社会距离
医学
准备
社交网络(社会语言学)
人际关系
人口
环境卫生
大流行
地理空间分析
社会经济学
2019年冠状病毒病(COVID-19)
地理
社会化媒体
疾病
传染病(医学专业)
社会学
法学
病理
政治学
社会科学
地图学
作者
Huso Yi,Shu Tian Ng,Aysha Farwin,Amanda Pei Ting Low,Cheng Mun Chang,Jeremy Fung Yen Lim
摘要
Abstract Background Low-wage dormitory-dwelling migrant workers in Singapore were disproportionately affected by coronavirus disease 2019 (COVID-19) infection. This was attributed to communal living in high-density and unhygienic dormitory settings and a lack of inclusive protection systems. However, little is known about the roles of social and geospatial networks in COVID-19 transmission. The study examined the networks of non-work–related activities among migrant workers to inform the development of lockdown exit strategies and future pandemic preparedness. Methods A population-based survey was conducted with 509 migrant workers across the nation, and it assessed dormitory attributes, social ties, physical and mental health status, COVID-19-related variables and mobility patterns using a grid-based network questionnaire. Mobility paths from dormitories were presented based on purposes of visit. Two-mode social networks examined the structures and positions of networks between workers and visit areas with individual attributes. Results COVID-19 risk exposure was associated with the density of dormitory, social ties and visit areas. The migrant worker hub in the city centre was the most frequently visited for essential services of grocery shopping and remittance, followed by south central areas mainly for social gathering. The hub was positioned as the core with the highest degree of centrality with a cluster of workers exposed to COVID-19. Conclusions Social and geospatial networks of migrant workers should be considered in the implementation of lockdown exit strategies while addressing the improvement of living conditions and monitoring systems. Essential services, like remittance and grocery shopping at affordable prices, need to be provided near to dormitories to minimize excess gatherings.
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