| Literature DB >> 30629670 |
Julian T Hertz1, Tommy Fu1, Joao Ricardo Vissoci2,3, Thiago Augusto Hernandes Rocha4, Elias Carvalho5,6, Brendan Flanagan1, Luciano de Andrade7, Alex T Limkakeng1, Catherine A Staton1,2.
Abstract
BACKGROUND: Little is known about the utilization of cardiac diagnostic testing in Brazil and how such testing is related with local rates of acute coronary syndrome (ACS)-related mortality. METHODS ANDEntities:
Mesh:
Year: 2019 PMID: 30629670 PMCID: PMC6328143 DOI: 10.1371/journal.pone.0210502
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Brazilian regions and municipality income levels.
Data sources for analysis.
| Source | Variables | Date Range | Data entries | Scope |
|---|---|---|---|---|
| DATASUS—Ambulatory Care System (SIA) |
Healthcare procedures performed Associated ICD codes Age of patient Location offering the procedure Costs of procedure Hospital responsible | 2008–2014 | 4,653,884 procedures | Catheterization |
| DATASUS—Mortality Information System (SIM) |
Cause of death coded by ICD groups: I20, I21, I22, I23, I24, and I25 Municipality of residence of patients with ACS death Mortality rate by municipality. | 2008–2014 | 714,670 deaths | All deaths between 2008 and 2014 |
| CNES -National Registration of Health Establishments |
Geolocation Procedures offered | 2008–2014 | 1672 hospitals | Hospitals performing ACS diagnostic procedures between 2008 and 2014 |
| World Bank |
Gross national income Atlas index Gross national income per capita Income level classification | 2010–2013 | 5570 municipalities | |
| IBGE—Brazilian Institute of Geography and Statistics |
Population by municipality—between 20 and 79 years of age Gross Domestic Product (GDP) GDP per capita | 2008–2014 | 5570 municipalities |
Fig 2The distribution of hospitals performing cardiac diagnostic testing and the distribution of population density in Brazil.
Characteristics of stress testing in Brazil and regional distribution.
| Brazilian regions | |||||||
|---|---|---|---|---|---|---|---|
| Procedures | Center-west | Northeast | North | Southeast | South | Brazil | |
| 55,633 (6.4%) | 152,441 (17.7%) | 26,621 (3.1%) | 458,199 (53.1%) | 169,733 (19.7%) | 862,627 (100%) | ||
| 205.7 (57.7) | 340.7 (69.6) | 201.5 (35.3) | 387.5 (87.1) | 545.5 (114.5) | 399.4 (87) | ||
| 10,183,369 | 27,973,972 | 4,870,375 | 83,828,598 | 31,033,846 | 157,890,161 | ||
| 13,683 (13.0%) | 18,153 (17.2%) | 13,474 (12.8%) | 44,708 (42.5%) | 15,277 (14.5%) | 105,295 (100%) | ||
| 180.9 (120.5) | 279.3 (183.7) | 341.7 (92.9) | 123 (89.8) | 72.8 (58.1) | 153.1 (103.6) | ||
| 883,941 | 882,888 | 660,668 | 2,161,854 | 741,813 | 5,332,164 | ||
| 27,221 (4.1%) | 146,803 (21.9%) | 2,3790 (3.6%) | 378,403 (56.5%) | 93,752 (14.0%) | 669,969 (100%) | ||
| 168.5 (86.3) | 271.7 (78.5) | 181 (99.7) | 258 (65.1) | 194.3 (79.8) | 237.3 (73.4) | ||
| 3,259,379 | 17,625,845 | 2,848,253 | 44,953,883 | 11,171,408 | 79,858,768 | ||
| 212,782 (7.1%) | 551,655 (18.3%) | 128,935 (4.3%) | 1,706,256 (56.6%) | 416,365 (13.8%) | 3,015,993 (100%) | ||
| 648.3 (412.7) | 893.3 (555.3) | 474.9 (283.8) | 905.9 (426.4) | 660.4 (294.2) | 815.7 (419) | ||
| 2,860,012 | 5,183,218 | 1,151,205 | 15,239,763 | 3,723,223 | 28,157,422 | ||
| 79,092 | 328,164 | 55,286 | 618,667 | 209,267 | 1,290,476 | ||
| 127.6 | 139.4 | 84.5 | 125.0 | 158.6 | 133.8 | ||
Fig 3Distribution of cardiac diagnostic testing rates and ACS mortality rates in Brazil, 2008–2014 (per 100,000 persons).
Fig 4Geographic variation in access to cardiac diagnostic testing in Brazil.
Regression coefficients of income and cardiac diagnostic testing accessibility as predictors of ACS mortality in unadjusted ordinary least square model, model adjusted for spatial error, and geographic weighted regression model.
| Ordinary Least Square | Spatial Error | Geographic Weighted Regression | ||||||
|---|---|---|---|---|---|---|---|---|
| Variables | Est. | SE | Est. | SE | Est. Mean | Est.SD | ||
| Income | -4.49 | 1.47 | 0.002 | 2.05 | 1.67 | 0.219 | 4.93 | 56.19 |
| Catheterization accessibility | 18627.70 | 1620.08 | <0.001 | 8937.12 | 2585.24 | 0.001 | -24639.31 | 555297.72 |
| Stress Echocardiographyaccessibility | -755.51 | 2377.47 | 0.751 | 556.02 | 3091.71 | 0.857 | 1448563.77 | 6735792.94 |
| Scintigraphy accessibility | -13457.10 | 1786.88 | <0.001 | -8890.07 | 2999.31 | 0.003 | -2059.62 | 932050.69 |
| Stress ECG accessibility | 1783.68 | 396.38 | <0.001 | 769.99 | 651.23 | 0.237 | 14741.88 | 108212.70 |
| AIC | 63348.2 | 61896.1 | 3410.32 | |||||
| Jarque-Bera Statistic | 2348.23 | <0.001 | ||||||
| Adj. R2 | 0.0300 | 0.2994 | 0.2851 | |||||
| Koenker’s Statistic | 34.14 | <0.001 | ||||||
| Breusch-Pagan Statistic | 74.33 | <0.001 | 82.38 | <0.001 | ||||
| Lag coefficient (Rho) | 0.5963 | 0.0146 | <0.001 | |||||
*p < 0.05
Fig 5Coefficients of geographic weighted regression of income and accessibility indices of cardiac diagnostic testing as predictors of ACS mortality in Brazil, 2008–2014.