Academic Editor: Piotr Dziegiel
Population-based surveillance—the ongoing systematic collection, analysis, and interpretation of health data—is critical for providing information on which to base policy; prioritize resources; guide program planning, evaluation, and research; and protect and promote population health [
Worldwide, over 80% of CVD deaths occur in LMICs [
In 2002, Pohnpei State, Federated States of Micronesia (FSM) (
This study describes the exploratory analysis of the association between socioeconomic position, measured by education, income, and employment status with CVD risk factors (i.e., behavioral and anthropometric/biochemical measures) and healthcare access among adults living in Pohnpei State, FSM.
The STEPwise approach to surveillance (STEPS) is a population-based, cross-sectional survey of adults. Detailed STEPS design and methodology are available at
We conducted a descriptive, cross-sectional secondary analysis of the 2002 dataset from the FSM (Pohnpei) STEPS [
Prior to our downloading STEPS data, the FSM Department of Health and Social Affairs and the Uniformed Services University Institutional Review Board approved this study.
We used self-reported educational attainment, estimated annual household income, and employment status as indicators of socioeconomic position.
Income and employment status are also widely used as indicators of socioeconomic position as each can provide access to health-promotion resources (through ability to pay or employer-provided insurance) that can contribute toward better health outcomes [
We included sex, age, and place of residence as covariates. Sex and age may impact the association between socioeconomic position and CVD risk factors, mirroring variations in both biological and social influences across societies [
Modifiable behavioral risk factors known to increase CVD risk include tobacco use, inadequate fruit and vegetable consumption, and physical inactivity [
Socioeconomic position is also linked to healthcare access, which can be measured by potential (i.e., availability of healthcare services) or realized measures (i.e., use of services) [
We used direct physical and biochemical measures that are strongly associated with CVD risk and were available in the dataset: BP, height, weight, waist circumference, fasting blood glucose, and fasting blood lipids [
Variables for obesity and diabetes were not included for pregnant women.
We analyzed the data using SPSS version 20.0 complex samples module that accounts for the complex sampling design used in the STEPS survey, correctly calculating standard errors with weighted data. We applied sex-age structure survey weights (standardized to the FSM 2000 census for Pohnpei) to provide results representative of the adult Pohnpeian population aged 25–64 years. After data cleaning and recoding, we completed descriptive analysis for all variables. Our analysis included chi-square with Rao-Scott adjustment and one-way analysis of variance with post hoc pairwise comparisons, using Bonferroni adjustment criterion, to determine the associations between socioeconomic position and demographic characteristics with selected CVD risk factors and healthcare access. Mean fruit and vegetable consumption and fasting blood glucose were excluded from the analysis of variance. This was because examination of normal Q-Q plots showed that residuals for these variables were not normally distributed, thereby violating the assumptions required for analysis of variance. We used an alpha level of 0.05 to represent significance for all statistical tests.
Here we present some key findings from the study.
Persons with a primary-level education had significantly higher rates of daily tobacco use and physical activity than those with higher educational attainment. Persons with annual income <$5,000 had significantly higher rates of daily tobacco use than other income groups. A significantly higher proportion of persons with paid employment reported daily tobacco use than did unpaid and unemployed respondents. Men reported significantly higher rates of daily tobacco use and physical activity than women. A significantly higher proportion of young-to-middle-aged (25–44 years) respondents reported daily tobacco use than older age groups.
Persons with incomes greater than $10,000 had significantly higher systolic BP than those with incomes <$5,000 (129.9 mmHg, CI = 127.0–132.8 versus 122.2 mmHg, CI = 120.2–124.1, Unemployed persons had a smaller mean waist circumference than those with paid employment (91.8 cm, CI = 89.7–93.8 versus 94.6 cm, CI = 93.2–96.0, Women had significantly higher mean BMI (31.3 kg/m2, CI = 30.7–32.0 versus 27.8 kg/m2, CI = 27.1–28.5 in men,
Although CVD rates are declining in high-income countries, LMICs are experiencing an increasing burden, particularly among those aged <60 years [
Similar to other studies, our analysis showed higher rates of daily tobacco use in men compared to women. For example, in 2009, an estimated 36% of men worldwide (aged >15 years) smoked, compared to fewer than 8% of women [
While our analysis showed no evidence that BMI was significantly associated with socioeconomic position, we found several positive associations for waist circumference with socioeconomic position and selected demographic characteristics. Our results support those from other studies suggesting that measures of central obesity may be an equally or more relevant measure for predicting obesity-related health risks than BMI [
We found that education was inversely associated with HDL, income was positively associated with higher BP, and increased age was positively associated with total cholesterol; some other studies in LMICs have reported different results for these associations. For example, in rural Vietnamese adults, aged 25–64 years, hypertension was inversely associated with education level [
For high-income countries, studies have documented a transition, through the progression of socioeconomic development, from a direct to an inverse association between socioeconomic position and CVD risk factors [
While evidence is limited, the varied patterning among socioeconomic position and CVD risk factors in our study might suggest a gradual shift in the epidemiologic transition within Pohnpei. For example, seminal cross-sectional studies conducted in Pohnpei (1947 and 1953) found low BP among adults, aged 20–60 years, while a 25-year follow-up study reported significantly increased diastolic BP among urban males (20–60 years) living in Kolonia, Pohnpei, attributed to increased urbanization [
While about one-half (48%) of respondents in our study reported annual household income <$5,000, we found no associations between income and healthcare access. Other studies have reported that low-income groups are more likely to be uninsured and less likely to seek healthcare, including screening and treatment [
We recognize that the analysis of healthcare access in our study addressed only proxy measures of realized healthcare services [
While the 2002 Pohnpei STEPS data provides a baseline for the association between socioeconomic position and CVD risk factors, data from subsequent STEPS surveys are needed to provide reliable information on trends in these associations over time. For example, since 2004, FSM Department of Health and Social Affairs, in partnership with community networks, has promoted physical activity, consumption of local fruit and vegetables, and tobacco-free living, through awareness campaigns and policy development [
Inherent methodological biases in our study model limit the generalizability of findings beyond Pohnpei and other subpopulations in FSM. For example, because the STEPS dataset did not provide probability variables for sample selection, we assigned standardized age-sex rates, which may not have been representative of the 2002 adult Pohnpeian population. Additionally, the cross-sectional data we used did not allow interpretation of causal relationships. Finally, CVD risk factors were analyzed individually. However, a majority of respondents (52.6%) reported 3–5 risk factors [
The strengths of our study include using a large population-based dataset and objective anthropometric and biochemical measures and the collaboration with the FSM Department of Health and Social Affairs leadership throughout the study. The intent of the collaborations with FSM leadership was to integrate the knowledge and insight obtained from this study in supporting population-level policies and programs targeting the reduction of CVD risk factors in country. Our study also supports secondary analysis as an efficient methodology for building the basis for population health research within FSM.
Overall, our results suggest that socioeconomic position has an impact on CVD risk factors among adults living in Pohnpei. This understanding may help decision-makers tailor population-level policies and programs for residents of FSM. While the 2002 Pohnpei STEPS data provides a baseline for the association between socioeconomic position and CVD risk factors, further research is needed to expand the scientific evidence between socioeconomic position and demographic characteristics with CVD risk factors and healthcare access operating within LMIC.
This study was supported by funding from intermural Grant (no. TO6125) from the Uniformed Services University of the Health Sciences. The authors thank the following who contributed to this project: Dr. Vita A. Skilling, Kipier Lippwe, and Moses Predrick, Federated States of Micronesia; Barbara Park, Dawn Satterfield, Jinan Saaddine, and Tony Pearson-Clarke; Centers for Disease Control and Prevention; Dr. Philayrath Phongsavan, University of Sydney; Melanie Cowan, Leanne Riley, and Dr. Li Dan, World Health Organization.
The findings and conclusions in this report are those of the authors and do not necessarily represent the official position of the Centers for Disease Control and Prevention, US Department of Defense, or US Government; the federally operated Uniformed Services University of the Health Sciences; or the Federated States of Micronesia.
The authors declare that there is no conflict of interests regarding the publication of this paper.
All authors contributed to the writing of this paper; International Committee of Medical Journal Editors criteria for authorship were read and met by G. M. Hosey, M. Samo, E. W. Gregg, L. Barker, D. Padden, and S. G. Bibb; all authors read and approved the final paper.
Map of the US Associated Pacific Island Jurisdictions, Federated States of Micronesia.
Selected characteristics of study sample using the 2002 STEPS FSM (Pohnpei) dataseta.
| Characteristic | Male | Female | Total sample |
|
| |||
|
| 642 | 996 | 1638 |
| Age mean (95% CI) | 39.8 (38.9–40.7) | 39.5 (38.7–40.3) | 39.7 (39.0–40.3) |
|
| |||
| Characteristic (measure) |
|
|
|
|
| |||
| Education (highest level completed) | |||
| Primary (<9 y) | 315 (52.2) | 568 (59.1) | 883 (55.6) |
| Secondary (9–12 y) | 183 (31.4) | 302 (34.1) | 485 (32.7) |
| Postsecondary (≥13 y) | 99 (16.4) | 57 (06.8) | 156 (11.6) |
| Estimated annual household income | |||
| Low (<$5,000) | 298 (47.5) | 486 (49.3) | 784 (48.4) |
| Middle ($5,000–$10,000) | 121 (18.4) | 170 (16.8) | 291 (17.6) |
| High (>$10,000) | 65 (09.1) | 93 (09.1) | 158 (09.1) |
| Unknown | 158 (25.0) | 247 (24.7) | 405 (24.9) |
| Employment statusb | |||
| Paid (NA) | 409 (67.7) | 324 (36.1) | 733 (52.3) |
| Unpaid (NA) | 66 (09.8) | 267 (29.2) | 333 (19.3) |
| Unemployed (NA) | 125 (22.5) | 313 (34.6) | 438 (28.4) |
| Behavioralc | |||
| Daily tobacco use (NA) | 235 (37.7) | 169 (16.7) | 404 (27.3) |
| Fruit/vegetables (≥5 servings/day) | 119 (18.7) | 179 (17.6) | 298 (18.2) |
| Physically active (≥30 min/d, 5 d/wk) | 140 (27.4) | 94 (11.4) | 234 (19.6) |
| Healthcare access (NA)d | 67 (09.5) | 141 (13.9) | 208 (11.7) |
| Anthropometric & biochemical | |||
| Overweight (BMI ≥ 25 kg/m2 <30kg/m2) | 201 (33.8) | 237 (26.6) | 438 (30.3) |
| Obesity (BMI ≥ 30 kg/m2) | 187 (30.1) | 503 (55.9) | 690 (42.7) |
| Central obesity (men > 94 cm; women > 80 cm) | 265 (39.0) | 794 (85.0) | 1059 (61.3) |
| High BP (≥140/90 mmHg, use of BP medication in last two wk, | 209 (29.3) | 209 (19.2) | 418 (24.3) |
| or self-report of HTN diagnosis in last y) | |||
| Diabetes (≥126 mg/dL, use of insulin or hypoglycemic agent in last | 46 (26.8) | 111 (37.7) | 157 (32.6) |
| two wk, or self-report of diabetes diagnosis in last y) | |||
| High total cholesterol (≥200 mg/dL) | 81 (50.4) | 117 (44.5) | 198 (47.4) |
| High triglyceride (≥150 mg/dL) | 30 (22.5) | 36 (15.3) | 66 (18.8) |
| Low HDL (<40 mg/dL [men]; <50 mg/dL [women]) | 78 (53.5) | 199 (86.4) | 277 (70.0) |
CI: confidence interval; y: year(s); d: day(s); wk: week(s); min: minute(s); BP: blood pressure; HTN: hypertension; FBG: fasting blood glucose; cm: centimeter(s); mg: milligram(s); dL: deciliter(s); mmHg: millimeters of mercury; HDL: high-density lipoprotein cholesterol;
aAll estimates are age/sex standardized to the FSM 2000 Pohnpei census. Behavioral variables are self-report; anthropometric and biochemical variables are direct measures; biochemical variables exclude nonfasting values; obesity and FBG exclude pregnant women.
b“Paid” category includes government, nongovernment, or self-employed; “unpaid” category includes retiree, volunteer, student, homemaker, or subsistence.
cDaily tobacco use includes daily use of cigarettes, cigars, pipes, or smokeless tobacco; fruit/vegetable consumption includes at least five servings fruit or vegetables/day; physically active includes ≥30 min/day moderate activity, ≥5 days/wk or ≥3 days vigorous activity (>20 min/day, or ≥600 metabolic equivalent of task-min/wk).
dHealthcare access defined as a blood glucose or BP screening or HTN diagnosis in last year.
Prevalence of selected behavioral and healthcare access measures by socioeconomic and other characteristics using the 2002 STEPS FSM (Pohnpei) dataseta.
| Characteristic | Daily tobacco useb | Physically activec | Healthcare accessd | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
|
| % (95% CI) |
|
|
| % (95% CI) |
|
|
| % (95% CI) |
|
| |
| Education | ||||||||||||
| Primary (<9 y) | 243 | 62.1 (54.5–69.1) | 5.01 (1.7, 49.2) | 0.012 | 119 | 50.0 (41.1–58.9) | 5.87 (1.7, 49.6) | 0.007 | 99 | 48.0 (43.5–52.6) | 2.56 (1.6, 45.5) | 0.101 |
| Secondary (9–12 y) | 108 | 29.3 (23.7–35.7) | 71 | 32.2 (26.4–38.5) | 71 | 38.9 (32.5–45.8) | ||||||
| Postsecondary (≥13 y) | 30 | 08.6 (05.8–12.5) | 34 | 17.8 (12.1–25.4) | 24 | 13.1 (08.1–20.3) | ||||||
| Income | ||||||||||||
| <$5,000 | 210 | 53.0 (44.0–61.9) | 3.70 (2.6, 75.9) | 0.020 | 127 | 54.9 (46.0–63.6) | 2.14 (2.8, 80.8) | 0.107 | 85 | 41.8 (33.7–50.3) | 2.28 (2.6, 76.8) | 0.093 |
| $5,000–$10,000 | 61 | 14.7 (10.2–20.7) | 45 | 18.9 (13.5–25.9) | 44 | 20.3 (15.0–26.9) | ||||||
| >$10,000 | 24 | 05.3 (03.3–08.5) | 19 | 06.7 (03.6–12.2) | 30 | 13.3 (08.9–19.3) | ||||||
| Employment statuse | ||||||||||||
| Paid | 215 | 59.6 (52.6–66.2) | 6.33 (1.9, 55.4) | 0.004 | 121 | 56.7 (48.5–64.5) | 3.30 (2, 57) | 0.045 | 109 | 59.5 (52.1–66.4) | 3.25 (1.9, 56.5) | 0.047 |
| Unpaid | 69 | 15.3 (12.0–19.5) | 34 | 12.8 (08.7–18.4) | 40 | 19.5 (15.3–24.4) | ||||||
| Unemployed | 96 | 25.0 (20.2–30.6) | 67 | 30.6 (23.0–39.4) | 45 | 21.1 (15.1–28.6) | ||||||
| Sex | ||||||||||||
| Male | 235 | 69.6 (64.5–74.2) | 64.97 (1, 29) | 0.000 | 140 | 71.8 (66.0–76.9) | 59.91 (1, 29) | 0.000 | 67 | 41.0 (34.0–48.4) | 7.35 (1, 29) | 0.011 |
| Female | 169 | 30.4 (25.8–35.5) | 94 | 28.2 (23.1–34.0) | 141 | 59.0 (51.6–66.0) | ||||||
| Place of residence | ||||||||||||
| Urban | 82 | 19.2 (08.8–36.9) | 3.12 (1, 29) | 0.088 | 50 | 20.5 (09.0–40.1) | 0.01 (1, 29) | 0.921 | 71 | 34.4 (17.3–56.7) | 10.45 (1, 29) | 0.003 |
| Rural | 322 | 80.8 (63.1–91.2) | 184 | 79.5 (59.9–91.0) | 137 | 65.6 (43.3–82.7) | ||||||
| Age | ||||||||||||
| 25–34 y | 105 | 33.1 (28.6–37.9) | 9.45 (2.8, 81.7) | 0.000 | 83 | 44.4 (37.9–51.2) | 2.89 (2.5, 71.3) | 0.051 | 54 | 33.8 (26.8–41.7) | 3.46 (2.7, 78.4) | 0.024 |
| 35–44 y | 146 | 39.0 (33.7–44.5) | 75 | 33.4 (26.5–41.2) | 54 | 26.5 (20.3–33.9) | ||||||
| 45–54 y | 118 | 22.0 (18.1–26.3) | 50 | 14.7 (11.3–18.8) | 66 | 25.8 (20.8–31.4) | ||||||
| 55–64 y | 35 | 06.0 (04.1–08.7) | 26 | 07.5 (05.2–10.7) | 34 | 13.8 (09.8–19.2) | ||||||
y: years;
aAll estimates are age/sex standardized to the FSM 2000 Pohnpei census;
bDaily tobacco use defined as self-report of daily use of cigarettes, cigars, pipes, or smokeless tobacco product.
cPhysically active includes ≥30 min/d of moderate activity, ≥5 d/wk or ≥3 d of vigorous activity (>20 min/d), or ≥600 metabolic equivalent of task-min/wk.
dHealthcare access defined as self-reported screening for blood pressure or blood glucose of hypertension diagnosis in the last year.
e“Paid” category defined as government, nongovernment, or self-employed; “unpaid” category defined as retiree, volunteer, student, homemaker, or subsistence.
One-way analysis of variance estimated marginal means and standard errors for socioeconomic and demographic characteristics and selected CVD risk factors using the 2002 STEPS FSM (Pohnpei) dataseta.
| Characteristic | BMI (kg/m2) | Waist (cm) | SBP (mmHg) | DBP (mmHg) | Total chol (mg/dL) | Triglyc (mg/dL) | HDL (mg/dL) |
|---|---|---|---|---|---|---|---|
| Education (highest level completed) | |||||||
| Primary (<9 y) | 29.3 (0.3) | 92.8 (0.8) | 125.0 (1.0) | 75.6 (0.6) | 201.4 (4.1) | 113.1 (8.8) | 41.6 (1.4) |
| Secondary (9–12 y) | 30.0 (0.4) | 94.0 (0.9) | 122.4 (0.9) | 74.4 (0.5) | 194.5 (6.0) | 106.0 (7.2) | 40.3 (1.6) |
| Postsecondary (≥13 y) | 29.1 (0.8) | 92.4 (1.1) | 126.7 (1.3) | 76.8 (0.8) | 202.7 (5.8) | 106.0 (9.4) | 38.7 (1.2) |
| Estimated annual household income | |||||||
| <$5,000 | 29.1 (0.4) | 92.0 (0.9) | 122.2 (1.0) | 74.6 (0.5) | 197.2 (6.2) | 103.6 (9.0) | 41.6 (2.1) |
| $5,000–$10,000 | 30.0 (0.4) | 94.5 (1.2) | 124.5 (1.0) | 74.5 (0.6) | 202.4 (5.0) | 125.2 (9.2) | 40.2 (1.4) |
| >$10,000 | 30.2 (0.6) | 96.6 (1.3) | 129.9 (1.4) | 78.3 (1.1) | 199.4 (5.2) | 89.5 (6.3) | 39.1 (1.5) |
| Employment statusb | |||||||
| Paid | 29.7 (0.3) | 94.6 (0.7) | 126.2 (0.7) | 76.5 (0.5) | 203.7 (4.6) | 113.6 (7.4) | 41.3 (2.0) |
| Unpaid | 29.4 (0.6) | 93.2 (1.3) | 122.0 (1.4) | 73.6 (0.7) | 190.8 (5.5) | 91.1 (7.7) | 40.0 (1.2) |
| Unemployed | 29.5 (0.5) | 91.8 (1.0) | 122.0 (1.3) | 74.4 (0.7) | 193.6 (4.0) | 107.7 (7.7) | 40.3 (1.5) |
| Sex | |||||||
| Male | 27.8 (0.3) | 91.5 (0.8) | 129.6 (0.9) | 77.6 (0.6) | 202.3 (4.6) | 119.5 (6.0) | 40.8 (1.9) |
| Female | 31.3 (0.3) | 95.2 (0.8) | 118.7 (1.0) | 73.1 (0.5) | 196.5 (3.9) | 99.4 (7.2) | 40.6 (0.9) |
| Age group | |||||||
| 25–34 y | 29.2 (0.4) | 90.2 (0.9) | 119.5 (0.9) | 72.2 (0.6) | 184.5 (6.2) | 95.2 (7.2) | 40.4 (1.4) |
| 35–44 y | 29.5 (0.5) | 93.2 (1.0) | 122.7 (1.1) | 75.7 (0.8) | 196.4 (5.1) | 107.7 (9.4) | 41.0 (2.2) |
| 45–54 y | 30.0 (0.3) | 97.4 (0.9) | 130.2 (1.2) | 79.1 (0.7) | 209.1 (3.3) | 125.0 (14.6) | 40.2 (0.9) |
| 55–64 y | 29.9 (0.7) | 97.1 (1.3) | 135.2 (2.3) | 78.2 (1.0) | 229.9 (4.0) | 117.5 (7.6) | 42.3 (1.3) |
| Place of residence | |||||||
| Urban | 30.2 (0.5) | 96.4 (1.3) | 124.7 (1.4) | 75.3 (0.7) | 198.4 (5.0) | 103.2 (2.4) | 37.9 (1.9) |
| Rural | 29.3 (0.3) | 92.4 (0.8) | 124.0 (0.9) | 75.3 (0.5) | 199.7 (4.1) | 111.1 (6.3) | 41.8 (1.5) |
CVD: cardiovascular disease; BMI: body mass index; kg/m2: kilograms per meter squared; cm: centimeters; SBP: systolic blood pressure; mmHg: millimeters of mercury; DBP: diastolic blood pressure; Chol: cholesterol; Triglyc: triglycerides; HDL: high-density lipoprotein; y: year(s).
aAll estimates are age/sex standardized to the FSM 2000 Pohnpei census. Anthropometric and biochemical direct measures; biochemical and obesity measures exclude nonfasting.
bPaid category includes government, nongovernment, or self-employed; unpaid category includes retiree, volunteer, student, homemaker, or subsistence.