Bonander, J. Personally Tailored Health Information: A Health 2.0 Approach • This slideshow, presented at Medicine 2.0’08, Sept 4/5 th , 2008, in Toronto, was uploaded on behalf of the presenter by the Medicine 2.0 team • Do not miss the next Medicine 2.0 congress on 17/18th Sept 2009 (www.medicine20congress.com) • Order Audio Recordings (mp3) of Medicine 2.0’08 presentations at http://www.medicine20congress.com/mp3.php
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Bonander, J.Personally Tailored Health Information: A Health 2.0 Approach
• This slideshow, presented at Medicine 2.0’08, Sept 4/5th, 2008, in Toronto, was uploaded on behalf of the presenter by the Medicine 2.0 team
• Do not miss the next Medicine 2.0 congress on 17/18th Sept 2009(www.medicine20congress.com)
• Order Audio Recordings (mp3) of Medicine 2.0’08 presentations at http://www.medicine20congress.com/mp3.php
Personally Tailored Health Information: A Health 2.0 Approach
Jason Bonander, MA
Centers for Disease Control and PreventionNational Center for Public Health Informatics
Atlanta, Georgia, USASeptember 4, 2008
Outline
• Tailored health information and Web 2.0 thinking• Hypothesis and logic model• Methods• Findings / discussion• Next Steps
ScenariosJacob
20, lives in a suburb of San Francisco, CA; a student at the local community college, a social drinker and doesn’t consider himself a smoker (though he smokes socially); enjoys the outdoors (mountain biking, skate boarding) has many friends, and passionate about music and movies; uses multiple social networking sites (MySpace, Facebook, Ning)..What if tailored health information could be delivered to Jacob that addressed key health protection themes such as alcohol use, smoking related health issues, injury prevention, STD prevention, positive social and emotional health?
Sally36, working mom, married with children and living in St Paul, MN; a social drinker and non-smoker, but her husband smokes; shares family pictures and has a long list of favorite television shows and movies; uses social networking sites to keep in touch with current friends and to make new ones; also a member of specific health causes (e.g. fighting breast cancer).What if tailored health information could be delivered to Sally that addressed key health protection themes for herself and her family such as physical activity, chronic conditions, reproductive health, cancer, smoking-related health issues, social well being, immunizations?
Online social networking and health conceptual landscape
growth online social network use
and health infoseeking
Online health SNA
research
Christakis & Fowler
Moreno
BehaviorChange
Models
Tailoring
Informaticstools
NLP
Text analytics
Vocab/ontology
Chronic / infectiousdisease
prevalence
strongemergentnascent
Behavioraleconomics
TrustReciprocity
Groups
Tailoring and Changing Behavior• Increasing interest and focus in tailoring health
information to change behavior and improve health and wellbeing
– Effective with smoking cessation, weight loss, physical fitness, cancer screening, nutrition
• Challenges– High touch / low reach vs. low touch / high reach– Engagement over time– Time consuming questionnaires– Content development / availability
Recent work in SNS and Health
• Christakis and Fowler (NEJM 2007; 2008)
– Social distance over geographical distance risk influencer for obesity
– Collective interventions may be more effective than individual interventions
• Moreno, et al (MedGenMed 2007)
– Significant risk behavior demonstrated among teens in MySpace
• Sexual activity, alcohol, drug and cigarette use
• Mishra, et al (on going research at CDC)
– Riskbot• NLP and text analytics applied to online risk behavior
Hypothesis
• Part A– Enough information exists on an individual’s social
networking page(s) to be useful in generating meaningful, tailored health messages ......
• Part B– If so, could informatics tools be used to “discover”
such information• Part C
– If so, what would the context of engagement look like so as to not feel creepy, to stimulate behavior change and potentially even stimulate this through social networks
Logic Model
Knowledge garnered
and tailored information presented
Interest
TrustReciprocity
I
TR
I
TR
I
TR I
TR
I
TR
Altruism & sharing with public health
Social distanceCollective interventions
risk behavior
Improved healthand wellbeing
Informatics Tools
Theoreticalmodels
Context
• Focused solely on MySpace – Top social networking site– 69 million US users; 116.6 million worldwide
• Reach– Wide age range represented– Groups, forums, blogs– Relevance for health
• Blogs– Goals for next year (lose baby weight), living through brain
surgery, “I have AIDS bitch!”• Language
– ThE Shit ThaT I RiP is C^6 DoWn All DaY Cuz. The SkOOl I Go toO i$ AuStin EaSt WeRe AlL ThE ReAl Ni66a$ C. I Play FooT6All n 6aSkEt6all….
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Discussion
• Hypothesis, part A– Possibly a viable medium for tailored health messaging –
healthness is pervasive and infused throughout individual and group content
– Structured data useful for targeting– Combined with unstructured content could rise to tailoring
• Dijkstra and Strecher have alluded to the possibility of high reach, low contact contexts being effective with “pre-contemplators” (following the transtheoretical model).
• Bourgeois, et al recently found that tailored immunization information within an ePHR didn’t impact immunization rates, but significantly influenced KABs regarding flu immunization
Next Steps
• Apply informatics tools– Working with existing corpus of MySpace data and refining
Riskbot engine to surface intervention opportunities• POC with University of Michigan
– What might a smart, reciprocal,trust building health tailoring engine/gadget/widget look like?
• Explore further public healthpossibilities
– Audience research– Sentinel citizens– Intervention modeling and
delivery
EncounterParameters
Protection
Role
Enhancements
Numberof Contacts
PenetrationMode
Experience
Demographics
VirtualEnvironment
YesNo
Receptive
Dominant
Drug 1Drug 2
Drug 3
Etc.
ChatRooms
Blogs
Mobiles
PDAs
Oral
Anal
Vaginal
Spouse / Partner
Curious Discretion
Race
Age
Sex
SexualOrientation
MMMW
WW
Multiple M
Multiple W
MixedMultiple
HIV/STD Risk Behavior Category Diagram(Based on Internet Communications
Disease Disclosure- Self
HIV +ve
HIV -ve
DDF
Disease Disclosure- Partner
HIV +ve
HIV -veDDF
MeetingLocation
CircuitParty
HomePartner'shome
PublicplacesClubs Hotels
BathHousesBarsRest
Areas
Created By: Asha Krishnaswamy, DKMS, NCPHI; April 3, 2007 RiskBot Project