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Congressional Budget Office June 23, 2013 Offsetting Effects of - PowerPoint PPT Presentation

Congressional Budget Office June 23, 2013 Offsetting Effects of Prescription Drug Use on Medicares Spending for Medical Services Presentation to the AcademyHealth Annual Research Meeting Melinda B. Buntin, Ph.D. Deputy Assistant Director


  1. Congressional Budget Office June 23, 2013 Offsetting Effects of Prescription Drug Use on Medicare’s Spending for Medical Services Presentation to the AcademyHealth Annual Research Meeting Melinda B. Buntin, Ph.D. Deputy Assistant Director for Health Tamara B. Hayford, Ph.D. Principal Analyst This presentation provides information published in Offsetting Effects of Prescription Drug Use on Medicare’s Spending for Medical Services (November 2012). See http://www.cbo.gov/publication/43741

  2. Overview ■ Why did CBO revisit the effect of changes in drug use on medical service use? ■ How does the use of prescription drugs affect medical spending? ■ Methodology and methodological issues to consider ■ Literature and results ■ Example of applying the medical-drug “offset” C O N G R E S S I O N A L B U D G E T O F F I C E

  3. Why Revisit the Relationship Between Drug Use and Medical Spending? • New evidence, advances in the literature • Congressional interest in a range of drug cost- sharing proposals, e.g.: • Lower LIS generic copay and increase LIS brand copay • Increase manufacturer’s discount in the coverage gap • Fill the donut hole C O N G R E S S I O N A L B U D G E T O F F I C E

  4. How a Drug Price Affects Medical Spending Less controlled Reduced Rx Higher Use disease Lower Rx cost to • More complications Reduced Rx adherence Spending • More ER visits enrollee • More hospitalizations • Etc. Reduced Rx continuation Might vary by… Health of affected group Size of change in Rx price Direction of change in price C O N G R E S S I O N A L B U D G E T O F F I C E

  5. Methodology: Study Selection and Results Calibration • Select studies: • Analysis of changes in overall drug use • Populations “applicable to” Medicare population • Calibrate study results: • Adjust to be consistent with overall Medicare population • Adjust to be consistent with overall medical spending • Scale to be consistent with a 1 percent change in prescription drug use • Calculate average of calibrated, scaled results weighted by study quality C O N G R E S S I O N A L B U D G E T O F F I C E

  6. Issues to Consider • Are effects symmetric to increases and decreases? Linear? • Can the factor be applied to subgroups of the Part D population? • Can we apply the logic to specific drug classes (e.g. biologics)? C O N G R E S S I O N A L B U D G E T O F F I C E

  7. Estimates of the Size of the Offset • One study estimated the impact of pharmaceutical policies on a broad population outside of Medicare (Gaynor, Li, & Vogt, 2007) • Four studies estimated the impact of pharmaceutical policies on Medicare beneficiaries prior to Part D implementation (Chandra et al., 2010; Stuart et al., 2009; Shang and Goldman, 2007; Hsu et al. 2006) • Three studies compared medical expenditures before and after Part D implementation (McWilliams et al. 2011; Afendulis et al. 2001; Zhang et al. 2009) C O N G R E S S I O N A L B U D G E T O F F I C E

  8. Effect of a 1 Percent Increase in Drug Use on Other Medical Spending Scaled Results Range -2/3 % to +1/3% Scaled Range Excluding Max and Min -4/10% to -1/10% Weighted Average -1/5 % C O N G R E S S I O N A L B U D G E T O F F I C E

  9. The relationship between changes in drug utilization and non-drug medical spending appears to be symmetric and linear 8 Calibrated % change in non-drug medical spending 6 Zhang et al (2009) 4 outlier 2 0 -30 -20 -10 0 10 20 30 -2 -4 -6 -8 -10 -12 % change in Rx utilization C O N G R E S S I O N A L B U D G E T O F F I C E

  10. Applying the Offset ■ When? – For policy changes that are estimated to change the quantity of drugs consumed in the Medicare program – Not for policy changes that affect other programs – Not for policy changes that would not directly induce a change in the quantity of drugs consumed ■ How? – First: estimate a proposal’s direct effect on prescription drug costs – Next: estimate the effect on the number of prescriptions filled – Last: calculate any resulting offsetting effect on spending for medical services. C O N G R E S S I O N A L B U D G E T O F F I C E

  11. Applicability to Population and Drug Subgroups ■ Population subgroups: – CBO will apply the factor to policies affecting broad subgroups (e.g., LIS or non-LIS population) – Narrower populations decided on a case-by-case basis ( Study results may or may not be applicable) ■ Drug subgroups: – Studies addressed changes in overall drug use – Effects within therapeutic classes will require further literature review for those classes C O N G R E S S I O N A L B U D G E T O F F I C E

  12. Example: Closing the Part D Coverage Gap ■ Components of closing the gap: – 50% manufacturer’s discount on brand drugs in the coverage gap (for non-LIS beneficiaries only) began in 2011. – Part D Plans gradually responsible for more coverage until, in 2020, they pay for 25% of brand drugs & 75% of generics. ■ Estimated effect: – Total consumption of drugs by non-LIS will increase by 5% by 2018.  By 2018, spending for medical services expected to fall by 1% for this population. – For 2013-2022 period, Medicare medical spending estimated to fall by $35 billion (out of $5.6 trillion).  Estimated cost of closing the gap for 2013-2022 period drops from $86 billion to $51 billion. C O N G R E S S I O N A L B U D G E T O F F I C E

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