Showing 4,241 - 4,260 results of 5,176 for search '"Higher education"', query time: 0.08s Refine Results
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    National and provincial prevalence of self-reported diabetes: results from the cross-sectional Demographic and Health Survey in Sri Lanka–2016 by Sobha Sivaprasad, Manjula D Nugawela, Harshana Munasinghe, Pansujee Dissanayaka, Mangalika Jayasundara

    Published 2024-07-01
    “…Other risk factors of self-reported diabetes included age, gender, ethnicity, education level and marital status with those aged 55–64 years, females, who belong to Moor ethnicity, had secondary or higher education, and divorced or widowed had higher risk of diabetes compared with their counterparts.Conclusions Sri Lanka has a high prevalence of self-reported diabetes and it differs by province, sector of residence, sex, education level, ethnicity, age and marital status. …”
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    Effect of family support and work resources in the relationship of economic constraints and work volition: Evidence from China. by Lu Hai, Yang Wang, Man Shu, Mengxiao Zhang, Yijiao Wang

    Published 2025-01-01
    “…For instance, the expansion of higher education has led to a swell in the number of job seekers, which has in turn intensified competition. …”
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    Predictive and spatial analysis for estimating the impact of sociodemographic factors on contraceptive use among women living with HIV/AIDS (WLWHA) in Kenya: Implications for polic... by Menkeoma Laura Okoli, Samuel Alao, Somtochukwu Ojukwu, Nnadozie C Emechebe, Asuelimen Ikhuoria, Kevin E Kip

    Published 2019-01-01
    “…Similarly, women with primary education only were less likely to use contraceptives compared with women with secondary or higher education (OR=0.42, 95% CI 0.18 to 0.98). Spatial autocorrelation revealed significant positive clusters with weak clustering tendencies of non-contraceptive use among different levels of wealth index and education within different regions of Kenya.Conclusion These findings underscores the need for intervention programmes to further target socially disadvantaged WLWHA, which is necessary for achieving the SDGs.…”
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