5 results on '"Bergamini, Marcela"'
Search Results
2. The Impact of Socioeconomic Factors, Coverage and Access to Health on Heart Ischemic Disease Mortality in a Brazilian Southern State: A Geospatial Analysis.
- Author
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de Carvalho Dutra, Amanda, Luís Silva, Lincoln, Bocchi Pedroso, Raíssa, Pokam Tchuisseu, Yolande, Teixeira da Silva, Mariana, Bergamini, Marcela, Hermann Costa Scheidt, João Felipe, Henrique Iora, Pedro, do Lago Franco, Rogério, Ann Staton, Catherine, Nickenig Vissoci, João Ricardo, Kenji Nihei, Oscar, and de Andrade, Luciano
- Abstract
Background: No other disease has killed more than ischemic heart disease (IHD) for the past few years globally. Despite the advances in cardiology, the response time for starting treatment still leads patients to death because of the lack of healthcare coverage and access to referral centers. Methods: An ecological study using secondary data from Brazilian Health Informatics Department between 2013-2017 was performed to verify the IHD mortality. An spatial analysis was performed using the Global Moran and Local Indicators of Spatial Association (LISA) to verify the spatial dependency of IHD mortality. Lastly, multivariate spatial regression models were also developed using Ordinary Least Squares and Geographically Weighted Regression (GWR) to identify socioeconomic indicators (aging, income, and illiteracy rates), exam coverage (catheterization, angioplasty, and revascularization rates), and access to health (access index to cardiologists and chemical reperfusion centers) significantly correlated with IHD mortality. The chosen model was based on p < 0.05, highest adjusted R² and lowest Akaike Information Criterion. Results: A total of 22,920 individuals died from IHD between 2013-2017. The spatial analysis confirmed a positive spatial autocorrelation global between IDH mortality rates (Moran's I: 0.633, p < 0.01). The LISA analysis identified six high-high pattern clusters composed by 66 municipalities (16.5%). GWR presented the best model (Adjusted R²: 0.72) showing that accessibility to cardiologists and chemical reperfusion centers, and revascularization and angioplasty rates differentially affect the IHD mortality rates geographically. Aging and illiteracy rate presented positive correlation with IHD mortality rate, while income ratio presented negative correlation (p < 0.05). Conclusion: Regions of vulnerability were unveiled by the spatial analysis where sociodemographic, exam coverage and accessibility to health variables impacted differently the IHD mortality rates in Paraná state, Brazil. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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3. Mapping risk of ischemic heart disease using machine learning in a Brazilian state.
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Bergamini, Marcela, Iora, Pedro Henrique, Rocha, Thiago Augusto Hernandes, Tchuisseu, Yolande Pokam, Dutra, Amanda de Carvalho, Scheidt, João Felipe Herman Costa, Nihei, Oscar Kenji, de Barros Carvalho, Maria Dalva, Staton, Catherine Ann, Vissoci, João Ricardo Nickenig, and de Andrade, Luciano
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CORONARY disease , *MACHINE learning , *GEOGRAPHIC information systems , *SUPPORT vector machines , *FORECASTING - Abstract
Cardiovascular diseases are the leading cause of deaths globally. Machine learning studies predicting mortality rates for ischemic heart disease (IHD) at the municipal level are very limited. The goal of this paper was to create and validate a Heart Health Care Index (HHCI) to predict risk of IHD based on location and risk factors. Secondary data, geographical information system (GIS) and machine learning were used to validate the HHCI and stratify the IHD municipality risk in the state of Paraná. A positive spatial autocorrelation was found (Moran's I = 0.6472, p-value = 0.001), showing clusters of high IHD mortality. The Support Vector Machine, which had an RMSE of 0.789 and error proportion close to one (0.867), was the best for prediction among eight machine learning algorithms after validation. In the north and northwest regions of the state, HHCI was low and mortality clusters patterns were high. By creating an HHCI through ML, we can predict IHD mortality rate at municipal level, identifying predictive characteristics that impact health conditions of these localities' guided health management decisions for improvements for IHD within the emergency care network in the state of Paraná. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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4. Impacto do tipo de unidade de terapia intensiva na sobrevida de pacientes grandes queimados no Estado do Paraná.
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Hermann Costa Scheidt, João Felipe, Fernandes Messias, Gabriel Antonio, Bergamini, Marcela, Carvalho Dutra, Amanda, Schwerz Bonadiman Blanco, Luiz Felipe Moraes, Gabarrão Silva, Luanna, do Lago Franco, Rogério, and de Andrade, Luciano
- Abstract
Copyright of Revista Brasileira de Terapia Intensiva is the property of Associacao de Medicina Intensiva Brasileira and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2018
5. Bayesian Modeling and Estimation of Spatial Risk for Hospitalization and Mortality from Ischemic Heart Disease in Paraná, Brazil.
- Author
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de Carvalho Dutra A, Silva LL, Dos Santos AGA, do Lago Franco R, Forato GAC, Bergamini M, Borba IM, de Campos EV, Staton CA, Marquezoni DP, Nihei OK, Vissoci JRN, and de Andrade L
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- Humans, Brazil epidemiology, Male, Female, Retrospective Studies, Middle Aged, Risk Factors, Adult, Aged, Risk Assessment methods, Survival Rate trends, Myocardial Ischemia mortality, Myocardial Ischemia epidemiology, Hospitalization statistics & numerical data, Bayes Theorem
- Abstract
Objective: Despite significant advancements in understanding risk factors and treatment strategies, ischemic heart disease (IHD) remains the leading cause of mortality worldwide, particularly within specific regions in Brazil, where the disease is a burden. Therefore, the aim of this study was to estimate the risk of hospitalization and mortality from IHD in the state of Paraná (Brazil), using spatial analysis to identify areas with higher risk based on socioeconomic, demographic and health variables., Methods: This is an ecological study based on secondary and retrospective IHD hospitalization and mortality data obtained from the Brazilian Hospitalization and Mortality Information Systems during the 2010-2021 period. Data were analyzed for 399 municipalities and 22 health regions in the state of Paraná. To assess the spatial patterns of the disease and identify relative risk (RR) areas, we constructed a risk model by Bayesian inference using the R-INLA and SpatialEpi packages in R software., Results: A total of 333,229 hospitalizations and 73,221 deaths occurred in the analyzed period, and elevated RR of hospitalization (RR = 27.412, CI 21.801; 34.466) and mortality (RR = 15.673, CI 2.148; 114.319) from IHD occurred in small-sized municipalities. In addition, medium-sized municipalities also presented elevated RR of hospitalization (RR = 6.533, CI 1.748; 2.006) and mortality (RR = 6.092, CI 1.451; 2.163) from IHD. Hospitalization and mortality rates were higher in white men aged 40-59 years. A negative association was found between Municipal Performance Index (IPDM) and IHD hospitalization and mortality., Conclusion: Areas with increased risk of hospitalization and mortality from IHD were found in small and medium-sized municipalities in the state of Paraná, Brazil. These results suggest a deficit in health care attention for IHD cases in these areas, potentially due to a low distribution of health care resources., Competing Interests: The authors have no competing interests to declare., (Copyright: © 2024 The Author(s).)
- Published
- 2024
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