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Obesity, Medication Use and Expenditures among Nonelderly Adults with Asthma

AHRQ's 2012 Annual Conference Slide Presentation

On September 10, 2012, Eric M. Sarpong made this presentation at the 2012 Annual Conference.

Select to access the PowerPoint® presentation (1.5 MB).

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Obesity, Medication Use and Expenditures among Nonelderly Adults with Asthma

Eric M. Sarpong

AHRQ Conference
September 10, 2012

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Introduction

  • Prevalence of asthma in adults—chronic and complex health condition increased over the past decade (Zahran et al., 2011).
  • Prevalence of obesity, an important risk factor for asthma remains high (Ogden et al., 2012).
  • Asthma more difficult to control in obese asthma patients (Lavoie et al., 2006 Saint-Pierre et al., 2006 Dixon et al., 2006).
  • Both conditions result in increased resource use and costs:
    • Estimated healthcare costs of asthma in the U.S.—$18 billion (Sullivan et al., 2011).
    • 2008 estimated healthcare costs of obesity in the U.S.—$147 billion (Finkelstein et al., 2009).
  • The presence of obesity in asthma patients may exacerbate medication use and expenditures.

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Research Objective

  • Provide insights on the role of obesity in generating health resource use and costs for asthma treatment.
  • Study used nationally representative data on nonelderly adults with treatment for asthma to examine the relationship between obesity and:
    • Medication use:
      • Asthma medication and all prescribed medications.
    • Expenditures:
      • Asthma medication, all prescribed medications and total health care.

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Previous Literature

  • Relationship between asthma and obesity well documented (Ford, 2005; Shore and Johnston, 2006; Shore, 2006, 2007, 2008; Dixon et al., 2010).
  • Few studies in the U.S., however, have examined the contribution of obesity to increased medication use and expenditures in adult asthma patients:
    • Taylor et al (2008): obese asthma patients had increased medication use compared to non-overweight asthma patients.
    • Mosen et al (2008): obese individuals more likely to report use of oral corticosteroids.
    • Suh et al (2011) estimated medical costs attributable to obesity in asthma patients—$1,087.

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Contributions

  • Previous literature limited:
    • Uses administrative claims data, key variables unavailable or uses regional samples.
    • Analyses do not examine the use of all prescribed medications in addition to asthma medications.
    • Previous studies differ from this study on a number of dimensions:
      • Time periods and population (e.g., ≥18 years, ≥35 years, patients with diagnosed asthma).
      • Degree to which confounding variables are controlled for across bodyweight categories.
  • This study uses regression-based modeling approaches to help inform policymakers about how obesity exacerbates medication use and expenditures.

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Data

  • 2005-2009 Medical Expenditure Panel Survey (MEPS):
    • Nationally representative data on U.S. civilian non-institutionalized population.
    • Detailed information on drug therapeutic classifications, quantities purchased, and sources of payment (OOP payments and private and public insurance payments).
  • Detailed information on health conditions, economic and socio-demographic variables.
  • Analytical sample of adults (ages 18-64) with reported treatment for asthma:
    • Reported treatment implies health service use associated with asthma.
    • Sample of 3,580 (964 = normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; 985 overweight: 25 kg/m2 < BMI < 30 kg/m2, and 1,631 obese: 30 kg/m2 ≥ BMI ≤ 100 kg/m2.

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Analytic Approach

  • Describe differences in treated prevalence of asthma, medication use and expenditures by BMI categories.
  • Use generalized linear models (GLM) to estimate the effects of BMI categories on:
    • Number of asthma and all prescribed medications used (Poisson family and log link function).
    • Asthma and all prescribed medications expenditures (gamma family and power link function).
    • Total health care expenditures (gamma family and log link function).
  • All GLM estimates control for age, sex, race-ethnicity, health insurance, family income, employment status, marital status, family size, health status, comorbidities, medication beliefs:
    • Effects of BMI presented as differences in observed and predicted change.
    • Effects of Characteristics presented as marginal effects.

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Nonelderly Adults with Treatment for Asthma by BMI Categories

Image: A bar graph presents the following data:

  • Normal weight: 29.9%.
  • Overweight: 27.7%.
  • Obese: 42.5%**††.

Source: MEPS, 2005–2009. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese: 30 kg/m2 ≥ BMI ≤ 100 kg/m2). Estimate is significantly different from normal weight category at: ** p<0.05, *p<0.10. Estimate is significantly different from overweight category at: †† p<0.05, †p<0.10.

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Medication Use Among Adults With Treatment for Asthma by BMI Categories

Image: A bar graph presents the following data:

Normal weight:

  • Asthma medications: 1.7.
  • All medications: 23.7.

Overweight:

  • Asthma medications: 1.8.
  • All medications: 26.1.

Obese:

  • Asthma medications: 1.8*.
  • All medications: 40.4**††.

Source: MEPS, 2005–2009. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese:30 kg/m2 ≥ BMI ≤ 100 kg/m2). Estimate is significantly different from normal weight category at: ** p<0.05, *p<0.10.

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Summary: Differences in Treated Prevalence and Medication Use by BMI Categories

  • Among nonelderly adults with reported treatment for asthma:
    • 42.5% percent were obese, 27.7% were overweight, and 29.9% were normal weight.
    • Obese patients were prescribed 1.8 asthma medicines on average compared with 1.7 for normal weight patients.
    • Obese patients filled 40.4 prescribed medications on average compared with 26.1 for overweight patients and 23.7 for normal weight patients.

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Expenditures for Adults with Treatment for Asthma by BMI Categories

Image: A bar graph presents the following data:

Normal weight:

  • Asthma medications: $726.
  • All medications: $2,019.
  • Total health care: $7,486.

Overweight:

  • Asthma medications: $769.
  • All medications: $2,243.
  • Total health care: $7,468.

Obese:

  • Asthma medications: $867*.
  • All medications: $3,251**††.
  • Total health care: $9,750*††.

Source: MEPS, 2005–2009. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese:30 kg/m2 ≥ BMI ≤ kg/m2). All expenditures for all years are CPI-U adjusted to 2009 U.S. dollars. Estimate is significantly different from normal weight category at: ** p<0.05, *p<0.10. Estimate is significantly different from overweight category at: †† p<0.05, †p<0.10.

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Summary: Differences in Medications and Total Health Care Expenditures by BMI Categories

  • Among nonelderly adults with reported treatment for asthma:
    • Asthma medications expenditures were 19.3 percent higher for obese patients ($867) compared with those for normal weight patients ($726).
    • All prescribed medication expenditures were more than 40 percent higher for obese patients ($3,251) than those for overweight patients ($2,243) and normal weight patients ($2,019).
    • Total health care expenditures were about 30 percent higher for obese patients ($9,750) than those for overweight patients ($7,468) and normal weight patients ($7,486).

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Selected Characteristics of Nonelderly Adults with Reported Treatment for Asthma by BMI Categories

VariablesCategoriesNormal
Weight
OverweightObese
Age in years:18 to 4462.7846.77**42.62**
45 to 6437.2253.23**57.38**
Race-ethnicity:NH White81.1578.0972.03**
NH Black9.621215.23**
Hispanic9.249.912.74**
Health insurance status:Any private74.775.5964.17**
Public only17.715.0727.00**
Uninsured7.69.338.82
Family income (% of FPL):Middle/high income72.6570.862.58**
Low income9.8112.0513.30**
Poor/near poor17.5417.1524.12**
Marital status:Not married57.945.63**51.10**
Married42.154.37**48.90**
Perceived health status:Excellent/very good/good69.4164.3943.98**
Fair/poor30.5935.6156.02**
Comorbidity:No comorbid condition57.1749.67**34.23**
Comorbid condition42.8350.33**65.77**

Source: MEPS, 2005–2009. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese:30 kg/m2 ≥ BMI ≤ kg/m2). NH = non-Hispanic; FPL = Federal poverty line. Estimate is significantly different from normal weight category at: ** p<0.05, *p<0.10.

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Summary: Selected Characteristics of Nonelderly Adults with Reported Treatment for Asthma

  • Among nonelderly adults with reported treatment for asthma:
    • Obese adults were more likely than normal weight adults:
      • To be older (ages 45-64), NH Black and Hispanic, covered by public insurance, poor and low income, married, in fair or poor health.
      • To have comorbidities.

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Effects of BMI on Medication Use and Expenditures

Counterfactual BMI categoriesMedication UseExpenditures
Asthma MedicationsaAll MedicationsaAsthma MedicationsbAll MedicationsbHealth Carec
Overweight as normal weight-0.03-1.68-137-157-372
Obese as normal weight-0.07**-12.09**-93*-992**-2433**
Obese as overweight-0.03-10.20**-89**-829**-2073**

Source: MEPS 2005–2009. ‡ Differences in observed and predicted changes in BMI categories on outcomes. (a) GLM with Poisson family and log link; (b) GLM with gamma family and power link; (c) GLM with gamma family and log link. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese:30 kg/m2 ≥ BMI ≤ kg/m2). NH = non-Hispanic; FPL = Federal poverty line. All expenditures for all years are CPI-U adjusted to 2009 U.S. dollars. GLM Models are estimated with controls for age, sex, race-ethnicity, health insurance, family income, employment status, marital status, family size, health status, comorbidities, medication beliefs and year dummies. Significance level: *** p<0.01, ** p<0.05, *p<0.10.

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Interpretation of Effects of BMI on Outcome Variables

  • The study finds that, controlling for other socio-demographic, economic and health characteristics.
  • If obese nonelderly adults were counterfactually switched to normal weight or overweight:
    • Mean number of all prescribed medication would decrease by 12.1 and 10.2 fills.
    • Expenditures on:
      • Asthma medications would decrease by $93 and $89.
      • All prescribed medications would decrease by $992 and $829.
      • Total health care would decrease by $2,433 and $2,073.

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Effects of Selected Characteristic on Medication Use and Expenditures

VariablesMedication UseExpenditures
Asthma MedicationsaAll MedicationsaAsthma MedicationsbAll MedicationsbHealth Carec
Age in years 18 to 44
   45 to 640.19***8.27***355.83***758.79***2427.08***
Race-ethnicity (NH White):
   NH Black-0.18**-3.56-362.61***-284.71-1560.63**
   Hispanic-0.24***-8.08***-537.94***-729.56***-1971.89***
Health insurance status (Any private)
   Public only-0.0911.84***215.19711.58***-1335.72
   Uninsured-0.28***-7.23***-332.37***-1031.39***-6363.33***
Family income (% of FPL)
(Middle/high income)
   Poor/near poor-0.07-4.81***-151.12*-468.25**-2192.58**
Perceived health status
(Excellent/very good/good)
   Fair/poor0.20***13.08***323.27***1145.48***4957.14***
Comorbidity (No comorbid condition)
   Comorbid condition-0.0119.95***126.031785.90***3450.94***

Source: MEPS 2005–2009. ‡ Differences in observed and predicted changes in BMI categories on outcomes. (a) GLM with Poisson family and log link; (b) GLM with gamma family and power link; (c) GLM with gamma family and log link. BMI = Body mass index (normal weight: 18.5 kg/m2 > BMI ≤ 25 kg/m2; overweight: 25 kg/m2 < BMI < 30 kg/m2, and obese:30 kg/m2 ≥ BMI ≤ kg/m2). NH = non-Hispanic; FPL = Federal poverty line. All expenditures for all years are CPI-U adjusted to 2009 U.S. dollars. GLM Models are estimated with controls for age, sex, race-ethnicity, health insurance, family income, employment status, marital status, family size, health status, comorbidities, medication beliefs and year dummies. Significance level: *** p<0.01, ** p<0.05, *p<0.10.

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Interpretation of Marginal Effects of Characteristics on Outcome Variables

  • Several characteristics were significantly related to the outcome variables.
  • Age 45-64 and fair or poor health status increase:
    • Expected number of asthma medications and all prescribed medication fills.
    • Expenditures for asthma medication, all prescribed medications and total health care.
  • Both NH Black and Hispanic race-ethnicity decrease:
    • Expected number of all prescribed medication fills.
    • Expenditures for asthma medication, all prescribed medications and total health care.
  • Both public insurance and low income increase:
    • Expected number of all prescribed medication fills and corresponding expenditures.
  • Comorbid conditions increase:
    • Expected number of all prescribed medication fills, and expenditures for all prescribed medications and total health care.

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Limitations

  • BMI calculated using self-reported measures of height and weight:
    • May result in underestimate of the true effects of BMI on medication use and expenditures.
  • Omitted variables and residual confounding effects cannot be excluded:
    • e.g., asthma severity may play a critical role in the effects of BMI on medication use and expenditures.
    • Results may change if severity differs across BMI groups.
  • Inclusion of comorbidities—an intermediate pathway through which BMI affects health services use and expenditures may affect results.
  • Non-causal regression models.

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Conclusions

  • Study demonstrates that obesity is associated with increased medication use and expenditures in nonelderly adults with asthma.
  • Multivariate analysis showed that counterfactually switching obese nonelderly adults to normal weight would decrease medication use and expenditures.
  • Implications:
    • There appears to be an association between obesity and high costs of care for the treatment of asthma.
    • The study suggest maintaining a normal weight could reduce both asthma related and overall health care costs for nonelderly adults with asthma.
Page last reviewed December 2012
Internet Citation: Obesity, Medication Use and Expenditures among Nonelderly Adults with Asthma: AHRQ's 2012 Annual Conference Slide Presentation. December 2012. Agency for Healthcare Research and Quality, Rockville, MD. https://archive.ahrq.gov/news/events/conference/2012/track_f/02_kirby_sarpong/sarpong.html

 

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