| Literature DB >> 34380740 |
Xiaofan Xing1, Yuankang Xiong1, Ruipu Yang1, Rong Wang2,3,4,5,6,7, Weibing Wang8, Haidong Kan8, Tun Lu9, Dongsheng Li10, Junji Cao11, Josep Peñuelas12,13, Philippe Ciais14,15, Nico Bauer16, Olivier Boucher17, Yves Balkanski14, Didier Hauglustaine14, Guy Brasseur18,19, Lidia Morawska20, Ivan A Janssens21, Xiangrong Wang1,5, Jordi Sardans12,13, Yijing Wang1, Yifei Deng1, Lin Wang1,3,4, Jianmin Chen1,3,4, Xu Tang1,3,4, Renhe Zhang1,3,4.
Abstract
The real-time monitoring of reductions of economic activity by containment measures and its effect on the transmission of the coronavirus (COVID-19) is a critical unanswered question. We inferred 5,642 weekly activity anomalies from the meteorology-adjusted differences in spaceborne tropospheric NO2 column concentrations after the 2020 COVID-19 outbreak relative to the baseline from 2016 to 2019. Two satellite observations reveal reincreasing economic activity associated with lifting control measures that comes together with accelerating COVID-19 cases before the winter of 2020/2021. Application of the near-real-time satellite NO2 observations produces a much better prediction of the deceleration of COVID-19 cases than applying the Oxford Government Response Tracker, the Public Health and Social Measures, or human mobility data as alternative predictors. A convergent cross-mapping suggests that economic activity reduction inferred from NO2 is a driver of case deceleration in most of the territories. This effect, however, is not linear, while further activity reductions were associated with weaker deceleration. Over the winter of 2020/2021, nearly 1 million daily COVID-19 cases could have been avoided by optimizing the timing and strength of activity reduction relative to a scenario based on the real distribution. Our study shows how satellite observations can provide surrogate data for activity reduction during the COVID-19 pandemic and monitor the effectiveness of containment to the pandemic before vaccines become widely available.Entities:
Keywords: COVID-19; air pollution; machine learning; pandemic management; satellite observation
Mesh:
Year: 2021 PMID: 34380740 PMCID: PMC8379976 DOI: 10.1073/pnas.2109098118
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205