| Literature DB >> 32829732 |
D S Gomes1,2, L A Andrade2,3, C J N Ribeiro2,4, M V S Peixoto2,5, S V M A Lima2,6, A M Duque2,7, T M Cirilo1, M A O Góes2,8,9, A G C F Lima8, M B Santos10, K C G M Araújo2,10, A D Santos2,3,6.
Abstract
This study aimed to analyse the trend and spatial-temporal clusters of risk of transmission of COVID-19 in northeastern Brazil. We conducted an ecological study using spatial and temporal trend analysis. All confirmed cases of COVID-19 in the Northeast region of Brazil were included, from 7 March to 22 May 2020. We used the segmented log-linear regression model to assess time trends, and the local empirical Bayesian estimator, the global and local Moran indexes for spatial analysis. The prospective space-time scan statistic was performed using the Poisson probability distribution model. There were 113 951 confirmed cases of COVID-19. The average incidence rate was 199.73 cases/100 000 inhabitants. We observed an increasing trend in the incidence rate in all states. Spatial autocorrelation was reported in metropolitan areas, and 178 municipalities were considered a priority, especially in the states of Ceará and Maranhão. We identified 11 spatiotemporal clusters of COVID-19 cases; the primary cluster included 70 municipalities from Ceará state. COVID-19 epidemic is increasing rapidly throughout the Northeast region of Brazil, with dispersion towards countryside. It was identified high risk clusters for COVID-19, especially in the coastal side.Entities:
Keywords: COVID-19; disease surveillance; pandemic; space–time cluster; spatial analysis
Mesh:
Year: 2020 PMID: 32829732 PMCID: PMC7468689 DOI: 10.1017/S0950268820001843
Source DB: PubMed Journal: Epidemiol Infect ISSN: 0950-2688 Impact factor: 2.451
Fig. 1.Study location.
Time trends of incidence rates of COVID-19 in the Northeast region by states
| State/region | APC (95% CI) | ||
|---|---|---|---|
| Entire state/region | Metropolitan area | Countryside | |
| NE | Segment 1: 1st to 8th | Segment 1: 1st to 8th | Segment 1: 1st to 11th |
| Segment 2: 8th to 11th | Segment 2: 8th to 11th | ||
| AL | Segment 1: 1st to 8th | Segment 1: 1st to 8th | Segment 1: 1st to 5th |
| Segment 2: 8th to 11th | Segment 2: 8th to 11th | Segment 2: 5th to 11th | |
| BA | Segment 1: 1st to 5th | Segment 1: 1st to 7th | Segment 1: 1st to 11th |
| Segment 2: 5th to 11th | Segment 2: 7th to 11th | ||
| CE | Segment 1: 1st to 9th | Segment 1: 1st to 9th | Segment 1: 1st to 9th |
| Segment 2: 9th to 11th | Segment 2: 9th to 11th | Segment 1: 9th to 11th | |
| MA | Segment 1: 1st to 7th | Segment 1: 1st to 7th | Segment 1: 1st to 11th |
| Segment 2: 7th to 11th | Segment 2: 7th to 11th | ||
| PB | Segment 1: 1st to 8th | Segment 1: 1st to 8th | Segment 1: 1st to 3rd |
| Segment 2: 8th to 11th | Segment 2: 8th to 11th | Segment 2: 3rd to 11th | |
| PE | Segment 1: 1st to 8th | Segment 1: 1st to 8th | Segment 1: 1st to 11th |
| Segment 2: 8th to 11th | Segment 2: 8th to 11th | ||
| PI | Segment 1: 1st to 8th | Segment 1: 1st to 8th | Segment 1: 1st to 11th |
| Segment 2: 8th to 11th | Segment 2: 8th to 11th | ||
| RN | Segment 1: 1st to 11th | Segment 1: 1st to 11th | Segment 1: 1st to 11th |
| SE | Segment 1: 1st to 9th | Segment 1: 1st to 11th | Segment 1: 1st to 11th |
AL, Alagoas; BA, Bahia; CE, Ceará; MA, Maranhão; PB, Paraíba; PE, Pernambuco; PI, Piauí; RN, Rio Grande do Norte; SE, Sergipe.
*P-value <0.05.
Fig. 2.Weekly trends in incidence rates in the region, by state and by metropolitan and countryside areas of the states.
Fig. 3.Spatial analysis of COVID-19 among municipalities in the Northeast region of Brazil. (A) Gross incidence rate; (B) smoothed incidence rate; (C) Moran map (LISA cluster) and (D) RR (spatial modelling by prospective scanning).
Emerging space–time clusters of COVID-19 from 6 March to 22 May 2020
| Cluster | Duration (days) | Number of municipalities | States | Observed | Expected | RR | LLR | Municipalities with RR > 1 |
|---|---|---|---|---|---|---|---|---|
| 1 | 4 May to 22 May | 70 | Ceará | 22 007 | 2760 | 9.64 | 28 212 | 67 |
| 2 | 26 Apr to 22 May | 52 | Pernambuco, Paraíba | 21 929 | 3922 | 6.68 | 21 296 | 45 |
| 3 | 5 May to 22 May | 159 | Maranhão | 13 058 | 2610 | 5.52 | 11 079 | 125 |
| 4 | 7 May to 22 May | 105 | Alagoas, Sergipe | 6506 | 1684 | 4.04 | 4074.4 | 57 |
| 5 | 21 May to 22 May | 1 | Bahia | 1787 | 147 | 12.33 | 2834.3 | 1 |
| 6 | 12 May to 22 May | 147 | Rio Grande do Norte, Paraíba, Ceará | 4894 | 1561 | 3.23 | 2307.8 | 147 |
| 7 | 23 Apr to 22 May | 7 | Bahia | 1109 | 338 | 3.3 | 548.3 | 7 |
| 8 | 11 May to 22 May | 157 | Maranhão, Piauí, Ceará, Pernambuco | 1756 | 875 | 2.02 | 345 | 48 |
| 9 | 9 May to 22 May | 1 | Bahia | 182 | 55 | 3.26 | 88.77 | 1 |
| 10 | 21 May to 22 May | 1 | Bahia | 16 | 0.82 | 19.46 | 32.31 | 1 |
| 11 | 20 May to 22 May | 1 | Bahia | 17 | 2.19 | 7.77 | 20.04 | 1 |
RR, relative risk for the cluster compared with the rest of the region; LLR, log-likelihood ratio.