Association between Non-Dietary Cardiovascular Health and Expenditures Related to Acute Coronary Syndrome in the US between 2008–2018
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. Study Population
2.3. Primary Outcome
2.4. Measuring Non-Dietary Cardiovascular Health
2.5. Covariates
2.6. Statistical Analysis
- 1st Stage: Two-Part Model (Probit)
- 2nd Stage: Two-Part Model (GLM)
- PExpi: represents the likelihood of healthcare expenditure.
- CVHmetricsi: represents CVH metrics.
- Agei represents the patient’s age.
- I.incomcati represents individuals’ income category based on the Federal poverty level.
- GCCIi: Charlson’s Comorbidity Index.
- Malei: 1 if the subject self-identifies as male, 0 otherwise.
- I.educleveli: indicates the level of highest education attained.
- ACSi: ACS indicator.
- trendi: represents the effect of trend.
- I.insurancei: represents categorical variable for insurance with three categories.
- I.racei: represents the impact of race utilized as a categorical variable.
- YExpi represents the total annual healthcare expenditure.
- ei: Error term with normal distribution (0 = mean, 1 = SD)
3. Results
3.1. Characteristics of the Sample
3.2. Differences between ACS and Non-ACS Populations
3.3. Association of Cardiovascular Health with Expenditure
3.4. Relative Variations in Expenditures of Life’s Simple 7 Components
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
ICD-9 CM Codes of Diseases Classified as ACS | ICD-10 CM Codes of Diseases Classified as ACS | ||
---|---|---|---|
ICD-9 CM Code | Disease description | ICD-10 CM Code | Disease description |
410 | Acute myocardial infarction | I20 | Angina pectoris |
411 | Other acute and subacute forms of ischemic heart disease | I21 | Subsequent ST elevation (STEMI) and non-ST elevation (NSTEMI) myocardial infarction |
412 | Old myocardial infarction | I22 | Certain current complications following ST elevation (STEMI) and non-ST elevation (NSTEMI) myocardial infarction (within the 28-day period) |
413 | Angina pectoris | I23 | Other acute ischemic heart diseases |
414 | Other forms of chronic ischemic heart disease | I24 | Chronic ischemic heart disease |
Probit Model (Positive Expenditures) (SE) | Predicted Change in Expenditures on Health Care (SE) | Dy/Dx Marginal Expenditures ($1000) (SE) | |
---|---|---|---|
Had ACS event | 0.173 (0.067–0.280) | 0.850 * (0.772–0.930) | 49.75 * (44.88–54.62) |
CVH metric (0–6) | −0.010 (−0.028–0.008) | −0.070 * (−0.090–−0.05) | −4.08 * (−5.23–−2.93) |
($) <125–200% of FPL | 0.141 * (0.068–0.214) | −0.073 (−0.160–0.013) | −3.79 (−8.79–1.21) |
($) 200–400% of FPL | 0.207 * (0.135–0.280) | −0.107 * (−0.183–−0.030) | −5.20 * (−9.92–−1.16) |
($) >400% of FPL | 0.286 * (0.210–0.363) | −0.154 * (−0.241–−0.068) | −8.04 * (−12.97–−3.11) |
GCCI | 0.170 * (0.112–0.228) | 0.530 * (0.476–0.584) | 31.22 * (27.56–34.87) |
Male | −0.062 * (−0.100–−0.024) | −0.054 * (−0.108–−0.000) | −3.38 * (−6.45–−0.215) |
Hispanic | −0.029 (−0.081–0.023) | −0.053 (−0.127–0.020) | −3.17 (−7.45–1.103) |
Black | −0.027 (−0.086–0.032) | 0.130 * (0.056–0.204) | 7.44 * (3.19–11.69) |
Asian | −0.175 * (−0.259–−0.090) | −0.348 * (−0.457–−0.238) | −20.66 * (−27.07–−14.26) |
Multi-Race/Ethnic | 0.195 * (0.051–0.338) | 0.102 (−0.046–0.250) | 6.53 (−2.04–15.10) |
Bachelors/MA | 0.105 * (0.053–0.156) | 0.225 * (0.161–0.286) | 13.28 * (9.62–16.94) |
Terminal Degree | 0.312 * (0.173–0.451) | 0.228 * (0.013–0.016) | 14.24 * (8.35–20.12) |
(Age)/10 | 0.054 (0.039–0.071) | 0.140 * (0.131–0.163) | 8.71 * (7.78–9.64) |
Trend | 0.101 (0.097–0.104) | 0.003 (−0.005–0.011) | 0.500 * (0.37–0.961) |
Private Insurance | 0.143 (0.068–0.219) | 0.337 (0.233–0.442) | 20.01 * (13.93–26.03) |
Public Insurance | 0.341 (0.269–0.412) | 0.737 (0.632–0.842) | 43.71 * (37.45–4997) |
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Prevalence, % (95% CI) | ACS | Non-ACS | Diff (p-Values) | Combined Sample |
---|---|---|---|---|
Outcomes | ||||
Health Expenditures = 0 | 1.7 (1.6–2.3) | 3.8 (3.6–3.9) | p < 0.001 | 3.7 (3.5–3.8) |
Average Healthcare Expenditures if >0 ($) | 177,657 (168,339–186,974) | 46,981 (45,962–47,999) | p < 0.001 | 54,498 (53,382–55,615) |
CVH Components | ||||
Inadeq. Phy. Activity | 47.7 (46.4–49.0) | 56.1 (55.8–56.5) | p < 0.001 | 55.7 (55.3–56.0) |
High Cholesterol | 80.2 (79.1–81.3) | 37.7 (37.3–38.0) | p < 0.001 | 40.1 (39.8–40.5) |
Hypertension | 85.3 (84.4–86.3) | 37.7 (41.7–42.4) | p < 0.001 | 44.5 (44.2–44.9) |
Diabetes Mellitus | 39.9 (38.5–41.2) | 14.7 (14.5–14.9) | p < 0.001 | 16.1 (15.9–16.3) |
Normal BMI (18–25) | 30.3 (29.1–31.6) | 33.3 (33.0–33.6) | p < 0.001 | 33.1 (32.8–33.r5) |
Smokers | 19.8 (8.7–20.8) | 17.4 (17.1–17.6) | p < 0.001 | 17.5 (17.3–17.8) |
Self-identified gender | ||||
Male | 59.7 (58.4–61.0) | 42.9 (42.6–43.2) | p < 0.001 | 43.9 (43.6–44.2) |
Mean Age | ||||
Age | 67.1 (66.8–67.5) | 48.8 (48.6–49.0) | p < 0.001 | 49.8 (49.7–50.0) |
Race/Ethnicity | ||||
White | 60.4 (59.1–61.7) | 51.1 (50.8–51.5) | p < 0.001 | 51.7 (51.3–52.0) |
Black | 17.7 (16.7–18.8) | 17.9 (17.6–18.2) | 0.7812 | 17.9 (17.6–18.2) |
Hispanic | 15.2 (14.3–16.7) | 22.5 (22.2–22.8) | p < 0.001 | 22.1 (21.8–22.3) |
Asian | 4.1 (3.6–4.7) | 6.1 (6.0–6.3) | p < 0.001 | 6.0 (5.9–6.2) |
Multi Racial | 1.8 (1.4–2.2) | 1.9 (1.8–2.0) | 0.6721 | 1.9 (1.8–2.0) |
Prevalence, % (95% CI) | ACS | non-ACS | Diff (p-values) | Combined Sample |
Household Income (Federal poverty level [FPL]) | ||||
<125% | 18.3 (17.3–19.4) | 18.3 (17.9–18.5) | 0.8017 | 18.2 (17.3–19.4) |
125–200% | 15.9 (14.9–16.9) | 14.1 (13.9–14.3) | p < 0.001 | 14.2 (14.0–14.5) |
200–400% | 30.5 (29.4–31.9) | 29.4 (29.1–29) | 0.0609 | 29.5 (29.2–29.9) |
>400% | 35.0 (33.7–36.2) | 38.1 (37.8–38.4) | p < 0.001 | 37.9 (37.6–38.3) |
GCCI (Grouped Charlson’s Comorbidity Index) | ||||
Average GCCI: 0–6 | 3.8 (3.6–3.9) | 1.4 (1.3–1.5) | p < 0.001 | 1.5 (1.4–1.6) |
GCCI = 0 | 67.5 (66.1–68.7) | 88.5 (88.0–89.0) | p < 0.001 | 87.3 (87.3–87.8) |
GCCI = 1 | 28.2 (27.0–29.1) | 9.4 (9.2–9.7) | p < 0.001 | 10.8 (10.4–10.7) |
GCCI = 2 | 3.2 (2.8–3.7) | 1.0 (0.9–1.1) | p < 0.001 | 1.2 (1.0–1.22) |
GCCI = 3 | 0.9 (0.7—1.2) | 0.6 (0.5–0.67) | p < 0.001 | 0.6 (0.58–0.59) |
GCCI = 6 | 0.1 (0.02–0.20) | 0.1 (0.08–0.12) | 0.8751 | 0.1 (0.08–0.12) |
Highest attained educational level | ||||
High school diploma | 72.2 (71.0–73.4) | 58.7 (58.3–59.0) | p < 0.001 | 59.5 (59.1–59.8) |
Bach/Master’s degree | 25.8 (24.6–26.9) | 30.1 (29.8–30.5) | p < 0.001 | 29.9 (29.6–30.3) |
PhD/Prof degree | 3.8 (3.3–4.4) | 3.9 (3.7–4.0) | 0.8680 | 3.8 (3.8–4.1) |
Sample size | 5391 | 88,319 | - | 93,710 |
Probit Model (Positive Expenditures) (95% CI) | Predicted Change in Log Expenditures on Healthcare (95% CI) | Dy/Dx Marginal Expenditures ($1000) (95% CI) | |
---|---|---|---|
Had ACS event | 0.567 * (0.153–0.982) | 1.51 * (1.23–1.83) | 88.56 * (70.2–106.9) |
CVH metric (0–6) | −0.004 (−0.028–0.011) | −0.071 * (−0.090–0.05) | −4.16 * (−5.39–2.95) |
ACS * CVH metrics | −0.028 (−0.090–0.030) | 0.072 * (0.022–0.113) | 3.85 * (1.0–6.70) |
<125–200% of FPL | 0.143 * (0.007–0.215) | −0.073 (−0.158–0.013) | −3.82 (−8.6–1.37) |
200–400% of FPL | 0.206 * (0.140–0.282) | −0.111 * (−0.190–0.032) | −5.76 * (−9.93–1.2) |
>400% of FPL | 0.276 * (0.210–0.363) | −0.161 * (−0.240–0.072) | −8.07 * (−12.9–32.0) |
GCCI | 0.179 * (0.117–0.242) | 0.544 * (0.485–0.603) | 31.68 * (27.8–35.6) |
ACS * GCCI index | −0.110 (−0.300–0.084) | −0.145 * (−0.236–0.003) | −7.19 * (−13.9–4.97) |
Male | −0.063 * (−0.102–0.025) | −0.059 * (−0.113–0.005) | −3.55 * (−6.63–0.468) |
Hispanic | −0.029 (−0.082–0.023) | −0.053 (−0.125–0.022) | −3.06 (−7.29–1.16) |
Black | −0.028 * (−0.0086–0.031) | 0.126 * (0.054–0.201) | 7.22 * (3.01–11.42) |
Asian | −0.175 * (−0.260–0.091) | −0.350 * (−0.460–−0.24) | −20.67 * (−26.9–14.31) |
Multi-Race/Ethnic | 0.193 * (0.050–0.336) | 0.105 (−0.043–0.25.4) | 6.65 (−18.88–15.17) |
Bachelors/MA | 0.095 * (0.043–0.147) | 0.227 * (0.163–0.291) | 13.30 * (9.58–17.04) |
ACS * Bach/MA | 0.334 * (0.067–0.601) | −0.125 * (−0.263–0.012) | −3.43 (−13.98–1.73) |
Terminal Degree | 0.306 * (0.164–0.448) | 0.231 * (0.124–0.337) | 14.20 * (8.08–20.32) |
ACS * Term. Degree | 0.140 * (−0.484–0.780) | 0.003(−0.244–0.252) | 6.91 (−13.64–15.02) |
(Age-18)/10 | 0.059 (0.041–0.073) | 0.153 * (0.136–0.170) | 0.893 * (0.798–0.988) |
ACS * (Age-18)/10 | −0.060 (−0.145–0.007) | −0.165 (−0.221–0.109) | −0.969 * (−1.29–−641) |
Trend | 0.101 * (0.097–0.104) | 0.003 (−0.005–0.011) | 0.51 * (0.475–0.963) |
Private Insurance | 0.145 * (0.070–0.220) | 0.337 (0.233–0.442) | 19.70 * (13.88–25.80) |
Public Insurance | 0.343 * (0.271–0.416) | 0.736 (0.630–0.842) | 43.88 * (37.03–49.45) |
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Share and Cite
Enyeji, A.M.; Barengo, N.C.; Ibrahimou, B.; Ramirez, G.; Arrieta, A. Association between Non-Dietary Cardiovascular Health and Expenditures Related to Acute Coronary Syndrome in the US between 2008–2018. Int. J. Environ. Res. Public Health 2023, 20, 5743. https://doi.org/10.3390/ijerph20095743
Enyeji AM, Barengo NC, Ibrahimou B, Ramirez G, Arrieta A. Association between Non-Dietary Cardiovascular Health and Expenditures Related to Acute Coronary Syndrome in the US between 2008–2018. International Journal of Environmental Research and Public Health. 2023; 20(9):5743. https://doi.org/10.3390/ijerph20095743
Chicago/Turabian StyleEnyeji, Abraham M., Noël C. Barengo, Boubakari Ibrahimou, Gilbert Ramirez, and Alejandro Arrieta. 2023. "Association between Non-Dietary Cardiovascular Health and Expenditures Related to Acute Coronary Syndrome in the US between 2008–2018" International Journal of Environmental Research and Public Health 20, no. 9: 5743. https://doi.org/10.3390/ijerph20095743
APA StyleEnyeji, A. M., Barengo, N. C., Ibrahimou, B., Ramirez, G., & Arrieta, A. (2023). Association between Non-Dietary Cardiovascular Health and Expenditures Related to Acute Coronary Syndrome in the US between 2008–2018. International Journal of Environmental Research and Public Health, 20(9), 5743. https://doi.org/10.3390/ijerph20095743