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Meta-Analysis
. 2021 Oct:92:55-70.
doi: 10.1016/j.ejim.2021.06.009. Epub 2021 Jun 16.

Prevalence of post-COVID-19 symptoms in hospitalized and non-hospitalized COVID-19 survivors: A systematic review and meta-analysis

Affiliations
Meta-Analysis

Prevalence of post-COVID-19 symptoms in hospitalized and non-hospitalized COVID-19 survivors: A systematic review and meta-analysis

César Fernández-de-Las-Peñas et al. Eur J Intern Med. 2021 Oct.

Abstract

Background: Single studies support the presence of several post-COVID-19 symptoms; however, no meta-analysis differentiating hospitalized and non-hospitalized patients has been published to date. This meta-analysis analyses the prevalence of post-COVID-19 symptoms in hospitalized and non-hospitalized patients recovered from COVID-19 .

Methods: MEDLINE, CINAHL, PubMed, EMBASE, and Web of Science databases, as well as medRxiv and bioRxiv preprint servers were searched up to March 15, 2021. Peer-reviewed studies or preprints reporting data on post-COVID-19 symptoms collected by personal, telephonic or electronic interview were included. Methodological quality of the studies was assessed using the Newcastle-Ottawa Scale. We used a random-effects models for meta-analytical pooled prevalence of each post-COVID-19 symptom, and I² statistics for heterogeneity. Data synthesis was categorized at 30, 60, and ≥90 days after .

Results: From 15,577 studies identified, 29 peer-reviewed studies and 4 preprints met inclusion criteria. The sample included 15,244 hospitalized and 9011 non-hospitalized patients. The methodological quality of most studies was fair. The results showed that 63.2, 71.9 and 45.9% of the sample exhibited ≥one post-COVID-19 symptom at 30, 60, or ≥90days after onset/hospitalization. Fatigue and dyspnea were the most prevalent symptoms with a pooled prevalence ranging from 35 to 60% depending on the follow-up. Other post-COVID-19 symptoms included cough (20-25%), anosmia (10-20%), ageusia (15-20%) or joint pain (15-20%). Time trend analysis revealed a decreased prevalence 30days after with an increase after 60days .

Conclusion: This meta-analysis shows that post-COVID-19 symptoms are present in more than 60% of patients infected by SARS-CoV‑2. Fatigue and dyspnea were the most prevalent post-COVID-19 symptoms, particularly 60 and ≥90 days after.

Keywords: Covid-19; Dyspnea; Fatigue; Meta-analysis; Prevalence; Symptoms.

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Conflict of interest statement

No conflict of interest is declared by any of the authors

Figures

Fig 1
Fig. 1
Preferred reporting items for systematic reviews and meta-analyses (PRISMA) flow diagram.
Fig 2
Fig. 2
Time course of the eight most prevalent COVID-related symptoms at onset/hospital admission and 30days, 60days and ≥90 days after. * Statistically significant effect (P<0.001) showing a time trend during the different follow-up periods.

Comment in

  • Long term consequences of COVID-19.
    Berenguera A, Jacques-Aviñó C, Medina-Perucha L, Puente D. Berenguera A, et al. Eur J Intern Med. 2021 Oct;92:34-35. doi: 10.1016/j.ejim.2021.08.022. Epub 2021 Sep 2. Eur J Intern Med. 2021. PMID: 34509350 Free PMC article. No abstract available.

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