接触追踪
无症状的
传输(电信)
大流行
2019年冠状病毒病(COVID-19)
流行病学
严重急性呼吸综合征冠状病毒2型(SARS-CoV-2)
人口学
医学
地理
疾病
病毒学
内科学
传染病(医学专业)
计算机科学
电信
社会学
作者
Maryam Diarra,Ramatoulaye Ndiaye,Aliou Barry,Cheikh Talla,Moussa Moïse Diagne,Ndongo Dia,Joseph Faye,Fatoumata Diène Sarr,Aboubacry Gaye,Amadou Diallo,Mamadou Cissé,Idrissa Dieng,Gamou Fall,Adama Tall,Oumar Faye,Ousmane Faye,Amadou Alpha Sall,Cheikh Loucoubar
标识
DOI:10.1038/s41598-023-35622-6
摘要
Abstract During the COVID-19 pandemic in Senegal, contact tracing was done to identify transmission clusters, their analysis allowed to understand their dynamics and evolution. In this study, we used information from the surveillance data and phone interviews to construct, represent and analyze COVID-19 transmission clusters from March 2, 2020, to May 31, 2021. In total, 114,040 samples were tested and 2153 transmission clusters identified. A maximum of 7 generations of secondary infections were noted. Clusters had an average of 29.58 members and 7.63 infected among them; their average duration was 27.95 days. Most of the clusters (77.3%) are concentrated in Dakar, capital city of Senegal. The 29 cases identified as super-spreaders, i.e., the indexes that had the most positive contacts, showed few symptoms or were asymptomatic. Deepest transmission clusters are those with the highest percentage of asymptomatic members. The correlation between proportion of asymptomatic and degree of transmission clusters showed that asymptomatic strongly contributed to the continuity of transmission within clusters. During this pandemic, all the efforts towards epidemiological investigations, active case-contact detection, allowed to identify in a short delay growing clusters and help response teams to mitigate the spread of the disease.
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