PM2.5 as a major predictor of COVID-19 basic reproduction number in the USA

被引:22
|
作者
Milicevic, Ognjen [1 ]
Salom, Igor [2 ]
Rodic, Andjela [3 ]
Markovic, Sofija [3 ]
Tumbas, Marko [3 ]
Zigic, Dusan [2 ]
Djordjevic, Magdalena [2 ]
Djordjevic, Marko [3 ]
机构
[1] Univ Belgrade, Sch Med, Dept Med Stat & Informat, Belgrade, Serbia
[2] Univ Belgrade, Natl Inst Republ Serbia, Inst Phys Belgrade, Belgrade, Serbia
[3] Univ Belgrade, Fac Biol, Inst Physiol & Biochem, Quantitat Biol Grp, Belgrade, Serbia
关键词
COVID-19 pollution dependence; Outdoor air pollutants; Basic reproduction number; Principal component analysis; Machine learning; REGULARIZATION; SELECTION;
D O I
10.1016/j.envres.2021.111526
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Many studies have proposed a relationship between COVID-19 transmissibility and ambient pollution levels. However, a major limitation in establishing such associations is to adequately account for complex disease dynamics, influenced by e.g. significant differences in control measures and testing policies. Another difficulty is appropriately controlling the effects of other potentially important factors, due to both their mutual correlations and a limited dataset. To overcome these difficulties, we will here use the basic reproduction number (R-0) that we estimate for USA states using non-linear dynamics methods. To account for a large number of predictors (many of which are mutually strongly correlated), combined with a limited dataset, we employ machine-learning methods. Specifically, to reduce dimensionality without complicating the variable interpretation, we employ Principal Component Analysis on subsets of mutually related (and correlated) predictors. Methods that allow feature (predictor) selection, and ranking their importance, are then used, including both linear regressions with regularization and feature selection (Lasso and Elastic Net) and non-parametric methods based on ensembles of weak-learners (Random Forest and Gradient Boost). Through these substantially different approaches, we robustly obtain that PM2.5 is a major predictor of R-0 in USA states, with corrections from factors such as other pollutants, prosperity measures, population density, chronic disease levels, and possibly racial composition. As a rough magnitude estimate, we obtain that a relative change in R-0, with variations in pollution levels observed in the USA, is typically similar to 30%, which further underscores the importance of pollution in COVID-19 transmissibility.
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Investigation of PM2.5 pollution during COVID-19 pandemic in Guangzhou,China
    Luyao Wen
    Chun Yang
    Xiaoliang Liao
    Yanhao Zhang
    Xuyang Chai
    Wenjun Gao
    Shulin Guo
    Yinglei Bi
    Suk-Ying Tsang
    Zhi-Feng Chen
    Zenghua Qi
    Zongwei Cai
    Journal of Environmental Sciences, 2022, 115 (05) : 443 - 452
  • [22] Impact of the COVID-19 lockdown on the chemical composition and sources of urban PM2.5
    Jeong, Cheol-Heon
    Yousif, Meguel
    Evans, Greg J.
    ENVIRONMENTAL POLLUTION, 2022, 292
  • [23] Ambient PM2.5 exposure and rapid spread of COVID-19 in the United States
    Chakrabarty, Rajan K.
    Beeler, Payton
    Liu, Pai
    Goswami, Spondita
    Harvey, Richard D.
    Pervez, Shamsh
    van Donkelaar, Aaron
    Martin, Randall, V
    SCIENCE OF THE TOTAL ENVIRONMENT, 2021, 760
  • [24] The impact of PM2.5 on COVID-19 severity among Italian MS patients
    Ponzano, M.
    Bergamaschi, R.
    Pisoni, E.
    De Rossi, N.
    Schiavetti, I.
    Carmisciano, L.
    Cordioli, C.
    Moiola, L.
    Radaelli, M.
    Immovilli, P.
    Capobianco, M.
    Trojano, M.
    Morra, V. Brescia
    Tedeschi, G.
    Comi, G.
    Battaglia, M. A.
    Patti, F.
    Salvetti, M.
    Sormani, M. P.
    MULTIPLE SCLEROSIS JOURNAL, 2021, 27 (2_SUPPL) : 369 - 370
  • [25] COVID-19影响下的城市PM2.5浓度预测
    孟春阳
    谢劭峰
    魏朋志
    张亚博
    唐友兵
    熊思
    无线电工程, 2023, 53 (01) : 87 - 95
  • [26] Investigation of PM2.5 pollution during COVID-19 pandemic in Guangzhou, China
    Wen, Luyao
    Yang, Chun
    Liao, Xiaoliang
    Zhang, Yanhao
    Chai, Xuyang
    Gao, Wenjun
    Guo, Shulin
    Bi, Yinglei
    Tsang, Suk-Ying
    Chen, Zhi-Feng
    Qi, Zenghua
    Cai, Zongwei
    JOURNAL OF ENVIRONMENTAL SCIENCES, 2022, 115 : 443 - 452
  • [27] Visualization and Analysis of COVID-19 Impact on PM2.5 Concentration in Guwahati city
    Medhi, Shrabani
    Gogoi, Minakshi
    2021 INTERNATIONAL CONFERENCE ON COMPUTATIONAL PERFORMANCE EVALUATION (COMPE-2021), 2021, : 12 - 16
  • [28] COVID-19 mortality and exposure to airborne PM2.5: A lag time correlation
    Shao, Longyi
    Cao, Yaxin
    Jones, Tim
    Santosh, M.
    Silva, Luis F. O.
    Ge, Shuoyi
    da Boit, Katia
    Feng, Xiaolei
    Zhang, Mengyuan
    BeruBe, Kelly
    SCIENCE OF THE TOTAL ENVIRONMENT, 2022, 806
  • [29] The potential impact of PM2.5 on the covid-19 crisis in the Brazilian Amazon region
    Goncalves, Karen dos Santos
    Cirino, Glauber G.
    da Costa, Marcelo Oliveira
    do Couto, Lucas de Oliveira
    Tortelote, Giovane G.
    Hacon, Sandra de Souza
    REVISTA DE SAUDE PUBLICA, 2023, 57
  • [30] Causal relationship between particulate matter 2.5 (PM2.5), PM2.5 absorbance, and COVID-19 risk: A two-sample Mendelian randomisation study
    Liu, Chenxi
    Peng, Jia
    Liu, Yubo
    Peng, Yi
    Kuang, Yuanyuan
    Zhang, Yinzhuang
    Ma, Qilin
    JOURNAL OF GLOBAL HEALTH, 2023, 13