Health System Collapse 45 Days After The Detection Of Covid-19 In Ceara, Northeast Brazil: A Preliminary Analysis

Daniele Rocha Queiros Lemos, Sarah Mendes D'Angelo,Luis Arthur Brasil Gadelha Farias,Magda Moura Almeida, Ricristhi Gonçalves Gomes,Geovana Praça Pinto, Josafa Nascimento Cavalcante Filho,Levi Ximenes Feijão, Ana Rita Paulo Cardoso, Thaisy Brasil Ricarte Lima,Pâmela Maria Costa Linhares,Liana Perdigão Mello,Tania Mara Coelho,Luciano Pamplona de Góes Cavalcanti

REVISTA DA SOCIEDADE BRASILEIRA DE MEDICINA TROPICAL(2020)

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摘要
Introduction: COVID-19 emerged in late 2019 and quickly became a serious public health problem worldwide. This study aim to describe the epidemiological course of cases and deaths due to COVID-19 and their impact on hospital bed occupancy rates in the first 45 days of the epidemic in the state of Ceara, Northeastern Brazil. Methods: The study used an ecological design with data gathered from multiple government and health care sources. Data were analyzed using Epi Info software. Results: The first cases were confirmed on March 15, 2020. After 45 days, 37,268 cases reported in 85.9% of Ceara's municipalities, with 1,019 deaths. Laboratory test positivity reached 84.8% at the end of April, a period in which more than 700 daily tests were processed. The average age of cases was 67 (<1 - 101) years, most occurred in a hospital environment (91.9%), and 58% required hospitalization in an ICU bed. The average time between the onset of symptoms and death was 18 (1 - 56) days. Patients who died in the hospital had spent an average of six (0 - 40) days hospitalized. Across Ceara, the bed occupancy rate reached 71.3% in the wards and 80.5% in the ICU. Conclusions: The first 45 days of the COVID-19 epidemic in Ceara revealed a large number of cases and deaths, spreading initially among the population with a high socioeconomic status. Despite the efforts by the health services and social isolation measures the health system still collapsed.
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关键词
COVID-19, Ecological study, Epidemiology, Infectious diseases, Brazil
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