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Clustering Analysis Identified Three Long COVID Phenotypes and Their Association with General Health Status and Working Ability

Authors :
Kisiel, Marta A.
Lee, Seika
Malmquist, Sara
Rykatkin, Oliver
Holgert, Sebastian
Janols, Helena
Janson, Christer
Zhou, Xingwu
Kisiel, Marta A.
Lee, Seika
Malmquist, Sara
Rykatkin, Oliver
Holgert, Sebastian
Janols, Helena
Janson, Christer
Zhou, Xingwu
Publication Year :
2023

Abstract

Background/aim: This study aimed to distinguish different phenotypes of long COVID through the post-COVID syndrome (PCS) score based on long-term persistent symptoms following COVID-19 and evaluate whether these symptoms affect general health and work ability. In addition, the study identified predictors for severe long COVID. Method: This cluster analysis included cross-sectional data from three cohorts of patients after COVID-19: non-hospitalized (n = 401), hospitalized (n = 98) and those enrolled at the post-COVID outpatient's clinic (n = 85). All the subjects responded to the survey on persistent long-term symptoms and sociodemographic and clinical factors. K-Means cluster analysis and ordinal logistic regression were used to create PCS scores that were used to distinguish patients' phenotypes. Results: 506 patients with complete data on persistent symptoms were divided into three distinct phenotypes: none/mild (59%), moderate (22%) and severe (19%). The patients with severe phenotype, with the predominating symptoms were fatigue, cognitive impairment and depression, had the most reduced general health status and work ability. Smoking, snuff, body mass index (BMI), diabetes, chronic pain and symptom severity at COVID-19 onset were factors predicting severe phenotype. Conclusion: This study suggested three phenotypes of long COVID, where the most severe was associated with the highest impact on general health status and working ability. This knowledge on long COVID phenotypes could be used by clinicians to support their medical decisions regarding prioritizing and more detailed follow-up of some patient groups.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1400057762
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.3390.jcm12113617