» Articles » PMID: 35641976

Malaria Time Series in the Extra-Amazon Region of Brazil: Epidemiological Scenario and a Two-year Prediction Model

Abstract

Background: In Brazil, malaria is caused mainly by the Plasmodium vivax and Plasmodium falciparum species. Its transmission occurs in endemic and non-endemic areas. Malaria geography in Brazil has retracted and is now concentrated in the North region. The Brazilian Amazon region accounts for 99% of Brazil's cases. Brazil's extra-Amazon region has a high frequency of imported cases and in 2019 presented a mortality rate 123 times higher than the Amazon region. Extra-Amazon cases present risks of reintroduction. This study aims to characterize the epidemiological scenario for malaria in the extra-Amazon region of Brazil from 2011 to 2020 with a two-year forecast.

Methods: Time-series study with description of malaria cases and deaths registered in Brazilian extra-Amazon region from 2011 to 2020. Public data from the Notifiable Diseases Information System (Sinan) and the Mortality Information System (SIM) were used. Descriptive analysis, incidence, and notification rates were calculated. Flow charts analysed the flux between Places of Probable Infection (PI) and places of notification. The prediction model utilized a multiplicative Holt-winters model for trend and seasonality components.

Results: A total of 6849 cases were registered. Cases were predominantly white males with 9 to 11 years of education, mostly between 30 and 39 years old. Imported cases accounted for 78.9% of cases. Most frequent occupations for imported cases are related to travelling and tourism activities. Among autochthonous cases, there is a higher frequency of agriculture and domestic economic activities. In the period there were 118 deaths due to malaria, of which 34.7% were caused by P. falciparum infections and 48.3% were not specified. The most intense flows of imported cases are from Amazonas and Rondônia to São Paulo, Rio de Janeiro, and Paraná. The prediction estimates around 611 cases for each of the following two years.

Conclusion: The time series allows a vast epidemiological visualization with a short-term prediction analysis that supports public health planning. Government actions need to be better directed in the extra-Amazon region so the objective of eliminating malaria in Brazil is achieved. Carrying out quality assessments for information systems and qualifying personnel is advisable. Malaria outside the Amazon region is mainly due to imported cases and delay in diagnosis is associated with a higher fatality rate. Better strategies to diagnose and treat suspected cases can lead to lower risk of deaths and local outbreaks that will be important for achieving malaria elimination in Brazil.

Citing Articles

Malaria Mortality in Brazil: Age-Period-Cohort Effects, Sociodemographic Factors, and Sustainable Development Indicators.

Farias M, Figueiredo E, Silva R, Galhardo D, da Silva C, Moreira E Trop Med Infect Dis. 2025; 10(2).

PMID: 39998045 PMC: 11860777. DOI: 10.3390/tropicalmed10020041.


Sociodemographic aspects, time series and high-risk clusters of malaria in the extra-Amazon region of Brazil: a 22-year study.

Ramos R, Reis E, Bezerra L, Lima M, Feitosa A, Alves L Rev Soc Bras Med Trop. 2024; 57.

PMID: 39536215 PMC: 11656533. DOI: 10.1590/0037-8682-0564-2023.


Towards malaria elimination: a case-control study to assess associated factors to malaria relapses in the extra-Amazon Region of Brazil from 2008 to 2019.

Garcia K, de Deus Henriques K, Balieiro A, Pina-Costa A, Siqueira A Malar J. 2024; 23(1):312.

PMID: 39420377 PMC: 11488206. DOI: 10.1186/s12936-024-05133-4.


Brazil towards malaria elimination: A time-series analysis of imported cases from 2007 to 2022.

Garcia K, Laporta G, Soremekun S, Bottomley C, Abrahao A, Moresco G PLOS Glob Public Health. 2024; 4(10):e0003822.

PMID: 39392834 PMC: 11469497. DOI: 10.1371/journal.pgph.0003822.


Exploring the influence of environmental indicators and forecasting influenza incidence using ARIMAX models.

Zheng X, Chen Q, Sun M, Zhou Q, Shi H, Zhang X Front Public Health. 2024; 12:1441240.

PMID: 39377003 PMC: 11456462. DOI: 10.3389/fpubh.2024.1441240.


References
1.
Lai C, Chen S, Yen M, Lee P, Ko W, Hsueh P . The impact of the coronavirus disease 2019 epidemic on notifiable infectious diseases in Taiwan: A database analysis. Travel Med Infect Dis. 2021; 40:101997. PMC: 7905388. DOI: 10.1016/j.tmaid.2021.101997. View

2.
Lima M, Laporta G . Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study. Epidemiol Serv Saude. 2021; 30(1):e2020080. DOI: 10.1590/S1679-49742021000100007. View

3.
Lechthaler F, Matthys B, Lechthaler-Felber G, Likwela J, Muhindo Mavoko H, Matangila Rika J . Trends in reported malaria cases and the effects of malaria control in the Democratic Republic of the Congo. PLoS One. 2019; 14(7):e0219853. PMC: 6658057. DOI: 10.1371/journal.pone.0219853. View

4.
Massad E, Behrens R, Burattini M, Coutinho F . Modeling the risk of malaria for travelers to areas with stable malaria transmission. Malar J. 2009; 8:296. PMC: 2806379. DOI: 10.1186/1475-2875-8-296. View

5.
Massad E, Laporta G, Conn J, Chaves L, Bergo E, Figueira E . The risk of malaria infection for travelers visiting the Brazilian Amazonian region: A mathematical modeling approach. Travel Med Infect Dis. 2020; 37:101792. PMC: 7578070. DOI: 10.1016/j.tmaid.2020.101792. View