detalle del documento
IDENTIFICACIÓN

oai:pubmedcentral.nih.gov:9703...

Tema
Original Research Article
Autor
Alfallaj, Rayan AlSkait, Ghada Alamari, Nouf Alfawzan, Lama Abualgasem, Mohammed Alotaibi, Naif H. Sumaily, Ibrahim Alarifi, Ibrahim Alsaleh, Saad
Langue
en
Editor

SAGE Publications

Categoría

Allergy & Rhinology

Año

2022

fecha de cotización

10/10/2023

Palabras clave
covid-19 study days od
Métrico

Resumen

BACKGROUND: Coronavirus disease (COVID-19) is caused by the severe acute respiratory syndrome coronavirus 2, a novel virus that emerged in China in December 2019.

In many cases of COVID-19, olfactory dysfunction (OD) is the only symptom.

OBJECTIVES: This study aimed to examine the incidence of OD in patients with COVID-19 and identify an association between OD and COVID-19-related morbidity and admission.

DESIGN: This was a cross-sectional study.

METHODS: Real-time reverse transcription polymerase chain reaction-confirmed cases of COVID-19 from the Security Forces Hospital electronic registry from June 2020 to September 2020 were included in our study.

Data on medical background, severity of the disease, and other related factors were collected through phone calls and electronic healthcare systems and analyzed to investigate OD in the participants.

RESULTS: Of the participants, 68% had OD, with a mean recovery time of 18 days and a mean follow-up time of 129 days (76-211 days).

OD was negatively correlated with admission and morbidity.

CONCLUSION: OD is a common presentation of COVID-19 and is more prevalent in mild cases of infection.

Alfallaj, Rayan,AlSkait, Ghada,Alamari, Nouf,Alfawzan, Lama,Abualgasem, Mohammed,Alotaibi, Naif H.,Sumaily, Ibrahim,Alarifi, Ibrahim,Alsaleh, Saad, 2022, Incidence of Olfactory Dysfunction in Patients with COVID-19 in a Tertiary Hospital in Saudi Arabia, SAGE Publications

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