Five Questions for Erin Benson and Rich Morino with LexisNexis Health Care: Post-Webinar Interview
Last
week, Erin Benson, Director Marketing Planning and Rich Morino,
Director, Strategic Solutions, LexisNexis Health Care, participated in a
Healthcare Web Summit webinar discussion on
opportunities for health plans to
leverage social
determinants of health data to attain quality goals while
managing cost and enhancing member experience.
If you missed this
engaging webinar presentation, watch the On-Demand version
here. After the webinar, we interviewed Erin and
Rich on five key takeaways from the webinar:
1. What are some of the
ways that member health is impacted on a daily basis by social, economic
and environmental factors?
Erin Benson and Rich Morino:
The environment in which a person
lives impacts their likelihood to develop health conditions as well as
their likelihood to effectively manage those conditions. Care
recommendations need to be a good fit for a member’s environment, not
just their medical condition. If recommendations won’t work within the
person’s physical environment, aren’t affordable or conveniently
located, and are provided in a way that is hard for the member to
understand, they won’t be effective at improving health. Studies support
this fact. For example, 75-90% of primary care visits are the result of
stress-related factors (JAOA Evaluating the Impact of Stress on
Systemic Disease: The MOST Protocol in Primary Care). Money, work
and family responsibilities – all reflective of social determinants of
health -- are cited as the top three causes of stress (APA 2015).
2. We've heard reference to
aggregating data at the zip code level for use in personalizing care for
members. However, this is one of your top five myths about socio
determinants of health. Can you tell us more?
Erin Benson and Rich Morino:
While aggregate data can be useful
in certain capacities, it isn’t recommended as a best practice for
personalizing care. Within a single zip code, it is not unusual to see
variance in income levels, crime rates and other factors impacting an
individual’s neighborhood and built environment, so we recommend looking
at an individual’s neighborhood from the perspective of their specific
address. Focusing on zip code alone also ignores the influences of
education, economic stability and social and community context so we
recommend incorporating these other social determinants of health into
decision-making in order to view the member holistically and create a
more comprehensive plan of care outreach.
3. Can you briefly explain
why previous generations of SDOH have failed to improve health outcomes?
Erin Benson and Rich Morino:
There are two primary reasons why
previous generations of SDOH have failed to improve health outcomes,
data and workflow. In order to get sufficient value, the data
needs to address all 5 categories of SDOH to properly draw useful
insights. The data should also be at the member level, and address
who the member’s family and close associations. Without that
information, we cannot tell if someone is socially isolated or living
with caregivers, for instance.
The second reason
why previous generations of SDOH have failed is how they are deployed in
the workflow. An example would be a plan simply adding them to an
existing claims-based model to achieve an increase in lift. The
lift is nice, but no changes in process are filtering down to the Care
Management team interacting with the members. In this
scenario, a lot of value was ignored.
A better method
would be if the plan also built models identifying members with barriers
to improved health outcomes. If you now apply this to your chronic
or at-risk population you can determine not just who is sick and in need
of help, but how to most likely achieve success in an intervention
program. Care Managers would immediately know the challenges to
success, and what type of intervention program the member should be in
enrolled in from the start.
4. One of the SDOH models
to uncover health barriers referenced during your webinar was social
isolation. Can you provide more context for us here?
Erin Benson and Rich Morino:
Studies have shown that social
isolation can increase risk of heart disease by 29% and stroke by 32%
(New York Times How Social Isolation Is Killing Us). By
understanding factors about an individual such as who else is living in
the household with them, their predicted marital status, and how close
their nearest relatives and associates live to them, healthcare
organizations can identify who may be socially isolated. This allows
care providers to ask the right questions to determine if that person
needs access to social support systems such as support groups or
community resources to improve their health outcomes.
5. What are some ways
social determinants can help health plans enhance predictions and
improve care management?
Erin Benson and Rich Morino:
The most common way of utilizing
SDOH data so far has been to incorporate it into existing claims-based
predictive models to improve predictive accuracy or to use it to create
new predictive models. The second use is for care management purposes
and this is where social determinants of health can be truly
transformational. We recommend as a best practice to use social
determinants of health insights to also build models that identify
health barriers. The combination of models allows healthcare
organizations to better stratify the risk of their members and then
better tailor care to their medical and social needs. |
Reader Comments