This slide is white. The top banner is blue that darkens gradually from left to right. The banner reads, "turning knowledge into practice." The bottom banner is also blue that gradually lightens from left to right and contains "www.rti.org" in the left corner. In the body of the slide, logos of CDC, National Association of Chronic Disease Directors, NPC, RTI International, and AHRQ surround the title.
Slide 1
Investigators
This presentation uses a white background with two banners at the top and one at the bottom. The top banner is blue that darkens gradually from left to right. The bottom banner is also blue that gradually lightens from left to right and contains "www.rti.org" in the left corner and the RTI logo in the right corner.
RTI Investigators
- Susan Haber
- Eric Finkelstein
- Justin Trogdon
CDC Investigators:
- Diane Orenstein
- Isaac Nwaise
- Florence Tangka
- Kumiko Imai
- Louise Murphy
Slide 2
Other Collaborators
Agency for Healthcare Research and Quality (AHRQ)
National Association of Chronic Disease Directors (NACDD)
National Pharmaceutical Council (NPC)
Slide 3
Overview
Project Goals
Why are burden estimates needed
Why examine state-specific total and Medicaid costs
Project description: objectives, methodology, strategy, estimation, preliminary results
Screen shots
Next Steps
Slide 4
Project Goals
Apply a consistent framework to calculate state-specific Total and Medicaid costs for persons diagnosed and/or treated for heart diseases, stroke, hypertension, congestive heart failure, diabetes, cancer, [completed] arthritis and major depression [ongoing]
Calculate the proportion of state Total [ongoing] and Medicaid costs for these diseases [completed]
Develop a user friendly calculator to estimate prevalence-based state-specific Total [ongoing] and Medicaid [completed] cost estimates for all states without having to analyze claims data
Expand the toolkit to include indirect costs and a forecasting module [ongoing]
Disseminate our methodology and results to key stakeholders [ongoing]
Slide 5
Why are burden estimates needed?
There is a circle located in the center labeled "Burden & Cost of Illness." Two arrows protruding from the circle point upwards to the text, "Planning/Forecasting, Prevention, and Resource Allocation." Four arrows are located above each word and point upwards toward a box containing the following text: Public Health Policy & Decisions.
Slide 6
Why are burden estimates needed (cont.)?
Evidenced-based recommendations to inform policy decisions
Cost containment
Potential solutions = prevention and control programs at the state and national levels supported by many partners
Advocacy to increase $$ for prevention efforts
Expand partnership between state CDD and CMS directors
Enhance understanding of the burden of disease to state Medicaid program and spending budgets
Evidence-based data to support resource allocation for state budgets
Collaborate with state health departments to share strategies to prevent and control chronic diseases: implement disease management, prevention and wellness initiatives
Slide 7
Why Chronic Diseases?
Chronic diseases are leading causes of mortality and morbidity
- Over 33% of adults have some form of cardiovascular disease
9.6% of adults have diabetes
Over 3% of population has history of cancer
Some estimates suggest that chronic diseases account for 83% of total healthcare expenditure in the general population
Slide 8
Why Examine Costs at the State Level?
State estimates are important because much of the prevention dollars are allocated at the state level
- Indirect costs may also be important for resource allocation decisions
Chronic Disease directors, state policy makers, and partners have been requesting this information
Slide 9
Why Examine Medicaid Costs Separately
Approximately 22% of all state spending is for Medicaid expenditures 1
Research has not examined the cost burden of chronic diseases to state Medicaid programs in a consistent manner across states
Medicaid directors and others have been requesting this information
It is feasible to estimate Medicaid costs using claims data, however, it is complicated, expensive and not without limitations
National Governors Association and National Association of State Budget Officers. Fiscal Survey of States, June 2007. Accessed from http://www.nasbo.org/Publications/PDFs/Fiscal%20Survey%20of%20the%20States%20June%202007.pdf November 21, 2007.
Slide 10
Federal, State and Total Medicaid Spending, 1965-2014
The x-axis on this graph represents the year from 1966 until 2014. The y-axis represents a dollar amount from $0 to $700. The graph has two projections that increase over time; both start at $0 in 1966 and in 2014, the light blue projection terminates at $325 whereas the dark blue projection ends at $600.
Source: Centers for Medicare and Medicaid Services, National Health Expenditures (NHE) Amounts by Type of Expenditure and Source of Funds: Calendar Years 1965 -2015, available at: www.cms.hhs.gov/ statistics/nhe/#projects
Slide 11
Why not use existing estimates?
Existing estimates are based on inconsistent data and methods
Results are often contradictory
Different populations
Different data sets
Different methodology
Lots of double counting
Toolkit and estimation approach presents a transparent and evidence-based strategy for calculating costs
Slide 12
Estimation Approach
Data
Nationally Representative Data: Medical Expenditure Panel Survey (MEPS)
State Representative Data: Medicaid MAX fee-for-service claims
Estimation approach
- Econometric (regression-based) modeling
Slide 13
MEPS Data
Nationally-representative survey of the US civilian non-institutionalized population
Quantifies annual medical spending by payer
Includes information on health insurance status and demographic characteristics
Identifies all medical conditions for which a participant sought treatment during the survey period and for selected chronic conditions
AHRQ granted access to state identifiers to quantify state-level adjustment factors
Slide 14
Advantages of MEPS
Nationally-representative dataset with state identifiers
- Single data source for all states
Includes payments for most medical services, including Rx drugs
Allows for stratification by payer (sample-size permitting)
Slide 15
Disadvantages of MEPS
Sample size may be inadequate for some diseases/payers/population stratifications
Pooling years can help
Combined, 2000-2003 MEPS includes approximately 125,000 people, and 25,000 Medicaid recipients
Data do not include institutionalized population
Slide 16
Data-Medicaid MAX Files (state Medicaid data)
Made available by CMS in a uniform format across states
Used for research on Medicaid population
Includes person-level eligibility records with demographic (Enrollment file) and claims data
Available variables include:
Chronic disease flags based on diagnosis codes
Demographic information (e.g., age, gender, race/ethnicity)
Months of eligibility during the year
An indicator for dual eligibility
Medicaid payments, in total and broken out by type of service
Slide 17
Medicaid MAX Files (cont.)
Advantages
Includes Rx claims
Includes long-term care population (unlike MEPS)
Single source for state-specific Medicaid prevalence, demographic, and cost data
Very large number of observations
Available for all states
Slide 18
Medicaid MAX Files (cont.)
Disadvantages
Misses payments for dual eligibles
Misses payments for non-covered services
Data are incomplete for states with high Medicaid managed care enrollment
Data are costly and analyses are labor and computer intensive
Incomplete coding on long-term care claims may be problematic for some analyses
Slide 19
Data-Strategy
Use MEPS to generate annual per capita disease costs for non-institutionalized populations
- Better controls for confounders
- Single data source for all states
- Can use state-level inflators to adjust for regional price variation
- Can test results using the 4 states MAX data
Use MAX data for estimating per capita disease costs for institutionalized populations
Combine unit costs with prevalence data to generate State-specific total and Medicaid costs
- Prevalence data can be provided by the user or estimated from the model
Slide 20
Estimation Approaches
Accounting Approach: sum payments for all events with the disease listed as the primary diagnosis
- May either understate or overstate costs attributable to the disease of interest
Understate: does not include attributable costs when disease of interest (e.g., diabetes) is listed as a secondary diagnosis
Overstate: may include costs attributable to secondary diagnoses
- Including primary plus secondary diagnoses results in additional problems
- Likely to result in double counting
Slide 21
Econometric Approach
Use multivariate regression analysis to estimate marginal costs associated with each disease while controlling, to the extent possible, for other observable characteristics that affect costs
Annual $ = f (diseases of interest, socio-demographic characteristics, other medical conditions)
- Diseases of interest: heart disease, stroke, hypertension, CHF, diabetes, cancer
- Sociodemographic characteristics: gender, race, age, education, income
- Additional high prevalence or high cost conditions
Slide 22
Econometric Approach
This approach has several major advantages over other approaches
- Regressions control for covariates (e.g., age, gender, comorbidities)
- Allows flexibility in the modeling
- With appropriate calculation, avoids double-counting of costs for co-occurring diseases
- Can run model separately on total or Medicaid population
Slide 23
Avoiding double counting
Commonly-used econometric models also lead to double counting of costs across diseases (Trogdon, Finkelstein and Hoerger 2007)
Occurs when expenditures for co-occuring diseases (e.g., heart disease with cancer) are not properly allocated across the two diseases
- Typically results in inflated estimates
We developed a strategy to estimate the expenditures associated with co-occuring diseases and reallocate these expenditures to the individual diseases
- Methodology forthcoming in HSR
- Used in Trogdon et al. (2007) Health Promotion Practice article and in the toolkit
Note - explains why our estimates are generally lower than what is in the literature
Slide 24
Estimation Strategy
Determine appropriate functional form for empirical models
Estimate separate models for annual expenditures in five categories
- Inpatient
- Outpatient
- Office-based
- Rx
- Other
Calculate per capita cost for each disease and combination of diseases
Use the coefficients from the model, which provide information about the relative importance of each disease on expenditures, to reallocate costs associated with co-occurring diseases
Slide 25
Estimation Strategy cont.
Combine results to produce a national estimate of per capita costs for each disease
Use regional/state level adjustment factors to generate per capita costs for each state
Multiply costs by prevalence estimates (either user supplied or estimated from the model) to generate Total (Medicaid) costs
Compare estimates to those generated directly from 4 states Medicaid claims data
Slide 26
Medicaid Results: Cardiovascular Disease
Annual costs per person with disease attributable to the disease to Medicaid
- Congestive heart failure $4,180
- Hypertension $1,610
- Stroke $1,550
- Other heart disease $1,500
Source: Trogdon et al. (2007)
Slide 27
Publications
Use of Econometric Models to Estimate Expenditure Shares
Justin G. Trogdon, Eric A. Finkelstein, Thomas J. Hoerger
Forthcoming at Health Services Research (CDC-funded through RTI-UNC Center of Excellence in Health Promotion Economics)
The Economic Burden of Cardiovascular Disease for Major Insurers
Justin G. Trogdon, Eric A. Finkelstein, Isaac Nwaise, Florence Tangka, and Diane Orenstein
Health Promotion Practice 2007;8(3):234-242.
Slide 28
Screen Shots
This slide contains a screenshot of the Welcome screen of the RTI Chronic Disease Cost Calculator.
Slide 29
This slide contains a screenshot of the Main Switchboard of the RTI Chronic Disease Cost Calculator.
Slide 30
This slide contains a screenshot of the Select State window of the RTI Chronic Disease Cost Calculator.
Slide 31
This slide contains a screenshot of the Select Diseases window of the RTI Chronic Disease Cost Calculator.
Slide 32
This slide contains a screenshot of the Number of Medicaid Beneficiaries in Your State window of the RTI Chronic Disease Cost Calculator.
Slide 33
This slide contains a screenshot of the Prevalence of Chronic Diseases in Your State window of the RTI Chronic Disease Cost Calculator.
Slide 34
This slide contains a screenshot of the Cost Per Person With Chronic Disease in Your State window of the RTI Chronic Disease Cost Calculator.
Slide 35
This slide contains a screenshot of the Calculated Costs window of the RTI Chronic Disease Cost Calculator.
Slide 36
Next Up
Hands on demonstration of the toolkit
Policy discussion surrounding the question: 'How should the estimates generated from the toolkit be used?'
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