The Rising Threat of Mucormycosis: Oman’s Experience Before and During the COVID-19 Pandemic
JOURNAL OF FUNGI(2024)
Minist Hlth | Radboudumc | Sultan Qaboos Univ Hosp | Royal Hosp | Univ Nizwa
Abstract
Mucormycosis is a rare, severe fungal infection mainly affecting immunocompromised individuals. Because of limited data on its epidemiology in Oman, we present this national, multicentric, retrospective review that includes all cases of proven mucormycosis between 2006 and 2022 in Oman. There were 51 cases of mucormycosis reported in Oman. The annual incidence of mucormycosis was 0.38–0.69 cases per million population before COVID-19. During the pandemic, the incidence rose significantly to 1.76 in 2020, 5.31 in 2021, then decreased to 0.87 per million population in 2022. Diabetes was observed in 82.4% (n = 42) of the cases, COVID-19 in 47.1% (n = 24), and other chronic diseases in 72.6%. The use of steroids was reported in 33.3% (n = 17) and many patients (64.7%, n = 33) had multiple risk factors. The overall mortality rate was 41.2% (n = 21) and most deaths occurred within a month of diagnosis. Mortality rate among patients diagnosed with COVID-19 was 58.3% (14/24). Survival analysis showed a statistically significant association between COVID-19 status and patient survival (p = 0.024). Annual incidence of mucormycosis in Oman rose during the pandemic. This study highlights the epidemiological features of mucormycosis and emphasizes the importance of its inclusion in the national notifiable communicable diseases priority list as well as the importance of enhancing diagnostic capacities to detect and improve patient outcomes.
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Key words
mucormycosis,epidemiology,COVID-19,Oman
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