Loading [Contrib]/a11y/accessibility-menu.js
Research article Special Issues

Access to Difficult-to-reach Population Subgroups: A Family Midwife Based Home Visiting Service for Implementing Nutrition-related Preventive Activities - A Mixed Methods Explorative Study

  • Received: 28 February 2015 Accepted: 10 August 2015 Published: 25 January 2015
  • Health and social inequality are tightly linked and still pose an important public health problem. However, vulnerable and disadvantaged populations are difficult to reach for health-related interventions. Given the long-lasting effects of an adverse, particular nutrition-related, intrauterine and neonatal environment on health development (perinatal programming), an early and easy access is essential for sustainable interventions. The goal of this explorative study was therefore to elucidate whether an existing access of family midwives (FMs) to families in need of support could be an option to implement effective public health and nutrition interventions. To that end three research objectives were formulated: (1) to determine whether a discernible impact of home visits by FMs can be described; (2) to identify subgroups among these families in need of more specific interventions; (3) to determine how relevant nutrition-related topics are for both FMs and the supported families. For addressing these objectives a mixed methods design was used: Routine documentation data from 295 families visited by a family midwife (FM) were analyzed (secondary analysis), and structured expert interviews with FMs were conducted and analyzed. Study reporting followed the STROBE (STrengthening the Reporting of OBservational studies in Epidemiology) statement. Based on the FMs reports, a significant improvement (p < 0.001) regarding psycho-social variables could be determined after the home visits. Single mothers, however, seemed to benefit less from the FMs service compared to their counterparts (p = 0.015). Nutritional counseling was demanded by 89% of the families during the home visits. In addition, nutrition-related topics were reported in the interviews to be of high interest to both families and the FMs. Based on the obtained results it is concluded that FMs home visits offer a promising access to vulnerable and disadvantaged families for implementing nutrition-related preventive activities.

    Citation: Helena Walz, Barbara Bohn, Jessica Sander, Claudia Eberle, Monika Alisch, Bernhard Oswald, Anja Kroke. Access to Difficult-to-reach Population Subgroups: A Family Midwife Based Home Visiting Service for Implementing Nutrition-related Preventive Activities - A Mixed Methods Explorative Study[J]. AIMS Public Health, 2015, 2(3): 516-536. doi: 10.3934/publichealth.2015.3.516

    Related Papers:

    [1] Janina Engel, Markus Wahl, Rudi Zagst . Forecasting turbulence in the Asian and European stock market using regime-switching models. Quantitative Finance and Economics, 2018, 2(2): 388-406. doi: 10.3934/QFE.2018.2.388
    [2] Albert Henry Ntarmah, Yusheng Kong, Michael Kobina Gyan . Banking system stability and economic sustainability: A panel data analysis of the effect of banking system stability on sustainability of some selected developing countries. Quantitative Finance and Economics, 2019, 3(4): 709-738. doi: 10.3934/QFE.2019.4.709
    [3] Lichao Tao, Yuefu Lai, Yanting Ji, Xiangxing Tao . Asian option pricing under sub-fractional vasicek model. Quantitative Finance and Economics, 2023, 7(3): 403-419. doi: 10.3934/QFE.2023020
    [4] Tram Thi Xuan Huong, Tran Thi Thanh Nga, Tran Thi Kim Oanh . Liquidity risk and bank performance in Southeast Asian countries: a dynamic panel approach. Quantitative Finance and Economics, 2021, 5(1): 111-133. doi: 10.3934/QFE.2021006
    [5] David Kuo Chuen Lee, Chia Mei Shih, Jincheng Zheng . Asian CBDCs on the rise: An in-depth analysis of developments and implications. Quantitative Finance and Economics, 2023, 7(4): 665-696. doi: 10.3934/QFE.2023032
    [6] Sofía Orazi, Lisana B. Martinez, Hernán P. Vigier . Determinants and evolution of financial inclusion in Latin America: A demand side analysis. Quantitative Finance and Economics, 2023, 7(2): 187-206. doi: 10.3934/QFE.2023010
    [7] Mansour Saleh Albarrak, Sara Ali Alokley, Yasmeen Ansari . Financial literacy among working adults: The case of Saudi Arabia. Quantitative Finance and Economics, 2024, 8(4): 841-866. doi: 10.3934/QFE.2024032
    [8] Júlio Lobão, Luís Pacheco, Maria Beatriz Naia . Navigating the herd: The dynamics of investor behavior in the Brazilian stock market. Quantitative Finance and Economics, 2024, 8(3): 635-657. doi: 10.3934/QFE.2024024
    [9] Sergio Luis Náñez Alonso, Peterson K. Ozili, Beatriz María Sastre Hernández, Luís Miguel Pacheco . Evaluating the acceptance of CBDCs: experimental research with artificial intelligence (AI) generated synthetic response. Quantitative Finance and Economics, 2025, 9(1): 242-273. doi: 10.3934/QFE.2025008
    [10] Ngo Thai Hung . Equity market integration of China and Southeast Asian countries: further evidence from MGARCH-ADCC and wavelet coherence analysis. Quantitative Finance and Economics, 2019, 3(2): 201-220. doi: 10.3934/QFE.2019.2.201
  • Health and social inequality are tightly linked and still pose an important public health problem. However, vulnerable and disadvantaged populations are difficult to reach for health-related interventions. Given the long-lasting effects of an adverse, particular nutrition-related, intrauterine and neonatal environment on health development (perinatal programming), an early and easy access is essential for sustainable interventions. The goal of this explorative study was therefore to elucidate whether an existing access of family midwives (FMs) to families in need of support could be an option to implement effective public health and nutrition interventions. To that end three research objectives were formulated: (1) to determine whether a discernible impact of home visits by FMs can be described; (2) to identify subgroups among these families in need of more specific interventions; (3) to determine how relevant nutrition-related topics are for both FMs and the supported families. For addressing these objectives a mixed methods design was used: Routine documentation data from 295 families visited by a family midwife (FM) were analyzed (secondary analysis), and structured expert interviews with FMs were conducted and analyzed. Study reporting followed the STROBE (STrengthening the Reporting of OBservational studies in Epidemiology) statement. Based on the FMs reports, a significant improvement (p < 0.001) regarding psycho-social variables could be determined after the home visits. Single mothers, however, seemed to benefit less from the FMs service compared to their counterparts (p = 0.015). Nutritional counseling was demanded by 89% of the families during the home visits. In addition, nutrition-related topics were reported in the interviews to be of high interest to both families and the FMs. Based on the obtained results it is concluded that FMs home visits offer a promising access to vulnerable and disadvantaged families for implementing nutrition-related preventive activities.


    Racial differences in uninsurance rate were observed among adults in the United States (U.S.) (Huang and Carrasqullo, 2008; Denavas-Walt et al., 2012; Barnett and Vornovitsky, 2016; Budhwani and De, 2016; Ward et al., 2016; Young et al., 2017; Kim et al., 2019). For example, Asians have higher rates than Whites (Huang and Carrasqullo, 2008; Denavas-Walt et al., 2012; Barnett and Vornovitsky, 2016) but lower rates than African Americans (AAs) and Hispanics (Denavas-Walt et al., 2012). Furthermore, Asian Americans are highly diverse (Zhou and Xiong, 2005; Cook et al., 2011; Park et al., 2018; Kim et al., 2019). Among Asians, there are also racial differences in uninsurance. For example, Koreans have the highest rate of uninsurance than Chinese, Vietnamese and Filipino (Nguyen et al., 2015). Moreover, a few studies have focused on social-behavioral factors with uninsurance rate among Asian Americans (Huang and Carrasqullo, 2008; Wilper et al., 2009; Kao, 2010; Nguyen et al., 2015; Wang and Xie, 2017; Tan et al., 2018). Additionally, some social-behavioral factors may be correlated.

    The present study aims to estimate the weighted prevalence of uninsurance among Asian Americans of Chinese, Filipinos, Japanese, Koreans, and Vietnamese ancestry, and compare it with Whites, AAs and Latinos. A second objective of the study is to evaluate the associations of smoking, citizenship, and socioeconomic status with uninsurance. The California Health Interview Survey (CHIS), a random-digit-dial telephone survey of households designed to be representative of California's noninstitutionalized population, is the largest state-level health survey data in the U.S. The large CHIS sample includes people from many ethnic groups to provide health-related information for most large and small racial and ethnic populations that are all a part of California. We used the pooled 2013–2014 weighted CHIS data which is representative of Asian ethnic groups: Chinese, Filipinos, Japanese, Koreans, and Vietnamese (Hoeffel et al., 2010; CHIS, 2016); whereas most national surveys on health sample a small number of Asian Americans. Further, we considered sampling weights, so that the results represent California's residential population, and performed weighted univariate and multivariate logistic regression analyses to estimate the associations of potential factors with uninsurance. Additionally, we applied the oblique principal component cluster analysis (OPCCA), as implemented using PROC VARCLUS in SAS to classify independent variables into disjoint clusters; where the variables in the same cluster are as strongly correlated as possible with each other and as uncorrelated as possible with the variables in the other cluster (Aggarwal and Kosian, 2011; Nelson, 2001; Sanche and Lonergan, 2006; Wang et al., 2019).

    The remaining part of the paper has following sections: section 2 has extensive literature review; section 3 includes data source and statistical methods; section 4 provides results; section 5 discusses the research findings; and section 6 draws conclusion with practical implications.

    According to the National Health Interview Survey (NHIS), for adults aged 18–64 in the United States (U.S.), the percentage uninsured declined from 22.3% in 2010 to 16.3% in 2014 (Ward et al., 2016). However, this figure masks important racial differences (Huang and Carrasqullo, 2008; Denavas-Walt et al., 2012; Barnett and Vornovitsky, 2016; Budhwani and De, 2016; Ward et al., 2016; Young et al., 2017; Kim et al., 2019). For example, Latinos have higher uninsurance rates compared with Whites and African Americans (AAs) (Ward et al., 2016), while Asians have higher rates than Whites (Huang and Carrasqullo, 2008; Denavas-Walt et al., 2012; Barnett and Vornovitsky, 2016) but lower rates than AAs and Hispanics (Denavas-Walt et al., 2012). Despite these differences, majority of previous studies have only compared Asian Americans to other minorities, and there is very limited research examining insurance coverage among Asian Americans (Huang and Carrasqullo, 2008; Kao, 2010; Nguyen et al., 2015; Tan et al., 2018). Insurance is conducive to the protection of citizens and the safe development of society; while improving insurance coverage is of great significance to both individuals and society. Therefore, studying the insurance differences among different groups of people with different characteristics will help us to understand the social security situation of different groups and find out the reasons from it.

    Asian Americans are one of the fastest growing populations in the U.S. Between 2000 and 2010, the Asian population in the U.S. increased by 46% (Pew Research Center, 2013), with estimates indicating a doubling in population size leading to a projected increase to more than 43 million by 2050 (Yi et al., 2015). In 2014, Asian Americans accounted for 42.4% of the 42.4 million immigrants in the U.S. (Mossaad, 2016). In the overall immigrant population, Asian Americans were the second largest immigrant group, accounting for 28% of all foreign-born populations (Grieco et al., 2012).

    Notwithstanding the common racial categorization, Asian Americans should not simply be treated as one group because they are highly diverse (Zhou and Xiong, 2005; Cook et al., 2011; Park et al., 2018; Kim et al., 2019). For example, they represent over 20 national origins in the U.S. alone (Zhou and Xiong, 2005) and have pronounced socioeconomic disparities across ethnic groups. Some ethnic groups (Asian Indian, Filipino, and Chinese) have incomes and educational levels far exceeding national averages, while others (Hmong, Cambodian, and Vietnamese) have the lowest income and education levels in the U.S. (Cook et al., 2011). Among Asians, there are also some subetaoup differences in uninsurance. For example, in the 2006 Current Population Surveys, 29.8% of Koreans, 21.5% of Vietnamese and 16.8% of Chinese were uninsured, compared with only 7.9% of Japanese (Huang and Carrasqullo, 2008). A recent study also found that Koreans have the highest rate of uninsurance (39.5%), far more than other Asian ethnic groups such as Chinese, Vietnamese and Filipino (Nguyen et al., 2015).

    Studying the factors related to uninsurance will decrease uninsurance, which is of great significance for governments at all levels to formulate policies and for insurance companies to develop real market business. Previous studies have shown that factors such as gender, race, citizenship, marital status, education, employment, geographic context, income, level of inclusion of state immigrant policies, and physical health may influence uninsurance (Shi, 2001; Ruy et al., 2002; Huang and Carrasqullo, 2008; Kao et al., 2010; Nguyen et al., 2015; Wang and Xie, 2017; Young et al., 2017; Tan et al., 2018; Kim et al., 2019). However, there is very limited research examining insurance coverage among Asian Americans (Huang and Carrasqullo, 2008; Kao, 2010; Nguyen et al., 2015; Tan et al., 2018); while a few studies have looked at smoking that may also influence uninsurance (Wilper et al., 2009; Wang and Xie, 2017). Understanding specific health behaviors associated with uninsurance can inform additional investigation into their influence on the acquisition and retention of insurance coverage. Furthermore, some social-behavioral factors may be correlated.

    This study used the 2013–2014 data files for adults from the publicly accessible CHIS. CHIS is a collaborative study conducted by the University of California, Los Angeles (UCLA) Center for Health Policy Research, the California Department of Health Services, and the Public Health Institute. The CHIS provides representative data for all 58 counties in the state through a random-dial telephone interview. Details about the sampling design can be found elsewhere (CHIS, 2016). In the current study, we excluded 16,104 individuals aged 65 or above while 24,136 adults aged 18–64 years were included. CHIS oversampled Asian Americans to increase the precision of estimates for those ethnic groups. Interviews were conducted in five languages (English, Spanish, Chinese (both Mandarin and Cantonese), Vietnamese, and Korean). There was an Institutional Review Board exemption due to secondary data analysis.

    Insurance status was constructed as a categorical variable (yes/no) using response to the question on whether the participants had health insurance coverage in the last 12 months. Insurance type was recoded as uninsurance, medi-cal (MediCaid)) only, employer-base or military only, privately purchased only, and other insurance.

    Gender was coded as either male or female based on self-report. Age was categorized as 18–44, 45–54 and 55–64 years. Race consisted of five groups: Whites, Latinos, Asians, AAs, and other. We used the self-reported Asian ethnicity variable constructed by CHIS, which includes five subetaoups: Chinese, Japanese, Koreans, Filipinos, and Vietnamese. Citizenship status had 3 categories: U.S. born citizen, naturalized citizen, and non-citizen. Health status had three self-rated health categories (excellent/very good, good, and fair/poor). Poverty level was categorized into three levels, including 0–99% federal poverty level (FPL), 100%–299% FPL, and 300% FPL or above. Marital status was classified into married/living with partner, widowed/divorced/separated, and never married. Education attainment included three categories as high school, college, or graduate. Smoking status was categorized as never smoking, current smoking, and past smoking.

    All analyses were accounted for complex sampling designs and non-response by employing weights, which are based on the State of California's Department of Finance population estimates and projections, so that the results represent California's residential population. Additional information on how to use the CHIS sampling weights, including sample code, is available at: http://healthpolicy.ucla.edu/chis/analyze/Pages/sample-code.aspx. All the analyses were performed with SAS statistical software, version 9.4 (SAS Institute, Cary, NC, USA).

    Generally, for a representative sample, the prevalence is defined by the number of people in the sample with the characteristic of interest (such as uninsurance), divided by the total number of people in the sample.

    $ \text {Prevalence} = \frac{\# \text { of people in sample with characteristic }}{\text { Total } \# \text { of people in sample }} $ (1)

    To represent an entire population, statistical "weights" may be applied, where weighting the sample mathematically adjusts the sample characteristics to match with the target population. The SAS PROC SURVEYFREQ procedure was used to weight and estimate population proportions/prevalence. SAS PROC SURVEYMEANS was used to estimate the overall prevalence. These procedures estimate the variances of proportion estimates using jackknife variance estimation (Wolter, 1985; Lohr, 2009). Point prevalence (%) and 95% confidence intervals (CIs) were calculated. The Chi-square test was applied to compare the prevalence of uninsurance by racial group dissected by demographical, behavioral and health status related characteristics.

    SAS PROC SURVEYLOGISTIC was used to estimate the odds ratios (ORs) and 95% confidence intervals (CIs) for the relation between potential factors and uninsurance. Simple logistic regressions were used to examine the independent roles of all potential risk factors in uninsurance. Afterwards, multivariate logistic regressions were used to simultaneously adjust for all potential risk factors of uninsurance. We also examined the associations between race/ethnicity and uninsurance among California Adults (Whites as reference) and also among Asian Americans (Koreans as reference). Multivariate logistic regression analysis of uninsurance as a binary trait adjusted for other factors, was performed using SAS PROC SURVEYLOGISTIC.

    $ \operatorname{logit}(p(\mathrm{Y} 1 = 1)) = \beta_{0}+\beta_{1} \mathrm{X}_{1}+\beta_{2} \mathrm{X}_{2}+\ldots+\beta_{\mathrm{k}} \mathrm{X}_{\mathrm{k}} $ (2)

    where Y1 is uninsurance (1 if uninsured) and X1, X2, …, and Xk are independent variables.

    Social-behavioral factors may be correlated and cause collinearity, which may tend to inflate the variance of at least one estimated regression coefficient. The PROC VARCLUS procedure was used to divide a set of numeric variables into disjoint clusters. The variables in the same clusters are as strongly correlated as possible with each other and as uncorrelated as possible with the variables in the other clusters (Muthen, 2005; Aggarwal and Kosian, 2011). Considering the categorical variables, the polychoric correlation is applied to ordinal data (Lee et al., 1995), where the polychoric correlation is a technique for estimating the correlation between two theorized normally distributed continuous latent variables, from two observed ordinal variables (Lee et al., 1995). Higher squared correlation (R2) values with its own cluster, lower R2 values with next closest cluster, and lower 1–R2 ratios (the ratio of 1–R2 for a variable's own cluster to 1–R2 for its nearest cluster) indicate a good fit of the respective item.

    $ 1-R^{2} \text { ratio } = \frac{1-R^{2} \text { own cluster }}{1-R^{2} \text { next closest cluster }} $ (3)

    Table 1 shows the weighted prevalence of uninsurance in Californian adults from 2013–2014. The overall prevalence of uninsurance was 15.4% and in terms of each racial category, it was 8.5%, 10.3%, 24.7%, 12.6%, and 15.1% for Whites, AAs, Latinos, Asians and other races, respectively. Males had a higher prevalence than females (18.4% vs. 12.5%). The prevalence decreased with age (17.4%, 13.5% and 11.1% for age groups 18–44, 45–54 and 55–64 years, respectively). The prevalence decreased with education level (23.4%, 11.8% and 4.1% for high school, some college and graduate, respectively). Higher prevalence was found in never married than married and other (19.6 vs. 18.7% vs. 11.4%). The prevalence decreased with decreasing poverty (24.8%, 23.8% and 6.3% for poverty level groups < 100% FPL, 100%–299% FPL and ≧ 300% FPL, respectively). The prevalence was higher in non-citizen comparing with U.S. born citizen and naturalized citizen (33.9% vs. 10.7% vs 12.6%). The prevalence was higher in current smokers than former and never smokers (23.4% vs. 14.7% vs. 14.0%). Those with fair/poor health had a higher prevalence than those with good health and excellent/very good health (23.4% vs. 15.9% vs. 12.1%).

    Table 1.  Prevalence of uninsurance (%) among California adults (%).
    Variable Total (N) Uninsured Prevalence (%) 95%CI p-value
    Sex
      Male 10280 1386 18.4 17.1–19.7 < 0.0001
      Female 13856 1369 12.5 12.5–13.6
    Age group
      18–44 years 8758 1316 17.4 16.2–18.6 < 0.0001
      46–54 years 6259 643 13.5 11.9–15.1
      55–64 years 9119 796 11.1 9.6–12.7
    Race
      White 13392 1011 8.5 7.6–9.4 < 0.0001
      AA 1118 98 10.3 7.3–13.3
      Asian 2060 213 12.6 10.4–14.9
      Hispanic 6341 1323 24.7 23.0–26.4
      Other 733 68 15.1 8.8–21.4
    Marital status
      Married 12716 1022 11.4 10.3–12.5 < 0.0001
      Other 5965 817 18.7 16.7–20.6
      Never married 5455 916 19.6 17.7–21.5
    Education
      High school 7910 1471 23.4 21.8–25.0 < 0.0001
      Some college 12461 1135 11.8 10.8–12.8
      Graduate 3765 149 4.1 2.8–5.4
    Poverty level
       < 100% FPL 3767 734 24.8 22.3–27.2 < 0.0001
      100%–299% FPL 7345 1430 23.8 22.0–25.6
      ≧ 300% FPL 13024 591 6.3 5.6–6.9
    Citizenship status
      US Born citizen 17793 1514 10.7 9.8–11.6 < 0.0001
      Naturalized citizen 3488 404 12.6 10.4–14.8
      Non-citizen 2855 837 33.9 30.9–36.8
    Smoking
      Current 3123 538 23.4 19.9–26.9 < 0.0001
      Former 5638 564 14.7 12.6–16.8
      Never 15375 1653 14.0 13.1–14.9
    Health
      Excellent/Very good 12146 1061 12.1 11.2–13.1 < 0.0001
      Good 7177 941 15.9 14.3–17.5
      Fair/poor 4813 753 23.4 21.2–25.6
    Overall 24136 2755 15.4 14.5–16.2
    Note: Abbreviations: AA—African American; FPL—Federal poverty level; CI—Confidence interval; p-value is based on χ2 test.

     | Show Table
    DownLoad: CSV

    Among Asians, the prevalence of uninsurance was 15.1%, 9.2%, 6.2%, 20.8% and 12.1% for Chinese, Filipinos, Japanese, Koreans, and Vietnamese, respectively (Table 2). Among all racial groups, the highest proportion of study participants had employer based or military type insurance (62.2%, 49.2%, 35.5% and 55.5% for Whites, AAs, Hispanics and Asian Americans). Latinos and AAs were more likely to use Medi-Cal (19.1% and 9.8%) closely followed by Vietnamese (14.3%) and Filipinos (12.7%). Koreans had the highest proportion of people with private insurance (17.9%).

    Table 2.  Prevalence of uninsurance (%) by insurance type among California adults.
    Variables White AA Hispanic All Asians Chinese Filipino Japanese Korean Vietnamese
    Uninured only 8.5 10.3 24.7 12.6 15.1 9.2 6.2 20.8 12.1
    Medi-Cal (MediCaid) only 6.8 19.8 19.1 8.7 6.1 12..7 0.7 3.6 14.3
    Employer-based or Military only 62.2 49.2 35.5 55.5 54.2 56.0 65.7 44.8 60.2
    Privately purchased only 8.5 2.3 2.8 9.1 10.3 6.2 9.2 17.9 6.4
    Other insurance 14.0 18.4 17.9 14.0 14.4 16.0 19.4 13.0 7.1
    Note: Abbreviations: AA—African American.

     | Show Table
    DownLoad: CSV

    The characteristics of Californian Adults without insurance coverage are described in Table 3. Among males and females, Latinos and Koreans had the highest prevalence of uninsurance (30.2% vs 26.4—males, 19.3% vs 16.5—females). Figure 1 reveals racial differences by gender. An increasing prevalence of uninsurance was seen among Koreans as age increased with those 55–64 having an uninsurance prevalence of 31.4%. Lower education revealed higher uninsurance rates, especially among Koreans (46.6%), Latinos (29.2%) and Chinese (25.9%). A higher prevalence of uninsurance among non-citizens was found in AAs (50.7%), Latinos (39.9%), Chinese (33.6%), and Koreans (28.1%). The highest prevalence of uninsurance among current smokers was found in Vietnamese (33.6%), Latino (32.9%) and Chinese (32.8%). A greater proportion of uninsured Chinese and Korean participants rated their health as fair/poor (31.4% and 29.0%).

    Table 3.  Prevalence of uninsurance (%) among racial groups in California adults.
    Variable White AA Hispanic All Asians Chinese Filipino Japanese Korean Vietnamese p-value
    Sex
      Male 9.4 11.8 30.2 17.1 23.0 8.7 4.6 26.4 22.7 < 0.0001
      Female 7.7 8.9 19.3 8.7 8.5 9.6 7.2 16.5 1.8 < 0.0001
    Age group
      18–44 years 9.9 11.4 26.1 13.3 16.7 9.0 8.8 16.1 13.4 < 0.0001
      45–54 years 7.4 8.6 23.4 11.2 11.7 5.7 4.3 26.5 16.8 < 0.0001
      55–64 years 6.5 9.2 19.6 12.1 11.3 14.2 2.8 31.4 4.2 < 0.0001
    Marital status
      Married 4.1 5.9 21.3 11.7 14.6 9.2 2.7 21.4 7.0 < 0.0001
      Other 13.7 14.6 25.1 12.9 12.0 9.4 3.7 14.9 29.6 < 0.0001
      Never married 13.6 10.6 29.5 16.9 16.2 9.1 11.4 21.3 15.9 < 0.0001
    Education
      High school 13.3 10.1 29.2 22.5 25.9 15.3 3.0 46.6 15.4 < 0.0001
      Some college 8.1 11.6 18.4 10.6 12.9 8.7 8.3 11.3 12.6 < 0.0001
      Graduate 3.4 1.5 6.9 5.6 6.7 3.2 0.3 13.2 0 < 0.0001
    Poverty level
       < 100% FPL 18.3 15.0 29.4 20.5 24.8 11.8 8.2 33.3 21.8 0.0006
      100%–299% FPL 17.0 9.9 29.7 23.2 30.7 13.4 21.6 34.1 16.3 < 0.0001
      ≧ 300% FPL 4.4 8.3 10.9 5.4 4.8 6.6 2.5 7.4 4.6 < 0.0001
    Citizenship Status
      US born citizen 8.7 8.6 15.6 6.7 7.1 7.1 5.9 1.1 9.3 < 0.0001
      Naturalized citizen 7.0 6.1 18.2 9.2 6.4 6.7 1.9 22.4 11.2 < 0.0001
      Non-citizen 6.7 50.7 39.9 26.5 33.6 17.1 13.1 28.1 21.2 < 0.0001
    Smoking
      Current 19.1 14.4 32.9 23.8 32.8 13.0 8.8 21.9 33.6 0.0025
      Former 8.2 12.7 25.2 14.9 17.5 7.0 2.3 33.5 18.7 < 0.0001
      Never 5.8 8.5 23.4 10.7 12.6 9.1 6.6 16.0 7.9 < 0.0001
    Health
      Excellent/Very good 7.1 6.6 22.4 9.6 13.2 5.4 2.2 18.7 2.3 < 0.0001
      Good 9.9 4.5 23.1 11.9 7.8 12.3 14.4 18.6 15.1 < 0.0001
      Fair/poor 13.8 16.5 30.2 22.5 31.4 15.4 8.7 29.0 15.9 < 0.0001
    Note: Abbreviations: AA—African American; FPL—Federal poverty level; CI—Confidence interval; p-value is based on χ2 test.

     | Show Table
    DownLoad: CSV
    Figure 1.  Prevalence of uninsurance among race groups by gender.

    Table 4 presents the results from both univariate and multivariate logistic regression analyses among Californian adults. The first column is variable name and value, the second column is crude OR, the third column and the fourth column are 95% confidence intervals and P values, the fifth column is adjusted OR, the sixth column and the seventh column are corresponding 95% confidence intervals and P values, respectively. As can be seen from table 4, in the univariate analyses, all factors were associated with uninsurance (p < 0.05). After adjusting for other factors, compared to Whites, Latinos had a higher odds of uninsurance (OR = 1.48, 95% CI = 1.23–1.78). The following characteristics were also associated with an increased odds of uninsurance-being male (OR = 1.61, 95% CI = 1.38–1.88), lower education (OR = 2.13, 95% CI = 1.44–3.16; OR = 1.88, 95% CI = 1.29–2.75 for high school and some college respectively), higher poverty (OR = 2.25, 95% CI = 1.78–2.83; OR = 2.71, 95% CI = 2.27–3.23 for < 100% FPL and 100%–299% FPL), and current smoking (OR = 1.68, 95% CI = 1.29–2.17) was positively associated with uninsurance. Naturalized citizen and non-citizen were associated with increased odds of uninsurance (OR = 1.38, 95% CI = 1.08–1.77; OR = 3.28, 95% CI = 2.64–4.06).

    Table 4.  Univariate and multivariate logistic regression analyses among Californian adults.
    Variable Crude OR 95% CI p-value Adjusted OR 95% CI p-value
    Gender (ref=female)
      Male 1.61 1.39–1.86 < 0.0001 1.61 1.38–1.88 < 0.0001
    Age group (ref=18–44)
      45–64 0.75 0.63–0.88 0.0006 0.94 0.78–1.12 0.4926
      55–64 0.58 0.48–0.69 < 0.0001 0.94 0.77–1.14 0.5257
    Race (ref=Whites)
      AA 1.22 0.89–1.70 0.2106 0.85 0.60–1.21 0.3771
      Latino 3.52 3.00–4.13 < 0.0001 1.48 1.23–1.78 < 0.0001
      Other 1.91 1.17–3.11 0.0095 1.41 0.83–2.41 0.2057
      All Asians 1.55 1.24–1.65 0.0002 0.94 0.73–1.21 0.6273
    Marital status (ref=married)
      Other 1.78 1.49–2.12 < 0.0001 1.52 1.24–1.86 < 0.0001
      Never married 1.90 1.61–2.25 < 0.0001 2.06 1.69–2.49 < 0.0001
    Education (ref=Graduate)
      High school 6.83 4.82–6.67 < 0.0001 2.13 1.44–3.16 0.0002
      Some college 2.95 2.09–4.15 < 0.0001 1.88 1.29–2.75 0.0011
    Poverty level (ref=300% FPL)
       < 100% FPL 4.80 4.02–5.74 < 0.0001 2.25 1.78–2.83 < 0.0001
      100%–299% FPL 4.57 3.96–5.28 < 0.0001 2.71 2.27–3.23 < 0.0001
    Citizenship status (ref=US born citizen)
      Naturalized citizen 1.24 1.00–1.53 0.0458 1.38 1.08–1.77 0.0107
      Non-citizen 4.56 3.82–5.44 < 0.0001 3.28 2.64–4.06 < 0.0001
    Smoking (ref=never smoking)
      Current 1.84 1.47–2.31 < 0.0001 1.68 1.29–2.17 < 0.0001
      Former 1.05 0.87–1.27 0.6016 1.14 0.92–1.41 0.2407
    Health (ref= Excellent/very good)
      Good 1.32 1.14–1.51 0.0001 0.87 0.74–1.03 0.1010
      Fair/poor 2.17 1.86–2.54 < 0.0001 1.09 0.88–1.36 0.4286
    Note: Abbreviations: AA—African American; FPL—federal poverty level; OR—Odds ratio; CI—Confidence interval.

     | Show Table
    DownLoad: CSV

    Table 5 shows the results of logistic regression analyses for the association between race/ethnicity and uninsurance among Asian Americans. In the univariate analyses, being male, Filipino and Japanese, non-citizen, lower education, higher poverty and current smoking were positively significantly associated with uninsurance. After adjusting for other factors, compared to Koreans, being Filipino and Vietnamese were associated with lower odds of uninsurance but such associations were at borderline significant level. In addition, the following characteristics had a significantly increased likelihood of uninsurance-being male (OR = 2.40, 95% CI = 1.48–3.90), lower education (OR = 2.76, 95% CI = 1.20–6.34 for high school), higher poverty (OR = 3.35, 95% CI = 1.95–5.78 for 100%–299% FPL). Non-citizen was associated with increased odds of uninsurance (OR = 4.20, 95% CI = 2.05–8.61).

    Table 5.  Univariate and multivariate logistic regression analyses among Asian Adults.
    Variable Crude OR 95% CI p-value Adjusted OR 95% CI p-value
    Gender (ref = female)
      Male 2.17 1.41–3.34 0.0004 2.40 1.48–3.90 0.0004
    Age group (ref = 18–44)
      45–64 0.82 0.51–1.32 0.4159 0.87 0.52–1.45 0.5889
      55–64 0.90 0.52–1.56 0.6995 0.99 0.53–1.88 0.9840
    Race (ref = Korean)
      Chinese 0.67 0.38–1.21 0.1836 0.80 0.43–1.49 0.4834
      Filipino 0.39 0.19–0.79 0.0096 0.49 0.22–1.11 0.0857
      Japanese 0.25 0.06–0.97 0.0458 0.71 0.16–3.12 0.6535
      Vietnamese 0.52 0.24–1.15 0.1072 0.58 0.23–1.44 0.0857
    Marital status (ref = Married)
      Other 1.11 0.54–2.30 0.7702 1.52 0.64–3.59 0.3417
      Never married 1.22 0.77–1.93 0.4065 1.39 0.79–2.46 0.2530
    Education (ref = graduate)
      High school 4.93 2.45–9.92 < 0.0001 2.76 1.20–6.34 0.0169
      Some college 2.02 1.06–3.87 0.0334 1.80 0.85–3.84 0.1267
    Poverty level (ref = ≧ 300% FPL)
       < 100% 4.55 2.34–8.84 < 0.0001 1.89 0.91–3.93 0.0860
      100%–299% FPL 5.35 3.25–8.79 < 0.0001 3.35 1.95–5.78 < 0.0001
    Citizenship status (ref = US born citizen)
      Naturalized citizen 1.41 0.73–2.74 0.3054 1.53 0.75–3.12 0.2384
      Non-citizen 5.01 2.69–9.33 < 0.0001 4.20 2.05–8.61 < 0.0001
    Smoking (ref = Never)
      Current 2.63 1.30–5.33 0.0075 1.44 0.67–3.09 0.3551
      Former 1.47 0.85–2.56 0.169 1.19 0.64–2.20 0.5820
    Health (ref = Excellent/very good)
      Good 1.29 0.72–2.30 0.3928 1.06 0.56–2.02 0.8653
      Fair/poor 2.75 1.53–4.92 0.0007 1.53 0.77–3.06 0.2260
    Note: Abbreviations: AA—African American; FPL—Federal poverty level; OR—Odds ratio; CI—Confidence interval.

     | Show Table
    DownLoad: CSV

    Based on criteria of the eigenvalue smaller than 1, 9 variables were clustered into 2 clusters (Figure 2 and Table 6) in terms of inter-correlations. For example, race group had strong correlations with education level, poverty, smoking status, and health status (all p values < 0.0001); health status had strong correlations with age, race, marital status, education, poverty, citizenship, and smoking (all p values < 0.0001).

    Figure 2.  Oblique principal component cluster analysis of 9 variables.
    Table 6.  Polychoric correlation coefficients.
    Variable Sex Age Race Marital status Education Poverty Citizen Smoking Health
    Sex 1.000 0.101# –0.009 –0.407## –0.0301 –0.077** 0.057* 0.460## 0.072*
    Age 1.0000 0.037 –0.407## 0.011 –0.014 0.054* –0.043 0.228##
    Race 1.000 0.025 –0.244## –0.239## 0.024 –0.144## 0.234##
    Marital status 1.000 –0.269## –0.245## –0.336## –0.036 –0.005
    Education 1.000 0.551## –0.035 0.099# –0.353##
    Poverty 1.000 –0.188## 0.097** –0.452##
    Citizen 1.000 –0.046 0.165##
    Smoking 1.000 –0.169##
    Health 1.000
    Note: Abbreviations: *p < 0.05; **p < 0.01; #p < 0.001; ##p < 0.0001.

     | Show Table
    DownLoad: CSV

    In this study, we provided the updated prevalence of uninsurance in California adults and demonstrated a high prevalence of uninsurance among Latinos and Asians. For Asians specifically, the prevalence was higher in Chinese and Korean study participants. After adjusting for other factors, compared to Whites, Latinos had significantly increased odds of uninsurance. Other characteristics with significantly higher odds of uninsurance were being male, lower education, higher poverty, non-citizen, and current smoking. In the subetaoup analysis of Asians, compared to Koreans, being Filipino and Vietnamese, male gender, having lower education, non-citizen, and higher poverty was associated with a significantly increased likelihood of uninsurance.

    The prevalence of uninsurance was higher in Latinos and AAs than Whites (24.7% vs. 10.3% vs. 8.5%) in Table 1, which are consistent with previous studies. For example, in the 2015 estimates from the National Health Interview Survey, a representative survey of U.S. households and noninstitutional group quarters, it was found that Latinos were three times as likely to be uninsured compared to Whites and twice as likely to be uninsured compared to AAs (Ward et al., 2016). The prior studies have shown that Asians have lower rates of uninsurance than AAs (Denavas-Walt et al., 2012; Barnett and Vornovitsky, 2016); whereas in our present study the prevalence of uninsurance was 2.3% higher in Asians than AAs (Table 1). Still, both findings do not contradict each other because our study represents uninsurance statistics for California adults while the studies cited represents national-level estimates of uninsurance.

    Among Asians, our results are similar to prior work demonstrating that individuals with Koreans, Vietnamese and Chinese heritage have higher prevalence of uninsurance in the Asian community (Huang and Carrasqullo, 2008; Kao, 2010; Nguyen et al., 2015). The prevalence of uninsurance in Koreans (20.8%) and Vietnamese (12.1%) in Table 2, however, was much lower than estimates provided by Kao (2010) (36.1% and 20.7% for Koreans and Vietnamese respectively), Nguyen et al. (2015) (39.5% and 11.7%) and Tan et al. (2018) (30.5% for Koreans). This could be due to the fact that the estimates in these analyses were based on older CHIS surveys—Kao's study was based on the 2003 and 2005 CHIS surveys while Nguyen's study with his collaborators was based on the 2009 CHIS; while Tan et al. (2018) using the data from New York City. The present study used the latest CHIS-2013–2014 data; whereas the finding is indicative of a downtrend in uninsurance rates in California.

    It is well known that individuals with low educational attainment, low income and higher poverty are more likely to be uninsured (Kao, 2010; Barnett and Vornovitsky, 2016; Nguyen et al., 2015; Smith and Medalia, 2015; Tan et al., 2018). We further added that being male is associated with an increased odds comparing with females (Tables 5 and 6) as shown by Tan et al. (2018); while age group was associated with uninsurance in the whole sample but there is no association among Asians (Tables 5 and 6) as stated in Tan et al., (2018). Health status revealed weak association with uninsurance in the whole sample. The present results among Asians are consistent with previous findings (Nguyen et al., 2015).

    Citizenship status is a potential factor influencing uninsurance (Carrasquillo et al., 2000; Huang and Carrasqullo, 2008). The prevalence of uninsurance in the non-citizen California adults is 33.9% (Table 1), which is lower than previous report as 43.6% (Carrasquillo et al., 2000). The prevalence of uninsurance in the non-citizen Asians adults was 26.5% (Table 3), which is lower than previous report as 30.9% (Huang and Carrasqullo, 2008). We further added that the non-citizen AAs, Latinos, Chinese and Korean had higher prevalence (50.7% vs. 39.9% vs. 33.6% vs. 28.1%) as shown in Table 3. Among non-citizen Asians, non-citizen Chinese and Vietnameses had similar prevalence (33.6% and 21.2%) to those estimated by Huang and Carrasqullo 2008 (32.3% and 21.2%); whereas non-citizen Filipino, Japanese and Korean had lower prevalence (17.1%, 13.1% and 28.1%) than previous report (21.8%, 24.1% and 33.6%) (Huang and Carrasqullo 2008). Logistic regression analysis further revealed that the odds for non-citizen California adults are about 232% higher than the odds for those U.S. born citizen (Table 4); whereas the odds for non-citizen Asian adults are about 320% higher than the odds for U.S. born citizens (Table 5).

    Smoking has been correlated with uninsurance (Wilper et al, 2009); while another study showed that smoking is correlated with not gaining and sometimes even losing private insurance coverage (Jerant et al., 2012). A recent study also found that nicotine dependence is associated with low insurance coverage (Wang and Xie, 2017). The present study showed that the prevalence of uninsurance in current smoking (23.4%) was much higher than those in former smoking and never smoking groups (14.7% and 14.0%, respectively) in California adults as shown in Table 1; while logistic regression further revealed that the odds for current smoking adults are about 68% higher than the odds for those never smoking (Table 4). Furthermore, the univariate analysis in Asian Americans also revealed significant association between current smoking and unisurance (OR = 2.63, 95% CI = 1.30–5.33); however, such association disappeared after adjusting for other factors. One reason may be the strong correlation of smoking and other factors, which may cause collinearity in the logistic regression. As shown in Table 6 and Figure 2 based on the variable cluster analysis, smoking is within the same cluster with race, education, poverty and health status; while smoking had strong correlations with race, education, poverty, and health status. However, the present study did not really test the collinearity among independent variables, the variable cluster analysis just helped somehow in the explanation of association's differences between bivariate and multivariate logistic regression analyses. In the future, it will be useful to detect the collinearity among independent variables using critical statistics and then remove some highly correlated variables for further analysis. Additional research is needed to determine if the observed association is due to discriminatory practices of insurance companies or a result of unmeasured confounding from other factors as well as if the relationship is significant in the Asian population across the U.S.

    This study has several strengths. First, California has the largest Asian population in the U.S. (U.S. Census Bureau, 2016) and thus, provides a representative sample of Asians for research purposes. The percentage of Asian American in the present study (8.5%) is higher than the National Health Interview Survey NHIS 2012–2014 data (5.3%) (Ward et al., 2017), Behavioral Risk Factor Surveillance System (BRFSS) 2012–2014 data (2.2%) (Tung et al., 2017) and the National Survey on Drug Use and Health (NSDUH) 2013–2014 data (4.1%) (Wang et al., 2018). Furthermore, the CHIS survey was conducted in five languages (English, Spanish, Mandarin Chinese and Cantonese Chinese, Vietnamese, and Korean) facilitating the inclusion of subjects who are unable to speak English fluently or at all. This helps to improve the generalizability of the results in the state. Additionally, the sample was large, randomly selected and included comprehensive information with a wide age range on uninsurance and social, behavioral, and health characteristics enabling the adjustment of confounding. Investigating insurance gaps in Asians is important because they have pronounced socioeconomic disparities across ethnic groups (Cook et al., 2011).

    Several limitations need to be acknowledged. First, a cross-sectional design cannot determine causal relationships between correlated factors and uninsurance. Hence, there is a need for longitudinal data to further explore observed relationships. Second, data were collected by self-report, making responses prone to social desirability bias and recall bias. Third, the CHIS data were collected in California, which places limitations for generalizability in the U.S. A previous study has suggested that the choice of data source can have an impact on the conclusions of the uninsurance difference (Johnson et al., 2010). In the present study, we used the largest state-level health survey data in the U.S. - the pooled weighted data from the latest cycle of California population 2013–2014 data which is representative of Asian ethnic groups: Chinese, Filipinos, Japanese, Koreans, and Vietnamese (Hoeffel et al., 2010; CHIS, 2016) because most national surveys on health sample a small number of Asian Americans. Furthermore, we focused on health disparity of uninsurance across racial groups. However, we did not touch racial discrimination policy (such as insurance redlining) of financial institutions (Squires, 1997; Ong et al., 2010); furthermore, the present data is not involved in such policy. In addition, this study was not able to consider the 2010 Affordable Care Act (ACA), which really caused changes in 2015 and 2016 (Tan et al., 2018; Park et al., 2018).

    There are differences in prevalence of uninsurance between Asians and Whites, and among Asian subetaoups. However, compared to previous estimates, there appears to be a downtrend in uninsurance estimates for Koreans and Vietnamese. Being male, lower education, higher poverty, non-citizen, and current smoking were positively significantly associated with uninsurance. These findings can help design better interventions to reduce racial and ethnic disparities in uninsurance, especially for Asian Americans. To date, there is very limited research examining uninsurance among Asian Americans. Therefore, it is important to identify the factors propelling the uninsurance rate in this population, in order to effectively reduce the number of uninsured individuals. For example, although the uninsurance rate is higher in Asian than that of Whites, there are still large differences among Asian groups, which highlights more efforts to address the issue. Non-citizen and poor poverty level are two important factors influencing insurance coverage in Asian adults. Furthermore, the uninsurane rates also reveal differences among insurance type among Asian groups. For example, Koreans showed higher uninsurance rates in private insurance; whereas Vietnamese and Filipinos had higher uninsurance rate in MediCaid. Through the above analysis, we can get some inspiration on how to decrease uninsurance rate. First, when looking for new customers, insurance companies can choose characteristic groups with low insurance coverage, such as being male, Filipino and Japanese, non-citizen, lower education, higher poverty and current smoking. Besides, the government should take some effective measures to encourage people with the above characteristics to participate in insurance and improve the social insurance coverage rate. In addition, the social and behavioral variables may be correlated, and thus in the future studies, data mining and structure equation modeling could be considered to deal with the complex data structure.

    The authors are grateful to the support of Data from the 2013–2014 California Health Interview Survey.

    The authors declare no conflict of interest in this paper.

    [1] Dalstra J (2005) Socioeconomic differences in the prevalence of common chronic diseases: an overview of eight European countries. Int J Epidemiol 34(2):316-326.
    [2] Berkman LF (2009) Social Epidemiology: Social Determinants of Health in the United States: Are We Losing Ground? Annu Rev Publ Health 30(1):27-41.
    [3] Braveman PA, Cubbin C, Egerter S, et al. (2010) Socioeconomic Disparities in Health in the United States: What the Patterns Tell Us. Am J Publ Health 100(S1):S186.
    [4] Friel S, Marmot MG (2011) Action on the Social Determinants of Health and Health Inequities Goes Global. Annu Rev Publ Health 32(1):225-36.
    [5] Bleich SN, Jarlenski MP, Bell CN, et al. (2012) Health Inequalities: Trends, Progress, and Policy. Annu Rev Publ Health 33(1):7-40.
    [6] Lampert T, Kroll L, Lippe E, et al. (2013) Sozioökonomischer Status und Gesundheit: Ergebnisse der Studie zur Gesundheit Erwachsener in Deutschland (DEGS1). Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 56(5-6):814-821.
    [7] Kröger H, Pakpahan E, Hoffmann R (2015) What causes health inequality? A systematic review on the relative importance of social causation and health selection. Europ J Publ Health. (in press)
    [8] Fernández-Alvira JM, Börnhorst C, Bammann K, et al. (2015) Prospective associations between socio-economic status and dietary patterns in European children: the Identification and Prevention of Dietary- and Lifestyle-induced Health Effects in Children and Infants (IDEFICS) Study. Brit J Nutr 113(3):517-525.
    [9] Giskes K, Kunst AE, Benach J, et al. (2005) Trends in smoking behaviour between 1985 and 2000 in nine European countries by education. J Epidemiol Commun Health 59(5):395-401.
    [10] Haustein K (2006) Smoking and poverty. European journal of cardiovascular prevention and rehabilitation official journal of the European Society of Cardiology, Working Groups on Epidemiology & Prevention and Cardiac Rehabilitation and Exercise Physiology 13(3):312-318.
    [11] Giovino GA, Mirza SA, Samet JM, et al. (2012) Tobacco use in 3 billion individuals from 16 countries: an analysis of nationally representative cross-sectional household surveys. Lancet 380(9842):668-679.
    [12] Lampert T, Lippe E, Müters S (2013) Verbreitung des Rauchens in der Erwachsenenbevölkerung in Deutschland. Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 56(5-6):802-808.
    [13] Varo JJ, Martínez-González MA, Irala-Estévez J de, et al. (2003) Distribution and determinants of sedentary lifestyles in the European Union. Int J Epidemiol 32(1):138-146.
    [14] Gidlow C, Johnston LH, Crone D, et al. (2006) A systematic review of the relationship between socio-economic position and physical activity. Health Educ J 65(4):338-367.
    [15] Krug S, Jordan S, Mensink G, et al. (2013) Körperliche Aktivität. Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 56(5-6):765-771.
    [16] Irala-Estévez JD, Groth M, Johansson L, et al. (2000) A systematic review of socio-economic differences in food habits in Europe: consumption of fruit and vegetables. Europ J Clin Nutr 54(9):706-714.
    [17] Hulshof KFAM, Brussaard JH, Kruizinga AG, et al. (2003) Socio-economic status, dietary intake and 10 y trends: the Dutch National Food Consumption Survey. Europ J Clin Nutr 57(1):128-137.
    [18] Shahar D, Shai I, Vardi H, et al. (2005) Diet and eating habits in high and low socioeconomic groups. Nutr 21(5):559-566.
    [19] Mackenbach JP, Cavelaars AE, Kunst AE, et al. (2000) Socioeconomic inequalities in cardiovascular disease mortality; an international study. Europ Heart J 21(14):1141-1151.
    [20] Gößwald A, Lange M, Kamtsiuris P, et al. (2012) DEGS: Studie zur Gesundheit Erwachsener in Deutschland. Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 55(6-7):775-780.
    [21] Agardh E, Allebeck P, Hallqvist J, et al. (2011) Type 2 diabetes incidence and socio-economic position: a systematic review and meta-analysis. Int J Epidemiol 40(3):804-818.
    [22] World Cancer Research Fund (2007) Food, nutrition, physical activity, and the prevention of cancer: A global perspective. WCRF/AICR, Washington, DC.
    [23] Mackenbach JP, Stirbu I, Roskam AR, et al. (2008) Socioeconomic Inequalities in Health in 22 European Countries. New Engl J Med 358(23):2468-2481.
    [24] Lampert T, Kurth B (2007) Sozialer Status und Gesundheit von Kindern und Jugendlichen: Ergebnisse der Kinder- und Jugendgesundheitssurveys (KiGGS). Deutsches Ärzteblatt 104(43):A2944 - A 2949.
    [25] Currie C, Zanotti C, Morgan A, et al. (2012) Social determinants of health and well-being among young people. Health Behaviour in School-aged Children (HBSC) study: international report from the 2009/2010 survey. (Health Policy for Children and Adolescents, No. 6), Copenhagen.
    [26] Hölling H, Schlack R, Petermann F, et al. (2014) Psychische Auffälligkeiten und psychosoziale Beeinträchtigungen bei Kindern und Jugendlichen im Alter von 3 bis 17 Jahren in Deutschland - Prävalenz und zeitliche Trends zu 2 Erhebungszeitpunkten (2003-2006 und 2009-2012): Ergebnisse der KiGGS-Studie - Erste Folgebefragung (KiGGS Welle 1). Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 57(7):807-819.
    [27] Birnie K, Cooper R, Martin RM, et al. (2011) Childhood Socioeconomic Position and Objectively Measured Physical Capability Levels in Adulthood: A Systematic Review and Meta-Analysis. PLoS ONE 6(1):e15564.
    [28] Ellert U, Brettschneider A, Ravens-Sieberer U (2014) Gesundheitsbezogene Lebensqualität bei Kindern und Jugendlichen in Deutschland: Ergebnisse der KiGGS-Studie - Erste Folgebefragung (KiGGS Welle 1). Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 57(7):798-806.
    [29] Richter M, Hurrelmann K (eds) (2009) Gesundheitliche Ungleichheit: Grundlagen, Probleme, Perspektiven, 2nd edn. Verlag für Sozialwissenschaften, Wiesbaden.
    [30] Laaksonen M, Roos E, Rahkonen O, et al. (2005) Influence of material and behavioural factors on occupational class differences in health. J Epidemiol Commun Health 59(2):163-169.
    [31] van Oort FVA, van Lenthe FJ, Mackenbach JP (2005) Material, psychosocial, and behavioural factors in the explanation of educational inequalities in mortality in The Netherlands. J Epidemiol Commun Health 59(3):214-220.
    [32] Plagemann A (ed) (2011) Perinatal programming: The state of the art. De Gruyter, Berlin, Boston.
    [33] Bateson P, Barker DJP, Clutton-Brock T, et al. (2004) Developmental plasticity and human health. Nature 430(6998):419-421.
    [34] Blumfield ML, Hure AJ, Macdonald-Wicks L, et al. (2012) Systematic review and meta-analysis of energy and macronutrient intakes during pregnancy in developed countries. Nutr Rev70(6):322-336.
    [35] Blumfield ML, Hure AJ, Macdonald-Wicks L, et al. (2013) A systematic review and meta-analysis of micronutrient intakes during pregnancy in developed countries. Nutr Rev71(2):118-132.
    [36] Barker DJP (1995) Fetal origins of coronary heart disease. British Med J Clin res 311(6998):171-174.
    [37] Harder T, Rodekamp E, Schellong K, et al. (2007) Birth Weight and Subsequent Risk of Type 2 Diabetes: A Meta-Analysis. Am J Epidemiol 165(8):849-857.
    [38] Yajnik C, Deshmukh U (2011) Early life origins of diabetes and obesity: General aspects and the thin - a fat baby paradigm, In: Plagemann A (ed) Perinatal programming: The state of the art: De Gruyter. Berlin, Boston, pp 69-81.
    [39] Schellong K, Schulz S, Harder T, et al. (2012) Birth Weight and Long-Term Overweight Risk: Systematic Review and a Meta-Analysis Including 643,902 Persons from 66 Studies and 26 Countries Globally. PLoS ONE 7(10):1-12.
    [40] Horta BL, Bahl Rajiv, Martines JC, et al. (2007) Evidence on the long-term effects of breastfeeding: Systematic reviews and meta-analyses. World Health Organization, Geneva.
    [41] Ip S, Chung M, Raman G, et al. (2007) Breastfeeding and maternal and infant health outcomes in developed countries. Evidence report/technology assessment(153):1-186.
    [42] Plagemann A, Harder T, Schellong K, et al. (2012) Early postnatal life as a critical time window for determination of long-term metabolic health. Best practice & research. Clin endocrinol & metabol 26(5):641-653.
    [43] Günther ALB, Walz H, Kroke A, et al. (2013) Breastfeeding and Its Prospective Association with Components of the GH-IGF-Axis, Insulin Resistance and Body Adiposity Measures in Young Adulthood - Insights from Linear and Quantile Regression Analysis. PLoS ONE 8(11):e79436.
    [44] Muntaner C, Sridharan S, Solar O, et al. (2009) Against unjust global distribution of power and money: the report of the WHO commission on the social determinants of health: global inequality and the future of public health policy. J Publi Health Policy 30(2):163-175.
    [45] Uphoff EP, Pickett KE, Cabieses B, et al. (2013) A systematic review of the relationships between social capital and socioeconomic inequalities in health: a contribution to understanding the psychosocial pathway of health inequalities. Int J Equity in Health 12:54. doi: 10.1186/1475-9276-12-54
    [46] World Health Organization (2008) Closing the Gap in a Generation: Health Equity through Action on the Social Determinants of Health. World Health Organization, Geneva
    [47] Brown MJ, Sinclair M, Liddle D, et al. (2012) A systematic review investigating healthy lifestyle interventions incorporating goal setting strategies for preventing excess gestational weight gain. PLoS ONE 7(7):e39503.
    [48] Muktabhant B, Lawrie TA, Lumbiganon P, et al. (2015) Diet or exercise, or both, for preventing excessive weight gain in pregnancy. Cochrane Dat Syst Rev 6:CD007145.
    [49] Lumley J, Chamberlain C, Dowswell T, et al. (2009) Interventions for promoting smoking cessation during pregnancy. Cochrane Dat Syst Rev (3):CD001055.
    [50] Chamberlain C, O'Mara-Eves A, Oliver S, et al. (2013) Psychosocial interventions for supporting women to stop smoking in pregnancy. Cochrane Dat Syst Rev 10:CD001055.
    [51] Gresham E, Byles JE, Bisquera A, et al. (2014) Effects of dietary interventions on neonatal and infant outcomes: a systematic review and meta-analysis. Am J Clin Nutr 100(5):1298-1321.
    [52] Thomas M, Vieten C, Adler N, et al. (2014) Potential for a stress reduction intervention to promote healthy gestational weight gain: focus groups with low-income pregnant women. Women's health issues official publication of the Jacobs Institute of Women's Health 24(3):e305-11.
    [53] Renfrew MJ, McCormick FM, Wade A, et al. (2012) Support for healthy breastfeeding mothers with healthy term babies. Cochrane Dat Syst Rev 5:CD001141.
    [54] Cleminson J, Oddie S, Renfrew MJ, et al. (2015) Being baby friendly: evidence-based breastfeeding support. Archives of disease in childhood. Fetal and neonatal edition 100(2):F173-8.
    [55] Knoll M, Soller L, Ben-Shoshan M, et al. (2012) The use of incentives in vulnerable populations for a telephone survey: a randomized controlled trial. BMC Res notes 5:572. doi: 10.1186/1756-0500-5-572
    [56] Barlow J, Kirkpatrick S, Stewart-Brown S, et al. (2005) Hard-to-reach or out-of-reach? Reasons why women refuse to take part in early interventions. Children & Society 19(3):199-210.
    [57] Barnes J, MacPherson K, Senior R (2006) Factors influencing the acceptance of volunteer home-visiting support offered to families with new babies. Child Family Social Work 11(2):107-117.
    [58] Dryden R, Williams B, McCowan C, et al. (2012) What do we know about who does and does not attend general health checks? Findings from a narrative scoping review. BMC Publ Health 12:723.
    [59] Hoebel J, Richter M, Lampert T (2013) Social status and participation in health checks in men and women in Germany: results from the German Health Update (GEDA), 2009 and 2010. Deutsches Ärzteblatt Int 110(41):679-685.
    [60] Wen LM, Baur LA, Simpson JM, et al. (2012) Effectiveness of home based early intervention on children's BMI at age 2: randomised controlled trial. BMJ 344(jun26 3):e3732.
    [61] Gomby, Deanna S. (2005) Home visitation in 2005: Outcomes for children and parents. Invest in Kids Working Paper No. 7, Washington, DC.
    [62] Westin M, Westerling R (2007) Social capital and inequality in health between single and couple parents in Sweden. Scand J Publ Health 35(6):609-617.
    [63] Olds DL, Kitzman HJ, Cole RE, et al. (2010) Enduring effects of prenatal and infancy home visiting by nurses on maternal life course and government spending: follow-up of a randomized trial among children at age 12 years. Arch Pediatr Adol Med 164(5):419-424.
    [64] Kendrick D, Mulvaney CA, Ye L, et al. (2013) Parenting interventions for the prevention of unintentional injuries in childhood. Cochrane Dat Syst Rev 3:CD006020.
    [65] Yonemoto N, Dowswell T, Nagai S, et al. (2013) Schedules for home visits in the early postpartum period. Cochrane Dat Syst Rev 7:CD009326.
    [66] Filene JH, Kaminski JW, Valle LA, et al. (2013) Components associated with home visiting program outcomes: a meta-analysis. Pediatr 132 Suppl 2:S100-9.
    [67] Avellar SA, Supplee LH (2013) Effectiveness of home visiting in improving child health and reducing child maltreatment. Pediatr 132 Suppl 2:S90-9.
    [68] Shah MK, Austin KR (2014) Do home visiting services received during pregnancy improve birth outcomes? Findings from Virginia PRAMS 2007-2008. Publ Health Nurs 31(5):405-413.
    [69] Ayerle G, Luderer C, Behrens J (2010) Modellprojekt FrühStart - Evaluation der Familienhebammen in Sachsen-Anhalt. Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 53(11):1158-1165.
    [70] Ayerle GM (2012) Frühstart: Familienhebammen im Netzwerk Frühe Hilfen, 1st edn., Köln
    [71] Lange U, Liebald C (2013) Der Einsatz von Familienhebammen in Netzwerken Früher Hilfen: Leitfaden für Kommunen. BZgA, Köln.
    [72] Elm E von, Altman DG, Egger M, et al. (2007) The Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) statement: guidelines for reporting observational studies. PLoS Med 4(10):e296.
    [73] Vandenbroucke JP, Elm E von, Altman DG, et al. (2014) Strengthening the Reporting of Observational Studies in Epidemiology (STROBE): explanation and elaboration. Int J Surg (London, England) 12(12):1500-1524.
    [74] Creswell JW, Plano Clark, Vicki L (2011) Designing and conducting mixed methods research, 2nd edn. Sage Publications, Los Angeles.
    [75] Bundesministerium für Familie, Senioren, Frauen und Jugend (2006) Frühe Hilfen für Eltern und Kinder und soziale Frühwarnsysteme: Aktionsprogramm des Bundesministeriums für Familie, Senioren, Frauen und Jugend zum Schutz von Kleinkindern, zur Früherkennung von Risiken und Gefährdungen und zur Implementierung effektiver Hilfesysteme.
    [76] Hahn M, Sander E (2012) Kompetenzprofil Familienhebammen, 1st edn., Germany, Köln
    [77] German Society for Social Medicine and Prevention, German Society for Epidemiology (2012) Good Practice Secondary Data Analysis. Available from: http://dgepi.de/fileadmin/pdf/leitlinien/GPS_fassung3.pdf.
    [78] Bogner A, Littig B, Menz W (2009) Interviewing Experts. Palgrave Macmillan, Basingstoke.
    [79] Littig B, Pochhacker F (2014) Socio-Translational Collaboration in Qualitative Inquiry: The Case of Expert Interviews. Qualitative Inquiry 20(9):1085-1095.
    [80] German Sociological Association (1992) Ethical Code of the German Sociological Association: revised in 2014. Available from: http://soziologie.univie.ac.at/fileadmin/user_upload/inst_soziologie/DGS_Ethik.pdf; http://www.soziologie.de/uploads/media/Ethik-Kodex_2014-06-14.pdf.
    [81] Helfferich C (2011) Die Qualität qualitativer Daten: Manual für die Durchführung qualitativer Interviews, 4th edn. Verlag für Sozialwissenschaften, Wiesbaden.
    [82] Kowal S, O'Connell Daniel (2009) Zur Transkription von Gesprächen, In: Flick U, Kardorff Ev, Steinke I (eds) Qualitative Forschung: Ein Handbuch, 7th edn.: Rowohlt Taschenbuch-Verlag. Reinbek bei Hamburg, pp 437-447.
    [83] Bortz J, Döring N (2006) Forschungsmethoden und Evaluation: Für Human- und Sozialwissenschaftler, 4th edn. Springer Medizin Verlag Heidelberg, Berlin, Heidelberg.
    [84] Mayring P (2010) Qualitative Inhaltsanalyse: Grundlagen und Techniken, 11th edn. Beltz, Weinheim.
    [85] Scharte M, Bolte G (2012) Kinder alleinerziehender Frauen in Deutschland: Gesundheitsrisiken und Umweltbelastungen. Das Gesundheitswesen 74(03):123-131.
    [86] Osborne C, McLanahan S (2007) Partnership Instability and Child Well-Being. J MarrFam 69(4):1065-1083.
    [87] Yanicki S (2005) Social support and family assets: the perceptions of low-income lone-mother families about support from home visitation. Can Journal Publ Health 96(1):46-49.
    [88] Crosier T, Butterworth P, Rodgers B (2007) Mental health problems among single and partnered mothers. Soc Psychi Epidemiol 42(1):6-13.
    [89] Bilszta JL, Tang M, Meyer D, et al. (2008) Single motherhood versus poor partner relationship: outcomes for antenatal mental health. Aust NZ J Psychiat 42(1):56-65.
    [90] Olds DL, Kitzman H, Hanks C, et al. (2007) Effects of nurse home visiting on maternal and child functioning: age-9 follow-up of a randomized trial. Pediatrics 120(4):e832-45.
    [91] Zierau J, Gonzáles-C I, Blume E, et al. (2005) Modellprojekt: Aufsuchende Familienhilfe für junge Mütter - Netzwerk Familienhebammen. Ergebn der Eval, Hannover.
    [92] Steinmann M (2008) Was wissen Hebammen über Ernährung? Eine empirische Analyse. Ernährungs Umschau 55(1):12-15.
    [93] Kitzman H, Olds DL, Henderson CR, et al. (1997) Effect of prenatal and infancy home visitation by nurses on pregnancy outcomes, childhood injuries, and repeated childbearing. A randomized controlled trial. JAMA 278(8):644-652.
    [94] Arenz S, Rückerl R, Koletzko B, et al. (2004) Breast-feeding and childhood obesity—a systematic review. Int J Obes 28(10):1247-1256.
    [95] Owen CG, Martin RM, Whincup PH, et al. (2005) Effect of infant feeding on the risk of obesity across the life course: a quantitative review of published evidence. Pediatr115(5):1367-1377.
    [96] Harder T, Bergmann R, Kallischnigg G, et al. (2005) Duration of breastfeeding and risk of overweight: a meta-analysis. Am J Epidemiol 162(5):397-403.
    [97] Weng SF, Redsell SA, Swift JA, et al. CP (2012) Systematic review and meta-analyses of risk factors for childhood overweight identifiable during infancy. Arch Dis Childhood 97(12):1019-1026.
    [98] Taylor JS, Kacmar JE, Nothnagle M, et al. (2005) A systematic review of the literature associating breastfeeding with type 2 diabetes and gestational diabetes. J Am Coll Nutr 24(5):320-326.
    [99] Gouveri E, Papanas N, Hatzitolios AI, et al. (2011) Breastfeeding and diabetes. Curr Diabet Rev7(2):135-142.
    [100] Manco M, Alterio A, Bugianesi E, et al. (2011) Insulin dynamics of breast- or formula-fed overweight and obese children. J Am Coll Nutr 30(1):29-38.
    [101] Martorell R, Zongrone A (2012) Intergenerational Influences on Child Growth and Undernutrition. Paediatr Perinat Ep 26:302-314.
    [102] Grebmer K von, Headey D, Olofinbiyi T, et al. (2013) Welthunger-Index: Herausforderung Hunger: Widerstandsfähigkeit sicher, Ernährung sichern, Bonn / Washington, DC / Dublin.
    [103] Uauy R, Kain J, Corvalan C (2011) How can the Developmental Origins of Health and Disease (DOHaD) hypothesis contribute to improving health in developing countries? Am J Clin Nutr 94(6_Suppl):1759S.
    [104] Sanchez-Villegas A, Martínez JA, Prättälä R, et al. (2003) A systematic review of socioeconomic differences in food habits in Europe: consumption of cheese and milk. Europ J Clin Nutr 57(8):917-929.
    [105] Mensink G, Truthmann J, Rabenberg M, et al. (2013) Obst- und Gemüsekonsum in Deutschland. Bundesgesundheitsblatt-Gesundheitsforschung-Gesundheitsschutz 56(5-6):779-785.
    [106] Simoes E, Kunz S, Bosing-Schwenkglenks M, et al. (2004) Untersuchung auf der Basis der Perinatalerhebung Baden-Württemberg - Psychosoziale Risikofaktoren in der Schwangerschaft. Psychoneuro 30(6):342-347.
    [107] Koller D, Lack N, Mielck A (2009) Soziale Unterschiede bei der Inanspruchnahme der Schwangerschafts-Vorsorgeuntersuchungen, beim Rauchen der Mutter während der Schwangerschaft und beim Geburtsgewicht des Neugeborenen. Empirische Analyse auf Basis der Bayerischen Perinatal-Studie. Das Gesundheitswesen 71(01):10-18.
    [108] Simoes E, Kunz SK (2011) Der leise Confounder Armut macht krank: Gesundheitliche Ungleichheit in der geburtshilflichen Versorgung. Arbeitsmedizin Sozialmedizin Umweltmedizin 46(11):629-635.
    [109] Kitzman HJ, Olds DL, Cole RE, et al. (2010) Enduring effects of prenatal and infancy home visiting by nurses on children: follow-up of a randomized trial among children at age 12 years. Arch Pediat Adol Med 164(5):412-418.
    [110] Sadler GR, Lee H, Lim RS, et al. (2010) Research Article: Recruitment of hard-to-reach population subgroups via adaptations of the snowball sampling strategy. Nurs Health Sci 12(3):369-374.
    [111] Ofstedal MB, Weir DR (2011) Recruitment and retention of minority participants in the health and retirement study. Gerontol 51 Suppl 1:S8-20.
    [112] Spears CR, Nolan BV, O'Neill JL, et al. (2011) Recruiting underserved populations to dermatologic research: a systematic review. Int J Dermatol 50(4):385-395.
    [113] Fracasso PM, Goodner SA, Creekmore AN, et al. (2013) Coaching intervention as a strategy for minority recruitment to cancer clinical trials. J Oncol Pract 9(6):294-299.
  • This article has been cited by:

    1. Zimei Huang, Tinghui Li, Mark Xu, Are There Heterogeneous Impacts of National Income on Mental Health?, 2020, 17, 1660-4601, 7530, 10.3390/ijerph17207530
    2. Yuhang Zheng, Zhehao Huang, Tianpei Jiang, Will the Economic Recession Inhibit the Out-of-Pocket Payment Willingness for Health Care?, 2020, 17, 1660-4601, 713, 10.3390/ijerph17030713
    3. Siming Liu, Qing Wei, Pierre Failler, Hong Lan, Fine Particulate Air Pollution, Public Service, and Under-Five Mortality: A Cross-Country Empirical Study, 2020, 8, 2227-9032, 271, 10.3390/healthcare8030271
    4. Zejun Li, Xue Li, Will Innovation of Pharmaceutical Manufacturing Improve Perceived Health?, 2021, 9, 2296-2565, 10.3389/fpubh.2021.647357
    5. Qingqing Hu, Yanhong Feng, Mark Xu, Are There Heterogeneous Impacts of Air Pollution on Mental Health?, 2021, 9, 2296-2565, 10.3389/fpubh.2021.780022
    6. Haocen Wang, Yu-Lyu Yeh, Ming Li, Ping Ma, Oi-Man Kwok, Lei-Shih Chen, Effects of family health history-based colorectal cancer prevention education among non-adherent Chinese Americans to colorectal cancer screening guidelines, 2021, 104, 07383991, 1149, 10.1016/j.pec.2020.10.005
    7. Brittany N. Morey, Connie Valencia, Sunmin Lee, Correlates of Undiagnosed Hypertension Among Chinese and Korean American Immigrants, 2022, 47, 0094-5145, 425, 10.1007/s10900-022-01069-5
  • Reader Comments
  • © 2015 the Author(s), licensee AIMS Press. This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0)
通讯作者: 陈斌, bchen63@163.com
  • 1. 

    沈阳化工大学材料科学与工程学院 沈阳 110142

  1. 本站搜索
  2. 百度学术搜索
  3. 万方数据库搜索
  4. CNKI搜索

Metrics

Article views(6696) PDF downloads(1299) Cited by(1)

Figures and Tables

Figures(2)  /  Tables(4)

/

DownLoad:  Full-Size Img  PowerPoint
Return
Return

Catalog