SlideShare a Scribd company logo
1 of 12
Dynamic Talks
Bumped HQ
12/4/2019
Peter Graven, PhD
Challenges for AI in Healthcare
Background
 Lead Data Scientist at OHSU
 Assistant Professor (Affiliate) at OHSU-PSU
School of Public Health
 PhD in Health Economics from U of MN
 Previous Experience
 Academic research (health policy, methodology,
program evaluation)
 Economic consulting Market research
 Any views expressed are not (necessarily)
the views of OHSU
2
Why is AI in Healthcare Different?
 Artificial intelligence is changing world in many
sectors
 Predictive typing, internet searching
 Speech recognition
 Visual perception
 Marketing
 Marketing examples
 Product recommendations
 Image recognition (for searches)
 Sentiment analysis (social media)
 Demand based pricing
 Identify customers that might leave
 Chatbots
3
AI in Healthcare Current Status
 Robotic surgery (simple routine steps)
 Image analysis (x-rays, retina scans)
 Genetic analysis (review large amount of data)
 Pathology (analyze biopsy, not approved)
 Clinical-decision (sepsis, deterioration, risk of
ED/hospital admit, no-show visits,
 Virtual nursing (collect basic info for visit)
 Administration (billing and claims)
 Mental health (use mobile phone for monitoring
depression)
Source: Strickland, E. “How IBM Watson Overpromised and
Underdelivered on AI Health Care”, IEEE Spectrum, Apr 2, 2019.
Peter Graven, PhD 4
Basic Challenges in Healthcare
 Decisions need to be right at very high level of
accuracy
 Risk of lawsuits (though none currently known)
 Clinicians are ultimately responsible for
decisions
 Not outsourced to algorithms
 Clinician understanding of algorithms are
mostly in infancy (in terms broad-based
adoption)
 Input factors must be transparent
 Otherwise, predictive risk cannot be acted upon
5
A Story about Predictive Modeling
Peter Graven, PhD 6
Let’s predict
risk!
Let’s predict
risk of high
costs!
Let’s predict
risk of hospital
admissions!
Let’s predict
who needs
Care
Management
Let’s predict
who will
respond to
Care
Management
How do we
predict who
will respond to
Care
Management?
BASIC SCIENCE
Implications for AI in Healthcare
 Flip the script!
 It’s not about the cool modeling
 It’s about finding interventions that work
 Old fashioned approach of trials and experiments and
science
 Then create models to match interventions to
people
 Tailor the model to the intervention
 “There’s a model for that!
Peter Graven, PhD 7
Focus on the Decision-making
Peter Graven, PhD 8
(AI)
Artificial Intelligence
(IA)
Intelligent Applications
Black box
Unclear interventions
Minimizes need for humans
Transparent input factors
Oriented around decisions
Tailored to existing workflows
Advanced approaches
 If specific interventions exist, build models to feed them
patients. Otherwise,
 Follow workflows and assess places for models to be
inserted
 The workflow is the intervention. Use the model to make it
better
 Embedded improvement process with model simply as new
technology
 Focus on making the decision faster, easier, or more
certain
 Give the user the right information so they feel confident
 Will improve clinician satisfaction
 Organic distribution
 let users get used to the information before workflow is
cemented
Peter Graven, PhD 9
More Implications
 As models are deployed within delivery
system, the upkeep and maintenance issues
grow
 Cost of a good model embedded is not
trivial.
 Model itself is just one line of code but easy to
underestimate cost of
 organizing data to estimate model,
 Making model appear in proper location
 Training individuals in what it means
Peter Graven, PhD 10
Some realities
 Electronic Medical Record (EMR) systems are
not easy to integrate with
 FHIR and other interoperability tools may help but
will not likely provide the seamless experience
 Very little incentive for EMR companies to really
make integration smooth
 Cloud based options are growing for more
complex (real-time) modeling without being an
on premise solution
 Many lawsuits about improper sharing of data
 Difficult to arrange data for algorithms
 1000’s of tables that are linked but not designed for
analytic purposes
Peter Graven, PhD 11
Discussion
 Peter Graven, PhD
graven@ohsu.edu
Peter Graven, PhD 12

More Related Content

What's hot

AI in Health Care: How to Implement Medical Imaging using Machine Learning?
AI in Health Care: How to Implement Medical Imaging using Machine Learning?AI in Health Care: How to Implement Medical Imaging using Machine Learning?
AI in Health Care: How to Implement Medical Imaging using Machine Learning?
Skyl.ai
 
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search EnginesA Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
Mei Chen, PhD
 

What's hot (20)

AI in healthcare - Use Cases
AI in healthcare - Use Cases AI in healthcare - Use Cases
AI in healthcare - Use Cases
 
Ai in healthcare (3)
Ai in healthcare (3)Ai in healthcare (3)
Ai in healthcare (3)
 
Artificial Intelligence in Medical Imaging
Artificial Intelligence in Medical ImagingArtificial Intelligence in Medical Imaging
Artificial Intelligence in Medical Imaging
 
AI in Health Care: How to Implement Medical Imaging using Machine Learning?
AI in Health Care: How to Implement Medical Imaging using Machine Learning?AI in Health Care: How to Implement Medical Imaging using Machine Learning?
AI in Health Care: How to Implement Medical Imaging using Machine Learning?
 
Ai applied in healthcare
Ai applied in healthcareAi applied in healthcare
Ai applied in healthcare
 
Artificial intelligence-in-radiology
Artificial intelligence-in-radiologyArtificial intelligence-in-radiology
Artificial intelligence-in-radiology
 
Validating AI for Healthcare
Validating AI for HealthcareValidating AI for Healthcare
Validating AI for Healthcare
 
Artificial intelligence and its applications in healthcare and pharmacy
Artificial intelligence and its applications in healthcare and pharmacyArtificial intelligence and its applications in healthcare and pharmacy
Artificial intelligence and its applications in healthcare and pharmacy
 
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search EnginesA Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
A Cognitive-Based Semantic Approach to Deep Content Analysis in Search Engines
 
An Introduction to Artificial Intelligence for the Everyday Radiologist
An Introduction to Artificial Intelligence for the Everyday RadiologistAn Introduction to Artificial Intelligence for the Everyday Radiologist
An Introduction to Artificial Intelligence for the Everyday Radiologist
 
Artificial intelligence(chirag mittal)
Artificial intelligence(chirag mittal)Artificial intelligence(chirag mittal)
Artificial intelligence(chirag mittal)
 
A.I. in Radiology: Hype or Hope?
A.I. in Radiology: Hype or Hope?A.I. in Radiology: Hype or Hope?
A.I. in Radiology: Hype or Hope?
 
The rise of AI in medical imaging
The rise of AI in medical imagingThe rise of AI in medical imaging
The rise of AI in medical imaging
 
Role of artificial intellegence (a.i) in radiology department nitish virmani
Role of artificial intellegence (a.i) in radiology department nitish virmaniRole of artificial intellegence (a.i) in radiology department nitish virmani
Role of artificial intellegence (a.i) in radiology department nitish virmani
 
Machine learning in health data analytics and pharmacovigilance
Machine learning in health data analytics and pharmacovigilanceMachine learning in health data analytics and pharmacovigilance
Machine learning in health data analytics and pharmacovigilance
 
Artificial intelligence in radiology
Artificial intelligence in radiologyArtificial intelligence in radiology
Artificial intelligence in radiology
 
AI in Healthcare
AI in HealthcareAI in Healthcare
AI in Healthcare
 
Artificial intelligence in healthcare
Artificial intelligence in healthcareArtificial intelligence in healthcare
Artificial intelligence in healthcare
 
Artificial Intelligence and Diagnostics
Artificial Intelligence and DiagnosticsArtificial Intelligence and Diagnostics
Artificial Intelligence and Diagnostics
 
Artificial intelligence in Health Care
Artificial intelligence in Health CareArtificial intelligence in Health Care
Artificial intelligence in Health Care
 

Similar to "Challenges for AI in Healthcare" - Peter Graven Ph.D

Theory of Human Caring on APN Role Student PresentationWeb Page
 Theory of Human Caring on APN Role Student PresentationWeb Page Theory of Human Caring on APN Role Student PresentationWeb Page
Theory of Human Caring on APN Role Student PresentationWeb Page
MikeEly930
 
Paper id 36201506
Paper id 36201506Paper id 36201506
Paper id 36201506
IJRAT
 

Similar to "Challenges for AI in Healthcare" - Peter Graven Ph.D (20)

Algorithmic Bias: Challenges and Opportunities for AI in Healthcare
Algorithmic Bias:  Challenges and Opportunities for AI in HealthcareAlgorithmic Bias:  Challenges and Opportunities for AI in Healthcare
Algorithmic Bias: Challenges and Opportunities for AI in Healthcare
 
Artificial intelligence in healthcare quality and its impact by Dr.Mahboob al...
Artificial intelligence in healthcare quality and its impact by Dr.Mahboob al...Artificial intelligence in healthcare quality and its impact by Dr.Mahboob al...
Artificial intelligence in healthcare quality and its impact by Dr.Mahboob al...
 
Case Study: Advanced analytics in healthcare using unstructured data
Case Study: Advanced analytics in healthcare using unstructured dataCase Study: Advanced analytics in healthcare using unstructured data
Case Study: Advanced analytics in healthcare using unstructured data
 
Theory of Human Caring on APN Role Student PresentationWeb Page
 Theory of Human Caring on APN Role Student PresentationWeb Page Theory of Human Caring on APN Role Student PresentationWeb Page
Theory of Human Caring on APN Role Student PresentationWeb Page
 
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
The Randomized Controlled Trial: The Gold Standard of Clinical Science and a ...
 
Trends and issues of artificial intelligence in medical application tutors i...
Trends and issues of artificial intelligence in medical application  tutors i...Trends and issues of artificial intelligence in medical application  tutors i...
Trends and issues of artificial intelligence in medical application tutors i...
 
Precision medicine and AI: problems ahead
Precision medicine and AI: problems aheadPrecision medicine and AI: problems ahead
Precision medicine and AI: problems ahead
 
Digital Health 101 for Hospital Executives (October 4, 2021)
Digital Health 101 for Hospital Executives (October 4, 2021)Digital Health 101 for Hospital Executives (October 4, 2021)
Digital Health 101 for Hospital Executives (October 4, 2021)
 
New IBM IBV Study - Cognitive in Pharmacovigilence
New IBM IBV Study - Cognitive in PharmacovigilenceNew IBM IBV Study - Cognitive in Pharmacovigilence
New IBM IBV Study - Cognitive in Pharmacovigilence
 
Rise of the Machines
Rise of the Machines  Rise of the Machines
Rise of the Machines
 
Challenges in deep learning methods for medical imaging - Pubrica
Challenges in deep learning methods for medical imaging - PubricaChallenges in deep learning methods for medical imaging - Pubrica
Challenges in deep learning methods for medical imaging - Pubrica
 
Leveraging Technology at the Point of Care
Leveraging Technology at the Point of CareLeveraging Technology at the Point of Care
Leveraging Technology at the Point of Care
 
AI/ML in Clinical Development
AI/ML in Clinical DevelopmentAI/ML in Clinical Development
AI/ML in Clinical Development
 
The Challenge of Evaluating Electronic Decision Support in the Community
The Challenge of Evaluating Electronic Decision Support in the CommunityThe Challenge of Evaluating Electronic Decision Support in the Community
The Challenge of Evaluating Electronic Decision Support in the Community
 
Digital Health Transformation for Health Executives (January 18, 2022)
Digital Health Transformation for Health Executives (January 18, 2022)Digital Health Transformation for Health Executives (January 18, 2022)
Digital Health Transformation for Health Executives (January 18, 2022)
 
Is Pervasive Healthcare Old Wine on a New Bottle?
Is Pervasive Healthcare Old Wine on a New Bottle?Is Pervasive Healthcare Old Wine on a New Bottle?
Is Pervasive Healthcare Old Wine on a New Bottle?
 
Health Informatics- Module 5-Chapter 2.pptx
Health Informatics- Module 5-Chapter 2.pptxHealth Informatics- Module 5-Chapter 2.pptx
Health Informatics- Module 5-Chapter 2.pptx
 
AI Pharma Summit Keynote Boston 7-26-17
AI Pharma Summit Keynote Boston 7-26-17AI Pharma Summit Keynote Boston 7-26-17
AI Pharma Summit Keynote Boston 7-26-17
 
Paper id 36201506
Paper id 36201506Paper id 36201506
Paper id 36201506
 
Digital Health Transformation (March 16, 2019)
Digital Health Transformation (March 16, 2019)Digital Health Transformation (March 16, 2019)
Digital Health Transformation (March 16, 2019)
 

More from Grid Dynamics

Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
Grid Dynamics
 

More from Grid Dynamics (20)

Are you keeping up with your customer
Are you keeping up with your customer Are you keeping up with your customer
Are you keeping up with your customer
 
"Implementing data quality automation with open source stack" - Max Martynov,...
"Implementing data quality automation with open source stack" - Max Martynov,..."Implementing data quality automation with open source stack" - Max Martynov,...
"Implementing data quality automation with open source stack" - Max Martynov,...
 
"How to build cool & useful voice commerce applications (such as devices like...
"How to build cool & useful voice commerce applications (such as devices like..."How to build cool & useful voice commerce applications (such as devices like...
"How to build cool & useful voice commerce applications (such as devices like...
 
Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
Dynamic Talks: "Applications of Big Data, Machine Learning and Artificial Int...
 
Dynamic Talks: "Digital Transformation in Banking & Financial Services… a per...
Dynamic Talks: "Digital Transformation in Banking & Financial Services… a per...Dynamic Talks: "Digital Transformation in Banking & Financial Services… a per...
Dynamic Talks: "Digital Transformation in Banking & Financial Services… a per...
 
Dynamic Talks: "Data Strategy as a Conduit for Data Maturity and Monetization...
Dynamic Talks: "Data Strategy as a Conduit for Data Maturity and Monetization...Dynamic Talks: "Data Strategy as a Conduit for Data Maturity and Monetization...
Dynamic Talks: "Data Strategy as a Conduit for Data Maturity and Monetization...
 
Dynamics Talks: "Writing Spark Pipelines with Less Boilerplate Code" - Egor P...
Dynamics Talks: "Writing Spark Pipelines with Less Boilerplate Code" - Egor P...Dynamics Talks: "Writing Spark Pipelines with Less Boilerplate Code" - Egor P...
Dynamics Talks: "Writing Spark Pipelines with Less Boilerplate Code" - Egor P...
 
"Trends in Building Advanced Analytics Platform for Large Enterprises" - Atul...
"Trends in Building Advanced Analytics Platform for Large Enterprises" - Atul..."Trends in Building Advanced Analytics Platform for Large Enterprises" - Atul...
"Trends in Building Advanced Analytics Platform for Large Enterprises" - Atul...
 
The New Era of Public Safety Records Management: Dynamic talks Chicago 9/24/2019
The New Era of Public Safety Records Management: Dynamic talks Chicago 9/24/2019The New Era of Public Safety Records Management: Dynamic talks Chicago 9/24/2019
The New Era of Public Safety Records Management: Dynamic talks Chicago 9/24/2019
 
Dynamic Talks: "Implementing data quality automation with open source stack" ...
Dynamic Talks: "Implementing data quality automation with open source stack" ...Dynamic Talks: "Implementing data quality automation with open source stack" ...
Dynamic Talks: "Implementing data quality automation with open source stack" ...
 
"Implementing AI for New Business Models and Efficiencies" - Parag Shrivastav...
"Implementing AI for New Business Models and Efficiencies" - Parag Shrivastav..."Implementing AI for New Business Models and Efficiencies" - Parag Shrivastav...
"Implementing AI for New Business Models and Efficiencies" - Parag Shrivastav...
 
Reducing No-shows and Late Cancelations in Healthcare Enterprise" - Shervin M...
Reducing No-shows and Late Cancelations in Healthcare Enterprise" - Shervin M...Reducing No-shows and Late Cancelations in Healthcare Enterprise" - Shervin M...
Reducing No-shows and Late Cancelations in Healthcare Enterprise" - Shervin M...
 
Customer intelligence: a Machine Learning Approach: Dynamic talks Atlanta 8/2...
Customer intelligence: a Machine Learning Approach: Dynamic talks Atlanta 8/2...Customer intelligence: a Machine Learning Approach: Dynamic talks Atlanta 8/2...
Customer intelligence: a Machine Learning Approach: Dynamic talks Atlanta 8/2...
 
"ML Services - How do you begin and when do you start scaling?" - Madhura Dud...
"ML Services - How do you begin and when do you start scaling?" - Madhura Dud..."ML Services - How do you begin and when do you start scaling?" - Madhura Dud...
"ML Services - How do you begin and when do you start scaling?" - Madhura Dud...
 
Realtime Contextual Product Recommendations…that scale and generate revenue -...
Realtime Contextual Product Recommendations…that scale and generate revenue -...Realtime Contextual Product Recommendations…that scale and generate revenue -...
Realtime Contextual Product Recommendations…that scale and generate revenue -...
 
Decision Automation in Marketing Systems using Reinforcement Learning: Dynami...
Decision Automation in Marketing Systems using Reinforcement Learning: Dynami...Decision Automation in Marketing Systems using Reinforcement Learning: Dynami...
Decision Automation in Marketing Systems using Reinforcement Learning: Dynami...
 
Best practices for enterprise-grade microservices implementations with Google...
Best practices for enterprise-grade microservices implementations with Google...Best practices for enterprise-grade microservices implementations with Google...
Best practices for enterprise-grade microservices implementations with Google...
 
Attribution Modelling 101: Credit Where Credit is Due!: Dynamic talks Seattle...
Attribution Modelling 101: Credit Where Credit is Due!: Dynamic talks Seattle...Attribution Modelling 101: Credit Where Credit is Due!: Dynamic talks Seattle...
Attribution Modelling 101: Credit Where Credit is Due!: Dynamic talks Seattle...
 
Building an algorithmic price management system using ML: Dynamic talks Seatt...
Building an algorithmic price management system using ML: Dynamic talks Seatt...Building an algorithmic price management system using ML: Dynamic talks Seatt...
Building an algorithmic price management system using ML: Dynamic talks Seatt...
 
Customer intelligence: a machine learning approach- Dynamic talks Dallas Q2
Customer intelligence: a machine learning approach- Dynamic talks Dallas Q2 Customer intelligence: a machine learning approach- Dynamic talks Dallas Q2
Customer intelligence: a machine learning approach- Dynamic talks Dallas Q2
 

Recently uploaded

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 

Recently uploaded (20)

ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdfGenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor PresentationDBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
 

"Challenges for AI in Healthcare" - Peter Graven Ph.D

  • 1. Dynamic Talks Bumped HQ 12/4/2019 Peter Graven, PhD Challenges for AI in Healthcare
  • 2. Background  Lead Data Scientist at OHSU  Assistant Professor (Affiliate) at OHSU-PSU School of Public Health  PhD in Health Economics from U of MN  Previous Experience  Academic research (health policy, methodology, program evaluation)  Economic consulting Market research  Any views expressed are not (necessarily) the views of OHSU 2
  • 3. Why is AI in Healthcare Different?  Artificial intelligence is changing world in many sectors  Predictive typing, internet searching  Speech recognition  Visual perception  Marketing  Marketing examples  Product recommendations  Image recognition (for searches)  Sentiment analysis (social media)  Demand based pricing  Identify customers that might leave  Chatbots 3
  • 4. AI in Healthcare Current Status  Robotic surgery (simple routine steps)  Image analysis (x-rays, retina scans)  Genetic analysis (review large amount of data)  Pathology (analyze biopsy, not approved)  Clinical-decision (sepsis, deterioration, risk of ED/hospital admit, no-show visits,  Virtual nursing (collect basic info for visit)  Administration (billing and claims)  Mental health (use mobile phone for monitoring depression) Source: Strickland, E. “How IBM Watson Overpromised and Underdelivered on AI Health Care”, IEEE Spectrum, Apr 2, 2019. Peter Graven, PhD 4
  • 5. Basic Challenges in Healthcare  Decisions need to be right at very high level of accuracy  Risk of lawsuits (though none currently known)  Clinicians are ultimately responsible for decisions  Not outsourced to algorithms  Clinician understanding of algorithms are mostly in infancy (in terms broad-based adoption)  Input factors must be transparent  Otherwise, predictive risk cannot be acted upon 5
  • 6. A Story about Predictive Modeling Peter Graven, PhD 6 Let’s predict risk! Let’s predict risk of high costs! Let’s predict risk of hospital admissions! Let’s predict who needs Care Management Let’s predict who will respond to Care Management How do we predict who will respond to Care Management? BASIC SCIENCE
  • 7. Implications for AI in Healthcare  Flip the script!  It’s not about the cool modeling  It’s about finding interventions that work  Old fashioned approach of trials and experiments and science  Then create models to match interventions to people  Tailor the model to the intervention  “There’s a model for that! Peter Graven, PhD 7
  • 8. Focus on the Decision-making Peter Graven, PhD 8 (AI) Artificial Intelligence (IA) Intelligent Applications Black box Unclear interventions Minimizes need for humans Transparent input factors Oriented around decisions Tailored to existing workflows
  • 9. Advanced approaches  If specific interventions exist, build models to feed them patients. Otherwise,  Follow workflows and assess places for models to be inserted  The workflow is the intervention. Use the model to make it better  Embedded improvement process with model simply as new technology  Focus on making the decision faster, easier, or more certain  Give the user the right information so they feel confident  Will improve clinician satisfaction  Organic distribution  let users get used to the information before workflow is cemented Peter Graven, PhD 9
  • 10. More Implications  As models are deployed within delivery system, the upkeep and maintenance issues grow  Cost of a good model embedded is not trivial.  Model itself is just one line of code but easy to underestimate cost of  organizing data to estimate model,  Making model appear in proper location  Training individuals in what it means Peter Graven, PhD 10
  • 11. Some realities  Electronic Medical Record (EMR) systems are not easy to integrate with  FHIR and other interoperability tools may help but will not likely provide the seamless experience  Very little incentive for EMR companies to really make integration smooth  Cloud based options are growing for more complex (real-time) modeling without being an on premise solution  Many lawsuits about improper sharing of data  Difficult to arrange data for algorithms  1000’s of tables that are linked but not designed for analytic purposes Peter Graven, PhD 11
  • 12. Discussion  Peter Graven, PhD graven@ohsu.edu Peter Graven, PhD 12