Literature DB >> 27536152

Incremental increases in economic burden parallels cardiometabolic risk factors in the US.

R Brett McQueen1, Vahram Ghushchyan2, Temitope Olufade3, John J Sheehan4, Kavita V Nair1, Joseph J Saseen5.   

Abstract

OBJECTIVE: Estimate the economic burden associated with incremental increases in the number of cardiometabolic risk factors (CMRFs) in the US.
METHODS: We used the nationally representative Medical Expenditure Panel Survey from 2010 to 2012 to create a retrospective cohort of people based on the number of CMRFs (one, two, and three or four), and a comparison cohort of people with zero CMRFs. CMRFs included abdominal obesity, elevated blood pressure, elevated triglycerides, and elevated glucose and were defined using diagnostic codes, prescribed medications, and survey responses. Adjusted regression analysis was developed to compare health expenditures, utilization, and lost-productivity differences between the cohorts. Generalized linear regression was used for health care expenditures, and negative binomial regression was used for utilization and productivity, controlling for individual characteristics.
RESULTS: The number of CMRFs was associated with significantly more annual utilization, health care expenditures, and reduced productivity. As compared with people with zero CMRFs, people with one, two, and three or four CMRFs had 1.15 (95% confidence interval [CI]: 1.06, 1.24), 1.37 (95% CI: 1.25, 1.51), and 1.39 (95% CI: 1.22, 1.57) times higher expected rate of emergency room visits, respectively. Compared with people with zero CMRFs, people with one, two, and three or four CMRFs had increased incremental health care expenditures of US$417 (95% CI: $70, $763), US$2,326 (95% CI: $1,864, $2,788), and US$4,117 (95% CI: $3,428, $4,807), respectively. Those with three or four CMRFs reported employment of 60%, compared with 80% in patients with zero CMRFs. People with three or four CMFRs had 1.75 (95% CI: 1.42, 2.17) times higher expected rate of days missed at work due to illness, compared with people with zero CMRFs.
CONCLUSION: Our findings demonstrate a direct association between economic burden and number of CMRFs. Although this was expected, the increase in burden that was independent from the cost of cardiovascular disease was surprising.

Entities:  

Keywords:  cardiometabolic risk factors; cardiovascular disease; economic burden

Year:  2016        PMID: 27536152      PMCID: PMC4976812          DOI: 10.2147/DMSO.S106809

Source DB:  PubMed          Journal:  Diabetes Metab Syndr Obes        ISSN: 1178-7007            Impact factor:   3.168


Introduction

Cardiometabolic risk factors (CMRFs) such as elevated fasting glucose, elevated blood pressure, low high-density lipoprotein cholesterol, elevated fasting triglycerides, and abdominal obesity often coexist in the same individual. The presence of multiple CMRFs has been broadly termed as the “metabolic syndrome”.1 Although definitions of “metabolic syndrome” from different organizations vary regarding the exact number of criteria and cut points for each parameter, the presence of these risk factors often results in increased risk of cardiovascular (CV) disease-related morbidity and mortality.2–7 CV disease still poses a significant burden in the US and accounted for one in three deaths and annual costs for treating CV disease were ~US$320.1 billion in 2011.8 Health interventions in the US have reduced the prevalence of elevated fasting triglycerides and elevated blood pressure from 1999 to 2010.8 However, prevalence of elevated glucose and elevated waist circumference has continued to rise over this same time period, particularly among children and adolescent populations. Age-adjusted national US prevalence of metabolic syndrome has decreased for women but prevalence remains high for men. Given the increasing prevalence of elevated glucose and waist circumference among children and adolescents, and an aging population, the prevalence and economic burden of CMRFs will continue to rise. Prior to the onset of CV disease, concomitant CMRFs are associated with a significant increase in medical expenditures and lost productivity.9–12 Several studies suggest that a higher number of CMRFs and specific combinations of CMRFs (eg, diabetes and obesity) are associated with significant CV-related events and costs.13–16 However, there is a lack of evidence reporting both direct medical costs and lost productivity associated with incremental increases in CMRFs regardless of concomitant conditions. The primary objective of this study was to estimate the economic burden as a function of direct medical costs and lost productivity associated with incremental increases in the number of CMRFs using recently available nationally representative data from the US noninstitutionalized population.

Methodology

Data source and study population

We utilized the nationally representative, publicly available panel database, the Medical Expenditure Panel Survey (MEPS). The MEPS tracks individual and household health-related, demographic, and socioeconomic characteristics.17 To provide estimates that are representative of a national US population, the Household Component of the MEPS (MEPS-HC) panels have oversampled subgroups of individuals such as African-Americans, Hispanics, Asians, low-income households, and those likely to incur high medical expenditures. At the time of the analysis, the most recent available file was for 2012. We combined the 2010–2012 MEPS full-year consolidated, medical, and pharmacy utilization data files to generate an analytical cohort with robust sample size. The Colorado Multiple Institutional Review Board considers this research to be exempt from requiring board approval because MEPS is a publicly available data source.

Population of inference

The study cohort consisted of noninstitutionalized adult US individuals (18 years of age and above) with at least one and up to four CMRFs. The study cohort was defined using a combination of International Classification of Diseases, ninth revision (ICD-9) codes, National Drug Codes, and survey responses. We calculated the number of CMRFs for each patient and stratified the population into four mutually exclusive and exhaustive groups: those with zero (comparison group), one, two, and a group with three or four CMRFs.

Measures

Definition of CMRFs

The following CMRFs were used to calculate the number of CMRFs: Abdominal obesity: Defined as body mass index (BMI) ≥27 kg/m2. Previous research has suggested treatment of overweight individuals when other CMRFs are present should begin at a BMI ≥27 kg/m2.18 Elevated blood pressure: Defined as having at least one ICD-9 code for hypertension (401.x) and at least one prescription for an antihypertensive agent (angiotensin-converting enzyme inhibitor, angiotensin receptor blocker, beta blocker, calcium channel blocker, diuretic, direct renin inhibitor, alpha blocker, alpha agonist, aldosterone antagonist, or direct arterial vasodilator) during a survey year. Elevated triglycerides: Defined as having at least one prescription for a triglyceride-lowering medication (fibrate, niacin, or omega-3 fatty acids) during a survey year. Elevated glucose: Defined as having at least one ICD-9 code for diabetes (250.x) and at least one prescription for an antihyperglycemic medication (biguanide, sulfonylurea, thiazolidinedione, insulin, alpha-glucosidase inhibitor, incretin mimetic, or dipeptidyl peptidase-4 inhibitor) during a survey year.

Other key independent variables

Two types of independent variables were included in the analysis: clinical and demographic. Demographic variables available in MEPS include sex (male, female), age in years (18–34, 35–49, 50–64, 65–79, 80+), race (white, black, American Indian, and other race), ethnicity (Hispanic/non-Hispanic), health insurance type (private, public, dual covered, and uninsured), highest degree completed (no degree, less than bachelors, bachelors, masters, and above), family income (classified using percentage of federal poverty level), and region of the country (Northeast, Midwest, South, West). Clinical variables included other chronic medical conditions coded as numerical counts of conditions other than the four CMRFs described earlier. The numerical count of other conditions was used as an adjustment variable in the regression analyses.

Outcome measures

Outcome measures in this study were health care utilization, expenditures, and lost productivity. Health care utilization included the number of outpatient visits, number of emergency room visits, number of inpatient visits, inpatient length of stay, and number of prescriptions including refills. All-cause health care expenditures in MEPS consist of direct payments for all health care utilization during the calendar year, including out-of-pocket payments and payments made by private and public insurance. Health care expenditures were estimated as total health care expenditures (pharmacy + medical). All expenditures were estimated in 2014 US dollars using the medical care component of Consumer Price Index. Two measures of workplace productivity were estimated: number of days missed at work and employed or not employed during (including part-time employment status) the entire year.

Statistical analyses

Descriptive statistics were estimated for utilization, expenditures, lost productivity, and other clinical and demographic variables. Regression models for health care utilization, expenditures, and lost productivity reported incremental differences for those with one, two, three, or four of the CMRFs defined in this study compared with the general population with zero CMRFs. Regression models adjusted for all relevant clinical and demographic variables, including age, sex, race, ethnicity, region, education, number of other chronic conditions, family income, and insurance status. Negative binomial models were used for the adjusted health care utilization analysis and the lost-productivity analysis for the number of missed days at work. Incidence rate ratios were reported for utilization-related count variables. Health care expenditures often contain a large percentage of zero costs and are heavily right-skewed. To account for these statistical issues, we used generalized linear modeling with log link and gamma family distribution for health care expenditures. Adjusted differences in health care expenditure outcomes were reported as marginal effects (dy/dx) as compared with those with zero CMRFs. A logistic regression model was developed to estimate the adjusted difference in employment between groups and reported as odds ratios. All analyses were conducted using Stata® version 12 (StataCorp LP, College Station, TX, USA) incorporating MEPS survey design variables (eg, probability weights).

Sensitivity analyses

We performed a sensitivity analysis by splitting the three or four CMRFs group into three and four CMRFs separately. We ran all unadjusted and adjusted analyses with three and four CMRFs separated.

Results

There were 43,037 people with at least one CMRF; 30,849 had zero CMRFs; 29,647 had one CMRF; 9,392 had two CMRFs; and 3,998 had three or four CMRFs (Table 1). Among the same sample, the most prevalent CMRF was abdominal obesity (n=36,638) followed by elevated blood pressure (n=16,830) (Table 2). Increasing number of CMRFs was most prevalent among lower educated, older males. Those with a higher number of CMRFs had a higher number of other chronic conditions (ie, excluding CMRFs) as compared with the average MEPS population. The number of other chronic conditions was highest for people with elevated triglycerides (3.05), elevated glucose (2.61), and elevated blood pressure (2.54) as compared with the average MEPS population (1.35).
Table 1

Prevalence of CMRFs by number of risk factors (MEPS 2010–2012)

Prevalence of CMRFsa
Population characteristicsAverage MEPS populationAny risk factorZero risk factorsOne risk factorTwo risk factorsThree or four risk factors
Sample size (n)43,03730,84929,6479,3923,998
Sex (%)
 Male48.2650.9345.3850.9350.1952.67
 Female51.7449.0754.6249.0749.8147.33
Age category, years (%)
 18–3430.2420.3944.1328.634.321.70
 35–4925.5925.6725.9429.6119.2713.71
 50–6425.8629.9120.6624.8339.6841.75
 65–7913.2517.876.6711.7328.1135.90
 80+5.066.152.595.198.636.93
Race (%)
 White80.6780.5980.9481.1979.5978.75
 Black11.8013.709.0212.8415.4315.53
 American Indian0.740.830.640.850.780.82
 Other6.794.889.415.124.214.90
Ethnicity (%)
 Hispanic14.6115.0113.8717.0710.0512.53
 Non-Hispanic85.3984.9986.1382.9389.9587.47
Region (%)
 Northeast18.3017.5218.9917.6217.4217.06
 Midwest21.5122.1720.8421.6623.1223.47
 South37.0038.9634.4738.0240.3442.18
 West23.1921.3525.7022.7119.1217.30
Highest degree completed (%)
 No degree14.7114.3914.4713.4315.0819.37
 Less than bachelors56.6060.1751.8959.8160.6261.53
 Bachelors18.6916.5021.9917.4615.6911.87
 Masters, PhD10.008.9411.659.308.627.23
Family income categoryb (%)
 Poor12.8312.7312.4113.0410.9714.74
 Near poor4.544.873.864.745.005.52
 Low income13.6714.5112.3314.4214.6614.76
 Middle income30.2130.7729.6830.5831.1531.22
 High income38.7537.1241.7237.2238.2333.77
Insurance status (%)
 No insurance during year15.0413.0517.3016.077.106.32
 Private only during year53.8749.3761.6154.0643.1131.94
 Public only during year19.7723.1614.2618.9829.5736.80
 Public and private during year11.3214.426.8310.9020.2224.93
Age, years (mean)46.8451.1640.4146.7559.4661.89
BMI, kg/m2 (mean)27.7531.1923.0930.4332.1034.32
Number of chronic conditions (mean)1.942.630.981.743.985.59
Number of chronic conditions excluding CMRFsc (mean)1.351.690.871.292.332.95

Notes:

CMRFs: abdominal obesity (BMI ≥27 kg/m2), elevated blood pressure (at least one ICD-9 code for hypertension – 401.x), elevated triglycerides (having at least one prescription), elevated glucose (at least one ICD-9 code for diabetes [250.xx] and at least one prescription for an antihyperglycemic medication), hyperuricemia (at least one ICD-9 code for gout [274.x] and at least one prescription).

Family income poverty levels: poor, income less than or equal to poverty line; near poor, income over the poverty line through 125% of poverty line; low income, income over 125% through 200% of poverty line; middle income, income over 200% through 400% of poverty line; high income, income over 400% of poverty line.

Number of chronic conditions excluding ICD-9 codes: 250, 272, 274, 278, and 401.

Abbreviations: CMRFs, cardiometabolic risk factors; BMI, body mass index; ICD-9, International Classification of Diseases, ninth revision; MEPS, Medical Expenditure Panel Survey.

Table 2

Prevalence of CMRFs by type of risk factor (MEPS 2010–2012)

Population characteristicsPrevalence of CMRFsa
Average MEPS populationAbdominal obesityElevated blood pressureElevated triglyceridesElevated glucose
Sample size (n)36,63816,8301,7566,566
Sex (%)
 Male48.2651.9547.7761.1550.22
 Female51.7448.0552.2338.8549.78
Age category, years (%)
 18–3430.2423.902.702.533.78
 35–4925.5928.6814.2116.6015.92
 50–6425.8629.7437.2839.2038.68
 65–7913.2514.4632.4334.9632.82
 80+5.063.2213.386.708.80
Race (%)
 White80.6780.6079.7689.6776.69
 Black11.8014.3614.363.8715.94
 American Indian0.740.900.640.540.85
 Other6.794.145.235.936.52
Ethnicity (%)
 Hispanic14.6116.388.819.6414.75
 Non-Hispanic85.3983.6291.1990.3685.25
Region (%)
 Northeast18.3017.1417.9317.7917.03
 Midwest21.5122.5622.7622.0322.55
 South37.0038.7940.5241.1341.19
 West23.1921.5018.7919.0519.24
Highest degree completed (%)
 No degree14.7114.1115.7315.6720.58
 Less than bachelors56.6060.8459.5158.2461.05
 Bachelors18.6916.4015.5615.9711.92
 Masters, PhD10.008.659.2010.126.45
Family income categoryb (%)
 Poor12.8313.1711.5812.0114.38
 Near poor4.544.825.284.085.86
 Low income13.6714.3614.7812.6216.39
 Middle income30.2131.1730.2329.5231.72
 High income38.7536.4838.1341.7831.65
Insurance status (%)
 No insurance during year15.0414.675.884.237.70
 Private only during year53.8753.2036.1637.3032.45
 Public only during year19.7720.7333.2331.4137.14
 Public and private during year11.32%11.3924.7327.0522.71
Age, years (mean)46.8448.2762.7261.0660.88
BMI, kg/m2 (mean)27.7532.6630.0730.7132.06
Number of chronic conditions (mean)1.942.344.395.105.04
Number of chronic conditions excluding CMRFsc (mean)1.351.542.543.052.61

Notes:

CMRFs: abdominal obesity (BMI ≥27 kg/m2), elevated blood pressure (at least one ICD-9 code for hypertension – 401.x), elevated triglycerides (having at least one prescription), elevated glucose (at least one ICD-9 code for diabetes [250.xx] and at least one prescription for an antihyperglycemic medication), hyperuricemia (at least one ICD-9 code for gout [274.x] and at least one prescription).

Family income poverty levels: poor, income less than or equal to poverty line; near poor, income over the poverty line through 125% of poverty line; low income, income over 125% through 200% of poverty line; middle income, income over 200% through 400% of poverty line; high income, income over 400% of poverty line.

Number of chronic conditions excluding ICD-9 codes: 250, 272, 274, 278, and 401.

Abbreviations: CMRFs, cardiometabolic risk factors; BMI, body mass index; ICD-9, International Classification of Diseases, ninth revision; MEPS, Medical Expenditure Panel Survey.

Significant increases in unadjusted and adjusted utilization and expenditures were observed as the number of CMRFs increased (Table 3 and Figure 1). As compared with people with zero CMRFs, people with one, two, and three or four CMRFs had 1.15 (95% CI: 1.06, 1.24), 1.37 (95% CI: 1.25, 1.51), and 1.39 (95% CI: 1.22, 1.57) times higher expected rate of emergency room visits, respectively, after adjusting for clinical and demographic characteristics. Overall adjusted annual health care expenditures were approximately double for those with three or four CMRFs at US$7,640 compared with US$3,523 and US$3,940 for those with zero CMRFs and one CMRF, respectively (Figure 1).
Table 3

Annual utilization and expenditure estimates by number of CMRFs

VariablesNumber of CMRFs
Average MEPS populationaZero risk factors (n=30,849)One risk factor (n=29,647)Two risk factors (n=9,392)Three or four risk factors (n=3,998)

UnadjustedAdjustedUnadjustedaAdjustedUnadjustedaAdjustedUnadjustedaAdjusted
Utilizationb Number of outpatient visits8.115.57Reference group7.551.08 (1.02,1.15)12.841.26 (1.17, 1.35)17.591.55 (1.42, 1.70)
Number of emergency room visits0.190.14Reference group0.191.15 (1.06,1.24)0.281.37 (1.25, 1.51)0.311.39 (1.22, 1.57)
Number of inpatient visits0.110.07Reference group0.101.14 (1.04, 1.25)0.191.50 (1.22, 1.69)0.261.77 (1.51, 2.08)
Inpatient length of stay (days)0.590.28Reference group0.461.16 (0.98,1.37)0.971.50 (1.22, 1.83)1.442.43 (1.86, 3.16)
Number of medications including refills13.045.57Reference group10.771.42 (1.36, 1.48)28.493.36 (3.18, 3.54)49.765.29 (4.19, 5.72)
Health care expenditure (2014 US dollars)c$5,465$3,523Reference group$4,763$417 ($70, $763)$9,281$2,326 ($1,864, $2,788)$13,304$4,117 ($3,428, $4,807)

Notes:

Unadjusted estimates are mean.

Incidence rate ratio and 95% confidence intervals from negative binomial regression models after adjusting for age, sex, race, ethnicity, region, education, number of other chronic conditions, family income, insurance status, eg, after adjusting for all measured variables, those with three or four risk factors on average had a 1.55 higher expected rate of outpatient visits vs those with zero risk factors.

Adjusted increments annual expenditures and 95% confidence intervals from generalized linear models with log link and gamma family distribution after adjusting for age, sex, race, ethnicity, region, education, number of other chronic conditions, family income, and insurance status.

Abbreviations: CMRFs, cardiometabolic risk factors; MEPS, Medical Expenditure Panel Survey.

Figure 1

Adjusted annual health care expenditures by number of CMRFs for MEPS respondents from 2010 to 2012.

Note: Adjusted expenditures calculated from generalized linear models with log link and gamma family distribution after adjusting for clinical and demographic characteristics.

Abbreviations: CMRFs, cardiometabolic risk factors; MEPS, Medical Expenditure Panel Survey.

People with three or four CMRFs reported employment of 60% compared with 80% in people with zero CMRFs (Table 4). After adjusting for clinical and demographic characteristics, on average people with three or four CMRFs had 1.38 (95% CI: 1.17, 1.63) times higher odds of reporting not being employed as compared with those with zero CMRFs. After adjusting for clinical and demographic characteristics, people with one, two, and three or four CMRFs had 1.21 (95% CI: 1.09, 1.34), 1.55 (95% CI: 1.31, 1.82), and 1.75 (95% CI: 1.42, 2.17) times higher expected rate of number of missed days at work due to illness or injury, respectively, compared with people with zero CMRFs.
Table 4

Employment and absenteeism estimates by number of CMRFs

VariablesNumber of CMRFs
Average MEPS populationaZero risk factors (n=30,849)One risk factor (n=29,647)Two risk factors (n=9,392)Three or four risk factors (n=3,998)

UnadjustedAdjustedUnadjustedAdjustedUnadjustedAdjustedUnadjustedAdjusted
Not employed(% on annualbasis)a20.7%19.6%Reference group18.3%0.81 (0.76, 0.87)26.1%0.96 (0.87, 1.07)39.6%1.38 (1.17, 1.63)
Annual numberof days missedat work due toillness or injuryb3.562.82Reference group3.691.21 (1.09,1.34)5.711.55 (1.31, 1.82)6.651.75 (1.42, 2.17)

Notes:

Unadjusted estimates are percentage of working age-group (18–64 years) who were not employed during survey years; adjusted estimates and 95% confidence intervals are odds ratios from logistic regression model after adjusting for age, sex, race, ethnicity, region, education, number of other chronic conditions, and insurance status.

Unadjusted estimates are mean number of days; adjusted estimates and 95% confidence intervals are incidence rate ratios from negative binomial regression models after adjusting for sex, race, ethnicity, region, education, number of other chronic conditions, and insurance status.

Abbreviations: CMRFs, cardiometabolic risk factors; MEPS, Medical Expenditure Panel Survey.

The results of the sensitivity analyses were similar to the overall results presented. When three or four risk factors were split into separate categories, outcome measures were not significantly different from each other; therefore, we kept the three or four CMRF groups merged together for the main findings.

Discussion

The results of this study suggest the economic burden associated with CMRFs increases as the number of CMRFs increase. This association was independent of the burden associated with CV disease. Our findings were consistent across utilization, expenditure, and productivity outcomes. Our findings are similar to previous research that found a significant economic burden of CMRFs independent of the cost of CV disease. Sullivan et al estimated the medical cost of CMRF clusters in the US using MEPS data from 2000 and 2002.10 The authors grouped four risk factors (ie, BMI ≥25 kg/m2, diabetes, hypertension, and hyperlipidemia) to estimate overall utilization and expenditure differences for those with and without CMRFs, and to compare attributable CMRF expenditures by insurance type. The authors found adjusted annual total health care expenditures of $5,477 in 2005 US dollars attributable to CMRFs when including BMI ≥25 kg/m2, and at least two CMRFs out of diabetes, hypertension, and hyperlipidemia. Using recently updated MEPS data, our study, when analyzed differently, found a similarly large difference of US$4,117 in adjusted annual health care expenditures for those with at least three or four CMRFs vs those with zero CMRFs. Sullivan et al published a follow-up study using the same data (MEPS 2000 and 2002) and assumptions (BMI ≥25 kg/m2) but focused solely on lost productivity-related outcomes.11 The annual number of missed work-days due to illness or injury attributable to CMRFs when including BMI ≥25 kg/m2, and at least two CMRFs out of diabetes, hypertension, and hyperlipidemia, increased by a factor of 1.79 when compared with those without CMRFs. These results are similar to our findings as individuals with three or four risk factors had an increase in missed work-days due to illness and injury by a factor of 1.75. But our study differs from these two studies by Sullivan et al in that we used the most recently updated MEPS-HC files. We categorized and estimated CMRFs by the number of CMRFs as opposed to a population with and without any CMRFs, and we used a different BMI stratification (BMI ≥27 kg/m2). Our results are also similar to previous studies that have analyzed medical costs by the number of CMRFs in combination with specific conditions such as coronary artery disease (CAD), diabetes, and obesity. Using a claims data set, Tamariz et al analyzed health care paid claims by CAD and by the number of CMRFs from one to four.15 Their popula tion included individuals with at least one of the following conditions: diabetes, hypertension, abnormal lipid panel, and obesity. Health care expenditures were estimated with and without CAD and by the number of CMRFs. Although not directly comparable to our results, the observed trend of increasing expenditures associated with CMRFs is consistent with our findings. For example, adjusted health care expenditures in 2003–2004 US dollars were $4,117, $4,968, $6,173, and $9,276 for one, two, three, and four CMRFs, respectively. Adjusted health care expenditure estimates more than doubled when CAD was included. Sullivan et al conducted a CMRF-related study using MEPS data but estimated health care expenditures and lost productivity attributable to CMRFs and comorbid obesity (ie, BMI ≥30 kg/m2).16 Their findings suggested significantly higher medical expenditures and lost productivity for normal weight individuals with diabetes, dyslipidemia, or hypertension as compared with those without those conditions. Obesity significantly increased those expenditures and lost-productivity estimates. For example, obese individuals with three risk factors had an increase of nearly $10,000 2007 US dollars in annual total adjusted health care expenditures as compared to normal weight individuals with zero risk factors. Boudreau et al conducted a CMRF study in a managed care population, estimating health care costs with and without CMRFs, and by the number of CMRFs stratified by diabetes diagnosis.12 CMRFs included hypertension, weight risk (BMI >27 kg/m2), high triglycerides, low high-density lipoprotein, and diabetes. The most expensive group of CMRFs included diabetes, dyslipidemia, and hypertension that had total annual costs of $9,650 in 2005 US dollars. A 24% increase in total annual health care costs per additional risk factor was demonstrated with similar trends observed when stratified by diabetes status. Although the percentage increase and stratification of diabetes status were not similar to our study, these results are consistent with our findings that health care expenditures significantly increase for people with at least two to four CMRFs as compared with people without CMRFs. Boudreau et al suggested focusing on specific metabolic syndrome risk factor combinations for health care resource planning. Our study differs from these studies as our primary focus is on the number of CMRFs, regardless of a specific comorbid condition such as obesity, diabetes, or CAD. Moreover, we used the most recently available nationally representative survey data from MEPS and present lost-productivity outcomes as an additional source of the economic burden attributable to CMRFs.

Limitations

Our study has important limitations that impact the interpretation of the results. This study was cross-sectional where CMRF stratification and economic burden outcomes were measured contemporaneously. This may result in higher than actual health care expenditure estimates considering that CMRF definitions were based on utilization of health care resources such as prescription medications. We did not estimate health care resource utilization and expenditures when CMRFs were linked with CV disease events, or other conditions such as diabetes. There has been previous research suggesting that composite measures of the metabolic syndrome (ie, all CMRFs included) are not significant predictors of health care resource utilization.12,19 Rather, some have suggested individual CMRFs such as abdominal obesity, comorbid conditions such as diabetes, or specific combinations of CMRFs and comorbid conditions (eg, hypertension and diabetes) are the drivers of high utilization. Our study findings suggest that regardless of specific CMRFs, significant health care resources are consumed when patients have a combination of CMRFs as compared with patients with no CMRFs. CMRF definitions were based on self-reported conditions from MEPS. This may represent an underreporting of included conditions20 and thus an underestimate of the economic burden. However, prevalence estimates reported here are similar, in some cases lower or higher, to other studies relying on recent self-reported data.8,21 For example, as compared with data using National Health and Nutrition Examination Survey (NHANES), we found a higher prevalence estimate of abdominal obesity, yet slightly lower prevalence of elevated blood pressure and elevated glucose. Some of these differences are attributable to different cutoff points for CMRFs. Overweight individuals specifically may underestimate their weight and overestimate their height.22,23 Furthermore, MEPS does not contain information on undiagnosed conditions such as NHANES does, which may also lead to underestimated prevalence of these CMRFs.

Conclusion

This study contributes to the body of literature suggesting as the number of CMRFs increase, regardless of specific underlying conditions, the economic burden increases for both direct health care expenditures and lost productivity. Prevalence of elevated glucose and elevated waist circumference are still on the rise. These results underscore the value of providing incentives to reduce the burden of these CMRFs from an economic and productivity standpoint. More attention should focus on treating the underlying metabolic syndrome instead of focusing on one condition alone.
  21 in total

1.  The metabolic syndrome predicts cardiovascular mortality: a 13-year follow-up study in elderly non-diabetic Finns.

Authors:  Jianjun Wang; Sanna Ruotsalainen; Leena Moilanen; Päivi Lepistö; Markku Laakso; Johanna Kuusisto
Journal:  Eur Heart J       Date:  2007-02-15       Impact factor: 29.983

2.  Prevalence of Overweight and Obesity in the United States, 2007-2012.

Authors:  Lin Yang; Graham A Colditz
Journal:  JAMA Intern Med       Date:  2015-08       Impact factor: 21.873

3.  The effect of obesity and cardiometabolic risk factors on expenditures and productivity in the United States.

Authors:  Patrick W Sullivan; Vahram Ghushchyan; Rami H Ben-Joseph
Journal:  Obesity (Silver Spring)       Date:  2008-09       Impact factor: 5.002

4.  Excess weight and the risk of incident coronary heart disease among men and women.

Authors:  Alan J Flint; Frank B Hu; Robert J Glynn; Hervé Caspard; JoAnn E Manson; Walter C Willett; Eric B Rimm
Journal:  Obesity (Silver Spring)       Date:  2009-07-30       Impact factor: 5.002

5.  Evaluation of cardiovascular risk factors, events, and costs across four BMI categories.

Authors:  D I Brixner; M Bron; B K Bellows; X Ye; J Yu; S Raparla; G M Oderda
Journal:  Obesity (Silver Spring)       Date:  2013-06       Impact factor: 5.002

6.  Risk-factor clustering and cardiovascular disease risk in hypertensive patients.

Authors:  Derek Weycker; Gregory A Nichols; Maureen O'Keeffe-Rosetti; John Edelsberg; Zeba M Khan; Satyin Kaura; Gerry Oster
Journal:  Am J Hypertens       Date:  2007-06       Impact factor: 2.689

7.  The medical cost of cardiometabolic risk factor clusters in the United States.

Authors:  Patrick W Sullivan; Vahram Ghushchyan; Holly R Wyatt; James O Hill
Journal:  Obesity (Silver Spring)       Date:  2007-12       Impact factor: 5.002

8.  It doesn't matter what they say, it matters how they behave: Parental influences and changes in body mass among overweight and obese adolescents.

Authors:  Karolina Zarychta; Barbara Mullan; Aleksandra Luszczynska
Journal:  Appetite       Date:  2015-09-02       Impact factor: 3.868

9.  Health care utilization and costs by metabolic syndrome risk factors.

Authors:  D M Boudreau; D C Malone; M A Raebel; P A Fishman; G A Nichols; A C Feldstein; A N Boscoe; R H Ben-Joseph; D J Magid; L J Okamoto
Journal:  Metab Syndr Relat Disord       Date:  2009-08       Impact factor: 1.894

10.  Health economics perspective of the components of the cardiometabolic syndrome.

Authors:  Leonardo Tamariz; Ana Palacio; Yadong Yang; Donald Parris; Rami Ben-Joseph; Hermes Florez
Journal:  J Clin Hypertens (Greenwich)       Date:  2010-07-01       Impact factor: 3.738

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  6 in total

1.  Health Is Power: Active Transportation, Physical Activity, and Cardiometabolic Health Among Ethnic Minority Women.

Authors:  Elizabeth Lorenzo; Jacob Szeszulski; Michael Todd; Scherezade K Mama; Rebecca E Lee
Journal:  J Phys Act Health       Date:  2020-03-01

2.  Key process features of personalized diet counselling in metabolic syndrome: secondary analysis of feasibility study in primary care.

Authors:  Paula Brauer; Dawna Royall; Airu Li; Ariellia Rodrigues; Jennifer Green; Sharon Macklin; Alison Craig; Miranda Chan; Jennifer Pasanen; Lucie Brunelle; Rupinder Dhaliwal; Doug Klein; Angelo Tremblay; Caroline Rheaume; David M Mutch; Khursheed Jeejeebhoy
Journal:  BMC Nutr       Date:  2022-05-09

3.  Role of the APOE polymorphism in carotid and lower limb revascularization: A prospective study from Southern Italy.

Authors:  Sandra Mastroianno; Giuseppe Di Stolfo; Davide Seripa; Michele Antonio Pacilli; Giulia Paroni; Carlo Coli; Maria Urbano; Carmela d'Arienzo; Carolina Gravina; Domenico Rosario Potenza; Giovanni De Luca; Antonio Greco; Aldo Russo
Journal:  PLoS One       Date:  2017-03-01       Impact factor: 3.240

4.  Relationships between enabling services use and access to care among adults with cardiometabolic risk factors: findings from the 2014 National Health Center Patient Survey.

Authors:  G Sofia Martinez; Kellee White; Dahai Yue; Luisa Franzini; Craig S Fryer; Ninet Sinaii; Dylan H Roby
Journal:  BMC Health Serv Res       Date:  2022-03-14       Impact factor: 2.655

5.  Cardiovascular and cerebrovascular diseases risk associated with the incidence of presenteeism and the costs of presenteeism.

Authors:  Koki Kimura; Tomohisa Nagata; Makoto Ohtani; Masako Nagata; Shigeyuki Kajiki; Yoshihisa Fujino; Koji Mori
Journal:  J Occup Health       Date:  2020-01       Impact factor: 2.708

6.  Evaluation of Latent Models Assessing Physical Fitness and the Healthy Eating Index in Community Studies: Time-, Sex-, and Diabetes-Status Invariance.

Authors:  Scott B Maitland; Paula Brauer; David M Mutch; Dawna Royall; Doug Klein; Angelo Tremblay; Caroline Rheaume; Rupinder Dhaliwal; Khursheed Jeejeebhoy
Journal:  Nutrients       Date:  2021-11-26       Impact factor: 5.717

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