| Literature DB >> 27391077 |
Kaimin Hu1, Lixia Lou2, Wei Tian1, Tao Pan1, Juan Ye2, Suzhan Zhang1.
Abstract
Breast cancer is a worldwide threat to female health with patient outcomes varying widely. The exact correlation between global outcomes of breast cancer and the national socioeconomic status is still undetermined. Mortality-to-incidence ratio (MIR) of breast cancer was calculated with the contemporary age standardized incidence and mortality rates for countries with data available at GLOBOCAN 2012 database. The MIR matched national human development indexes (HDIs) and health system attainments were respectively obtained from Human Development Report and World Health Report. Correlation analysis, regression analysis, and Tukey-Kramer post hoc test were used to explore the effects of HDI and health system attainment on breast cancer MIR. Our results demonstrated that breast cancer MIR was inversely correlated with national HDI (r = -.950; P < .001) and health system attainment (r = -.898; P < .001). Countries with very high HDI had significantly lower MIRs than those with high, medium and low HDI (P < .001). Liner regression model by ordinary least squares also indicated negative effects of both HDI (adjusted R2 = .903, standardize β = -.699, P < .001) and health system attainment (adjusted R2 =. 805, standardized β = -.009; P < .001), with greater effects in developing countries identified by quantile regression analysis. It is noteworthy that significant health care disparities exist among countries in accordance with the discrepancy of HDI. Policies should be made in less developed countries, which are more likely to obtain worse outcomes in female breast cancer, that in order to improve their comprehensive economic strength and optimize their health system performance.Entities:
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Year: 2016 PMID: 27391077 PMCID: PMC4938431 DOI: 10.1371/journal.pone.0158951
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Scatter plots show standardize coefficients of liner regression model between (A) Human Development Index (HDI), (B) health system attainment and breast cancer MIR (mortality-to-incidence ratio).
Fig 2Variation in the regression coefficients of (A) HDI and (B) health system attainment on breast cancer MIR over the conditional quantiles. Horizontal lines represent ordinary least squares estimates with 95% confidence intervals.
Fig 3Differences of breast cancer MIR in four socioeconomic development levels.
MIR in low, medium and high HDI countries is significantly higher than that in very high HDI countries. ***P< .001. Horizontal lines represent group means.
Fig 4Scatter plots show the relationship between breast cancer incidence and (A) mortality, (B) MIR of countries in four different HDI categories. ASR: age-standardised rate; β: standardize coefficient.