Title: Population Health Management
1Population Health ManagementReal Time State of
Health Analysis
2YESTERDAY CLAIMS-BASED PREDICTIVE MODELS
- For years, healthcare insurance companies
(payers) have mined claims data for chronic
patients and have built predictive models to
identify high-risk patients. - While this approach has seen some success,
limitations far outweigh merits. - Data used by payers to flag high risk patients is
historical claims data primarily costs,
admissions, and diagnoses. Furthermore,
regression and time series risk models are
typically updated only annually.
3- Most physicians are highly skeptical of claims
based predictive models because they have no
clinical basis, and give no consideration to an
individual's current state of health. - Moreover, there is a complete lack of causation,
"Why is a patient considered high-risk? What are
the clinical reasons for the score? How do we
lower the patient's risk score? How does the
score measure the effectiveness of my care
management program? - http//healthcarecostmonitor.thehastingscenter.org
/kimberlyswartz/projected-costs-ofchronic-
diseases/ - http//www.ahrq.gov/research/ria19/expendria.htm
4- These models lack a correlation to clinical
information. - Claims-based risk scores are created with
regression analysis at a population level to
predict scores at the patient level. - Not only are todays calculations unsuitable for
determining a patients true risk, they provide
no insight on how an individuals score improves
or deteriorates after each clinical visit.
5FURTHER CONSIDERATIONS
- Current thinking and efforts create a
disproportionate focus on existing chronic
patients. - A better approach is to monitor all patients,
healthy and chronic, for risk of
hospitalizations. - Unfortunately, current claims-based predictive
risk models allow no room for this approach.
6VITAL PROGRESS
- Today, most large physician groups and medical
homes already use at least a basic EHR system. - CMS predicts that by 2014, more than fifty
percent of all eligible medical professionals in
the U.S. will use EHR. - This is a transformational shift, because for the
first time in history, clinical information is
digitally available in real time, with reasonable
availability of laboratory results and patient
vital data.
7CLOSED-LOOP CMP
- Using real-time clinical data from EHR records,
health care providers now have the capacity to
design a closed-loop population care management
program (Figure 1). A well-designed program
delivers primary care to drive higher quality,
reduce costs, and deliver greater - value in health care.
8Population SOH Stratification
- State of health stratification provides
actionable and measurable information about
actual health status at the population and
patient levels, with visibility of controllable
and non-controllable factors. - SOH is a risk predictor. However, it is also an
indicator of the quality of care delivered. - If the score trends down, the quality of care is
good, - because health is improving.
9Origins of SOH Models
- Nationally accepted clinical models are the basis
for state of health models. - SOH scores are calculated at the patient level
and rolled up to a population level (Figure 2). - In this example, each row corresponds to a
physician's patient population. It shows the
patient count, the number of office visits
(encounter) and the average population SOH score
for each chronic disease.
10Figure 2 Population SOH (Risk) Stratification by
Physician
11Chronic Disease Management
- Patients who comply with prescribed care programs
are typically more successful in managing chronic
conditions. - This is where care coordinators play an important
role. - Monitoring gaps in care established by
evidence-based care, patients SOH trends, and
underlying clinical drivers over time, care
coordinators can identify patients that need
their attention.
12Care Coordination
- Physicians who improved the state of health for
their population (i.e. lower the score) over a
one to three year period established and used
better clinical protocols (i.e. best practice
care management programs). - In one instance, one physicians CHF population
risk increased to 55, while anothers dropped to
5.
13Figure 3 - Effectiveness of two physician CHF
populations.
Use best practices within the risk group for
evidence-based care coordination medicines,
treatment levels, frequency of visits by risk
group.
14Population performance Map patients on quality
and total cost across the continuum-of care
(ambulatory and acute). Identify optimal
preventive care levels to minimize lifecycle cost
over a time period by chronic condition.
15Incentive management
- If financial incentives for health care
professionals are not aligned with performance,
success may be temporary and hard to sustain. - Effective incentive programs distinctly drive
higher quality and reduce costs for greater value
in health care. - Incentive programs reward care teams for reducing
population risk scores, improving patient
satisfaction scores, and reducing overall patient
costs.
16- Continuum of care dashboards (ambulatory and
acute) are useful in designing incentive programs
and illustrate risk-cost-quality details for each
patient (Figure 5). - Figure 5 - Continuum of Care Analysis by Patient,
Preventive Care Impact on Acute Care Costs
Monitor how much total inpatient and outpatient
care (cost and quality) is being provided to the
risk panel identify patient outliers.
17- Patient SOH scores can be rolled up to population
averages. - For example, one incentive program dashboard maps
physician/care coordinator teams on a
cost-quality grid. - Each bubble corresponds to a specific physician-
care coordinator team, and the size of the bubble
illustrates the size of the population they
manage. The distance of each bubble from the
crosshair indicates the positive or negative
variance from the target and is proportional to
each teams bonus or penalty.( Refer Fig.6)
18- Figure 6 Physician value index used for
incentive management for care teams.
Report shared savings by plan by physician on a
periodic basis and show the impact of actions on
their pocketbook.
19Validating the SOH Model APPROACH
- To validate the models, researchers compared the
new SOH model against that of a leading
claims-based risk model (the payer model). - For the SOH model, researchers used real-time
clinical data. The SOH model did not include past
ER or IP admissions data. - Next, researchers calculated a SOH score for each
patient using historical data over two years
20Inpatient Admissions
- Figure 7 shows total hospitalized patients as a
ratio of the total diabetic patients for that SOH
band. - At very high scores, all patients were
hospitalized. Thus, Figure 7 validates the
accuracy and predictive power of the SOH score.
- Figure 7- Ratio of Hospitalized Patients to Total
Diabetic Patients
21Creating a SOH Composite
- Figure 8 shows the
- relationship between
- the payer risk scores and IP admissions.
- Similarly, at higher risk scores, the predictive
power of the payers model - is only 50 whereas the researchers SOH model is
closer to 100 accurate
Figure 8 - Relationship between the payer risk
scores and IP admissions.
22WORK SMARTER USING SOH MODELS
- State of health models are highly accurate and
predictive, and ideally suited for chronic care
population management by chronic condition. - Using SOH scores, care coordinators can correctly
identify and focus on high risk patients with a
great risk of hospitalization in the short term. - Given the rapid adoption of EHRs among primary
care physicians and groups, the data required to
build SOH models is readily available now, and
will continue to expand over the next two years.
23- Healthcare providers can enable continuous
improvement using SOH models together with care
management programs. This approach has already
been institutionalized in a number of leading
medical homes like Medical Clinic of North Texas
(MCNT).
24- MCNT has pioneered the SOH-based population
management approach. - MCNT experienced a stellar FY 2010 performance
with Total Medical Cost trend. - Overall performance index improved in Facility
Outpatient (-5), Other Medical Services (-6),
and Professional (-1) categories, relative to
the market. An enviable performance considering
the challenges healthcare provider markets are
facing with the influx of market changes.
25SUMMARY
- To lower health costs, physician networks and
medical homes must employ a closed loop
population management program that focus on
patient SOH stratification, chronic disease
management, care coordination and incentive
management. - To become masters in their population management
programs, they need decision support systems such
as population SOH (risk) stratification and
predictive models.