
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Abstract

To investigate the symptoms of SARS-CoV-2 infection, their dynamics and their discriminatory power for the disease using longitudinally, prospectively collected information reported at the time of their occurrence. We have analysed data from a large phase 3 clinical UK COVID-19 vaccine trial. The alpha variant was the predominant strain. Participants were assessed for SARS-CoV-2 infection via nasal/throat PCR at recruitment, vaccination appointments, and when symptomatic. Statistical techniques were implemented to infer estimates representative of the UK population, accounting for multiple symptomatic episodes associated with one individual. An optimal diagnostic model for SARS-CoV-2 infection was derived. The 4-month prevalence of SARS-CoV-2 was 2.1%; increasing to 19.4% (16.0%–22.7%) in participants reporting loss of appetite and 31.9% (27.1%–36.8%) in those with anosmia/ageusia. The model identified anosmia and/or ageusia, fever, congestion, and cough to be significantly associated with SARS-CoV-2 infection. Symptoms’ dynamics were vastly different in the two groups; after a slow start peaking later and lasting longer in PCR+ participants, whilst exhibiting a consistent decline in PCR- participants, with, on average, fewer than 3 days of symptoms reported. Anosmia/ageusia peaked late in confirmed SARS-CoV-2 infection (day 12), indicating a low discrimination power for early disease diagnosis.

Information

Type
Original Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press
Figure 0

Table 1. Qualifying symptoms of suspected COVID-19

Figure 1

Table 2. PCR and symptomatic status of all study participants; 3,320 (21.9%) of all participants had at least one symptomatic episode and 317 (2.1%) of all had a PCR+ episode

Figure 2

Figure 1. Age distribution in the study sample compared to that of the UK population, stratified by gender and ethnicity.

Figure 3

Table 3. Cohort demographic characteristics stratified by participant PCR status

Figure 4

Figure 2. Proportions of participants with specific symptoms, overall, and stratified by PCR status, as shown in the Supplementary Material. For example, overall, 16.9% of all participants reported runny nose at least once but the figure is much higher (72.6%) among PCR+ contrasting with 15.7% among PCR−.

Figure 5

Figure 3. Predicted probabilities of PCR+ status, stratified by the presence of specific symptoms, and their 95%CIs. Predictions related to each specific symptom are unadjusted for the others and are based on a binary regression with robust standard errors accounting for multiple episodes with events associated with a participant. For example, in participants with loss of taste or smell, regardless of the presence or absence of other symptoms, the probability of a positive PCR test is 0.319 (31.9%).

Figure 6

Figure 4. Predicted mean of number of days specific symptoms were reported during an episode and their 95%CIs. The red values (PCR+) are referred to the left axis and the blue values (PCR−) are referred to the right axis. The analysis is restricted to symptomatic participants only. For example, for those participants reporting cough as part of an episode, the mean of the number of days was 6–7 days in PCR+ participants and 2–3 days in PCR−.

Figure 7

Table 4. Fold-effects (risk ratios) of demographics and their 95%CIs on the mean number of days of specific symptoms reported during a symptomatic episode

Figure 8

Figure 5. Daily probabilities of reporting specific symptoms starting with the first report conditioned on PCR+ participants and their corresponding illness episode, that is, ignoring the symptomatic episodes associated with these participants which were PCR-. Non-parametric methodology was used to capture the shape of the individual longitudinal daily reports.

Figure 9

Figure 6. Daily probabilities of reporting specific symptoms starting with the first report using PCR- symptomatic episodes across all participants.

Figure 10

Figure 7. Probabilities of daily occurrences of various symptoms have similar magnitude in both PCR+ and PCR− groups on the first reporting day whilst they peak up later during illness evolution in PCR+ patients and decline in those PCR−, also reflected in previous figures 5 and 6.

Figure 11

Figure 8. Effect (OR) of reporting a specific symptom for 3 days during an episode, irrespective of other symptoms reported during that episode.

Figure 12

Table 5. Optimal model for PCR+ based on symptoms and population characteristics on a two-level weighted logistic regression analysis

Figure 13

Figure 9. Discrimination power of individual symptoms based on the temporally ordered reports restricted to the first 1, 2, 3 to longer than 15 days after the symptomatic illness episode starts.

Figure 14

Figure 10. Estimated discrimination power of each classifier. The plot and the AUC estimate follow a maximum likelihood ROC-weighted regression analysis uncontrolled for age and ethnicity.

Figure 15

Table 6. Effect of age and ethnicity on the ROC curve and subsequently on discrimination power associated with each classifier in the model.

Figure 16

Figure 11. Effect of age and ethnicity on the ROC curve and subsequently on discrimination power associated with each classifier in the model. The colours indicating specific symptom are similar to those displayed in Figure 10.

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