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© 2015 Health Catalyst
www.healthcatalyst.com
April 2015
Dale Sanders
Microsoft: A Waking Giant In
Healthcare Analytics and Big Data
Creative Commons Copyright – Attribution Required
“In today’s world, business
moves at the speed of
software.” -- Dale Sanders
Great people and great facilities are not enough
anymore.
Software is the enabling or disabling factor to
success in today’s business world.
2
Why should C-levels care about
topics like this one?
For Example
Think about the impact that good and bad software is having on the
speed of these critical business transformations in healthcare, alone
• Healthcare.gov
• Population Health Management
• Accountable Care & Value Based Reimbursement
• EHR interoperability
• Detailed cost accounting
• Patient engagement
• Analytics at the point of care that can help raise
quality of care, lower cost of care, and speed
translational research
3
On a scale of 1-5, what is your overall perception of
Microsoft as a company– its people, products, and
culture?
1. Very negative
2. Negative
3. Neutral
4. Positive
5. Very positive
4
Poll Question
Agenda
• My up and down experiences with Microsoft
• Microsoft’s cultural and technological transformation
• Microsoft’s analytics options
• SQLServer, PDW, APS
• Microsoft Azure
• PowerX product line
• Data visualization and manipulation tools
5
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
My Life On Microsoft 
6
A few times, I wanted to poke my eye out 
7
Thank you for the cartoon, Darren Merinuk
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
Analytic Roadmaps for
Healthcare
9
*-- Sanders D, Protti, D, Electronic Healthcare, 11(2) 2012: e5-e6
Poll Question
At what Level does your organization consistently
and broadly operate in the Analytics Adoption Model?
10
“Closed Loop Analytics”
“Presenting data in the workflow of decision making,
such that the data optimizes the outcome of the
decision.” (Sanders, HIMSS 2015 )
Physicians are 15x more likely to modify their
decisions about patient orders and protocols if
presented with data at the point of care, as opposed
to presenting data in “offline” clinical quality
improvement meetings. (Komomoto, BMJ, 2007)
11
Embedded best practices,
decision support & care
team coordination that
support the Triple Aim
EHR embedded popula-
tion analytics tailored for
personalized medicine at
the point of care
EHR
Clinical Decision Support
EDW
Clinical Quality Analytics
Define clinical best practices
& requirements for embed-
ded decision support &
care team coordination
Use aggregate views of
clinical data for case mix
& protocol optimization
Derive population-based
health system models for
predicting demand
5
8
11
6
9
12
i ii
Executive & Clinical
Leadership
Create a cultural
expectation for evidence
based medicine and use of
clinical pathways &
standard protocols
10
Enterprise Clinical
Teams
Act on process & outcome
data using protocol-based
practice standards
Identify new cohorts &
gauge practice variations
Clinical, EHR &
Analytical Teams
Generate comparative &
outcomes data, implement
order sets, protocols and
decision support rules.
Develop & validate
clinical models 4
7
Start
Here
‘Closing the Loops’ on Clinical Outcomes to Optimize Quality
Using an Electronic Health Record, Enterprise Data Warehouse & Clinical Analytics to Generate Local Evidence
Information Systems
Supporting Data
Decisions & Actions
© 2015 Contributing authors, listed alphabetically: Eggert C, Moselle K, Protti D, Sanders
Align practice informed by analytics
Tailor protocols using better data
ManageServicesOptimizeCapacityDeliverCare
Loop A: Patients
Loop B: Protocols
External Evidence
Literature, Research
Other Data Sources
External, Financial
iv
InternalEvidence
InternalEvidence
EHR: Electronic Health Record
EDW: Enterprise Data Warehouse
MTTI: Mean time to improvement
SOPA: Span of providers affected
COptimize system on quality & cost
Loop C: Populations
InternalEvidence
iii
Confidential Draft
Mar 21, 2015
Previous Box 6: Assess data quality, cohorts
& interventions linked to outcomes
Include socio-economic
determinants of health in
clinical care management
best practices
CLINICAL QUALITY GOVERNANCE
Set improvement priorities 1
“Closed Loop Analytics”
Mean Time To Improvement and Span of Population Affected
Loop C: Populations
● MTTI: Years, decades
● SPA: Millions, several hundred thousand
● Analytic consumers: Board of Directors, executive leadership team,
Strategic plans and policy
Loop B: Protocols
● MTTI: Weeks, months
● SPA: Subsets of patients– hundreds, thousands
● Analytic consumers: Care improvement teams, clinical service lines
Loop A: Patients
● MTTI: Minutes, hours
● SPA: Individual patients
● Analytic consumers: Physicians and patients at the point of care
13
Big vs. Small Data
The ROI of data to Population Health
14
Volume, Ability, Act
The volume of data far outpaces our ability to
analyze and act on data… but we think otherwise
15
Finding optimal data volume
16
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
Microsoft’s Cultural and
Technological Transformation
17
18
The Innovator’s Dilemma
Microsoft has shown the repeated ability to overcome this…
19
Sacrificing the Sacred Cows
20
Microsoft Openness
21
• Over the last three years, the single largest contributor of code to Open Source
• 20% of Azure infrastructure runs on Linux
• .Net is now in the Open Source community
• Tight integration with Hadoop through Hortonworks
• Support for Dockers containers
• Microsoft owns 310 Android patents
• Supports Facebook’s Open Compute data center project
• Third largest contributor to the Linux kernel
Steve Ballmer, 2001: “Linux is a cancer”
Satya Nadella, 2014: “Microsoft loves Linux”
22
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
Microsoft’s Analytics Options
In The New World
23
The Transition Period
• Too early to go all-in on Hadoop & NoSQL
• Too late to go all-in on relational databases
• You have to straddle both and this is where Microsoft’s products and
strategy excel
24
Microsoft’s Analytics Product Lines
Lots of good, familiar patterns and integration across these products
PowerBI
Excel
PowerView
PowerMap
PowerQ&A
PowerQuery
PowerPivot
The Future of Computing:
Azure
Hybrid Architecture:
Analytics Platform
Services (APS)
Old Reliable on Steroids:
Parallel Data Warehouse
(PDW)
Old Reliable: SQLServer
25
Price-Performance Numbers*
• EMC Greenplum
• IBM PureData
• Microsoft PDW
• Oracle Exadata
• Teradata Data Warehouse Appliance
26
* -- Thank you, Value Prism Consulting, Oct 2013
27
28
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
Hybrid Architecture:
Analytics Platform System
(APS)
29
Microsoft APS
(Analytics Platform System)
A brilliant hybrid architecture
30
Polybase Bridges The Skills Gap
31
Thank you John Kreisa, Hortonworks
HDInsight =
Hortonworks in Microsoft APS
32
Thank you, James Serra
Interactive Analytics Delivered To
Any Device
© 2015 Health Catalyst
www.healthcatalyst.comProprietary and Confidential
Azure: The Future of Computing
What is Azure?
One of the key missing concepts in this definition is that Azure is a
hybrid cloud, meaning you can bridge data and applications between
on-premise and the Azure cloud.
As of April 11, 2015, there are 3,019 applications in the Azure
Marketplace. These are overwhelmingly business-level apps, not
consumer apps as we are accustomed to in the Apple and Google app
stores.
36
Azure is Big and Mature
37
Huge Azure Infrastructure
 100+ datacenters
 One of the top 3 networks in the world (coverage, speed, connections)
 2x AWS and 6x Google number of offered regions
Operational Announced
Central
US
Iowa
West US
California
North
Europe
Ireland
East US
Virginia
East US 2
Virginia
US Gov
Virginia
NorthCentral
US
Illinois
US Gov
Iowa
South Central
US
Texas
Brazil
South
Sao Paulo
West Europe
Netherlands
China North
Beijing
China South
Shanghai
Japan
East
Saitama
Japan
West
Osaka
India
West
India
East
East Asia
Hong
Kong
SE Asia
Singapore
Australia
West
Melbourne
Australia
East
Sydney
38
39
40
41
42
43
44
Azure Security, Privacy,
Compliance
45
• ISO 27001/27002 Audit and Certification
• SOC 1/SSAE 16/ISAE 3402 and SOC 2
Attestations
• Cloud Security Alliance (CSA) Cloud Controls Matrix (CCM)
• Federal Risk and Authorization Management Program
(FedRAMP)
• Federal Information Security Management Act (FISMA)
• Federal Bureau of Investigation (FBI) Criminal Justice
Information Services (CJIS)
• Payment Card Industry (PCI) Data Security Standards
(DSS) Level 1
• United Kingdom G-Cloud OFFICIAL Accreditation
• Australian Government Information Security Registered
Assessors Program (IRAP)
• Multi-Tier Cloud Security Standard for Singapore
(MTCS SS 584:2013)
• HIPAA Business Associate Agreement (BAA)
• EU Model Clauses
• Food and Drug Administration 21 CFR Part 11
• Family Educational Rights and Privacy Act (FERPA)
• Federal Information Processing Standard (FIPS)
• Trusted Cloud Service Certification developed by China Cloud
Computing Promotion and Policy Forum (CCCPPF)
• Multi-Level Protection Scheme (MLPS)
The Visualization and Analysis Layer
Part desktop, part cloud, part mobile
46
Natural Language Queries
47
Closing Thoughts
• Business moves at the speed of software
• Older C-levels don’t generally grasp this… I’m old so I can say
that 
• I don’t impress easily when it comes to IT vendors,
especially Microsoft
• History will show that the new Microsoft is one of the
biggest cultural and technological re-toolings of all time
• Their hybrid “data lake” analytics and big data vision and
execution are unmatched
• Azure is the future of computing
• It’s going to completely disrupt organizational IT strategies and
the role of the CIO, in a good way
48

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Microsoft: A Waking Giant in Healthcare Analytics and Big Data

  • 1. © 2015 Health Catalyst www.healthcatalyst.com April 2015 Dale Sanders Microsoft: A Waking Giant In Healthcare Analytics and Big Data Creative Commons Copyright – Attribution Required
  • 2. “In today’s world, business moves at the speed of software.” -- Dale Sanders Great people and great facilities are not enough anymore. Software is the enabling or disabling factor to success in today’s business world. 2 Why should C-levels care about topics like this one?
  • 3. For Example Think about the impact that good and bad software is having on the speed of these critical business transformations in healthcare, alone • Healthcare.gov • Population Health Management • Accountable Care & Value Based Reimbursement • EHR interoperability • Detailed cost accounting • Patient engagement • Analytics at the point of care that can help raise quality of care, lower cost of care, and speed translational research 3
  • 4. On a scale of 1-5, what is your overall perception of Microsoft as a company– its people, products, and culture? 1. Very negative 2. Negative 3. Neutral 4. Positive 5. Very positive 4 Poll Question
  • 5. Agenda • My up and down experiences with Microsoft • Microsoft’s cultural and technological transformation • Microsoft’s analytics options • SQLServer, PDW, APS • Microsoft Azure • PowerX product line • Data visualization and manipulation tools 5
  • 6. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential My Life On Microsoft  6
  • 7. A few times, I wanted to poke my eye out  7 Thank you for the cartoon, Darren Merinuk
  • 8. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential Analytic Roadmaps for Healthcare
  • 9. 9 *-- Sanders D, Protti, D, Electronic Healthcare, 11(2) 2012: e5-e6
  • 10. Poll Question At what Level does your organization consistently and broadly operate in the Analytics Adoption Model? 10
  • 11. “Closed Loop Analytics” “Presenting data in the workflow of decision making, such that the data optimizes the outcome of the decision.” (Sanders, HIMSS 2015 ) Physicians are 15x more likely to modify their decisions about patient orders and protocols if presented with data at the point of care, as opposed to presenting data in “offline” clinical quality improvement meetings. (Komomoto, BMJ, 2007) 11
  • 12. Embedded best practices, decision support & care team coordination that support the Triple Aim EHR embedded popula- tion analytics tailored for personalized medicine at the point of care EHR Clinical Decision Support EDW Clinical Quality Analytics Define clinical best practices & requirements for embed- ded decision support & care team coordination Use aggregate views of clinical data for case mix & protocol optimization Derive population-based health system models for predicting demand 5 8 11 6 9 12 i ii Executive & Clinical Leadership Create a cultural expectation for evidence based medicine and use of clinical pathways & standard protocols 10 Enterprise Clinical Teams Act on process & outcome data using protocol-based practice standards Identify new cohorts & gauge practice variations Clinical, EHR & Analytical Teams Generate comparative & outcomes data, implement order sets, protocols and decision support rules. Develop & validate clinical models 4 7 Start Here ‘Closing the Loops’ on Clinical Outcomes to Optimize Quality Using an Electronic Health Record, Enterprise Data Warehouse & Clinical Analytics to Generate Local Evidence Information Systems Supporting Data Decisions & Actions © 2015 Contributing authors, listed alphabetically: Eggert C, Moselle K, Protti D, Sanders Align practice informed by analytics Tailor protocols using better data ManageServicesOptimizeCapacityDeliverCare Loop A: Patients Loop B: Protocols External Evidence Literature, Research Other Data Sources External, Financial iv InternalEvidence InternalEvidence EHR: Electronic Health Record EDW: Enterprise Data Warehouse MTTI: Mean time to improvement SOPA: Span of providers affected COptimize system on quality & cost Loop C: Populations InternalEvidence iii Confidential Draft Mar 21, 2015 Previous Box 6: Assess data quality, cohorts & interventions linked to outcomes Include socio-economic determinants of health in clinical care management best practices CLINICAL QUALITY GOVERNANCE Set improvement priorities 1
  • 13. “Closed Loop Analytics” Mean Time To Improvement and Span of Population Affected Loop C: Populations ● MTTI: Years, decades ● SPA: Millions, several hundred thousand ● Analytic consumers: Board of Directors, executive leadership team, Strategic plans and policy Loop B: Protocols ● MTTI: Weeks, months ● SPA: Subsets of patients– hundreds, thousands ● Analytic consumers: Care improvement teams, clinical service lines Loop A: Patients ● MTTI: Minutes, hours ● SPA: Individual patients ● Analytic consumers: Physicians and patients at the point of care 13
  • 14. Big vs. Small Data The ROI of data to Population Health 14
  • 15. Volume, Ability, Act The volume of data far outpaces our ability to analyze and act on data… but we think otherwise 15
  • 16. Finding optimal data volume 16
  • 17. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential Microsoft’s Cultural and Technological Transformation 17
  • 18. 18
  • 19. The Innovator’s Dilemma Microsoft has shown the repeated ability to overcome this… 19
  • 21. Microsoft Openness 21 • Over the last three years, the single largest contributor of code to Open Source • 20% of Azure infrastructure runs on Linux • .Net is now in the Open Source community • Tight integration with Hadoop through Hortonworks • Support for Dockers containers • Microsoft owns 310 Android patents • Supports Facebook’s Open Compute data center project • Third largest contributor to the Linux kernel Steve Ballmer, 2001: “Linux is a cancer” Satya Nadella, 2014: “Microsoft loves Linux”
  • 22. 22
  • 23. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential Microsoft’s Analytics Options In The New World 23
  • 24. The Transition Period • Too early to go all-in on Hadoop & NoSQL • Too late to go all-in on relational databases • You have to straddle both and this is where Microsoft’s products and strategy excel 24
  • 25. Microsoft’s Analytics Product Lines Lots of good, familiar patterns and integration across these products PowerBI Excel PowerView PowerMap PowerQ&A PowerQuery PowerPivot The Future of Computing: Azure Hybrid Architecture: Analytics Platform Services (APS) Old Reliable on Steroids: Parallel Data Warehouse (PDW) Old Reliable: SQLServer 25
  • 26. Price-Performance Numbers* • EMC Greenplum • IBM PureData • Microsoft PDW • Oracle Exadata • Teradata Data Warehouse Appliance 26 * -- Thank you, Value Prism Consulting, Oct 2013
  • 27. 27
  • 28. 28
  • 29. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential Hybrid Architecture: Analytics Platform System (APS) 29
  • 30. Microsoft APS (Analytics Platform System) A brilliant hybrid architecture 30
  • 31. Polybase Bridges The Skills Gap 31 Thank you John Kreisa, Hortonworks
  • 32. HDInsight = Hortonworks in Microsoft APS 32 Thank you, James Serra
  • 34. © 2015 Health Catalyst www.healthcatalyst.comProprietary and Confidential Azure: The Future of Computing
  • 35. What is Azure? One of the key missing concepts in this definition is that Azure is a hybrid cloud, meaning you can bridge data and applications between on-premise and the Azure cloud. As of April 11, 2015, there are 3,019 applications in the Azure Marketplace. These are overwhelmingly business-level apps, not consumer apps as we are accustomed to in the Apple and Google app stores.
  • 36. 36
  • 37. Azure is Big and Mature 37
  • 38. Huge Azure Infrastructure  100+ datacenters  One of the top 3 networks in the world (coverage, speed, connections)  2x AWS and 6x Google number of offered regions Operational Announced Central US Iowa West US California North Europe Ireland East US Virginia East US 2 Virginia US Gov Virginia NorthCentral US Illinois US Gov Iowa South Central US Texas Brazil South Sao Paulo West Europe Netherlands China North Beijing China South Shanghai Japan East Saitama Japan West Osaka India West India East East Asia Hong Kong SE Asia Singapore Australia West Melbourne Australia East Sydney 38
  • 39. 39
  • 40. 40
  • 41. 41
  • 42. 42
  • 43. 43
  • 44. 44
  • 45. Azure Security, Privacy, Compliance 45 • ISO 27001/27002 Audit and Certification • SOC 1/SSAE 16/ISAE 3402 and SOC 2 Attestations • Cloud Security Alliance (CSA) Cloud Controls Matrix (CCM) • Federal Risk and Authorization Management Program (FedRAMP) • Federal Information Security Management Act (FISMA) • Federal Bureau of Investigation (FBI) Criminal Justice Information Services (CJIS) • Payment Card Industry (PCI) Data Security Standards (DSS) Level 1 • United Kingdom G-Cloud OFFICIAL Accreditation • Australian Government Information Security Registered Assessors Program (IRAP) • Multi-Tier Cloud Security Standard for Singapore (MTCS SS 584:2013) • HIPAA Business Associate Agreement (BAA) • EU Model Clauses • Food and Drug Administration 21 CFR Part 11 • Family Educational Rights and Privacy Act (FERPA) • Federal Information Processing Standard (FIPS) • Trusted Cloud Service Certification developed by China Cloud Computing Promotion and Policy Forum (CCCPPF) • Multi-Level Protection Scheme (MLPS)
  • 46. The Visualization and Analysis Layer Part desktop, part cloud, part mobile 46
  • 48. Closing Thoughts • Business moves at the speed of software • Older C-levels don’t generally grasp this… I’m old so I can say that  • I don’t impress easily when it comes to IT vendors, especially Microsoft • History will show that the new Microsoft is one of the biggest cultural and technological re-toolings of all time • Their hybrid “data lake” analytics and big data vision and execution are unmatched • Azure is the future of computing • It’s going to completely disrupt organizational IT strategies and the role of the CIO, in a good way 48

Notas del editor

  1. LOOP C: Plan on the basis of quality Drive quality based on data Move this to paper: Evidence that clinicians trust
  2. Stay connected from any device We are working on the next wave of mobile apps for Power BI. These apps will allow users to access their Power BI dashboards through immersive mobile apps for iPad, iPhone, Windows, and Android devices – releasing throughout H1 CY2015. On Dec 18th the iPad app will be the first available and found in the Apple store, with the other apps following in the coming months. These apps will also allow users to receive alerts to important changes in their data as well as to share and collaborate with colleagues so that they can take immediate action, from any device.
  3. Over the last few years we’ve truly delivered a huge infrastructure to enable us to grow our services at scale around the globe. Whether it’s our flagship facilities in Quincy, Washington or Boydton, Virginia, or some of the newly announced facilities in Shanghai, Australia and Brazil, it really is key for us to make smart investments around the world to deliver services in a resilient and reliable fashion.   A lot of people ask, what goes into site selection at Microsoft and how do we decide where to place our datacenter investments? There are over thirty-five factors in our site selection criteria. But really, the top elements are around proximity to customers and energy and fiber infrastructure, insuring that we have the capacity and the growth platforms to be able to grow our services.   Another key element is about skilled workforce. We need to insure that we have the right people to run and operate our datacenters on a day to day basis.