Identification of Distinct Long COVID Clinical Phenotypes Through Cluster Analysis of Self-Reported Symptoms

Grace Kenny(University College Dublin), Kathleen McCann(St. Vincent's University Hospital), Conor O’Brien(University College Dublin), Stefano Savinelli(University College Dublin), Willard Tinago(University College Dublin), Obada Yousif(Wexford General Hospital), John S. Lambert(University College Dublin), Cathal O’Broin(University College Dublin), Eoin R. Feeney(University College Dublin), Eoghan de Barra(Royal College of Surgeons in Ireland), Peter Doran(University College Dublin), Patrick Mallon(University College Dublin), All-Ireland Infectious Diseases (AIID) Cohort Study Group, Aoife G. Cotter, Eavan G. Muldoon, G Sheehan, Tara McGinty(University College Dublin), John S. Lambert(University College Dublin), S Green(University College Dublin), Kelly Leamy(University College Dublin), Grace Kenny(University College Dublin), Kathleen McCann(St. Vincent's University Hospital), Rebecca McCann(University College Dublin), Cathal O’Broin(University College Dublin), Sarmad Waqas(University College Dublin), Stefano Savinelli(University College Dublin), Eoin R. Feeney(University College Dublin), Patrick Mallon(University College Dublin), A. Léon, Sarah Miles, Dana Alalwan, Renu Negi(Royal College of Surgeons in Ireland), Eoghan de Barra(Royal College of Surgeons in Ireland), Samuel McConkey(University College Dublin), Killian Hurley, Imran Sulaiman(University College Dublin), Mary Horgan, Corinna Sadlier(University College Dublin), John C. Eustace, Christine Kelly, T Bracken(Royal College of Surgeons in Ireland), Bryan Whelan(University College Dublin), Jenny G. Low(Wexford General Hospital), Obada Yousif(Royal College of Surgeons in Ireland), Bairbre McNicholas, G. Courtney, Patrick J. Gavin
Open Forum Infectious Diseases
March 7, 2022
Cited by 148Open Access
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Abstract

Abstract Background We aimed to describe the clinical presentation of individuals presenting with prolonged recovery from coronavirus disease 2019 (COVID-19), known as long COVID. Methods This was an analysis within a multicenter, prospective cohort study of individuals with a confirmed diagnosis of COVID-19 and persistent symptoms >4 weeks from onset of acute symptoms. We performed a multiple correspondence analysis (MCA) on the most common self-reported symptoms and hierarchical clustering on the results of the MCA to identify symptom clusters. Results Two hundred thirty-three individuals were included in the analysis; the median age of the cohort was 43 (interquartile range [IQR], 36–54) years, 74% were women, and 77.3% reported a mild initial illness. MCA and hierarchical clustering revealed 3 clusters. Cluster 1 had predominantly pain symptoms with a higher proportion of joint pain, myalgia, and headache; cluster 2 had a preponderance of cardiovascular symptoms with prominent chest pain, shortness of breath, and palpitations; and cluster 3 had significantly fewer symptoms than the other clusters (2 [IQR, 2–3] symptoms per individual in cluster 3 vs 6 [IQR, 5–7] and 4 [IQR, 3–5] in clusters 1 and 2, respectively; P < .001). Clusters 1 and 2 had greater functional impairment, demonstrated by significantly longer work absence, higher dyspnea scores, and lower scores in SF-36 domains of general health, physical functioning, and role limitation due to physical functioning and social functioning. Conclusions Clusters of symptoms are evident in long COVID patients that are associated with functional impairments and may point to distinct underlying pathophysiologic mechanisms of disease.


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