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ANALYTICS 3.0
Opportunities for Healthcare
ANALYTICS 3.0:
OPPORTUNITIES FOR HEALTHCARE
July 24, 2013
Jack Phillips
CEO & Co-Founder
Thomas H. Davenport
Research Director
& Co-Founder
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
Copyright© 2013 IIA All Rights Reserved
INTERNAL ANALYTICS PROGRAM
(TACTICAL)
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
THE ANALYTICAL DELTA
Adapted from Analytics at Work, Davenport, Harris and Morison, 2010
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
LEVELS OF ANALYTICAL MATURITY
Adapted from Analytics at Work, Davenport, Harris and Morison, 2010
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
EXTERNAL ANALYTICS ENVIRONMENT
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 1.0│TRADITIONAL ANALYTICS
1.0
Traditional
Analytics
• Primarily descriptive
analytics and reporting
• Internally sourced,
relatively small,
structured data
• “Back room” teams
of analysts
• Internal decision
support
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 1.0│ETHOS
► Stay in the back room—as far away from decision-makers as
possible—and don’t cause trouble
► Take your time—nobody’s that interested in your results anyway
► Talk about “BI for the masses,” but make it all too difficult for anyone
but experts to use
► Look backwards—that’s where the threats to your business are
► If possible, spend much more time getting data ready for analysis
than actually analyzing it
► Keep inside the sheltering confines of the IT organization
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 2.0│THE BIG DATA ERA
1.0
Traditional
Analytics
Big Data2.0
• Primarily descriptive
analytics and reporting
• Internally sourced,
relatively small,
structured data
• “Back room” teams
of analysts
• Internal decision
support • Complex, large,
unstructured data sources
• New analytical and
computational capabilities
• “Data Scientists” emerge
• Online firms create data-
based products and
services
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 2.0│ETHOS
► Be “on the bridge” if not in charge of it
► “Agile is too slow”
► “Being a consultant is the dead zone”
► Develop products, not Power Points
or reports
► Information (and hardware and
software) wants to be free
► All problems can be solved in a
hackathon
► Share your big data tools with the
community
► “Nobody’s ever done this before!”
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 3.0│FAST BUSINESS IMPACT
FOR THE DATA ECONOMY
1.0
Traditional
Analytics
Fast Business
Impact for the
Data Economy
Big Data2.0
3.0
• Primarily descriptive
analytics and reporting
• Internally sourced,
relatively small,
structured data
• “Back room” teams
of analysts
• Internal decision
support • Complex, large,
unstructured data sources
• New analytical and
computational capabilities
• “Data Scientists” emerge
• Online firms create data-
based products and
services
• A seamless blend of traditional
analytics and big data
• Analytics integral to running the
business; strategic asset
• Rapid and agile insight delivery
• Analytical tools available at
point of decision
• Cultural evolution embeds
analytics into decision and
operational processes
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 3.0│FAST BUSINESS IMPACT
FOR THE DATA ECONOMY
1.0
Traditional
Analytics
Fast Business
Impact for the
Data Economy
Big Data2.0
3.0
• Primarily descriptive
analytics and reporting
• Internally sourced,
relatively small,
structured data
• “Back room” teams
of analysts
• Internal decision
support
• A seamless blend of traditional
analytics and big data
• Analytics integral to running the
business; strategic asset
• Rapid an agile insight delivery
• Analytical tools available at
point of decision
• Cultural evolution embeds
analytics into decision and
operational processes
• Complex, large,
unstructured data sources
• New analytical and
computational capabilities
• “Data Scientists” emerge
• Online firms create data-
based products and
services
Today
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
ANALYTICS 3.0│COMPETING IN THE DATA
ECONOMY
► Every organization—not just online firms—
can create data and analytics-based products
and services that change the game
► Not just supplying data, but insights and
guides to decision-making
► Use “data exhaust” to help customers use
your products and services more effectively
► Start with data opportunities or start with
business problems? Answer is yes!
► Need “data products” team good at data
science, customer knowledge, new
product/service development
► Opportunities and data come at high speed,
so quants must respond quickly
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
EXPRESS SCRIPTS
 Uses analytics on data from 1.5 billion
prescriptions/yr to drive behavior change
and process improvement
 Developing proactive, customized
messages to educate about more cost
effective methods of filling prescriptions
 Using predictive analytics to identify
patients at risk of skipping doses and
proactively intervene
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
INTERMOUNTAIN HEALTHCARE
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
 From Brent James’ “science experiments”
to standard treatment protocols for many
diseases and conditions
 Cost of treatment can be monitored by
clinicians along with other variables
 Center for Informatics Research offers
software and services (with Deloitte) on
health outcomes analysis based on 90
million EHR records
UNITED HEALTHCARE
 Using social network analysis to identify
potential fraud
 Analyzing speech-to-text data from call
centers to understand likely attrition
candidates
 Predicting likelihood of success in disease
management candidates
 “Health in numbers” marketing
 Optum Insights—major revenue source
from data and analytics
Copyright© 2013 IIA All Rights Reserved
PARTNERS HEALTHCARE SYSTEM
 Early adopters of EHR, CPOE,
knowledge management
 Beginning to connect financial,
operational, and clinical analytics
 Developed and spun out QPID for
extracting intelligence from EHRs
 Putting in organization-wide EHR
transaction foundation now—how to
preserve emphasis on analytics?
Copyright© 2013 IIA All Rights Reserved
CIGNA
 Broad use of “smart innovation” testing
approaches to understand cause-and-
effect from interventions, e.g. disease
management calls
 Beginning to analyze MyCigna.com web
data and call center speech-to-text
Copyright© 2013 IIA All Rights Reserved
PRESCRIPTION FOR A 3.0 WORLD
 Start with an existing capability for data
management and analytics
 Add some unstructured, large-volume data and
product/service innovation
 Take Hadoop and NoSQL as needed
 Embed this result into the organization’s
processes and systems
 Promote the doctor or pharmacist to Chief
Analytics Officer
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
RECOMMENDATIONS
Copyright© 2013 IIA All Rights Reserved
► Use five factors (DELTA), five levels (1-5) to
establish and measure analytical maturity
► Become a student of the analytics
environment
► Educate your leaders on potential of analytics
based on what you’re seeing
► Use IIA as your barometer!
DELTA POWERED ANALYTIC ASSESSMENT TM
DEVELOPED IN PARTNERSHIP WITH HIMSS ANALYTICS
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
Copyright© 2013 IIA All Rights Reserved
LEARN ABOUT THE DELTA-POWERED
ANALYTICS ASSESSMENT TM
Copyright© 2013 IIA All Rights Reserved
http://info.iianalytics.com/healthcarebenchmarking
ANALYTICS 3.0 RESOURCES
http://iianalytics.com/a3/
Research Note & Diagram
Research Brief
Frequently Asked Questions
E-book
Blogs
IIA Members can download “Big Data in Big Companies” from
client website.
Copyright© 2013 IIA All Rights Reserved
JOIN US FOR THE NEXT IIA WEBCAST
August 22 Improving analytic results with decision modeling
James Taylor, IIA Faculty and CEO of Decision
Management Solutions
Register at iianalytics.com
Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
sales@iianalytics.com

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Analytics 3.0: Opportunities for Healthcare

  • 2. ANALYTICS 3.0: OPPORTUNITIES FOR HEALTHCARE July 24, 2013 Jack Phillips CEO & Co-Founder Thomas H. Davenport Research Director & Co-Founder Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 3. Copyright© 2013 IIA All Rights Reserved
  • 4. INTERNAL ANALYTICS PROGRAM (TACTICAL) Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 5. THE ANALYTICAL DELTA Adapted from Analytics at Work, Davenport, Harris and Morison, 2010 Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 6. LEVELS OF ANALYTICAL MATURITY Adapted from Analytics at Work, Davenport, Harris and Morison, 2010 Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 7. EXTERNAL ANALYTICS ENVIRONMENT Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 8. ANALYTICS 1.0│TRADITIONAL ANALYTICS 1.0 Traditional Analytics • Primarily descriptive analytics and reporting • Internally sourced, relatively small, structured data • “Back room” teams of analysts • Internal decision support Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 9. ANALYTICS 1.0│ETHOS ► Stay in the back room—as far away from decision-makers as possible—and don’t cause trouble ► Take your time—nobody’s that interested in your results anyway ► Talk about “BI for the masses,” but make it all too difficult for anyone but experts to use ► Look backwards—that’s where the threats to your business are ► If possible, spend much more time getting data ready for analysis than actually analyzing it ► Keep inside the sheltering confines of the IT organization Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 10. ANALYTICS 2.0│THE BIG DATA ERA 1.0 Traditional Analytics Big Data2.0 • Primarily descriptive analytics and reporting • Internally sourced, relatively small, structured data • “Back room” teams of analysts • Internal decision support • Complex, large, unstructured data sources • New analytical and computational capabilities • “Data Scientists” emerge • Online firms create data- based products and services Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 11. ANALYTICS 2.0│ETHOS ► Be “on the bridge” if not in charge of it ► “Agile is too slow” ► “Being a consultant is the dead zone” ► Develop products, not Power Points or reports ► Information (and hardware and software) wants to be free ► All problems can be solved in a hackathon ► Share your big data tools with the community ► “Nobody’s ever done this before!” Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 12. ANALYTICS 3.0│FAST BUSINESS IMPACT FOR THE DATA ECONOMY 1.0 Traditional Analytics Fast Business Impact for the Data Economy Big Data2.0 3.0 • Primarily descriptive analytics and reporting • Internally sourced, relatively small, structured data • “Back room” teams of analysts • Internal decision support • Complex, large, unstructured data sources • New analytical and computational capabilities • “Data Scientists” emerge • Online firms create data- based products and services • A seamless blend of traditional analytics and big data • Analytics integral to running the business; strategic asset • Rapid and agile insight delivery • Analytical tools available at point of decision • Cultural evolution embeds analytics into decision and operational processes Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 13. ANALYTICS 3.0│FAST BUSINESS IMPACT FOR THE DATA ECONOMY 1.0 Traditional Analytics Fast Business Impact for the Data Economy Big Data2.0 3.0 • Primarily descriptive analytics and reporting • Internally sourced, relatively small, structured data • “Back room” teams of analysts • Internal decision support • A seamless blend of traditional analytics and big data • Analytics integral to running the business; strategic asset • Rapid an agile insight delivery • Analytical tools available at point of decision • Cultural evolution embeds analytics into decision and operational processes • Complex, large, unstructured data sources • New analytical and computational capabilities • “Data Scientists” emerge • Online firms create data- based products and services Today Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 14. ANALYTICS 3.0│COMPETING IN THE DATA ECONOMY ► Every organization—not just online firms— can create data and analytics-based products and services that change the game ► Not just supplying data, but insights and guides to decision-making ► Use “data exhaust” to help customers use your products and services more effectively ► Start with data opportunities or start with business problems? Answer is yes! ► Need “data products” team good at data science, customer knowledge, new product/service development ► Opportunities and data come at high speed, so quants must respond quickly Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 15. EXPRESS SCRIPTS  Uses analytics on data from 1.5 billion prescriptions/yr to drive behavior change and process improvement  Developing proactive, customized messages to educate about more cost effective methods of filling prescriptions  Using predictive analytics to identify patients at risk of skipping doses and proactively intervene Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 16. INTERMOUNTAIN HEALTHCARE Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com  From Brent James’ “science experiments” to standard treatment protocols for many diseases and conditions  Cost of treatment can be monitored by clinicians along with other variables  Center for Informatics Research offers software and services (with Deloitte) on health outcomes analysis based on 90 million EHR records
  • 17. UNITED HEALTHCARE  Using social network analysis to identify potential fraud  Analyzing speech-to-text data from call centers to understand likely attrition candidates  Predicting likelihood of success in disease management candidates  “Health in numbers” marketing  Optum Insights—major revenue source from data and analytics Copyright© 2013 IIA All Rights Reserved
  • 18. PARTNERS HEALTHCARE SYSTEM  Early adopters of EHR, CPOE, knowledge management  Beginning to connect financial, operational, and clinical analytics  Developed and spun out QPID for extracting intelligence from EHRs  Putting in organization-wide EHR transaction foundation now—how to preserve emphasis on analytics? Copyright© 2013 IIA All Rights Reserved
  • 19. CIGNA  Broad use of “smart innovation” testing approaches to understand cause-and- effect from interventions, e.g. disease management calls  Beginning to analyze MyCigna.com web data and call center speech-to-text Copyright© 2013 IIA All Rights Reserved
  • 20. PRESCRIPTION FOR A 3.0 WORLD  Start with an existing capability for data management and analytics  Add some unstructured, large-volume data and product/service innovation  Take Hadoop and NoSQL as needed  Embed this result into the organization’s processes and systems  Promote the doctor or pharmacist to Chief Analytics Officer Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 21. RECOMMENDATIONS Copyright© 2013 IIA All Rights Reserved ► Use five factors (DELTA), five levels (1-5) to establish and measure analytical maturity ► Become a student of the analytics environment ► Educate your leaders on potential of analytics based on what you’re seeing ► Use IIA as your barometer!
  • 22. DELTA POWERED ANALYTIC ASSESSMENT TM DEVELOPED IN PARTNERSHIP WITH HIMSS ANALYTICS Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com
  • 23. Copyright© 2013 IIA All Rights Reserved
  • 24. LEARN ABOUT THE DELTA-POWERED ANALYTICS ASSESSMENT TM Copyright© 2013 IIA All Rights Reserved http://info.iianalytics.com/healthcarebenchmarking
  • 25. ANALYTICS 3.0 RESOURCES http://iianalytics.com/a3/ Research Note & Diagram Research Brief Frequently Asked Questions E-book Blogs IIA Members can download “Big Data in Big Companies” from client website. Copyright© 2013 IIA All Rights Reserved
  • 26. JOIN US FOR THE NEXT IIA WEBCAST August 22 Improving analytic results with decision modeling James Taylor, IIA Faculty and CEO of Decision Management Solutions Register at iianalytics.com Copyright© 2013 IIA All Rights ReservedInquiries about IIA services should be directed to sales@iianalytics.com

Editor's Notes

  1. Sarah
  2. Jack – 18 named to Honor Roll overall, 3 IIA clients in the top 10.We know in our guts that the investment in analytics
  3. Jack
  4. Jack
  5. Jack
  6. Jack – transition to Tom
  7. Tom
  8. Tom
  9. Tom
  10. Tom – main point – we agree that Big Data is still the topic of the day. But, we’re pointing to a future state that we think will become the norm.
  11. Express Scripts, Inc., one of the largest pharmacy benefit management companies in North America, See article for more detailsPharmacy benefit management firm Express Scripts is rolling out a software service to identify patients at high risk for not following their medication regime.The firm calls the service ScreenRx and has tested it in a large-scale pilot program with 600,000 members. The pilot is scaling down and Express Scripts during the summer expects to start making the service available, initially focusing on members with high blood pressure, high cholesterol, diabetes, asthma and osteoporosis.The pilot testing found that 69 percent of non-adherence cases are caused by forgetfulness and procrastination, 16 percent because of the cost of medication and 15 percent because of clinical questions or concerns a patient has about the medication or disease.Express Scripts uses more than 400 known factors about patients, their physician, the disease and prescribed therapy, and contends ScreenRx is 98 percent accurate in predicting non-adherence one year in advance. Patients identified as being at-risk because of forgetfulness or procrastination may receive daily alerts to take the medication, 90-day prescriptions or auto-renewals.Eliminating non-adherence would save an estimated $317.4 billion annually, enough to cover insurance costs for 44.8 million Americans, according to the firm. 
  12. Big Data at United HealthcareUnited Healthcare, like many large organizations pursuing big data, has been focused on structured data analysis for many years, and even advertises its analytical capabilities to consumers (“Health in Numbers”). Now, however, it is focusing its analytical attention on unstructured data—in particular, the data on customer attitudes that is sitting in recorded voice files from customer calls to call centers. The level of customer satisfaction is increasingly important to health insurers, because consumers increasingly have choice about what health plans they belong to. Service levels are also being monitored by state and federal government groups, and published by organizations such as Consumer Reports.  In the past, that valuable data from calls couldn’t be analyzed. Now, however, United is turning the voice data into text, and then analyzing it with “natural language processing” software. The analysis process can identify—though it’s not easy, given the vagaries of the English language—customers who use terms suggesting strong dissatisfaction. A United representative can then make some sort of intervention—perhaps a call exploring the nature of the problem. The decision being made is the same as in the past—how to identify a dissatisfied customer—but the tools are different. To analyze the text data, United Healthcare uses a variety of tools. The data initially goes into a “data lake” using Hadoop and NoSQL storage, so the data doesn’t have to be normalized. The natural language processing—primarily a “singular value decomposition”, or modified word count—takes place on a database appliance. A variety of other technologies are being surveyed and tested to assess their fit within the “future state architecture. United also makes use of interfaces between its statistical analysis tools and Hadoop. The work to put the customer satisfaction data, along with many other sources of customer data, into a customer data warehouse and analyze it is being led by Mark Pitts, who is based in the Finance organization. However, several other functions and units of United, including its Optum business specializing in selling data and related services to healthcare organizations, are participating. Pitt’s team includes both conventional quantitative analysts and data scientists with strong IT and data management skills.