Title: Estimating the Cost of Chronic Diseases
1Estimating the Cost of Chronic Diseases
- National Center for Chronic Disease Prevention
- and Health Promotion (NCCDPHP), CoCHP
- Centers for Disease Control and Prevention
- In collaboration with Chronic Disease Directors,
National Pharmaceutical Council, and Agency for
Healthcare Research and Quality
2Project Task Order
- CDC Technical Monitors Diane Orenstein PhD
(DHDSP) - Isaac Nwaise MA Economist (DHDSP)
- Florence Tangka PhD Economist (DCPC)
- Kumiko Imai PhD Economist (DDT)
-
- Research Triangle Institute (RTI International)
- Project Investigators Susan Haber ScD
- Eric Finkelstein PhD
- Justin Trogdon PhD
-
- Phase I October 2004 September 2006
3Overview
- Impact for CDC
- Why do we need this information?
- Project Goals
- Why examine Medicaid costs?
- Project description objectives, methodology,
strategy, estimation, preliminary results - Use of toolkit
- Benefits to CDD and Medicaid Directors
4Impact for CDCConsistent with Goals
- Health impact focus - by quantifying the
economic burden of chronic disease, we are better
positioned to demonstrate the value added of
prevention and health promotion activities - Customer-centricity - by translating findings
into toolkits for states and other key
stakeholders use - Leadership - by partnering with other divisions
across the chronic center as well as key external
partners we leverage expertise and partnerships - Accountability - the project makes efficient and
effective use of resources by examining cross
cutting issues in a consistent and collaborative
manner
5Why Do We Need this Information?
Public Health Policy Decisions
Planning/Forecasting Prevention Resource
Allocation
Burden Cost of Illness
6Why Do We Need this Information (cont.)?
- Project created in response to a stated need from
State Chronic Disease Directors, with support
form the collaborating partners - States need to have a comprehensive understanding
of the fiscal impact of chronic diseases - Information provides evidence-based data for
- Advocacy
- Policy development
- Budgetary planning and resource allocation
7Percent of All Deaths Due to Five Major Chronic
Diseases By State, 2001
Diseases of the heart, all cancers, stroke,
chronic lower respiratory disease, and diabetes.
Source Centers for Disease Control and
Prevention, 2001 mortality data obtained from the
National Vital Statistics System, The Burden of
Chronic Diseases and their Risk Factors, 2004
8Six Diseases
- Hypertension, Heart disease, Stroke, Congestive
heart failure, Diabetes, and Cancer - Leading causes of morbidity and mortality
-
- U.S. Prevalence
- Cardiovascular diseases 71 million
- (65 million-hypertension, 13.2 million- heart
disease, 5.5 million stroke, 5 million congestive
heart disease) - Diabetes 20.8 million
- Cancer 10 million
- Medical Costs
- Cardiovascular diseases256 billion
- Diabetes 92 billion
- Cancer 72 billion
Source 1. AHA statistics update, 2006
2. ADA fact sheet, 2005 3. NCI
cancer trends progress report, 2005 update
9Project Goals
- To calculate state-specific Medicaid costs for
persons diagnosed and/or treated for heart
diseases, stroke, hypertension, congestive heart
failure, diabetes, and cancer in six states - To calculate the proportion of costs for these
diseases to total state Medicaid budgets in six
states - To develop a cost prediction model and a toolkit
to calculate prevalence-based state-specific
Medicaid cost estimates for these 6 diseases for
all states - To develop an alternative cost estimation
methodology using Medical Expenditure Panel
Survey (MEPS) data, which are publicly available
from the Agency for Healthcare Research and
Quality (AHRQ)
10Why Examine Medicaid Costs?
- Medicaid accounted for approximately 22 of all
state spending in 20031 - State Medicaid spending is growing annual
increase more than doubled from FY 2004 to 2005
(4.8 to 11.7)2
- National Governors Association and National
Association of State Budget Officers. Fiscal
Survey of States, June 2005. Accessed from
http//www.nasbo.org/Publications/fiscalsurvey/fss
pring2005.pdf November 29, 2005. - Kaiser Commission on Medicaid and the Uninsured
Survey of State Medicaid Officials conducted by
Health Management Associates, June and December
2003
11Federal, State and Total Medicaid Spending,
1965-2014
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
12Chronic Diseases in Medicaid
- Chronic diseases account for 83 of total
healthcare expenditure in the general population - Many national estimates of the costs of chronic
diseases exist, often with conflicting results - Different populations (e.g., national, Medicare)
- Different data sets
- Different methodology
- Lots of double counting
13Chronic Diseases in Medicaid cont.
- Research has not examined the cost burden of
chronic diseases to state Medicaid programs in a
consistent manner across states - Medicaid has a high prevalence of chronic
diseases - The lack of research is problematic given that
most prevention efforts occur at state or local
levels
14Project Objectives
- Develop a toolkit for states to estimate Medicaid
costs for select chronic diseases at the state
level - Use a consistent methodology across states
- Avoid double-counting disease costs
- User-friendly but flexible
- Does not require states to crunch through
Medicaid claims data (both labor and computer
intensive) - Long-term goals
- Increase the number of diseases in the model
- Provide costs for other chronic diseases, payers
and indirect costs - State total
- Medicare
15Methodology
- Data
- Nationally Representative Data Medical
Expenditure Panel Survey (MEPS) - State Representative Data Medicaid MAX
fee-for-service claims - Estimation approach
- Econometric (regression-based) modeling
16MEPS
- 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 - Allows for identifying any medical condition for
which a participant sought treatment during the
survey period and for select chronic conditions - AHRQ granted us access to state identifiers to
quantify state-level adjustment factors
17MEPS (cont.)
- Advantages
- Includes payments for most medical services,
including Rx drugs - Nationally-representative dataset with state
identifiers - Single data source for all states
- Allows for stratification by payer (sample-size
permitting) - Data is free and publicly available
18MEPS (cont.)
- Disadvantages
- Sample size may be inadequate for some
diseases/stratifications - Pooling years can help
- Combined, 2000-2003 MEPS includes approximately
125,000 people, and 25,000 Medicaid recipients - Data does not include institutionalized
population - MEPS estimates of annual medical expenditures are
approximately half the corresponding estimates
from National Health Accounts
19DataMedicaid 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
20Medicaid 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
21Medicaid 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
22DataStrategy
- 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 total Medicaid costs - Prevalence data can be provided by the user or
estimated from the model
23MAX State Selection Criteria
- Data quality
- Relatively low enrollment in Medicaid managed
care - Good reporting of diagnosis data (especially on
crossover claims for dual eligibles) - Current Study states
- IL (n1,754,113)
- IN (n749,853)
- KS (n255,163)
- LA (n904,701)
- Note data from South Carolina and Massachusetts
are still being processed
24Estimation 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
- We chose to pursue an econometric approach
25Econometric 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
26Econometric Approach
- This approach has several major advantages over
other approaches - Regressions control for covariates (e.g., age,
gender, comorbidities) - Allows flexibility in the modeling
- Avoids double-counting of costs for co-occurring
diseases
27Estimation Strategy
- Determine appropriate functional form for
empirical models - Estimate separate models for annual expenditures
in five categories - Inpatient
- Outpatient
- Office-based
- Rx
- Other
- Combine results to produce a national estimate of
per capita costs for each disease
28Estimation Strategy cont.
- Use regional/state level adjustment factors to
generate per capita costs for each state - Multiply costs by prevalence estimates for each
states Medicaid population (either user supplied
or estimated from the model) - Compare estimates to those generated from
Medicaid claims data
29Preliminary results
- Estimates of Medical Costs Attributable to Cancer
in the U.S. - Florence Tangka, Eric A. Finkelstein, Ian C.
Fiebelkorn, Donatus Ekwueme, and Gayle Clutter - Presented at the World Cancer Congress in
Washington D.C. in June 2006 - Estimating State Costs For Chronic Diseases Using
Medicaid Data - Susan Haber, ScD, Boyd Gilman, PhD, Florence
Tangka, PhD, Diane Orenstein, PhD, Isaac Nwaise,
MA, Daniel Crespin, BA - Health Services Research for their special issue
on State-Level Health Service Delivery, Access,
and Practice Improving Research and Policy
30Benefits to Chronic Disease Directors and Partners
- MEPS estimation provides a consistent
methodology for approximating disease related
coststo share among CDDs partners, and
stakeholders - Toolkit and MEPS estimation provides CDC, CDD,
and partners with evidence-based strategy for
calculating state Medicaid costs for chronic
diseases - It is feasible to estimate state Medicaid costs
(using state MAX data) however, it is
complicated, expensive and not without
limitations
31Implications
- 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
32Benefits to CMS
- Enhance understanding of the burden of chronic
diseases 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