SlideShare ist ein Scribd-Unternehmen logo
1 von 21
Downloaden Sie, um offline zu lesen
Risk Stratification and Model Development:
Potential of “new” data and Predictive Modelling

          Stephen Sutch, MAppSc, BSc.
                   Doctoral Student
    Johns Hopkins Bloomberg School of Public Health
               Baltimore, Maryland 21205 USA
                     ssutch@jhsph.edu

                 Presented at Nuffield Trust
                      13 June 2012
Themes

• Risk stratification of whole population
• Improving the use of clinical data in predictive
  modelling
   – Use of other data, Rx, Labs, frailty ….
• Build models for specific purposes/outcomes
• Classification and Predictive Modelling, contextual
  information




                                Copyright 2008 Johns Hopkins University
                                                                          2
Working Definitions
• Case mix / risk adjustment (RA) - taking health
 status / risk into consideration for health care
 finance, payment, provider performance assessment
 and patient outcome monitoring.

• Predictive modeling (PM) - prospective (or
 concurrent) application of risk measures and
 statistical technique to identify “high risk” individuals
 who would likely benefit from care management
 interventions.




                                                                     3
                                Copyright 2008 Johns Hopkins University
                                                                          3
The risk measurement pyramid
                        Management Applications
         High      Case-
        Disease Management
        Burden                Disease                                         Needs
                             Management                                     Assessment
      Single High                                  Practice
        Impact                                    Resource
        Disease                                  Management                   Quality
                                                                            Improvement

         Users                                                               Payment/
                                                                             Finance


    Users & Non-Users

Population Segment

                                  Copyright 2008 Johns Hopkins University
                                                                                 4
Using Predictive Modeling to Assign Persons
Within the Care Management Pyramid
              5%
            Level 3
          High risk           Intensive Case and Disease
         with multiple          Management
        chronic illness

              15%
            Level 2
    Moderate risk patients
      with single chronic
                                  Health Coaching and Lifestyle
    illness or risk factors        Management


            80%
           Level 1                       Health Education and
           Low risk                       Promotion




                                         Copyright 2008 Johns Hopkins University
                                                                                   5
Purposes of Predictive modeling

 • Clinical prediction - Individual patient, to improve
   clinical decision-making
 • Population predictive models - Groups of patients,
   to forecast healthcare trends and identify
   candidates for healthcare interventions (e.g. DM
   programs)




                               Copyright 2008 Johns Hopkins University
                                                                         6
Key non statistical considerations for model
 selection if it is to be used administratively
• Transparency
    – How easily can the model be understood and
      explained?
• Clinical Texture
    – Does the system make sense to clinicians?
• Flexibility
    – Does the system support a range of applications?
• Customisable
    – Adjusts to local data, new models easy to derive and
      validate?


                                 Copyright 2008 Johns Hopkins University
                                                                           7
Value of Predictive Modeling
 Population of Persons Across Two Year Period




        Prior                                       Predicted
        High Cost                                   High Risk
        Year-1                                         Year-2
        (Prior Use)                                (Using Year-1
                                                           Data)


                           Actual
                          High Cost                                         High Risk,
                           Year-2                                         Current Costs
Not High                                                                   Low, Future
Risk                                                                       Costs High


                                      Copyright 2008 Johns Hopkins University
                                                                                     8
Data

• Secondary Care
   – Acute Hospitals, Inpatient, Outpatient,
   – Mental Health, Rehabilitation, Community care
   – Diagnoses, Procedures
• Primary Care
   – Attendances, Diagnoses, Prescribing
   – Labs, Examinations, Findings, Dispensing
• Patient Data
   – Risk factors, lifestyle factors, Health Status, Rx
     Possession, Self Care

                               Copyright 2008 Johns Hopkins University
                                                                         9
Distribution of READ Codes: Illustration
                        Drugs
                         39%




          Other                                                    Findings
           2%                                                        23%

  Clinical findings
         8%



            Administration
                                       Procedures
                11%
                                          17%


                                Copyright 2008 Johns Hopkins University
                                                                              10
GP diagnosis
    Coding and Drug prescribing
Diagnosis coding & drug            PCT data                                       US data
  prescribing by GP
                           Prevalence   Diags/Drugs               Prevalence               Diags/Drugs
                                        3.60%   Dx + Rx                                   2.67%   Dx + Rx
Asthma                      8.69%       0.71%   Dx Only              9.77%                1.48%   Dx Only
                                        4.38%   Rx Only                                   5.63%   Rx Only
                                        0.18%   Dx + Rx                                   0.30%   Dx + Rx
Congestive Heart Failure    2.52%       0.05%   Dx Only              1.85%                0.85%   Dx Only
                                        2.29%   Rx Only                                   0.70%   Rx Only
                                        1.36% Dx + Rx                                     1.28% Dx + Rx
Depression                  6.23%       0.25% Dx Only               10.38%                0.66% Dx Only
                                        4.62% Rx Only                                     8.43% Rx Only
                                        0.60%   Dx + Rx                                   2.77%   Dx + Rx
Diabetes                    3.91%       3.25%   Dx Only              5.45%                2.23%   Dx Only
                                        0.06%   Rx Only                                   0.44%   Rx Only
                                        1.28%   Dx + Rx                                   5.23%   Dx + Rx
Hyperlipidemia              5.32%       0.22%   Dx Only             14.87%                6.85%   Dx Only
                                        3.82%   Rx Only                                   2.78%   Rx Only
                                        4.53%   Dx + Rx                                   8.78%   Dx + Rx
Hypertension                13.09%      0.45%   Dx Only             18.95%                6.05%   Dx Only
                                        8.11%   Rx Only                                   4.12%   Rx Only




                                                Copyright 2008 Johns Hopkins University
                                                                                                            11
Stratifying Whole Populations

• Multimorbidity
   – Understanding and measuring
• Classification of health need
   – Stratification of disease popultions
• Multiple purposes
• Validation on whole populations
   – Generalisable?




                                  Copyright 2008 Johns Hopkins University
                                                                            12
Co-Morbidity is key – Multiple morbidities
     encountered in UK GP practices
        Average consultation in elderly involves someone with 1.9 QOF diseases
        and 6.7 chronic diseases using ACG/EDC chronic disease designations




Source: Salisbury et al. From GPRD data, 488 practices 2005-2008
                                               Copyright 2008 Johns Hopkins University
                                                                                         13
Co-morbidities are the norm for those with
           common “index” chronic conditions (US 65+)

        Diabetes     9%          22%              21%                 21%                           27%



  Heart Disease      11%          21%               25%                       24%                       19%



        Arthritis     12%          22%               23%                     22%                        21%



   Hypertension         17%             24%                23%                      20%                  16%


                 0%             20%             40%               60%                      80%                100%
        Single Condition      Condition + 1     Condition + 2        Condition + 3                Condition + 4+


Source: From US Medicare (65+) data . Partnership for Solutions, Johns Hopkins University
                                                              Copyright 2008 Johns Hopkins University
                                                                                                                   14
Risk Stratification – Endocrine Disorders




Source: Ashton Leigh Wigan PCT, Pilot Project
                                          Copyright 2008 Johns Hopkins University
                                                                                    15
Case Management and Disease Management:
Identification of individuals at risk
• Disease Management, Wellness Program Identification
   – E.g. Diabetes, Hypertension Pharmacy Gaps, Poorly
     Controlled Asthma, Untreated Schizophrenia
• Case Management Program Identification
   – E.g High Medical Needs, Emerging Risk, High Risk for Poor
     Coordination, Potential Home Health Needs
• Pharmacy Management Program Identification
   – E.g. Poly-pharmacy and Medication Gaps / No Ambulatory
     Care, High Rx Users
• Utilization Management Program Identification
   – E.g. High Risk for Hospitalization, Emergency Room for
     Primary Care, Risk for High Utilization
                                  Copyright 2008 Johns Hopkins University
                                                                            16
Identify high risk members of population based
on multi-morbidity oriented “Relative Risk Score”




                         • Risk predicted to increase
                         • Total costs predicted to increase
                         • 7 chronic conditions
                         • 13 doctors
                          Copyright 2008 Johns Hopkins University
                                                                    17
Patient risk information in support of GPs,
Community Matrons
                                                    • Numerous co-morbidities
                                                    • At risk for future
                                                    hospitalization
                                                    • ER Visit with no admission
                                                    • Poly-pharmacy use
                                                    • Tobacco Use




                           Copyright 2008 Johns Hopkins University
                                                                          18
Patient View:
    Comprehensive Patient Clinical Profile




Context for Forming Care Management Strategies.
                             Copyright 2008 Johns Hopkins University
                                                                       19
Current Challenges

• Recognizing Multimorbidity
   – Recording of diagnoses, patterns
• Cost data
• Pharmacy data
   – Prescribed v Dispensed (possession?)
• Integrated records
   – GP, OP, A&E, IP, MH, Social Care
• Other data
   – Functional status, Health Risk factors, Health
     Status, Individual Data

                               Copyright 2008 Johns Hopkins University
                                                                         20
The Future

• Ensuring Risk Stratification is fit for purpose
• Complimenting case management
• A means to an end, not an end in itself, supporting
  effective care management and equity
• Integrated care, integrated data and information
  support
• Understanding individuals’ morbidity burden




                              Copyright 2008 Johns Hopkins University
                                                                        21

Weitere ähnliche Inhalte

Was ist angesagt?

Value of libraries poster summary results
Value of libraries poster summary resultsValue of libraries poster summary results
Value of libraries poster summary resultskerpil
 
PatientBillofRightsAU
PatientBillofRightsAUPatientBillofRightsAU
PatientBillofRightsAUBarry Duncan
 
Approaches to case finding: models and application
Approaches to case finding: models and applicationApproaches to case finding: models and application
Approaches to case finding: models and applicationNuffield Trust
 
[대한병리학회] 의료 인공지능 101: 병리를 중심으로
[대한병리학회] 의료 인공지능 101: 병리를 중심으로[대한병리학회] 의료 인공지능 101: 병리를 중심으로
[대한병리학회] 의료 인공지능 101: 병리를 중심으로Yoon Sup Choi
 
Disease & Conditions Findability Highlights | Web Committee Children's Hospital
Disease & Conditions Findability Highlights | Web Committee Children's HospitalDisease & Conditions Findability Highlights | Web Committee Children's Hospital
Disease & Conditions Findability Highlights | Web Committee Children's HospitalKaitlan Chu
 
Cullen Presentation
Cullen PresentationCullen Presentation
Cullen Presentationsggibson
 
Aggarwal Biomarker Presentation Lyon France 2011
Aggarwal Biomarker Presentation Lyon France 2011Aggarwal Biomarker Presentation Lyon France 2011
Aggarwal Biomarker Presentation Lyon France 2011novelhealthstrategies
 
Integrating evidence based medicine and em rs
Integrating evidence based medicine and em rsIntegrating evidence based medicine and em rs
Integrating evidence based medicine and em rsTrimed Media Group
 
Bellows ert3 maternal voucher lit review_arusha_jan_2013
Bellows ert3 maternal voucher lit review_arusha_jan_2013Bellows ert3 maternal voucher lit review_arusha_jan_2013
Bellows ert3 maternal voucher lit review_arusha_jan_2013Ben Bellows
 
Inge Thijs - Future Health
Inge Thijs - Future HealthInge Thijs - Future Health
Inge Thijs - Future Healthimec.archive
 
The Challenge of Adoption
The Challenge of AdoptionThe Challenge of Adoption
The Challenge of AdoptionMedsphere
 
Torsten Hecke: Predictive models in health care management in a German statut...
Torsten Hecke: Predictive models in health care management in a German statut...Torsten Hecke: Predictive models in health care management in a German statut...
Torsten Hecke: Predictive models in health care management in a German statut...Nuffield Trust
 

Was ist angesagt? (19)

Value of libraries poster summary results
Value of libraries poster summary resultsValue of libraries poster summary results
Value of libraries poster summary results
 
PatientBillofRightsAU
PatientBillofRightsAUPatientBillofRightsAU
PatientBillofRightsAU
 
Approaches to case finding: models and application
Approaches to case finding: models and applicationApproaches to case finding: models and application
Approaches to case finding: models and application
 
[대한병리학회] 의료 인공지능 101: 병리를 중심으로
[대한병리학회] 의료 인공지능 101: 병리를 중심으로[대한병리학회] 의료 인공지능 101: 병리를 중심으로
[대한병리학회] 의료 인공지능 101: 병리를 중심으로
 
Keeping Smart with a Smartphone
Keeping Smart with a SmartphoneKeeping Smart with a Smartphone
Keeping Smart with a Smartphone
 
m-Health: The Doctor's Side
m-Health: The Doctor's Sidem-Health: The Doctor's Side
m-Health: The Doctor's Side
 
Disease & Conditions Findability Highlights | Web Committee Children's Hospital
Disease & Conditions Findability Highlights | Web Committee Children's HospitalDisease & Conditions Findability Highlights | Web Committee Children's Hospital
Disease & Conditions Findability Highlights | Web Committee Children's Hospital
 
Cullen Presentation
Cullen PresentationCullen Presentation
Cullen Presentation
 
Aggarwal Biomarker Presentation Lyon France 2011
Aggarwal Biomarker Presentation Lyon France 2011Aggarwal Biomarker Presentation Lyon France 2011
Aggarwal Biomarker Presentation Lyon France 2011
 
Integrating evidence based medicine and em rs
Integrating evidence based medicine and em rsIntegrating evidence based medicine and em rs
Integrating evidence based medicine and em rs
 
The Patient Support Corps
The Patient Support CorpsThe Patient Support Corps
The Patient Support Corps
 
Dr.little mesa 3
Dr.little mesa 3Dr.little mesa 3
Dr.little mesa 3
 
Bellows ert3 maternal voucher lit review_arusha_jan_2013
Bellows ert3 maternal voucher lit review_arusha_jan_2013Bellows ert3 maternal voucher lit review_arusha_jan_2013
Bellows ert3 maternal voucher lit review_arusha_jan_2013
 
Evidence based med
Evidence based medEvidence based med
Evidence based med
 
Inge Thijs - Future Health
Inge Thijs - Future HealthInge Thijs - Future Health
Inge Thijs - Future Health
 
The Challenge of Adoption
The Challenge of AdoptionThe Challenge of Adoption
The Challenge of Adoption
 
Who's Afraid of Technology?
Who's Afraid of Technology?Who's Afraid of Technology?
Who's Afraid of Technology?
 
Resource Utilization of Pediatric Patients Exposed to Venom 9_20_11
Resource Utilization of Pediatric Patients Exposed to Venom 9_20_11Resource Utilization of Pediatric Patients Exposed to Venom 9_20_11
Resource Utilization of Pediatric Patients Exposed to Venom 9_20_11
 
Torsten Hecke: Predictive models in health care management in a German statut...
Torsten Hecke: Predictive models in health care management in a German statut...Torsten Hecke: Predictive models in health care management in a German statut...
Torsten Hecke: Predictive models in health care management in a German statut...
 

Andere mochten auch

What if predictive modelling presentataion
What if predictive modelling presentataionWhat if predictive modelling presentataion
What if predictive modelling presentataionDynistics
 
Telemedicine - Moving Beyond the Video Visit
Telemedicine - Moving Beyond the Video VisitTelemedicine - Moving Beyond the Video Visit
Telemedicine - Moving Beyond the Video VisitHoward Reis
 
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS England
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS EnglandDr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS England
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS EnglandHIMSS UK
 
Long Term Conditions - JSNA Summary July 2015
Long Term Conditions - JSNA Summary July 2015 Long Term Conditions - JSNA Summary July 2015
Long Term Conditions - JSNA Summary July 2015 CambridgeshireInsight
 
New models of healthcare, Oliver Wyman at For Later Life 2014
New models of healthcare, Oliver Wyman at For Later Life 2014New models of healthcare, Oliver Wyman at For Later Life 2014
New models of healthcare, Oliver Wyman at For Later Life 2014Age UK
 

Andere mochten auch (6)

What if predictive modelling presentataion
What if predictive modelling presentataionWhat if predictive modelling presentataion
What if predictive modelling presentataion
 
Telemedicine - Moving Beyond the Video Visit
Telemedicine - Moving Beyond the Video VisitTelemedicine - Moving Beyond the Video Visit
Telemedicine - Moving Beyond the Video Visit
 
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS England
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS EnglandDr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS England
Dr Geraint Lewis FRCP FFPH - Chief Data Officer, NHS England
 
JSNA Process - Overview
JSNA Process - OverviewJSNA Process - Overview
JSNA Process - Overview
 
Long Term Conditions - JSNA Summary July 2015
Long Term Conditions - JSNA Summary July 2015 Long Term Conditions - JSNA Summary July 2015
Long Term Conditions - JSNA Summary July 2015
 
New models of healthcare, Oliver Wyman at For Later Life 2014
New models of healthcare, Oliver Wyman at For Later Life 2014New models of healthcare, Oliver Wyman at For Later Life 2014
New models of healthcare, Oliver Wyman at For Later Life 2014
 

Ähnlich wie Stephen Sutch: Risk stratification and model development: Potential of new data and predictive modelling

Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...
Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...
Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...Nuffield Trust
 
Identifying deficiencies in long-term condition management using electronic m...
Identifying deficiencies in long-term condition management using electronic m...Identifying deficiencies in long-term condition management using electronic m...
Identifying deficiencies in long-term condition management using electronic m...Health Informatics New Zealand
 
Utah’s All Payer Claims Dataset: A vital resource for health reform
Utah’s All Payer Claims Dataset: A  vital resource for health reformUtah’s All Payer Claims Dataset: A  vital resource for health reform
Utah’s All Payer Claims Dataset: A vital resource for health reformState of Utah, Salt Lake City
 
Improving Health Care Quality Through Integrated Teams
Improving Health Care Quality Through Integrated TeamsImproving Health Care Quality Through Integrated Teams
Improving Health Care Quality Through Integrated TeamsPlan de Calidad para el SNS
 
Significance of biostatistics in public health
Significance of biostatistics in public healthSignificance of biostatistics in public health
Significance of biostatistics in public healthParamjot Panda
 
World Health Congress 2009 Europe Market Insight
World Health Congress 2009 Europe Market InsightWorld Health Congress 2009 Europe Market Insight
World Health Congress 2009 Europe Market Insightrongyi
 
Incentive-based innovations in improving management of animal and human healt...
Incentive-based innovations in improving management of animal and human healt...Incentive-based innovations in improving management of animal and human healt...
Incentive-based innovations in improving management of animal and human healt...ILRI
 
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...Health Informatics New Zealand
 
Advanced Laboratory Analytics — A Disruptive Solution for Health Systems
Advanced Laboratory Analytics — A Disruptive Solution for Health SystemsAdvanced Laboratory Analytics — A Disruptive Solution for Health Systems
Advanced Laboratory Analytics — A Disruptive Solution for Health SystemsViewics
 
Data, Technology and Health Behavior Change
Data, Technology and Health Behavior ChangeData, Technology and Health Behavior Change
Data, Technology and Health Behavior ChangeM. Courtney Hughes
 
1.nigam shah stanford_meetup
1.nigam shah stanford_meetup1.nigam shah stanford_meetup
1.nigam shah stanford_meetupThe Hive
 
Medical Utopias: The Promise of Emerging Technologies
Medical Utopias: The Promise of Emerging TechnologiesMedical Utopias: The Promise of Emerging Technologies
Medical Utopias: The Promise of Emerging TechnologiesAlex Tang
 
Orange Healthcare - Personalised Medicine
Orange Healthcare - Personalised MedicineOrange Healthcare - Personalised Medicine
Orange Healthcare - Personalised MedicineFjord
 
First Illinois Chapter HFMA
First Illinois Chapter HFMAFirst Illinois Chapter HFMA
First Illinois Chapter HFMAjackell
 
Antibiotics Smart Use Program
Antibiotics Smart Use ProgramAntibiotics Smart Use Program
Antibiotics Smart Use ProgramSagar Nama
 
Mdm ihi washington dc 2012
Mdm   ihi washington dc 2012Mdm   ihi washington dc 2012
Mdm ihi washington dc 2012Victor Montori
 
Genomics, Personalized Medicine and Electronic Medical Records
Genomics, Personalized Medicine and Electronic Medical RecordsGenomics, Personalized Medicine and Electronic Medical Records
Genomics, Personalized Medicine and Electronic Medical RecordsLyle Berkowitz, MD
 
Predictive Risk Stratification: Using Analytics to Empower Change with Action...
Predictive Risk Stratification: Using Analytics to Empower Change with Action...Predictive Risk Stratification: Using Analytics to Empower Change with Action...
Predictive Risk Stratification: Using Analytics to Empower Change with Action...Health Catalyst
 
High cost of medications in colombia
High cost of medications in colombiaHigh cost of medications in colombia
High cost of medications in colombiaRubashkyn
 

Ähnlich wie Stephen Sutch: Risk stratification and model development: Potential of new data and predictive modelling (20)

Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...
Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...
Jonathan Weiner: Risk adjustment opportunities and challenges: US and UK expe...
 
Identifying deficiencies in long-term condition management using electronic m...
Identifying deficiencies in long-term condition management using electronic m...Identifying deficiencies in long-term condition management using electronic m...
Identifying deficiencies in long-term condition management using electronic m...
 
Utah’s All Payer Claims Dataset: A vital resource for health reform
Utah’s All Payer Claims Dataset: A  vital resource for health reformUtah’s All Payer Claims Dataset: A  vital resource for health reform
Utah’s All Payer Claims Dataset: A vital resource for health reform
 
Improving Health Care Quality Through Integrated Teams
Improving Health Care Quality Through Integrated TeamsImproving Health Care Quality Through Integrated Teams
Improving Health Care Quality Through Integrated Teams
 
Significance of biostatistics in public health
Significance of biostatistics in public healthSignificance of biostatistics in public health
Significance of biostatistics in public health
 
World Health Congress 2009 Europe Market Insight
World Health Congress 2009 Europe Market InsightWorld Health Congress 2009 Europe Market Insight
World Health Congress 2009 Europe Market Insight
 
Incentive-based innovations in improving management of animal and human healt...
Incentive-based innovations in improving management of animal and human healt...Incentive-based innovations in improving management of animal and human healt...
Incentive-based innovations in improving management of animal and human healt...
 
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...
Disruptive Innovation: Patient Centred Healthcare and the Extinction of Dinoi...
 
Advanced Laboratory Analytics — A Disruptive Solution for Health Systems
Advanced Laboratory Analytics — A Disruptive Solution for Health SystemsAdvanced Laboratory Analytics — A Disruptive Solution for Health Systems
Advanced Laboratory Analytics — A Disruptive Solution for Health Systems
 
3
33
3
 
Data, Technology and Health Behavior Change
Data, Technology and Health Behavior ChangeData, Technology and Health Behavior Change
Data, Technology and Health Behavior Change
 
1.nigam shah stanford_meetup
1.nigam shah stanford_meetup1.nigam shah stanford_meetup
1.nigam shah stanford_meetup
 
Medical Utopias: The Promise of Emerging Technologies
Medical Utopias: The Promise of Emerging TechnologiesMedical Utopias: The Promise of Emerging Technologies
Medical Utopias: The Promise of Emerging Technologies
 
Orange Healthcare - Personalised Medicine
Orange Healthcare - Personalised MedicineOrange Healthcare - Personalised Medicine
Orange Healthcare - Personalised Medicine
 
First Illinois Chapter HFMA
First Illinois Chapter HFMAFirst Illinois Chapter HFMA
First Illinois Chapter HFMA
 
Antibiotics Smart Use Program
Antibiotics Smart Use ProgramAntibiotics Smart Use Program
Antibiotics Smart Use Program
 
Mdm ihi washington dc 2012
Mdm   ihi washington dc 2012Mdm   ihi washington dc 2012
Mdm ihi washington dc 2012
 
Genomics, Personalized Medicine and Electronic Medical Records
Genomics, Personalized Medicine and Electronic Medical RecordsGenomics, Personalized Medicine and Electronic Medical Records
Genomics, Personalized Medicine and Electronic Medical Records
 
Predictive Risk Stratification: Using Analytics to Empower Change with Action...
Predictive Risk Stratification: Using Analytics to Empower Change with Action...Predictive Risk Stratification: Using Analytics to Empower Change with Action...
Predictive Risk Stratification: Using Analytics to Empower Change with Action...
 
High cost of medications in colombia
High cost of medications in colombiaHigh cost of medications in colombia
High cost of medications in colombia
 

Mehr von Nuffield Trust

Transforming outpatient services - Nuffield Trust/NHS Improvement Event
Transforming outpatient services - Nuffield Trust/NHS Improvement EventTransforming outpatient services - Nuffield Trust/NHS Improvement Event
Transforming outpatient services - Nuffield Trust/NHS Improvement EventNuffield Trust
 
13 reasons to spend more on health and social care
13 reasons to spend more on health and social care 13 reasons to spend more on health and social care
13 reasons to spend more on health and social care Nuffield Trust
 
Energising your workforce in the face of adversity
Energising your workforce in the face of adversityEnergising your workforce in the face of adversity
Energising your workforce in the face of adversityNuffield Trust
 
Shifting the balance of care: great expectations
Shifting the balance of care: great expectations Shifting the balance of care: great expectations
Shifting the balance of care: great expectations Nuffield Trust
 
Automation, Employment, and Health Care
Automation, Employment, and Health Care Automation, Employment, and Health Care
Automation, Employment, and Health Care Nuffield Trust
 
Public perspectives on the NHS and social care
Public perspectives on the NHS and social carePublic perspectives on the NHS and social care
Public perspectives on the NHS and social careNuffield Trust
 
Evaluation of the Integrated Care and Support Pioneers Programme
Evaluation of the Integrated Care and Support Pioneers ProgrammeEvaluation of the Integrated Care and Support Pioneers Programme
Evaluation of the Integrated Care and Support Pioneers ProgrammeNuffield Trust
 
Ensuring success for new models of care
Ensuring success for new models of careEnsuring success for new models of care
Ensuring success for new models of careNuffield Trust
 
Effectiveness of the current dominant approach to integrated care in the NHS
Effectiveness of the current dominant approach to integrated care in the NHSEffectiveness of the current dominant approach to integrated care in the NHS
Effectiveness of the current dominant approach to integrated care in the NHSNuffield Trust
 
Providing actionable healthcare analytics at scale: Understanding improvement...
Providing actionable healthcare analytics at scale: Understanding improvement...Providing actionable healthcare analytics at scale: Understanding improvement...
Providing actionable healthcare analytics at scale: Understanding improvement...Nuffield Trust
 
Local and national uses of data
Local and national uses of dataLocal and national uses of data
Local and national uses of dataNuffield Trust
 
Applied use of CUSUMs in surveillance
Applied use of CUSUMs in surveillanceApplied use of CUSUMs in surveillance
Applied use of CUSUMs in surveillanceNuffield Trust
 
Evaluating new models of care: Improvement Analytics Unit
Evaluating new models of care: Improvement Analytics UnitEvaluating new models of care: Improvement Analytics Unit
Evaluating new models of care: Improvement Analytics UnitNuffield Trust
 
Learning from the Care Quality Commission
Learning from the Care Quality CommissionLearning from the Care Quality Commission
Learning from the Care Quality CommissionNuffield Trust
 
Real-time monitoring and the data trap
Real-time monitoring and the data trapReal-time monitoring and the data trap
Real-time monitoring and the data trapNuffield Trust
 
Monitoring quality of care: making the most of data
Monitoring quality of care: making the most of dataMonitoring quality of care: making the most of data
Monitoring quality of care: making the most of dataNuffield Trust
 
Providing actionable healthcare analytics at scale: Insights from the Nationa...
Providing actionable healthcare analytics at scale: Insights from the Nationa...Providing actionable healthcare analytics at scale: Insights from the Nationa...
Providing actionable healthcare analytics at scale: Insights from the Nationa...Nuffield Trust
 
Providing actionable healthcare analytics at scale: A perspective from stroke...
Providing actionable healthcare analytics at scale: A perspective from stroke...Providing actionable healthcare analytics at scale: A perspective from stroke...
Providing actionable healthcare analytics at scale: A perspective from stroke...Nuffield Trust
 
New Models of General Practice: Practical and policy lessons
New Models of General Practice: Practical and policy lessonsNew Models of General Practice: Practical and policy lessons
New Models of General Practice: Practical and policy lessonsNuffield Trust
 

Mehr von Nuffield Trust (20)

Transforming outpatient services - Nuffield Trust/NHS Improvement Event
Transforming outpatient services - Nuffield Trust/NHS Improvement EventTransforming outpatient services - Nuffield Trust/NHS Improvement Event
Transforming outpatient services - Nuffield Trust/NHS Improvement Event
 
13 reasons to spend more on health and social care
13 reasons to spend more on health and social care 13 reasons to spend more on health and social care
13 reasons to spend more on health and social care
 
Energising your workforce in the face of adversity
Energising your workforce in the face of adversityEnergising your workforce in the face of adversity
Energising your workforce in the face of adversity
 
Shifting the balance of care: great expectations
Shifting the balance of care: great expectations Shifting the balance of care: great expectations
Shifting the balance of care: great expectations
 
Automation, Employment, and Health Care
Automation, Employment, and Health Care Automation, Employment, and Health Care
Automation, Employment, and Health Care
 
Public perspectives on the NHS and social care
Public perspectives on the NHS and social carePublic perspectives on the NHS and social care
Public perspectives on the NHS and social care
 
Evaluation of the Integrated Care and Support Pioneers Programme
Evaluation of the Integrated Care and Support Pioneers ProgrammeEvaluation of the Integrated Care and Support Pioneers Programme
Evaluation of the Integrated Care and Support Pioneers Programme
 
Ensuring success for new models of care
Ensuring success for new models of careEnsuring success for new models of care
Ensuring success for new models of care
 
Effectiveness of the current dominant approach to integrated care in the NHS
Effectiveness of the current dominant approach to integrated care in the NHSEffectiveness of the current dominant approach to integrated care in the NHS
Effectiveness of the current dominant approach to integrated care in the NHS
 
Providing actionable healthcare analytics at scale: Understanding improvement...
Providing actionable healthcare analytics at scale: Understanding improvement...Providing actionable healthcare analytics at scale: Understanding improvement...
Providing actionable healthcare analytics at scale: Understanding improvement...
 
Local and national uses of data
Local and national uses of dataLocal and national uses of data
Local and national uses of data
 
Applied use of CUSUMs in surveillance
Applied use of CUSUMs in surveillanceApplied use of CUSUMs in surveillance
Applied use of CUSUMs in surveillance
 
Engaging with data
Engaging with dataEngaging with data
Engaging with data
 
Evaluating new models of care: Improvement Analytics Unit
Evaluating new models of care: Improvement Analytics UnitEvaluating new models of care: Improvement Analytics Unit
Evaluating new models of care: Improvement Analytics Unit
 
Learning from the Care Quality Commission
Learning from the Care Quality CommissionLearning from the Care Quality Commission
Learning from the Care Quality Commission
 
Real-time monitoring and the data trap
Real-time monitoring and the data trapReal-time monitoring and the data trap
Real-time monitoring and the data trap
 
Monitoring quality of care: making the most of data
Monitoring quality of care: making the most of dataMonitoring quality of care: making the most of data
Monitoring quality of care: making the most of data
 
Providing actionable healthcare analytics at scale: Insights from the Nationa...
Providing actionable healthcare analytics at scale: Insights from the Nationa...Providing actionable healthcare analytics at scale: Insights from the Nationa...
Providing actionable healthcare analytics at scale: Insights from the Nationa...
 
Providing actionable healthcare analytics at scale: A perspective from stroke...
Providing actionable healthcare analytics at scale: A perspective from stroke...Providing actionable healthcare analytics at scale: A perspective from stroke...
Providing actionable healthcare analytics at scale: A perspective from stroke...
 
New Models of General Practice: Practical and policy lessons
New Models of General Practice: Practical and policy lessonsNew Models of General Practice: Practical and policy lessons
New Models of General Practice: Practical and policy lessons
 

Kürzlich hochgeladen

Culture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxCulture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxDr. Dheeraj Kumar
 
Nutrition of OCD for my Nutritional Neuroscience Class
Nutrition of OCD for my Nutritional Neuroscience ClassNutrition of OCD for my Nutritional Neuroscience Class
Nutrition of OCD for my Nutritional Neuroscience Classmanuelazg2001
 
History and Development of Pharmacovigilence.pdf
History and Development of Pharmacovigilence.pdfHistory and Development of Pharmacovigilence.pdf
History and Development of Pharmacovigilence.pdfSasikiranMarri
 
Big Data Analysis Suggests COVID Vaccination Increases Excess Mortality Of ...
Big Data Analysis Suggests COVID  Vaccination Increases Excess Mortality Of  ...Big Data Analysis Suggests COVID  Vaccination Increases Excess Mortality Of  ...
Big Data Analysis Suggests COVID Vaccination Increases Excess Mortality Of ...sdateam0
 
COVID-19 (NOVEL CORONA VIRUS DISEASE PANDEMIC ).pptx
COVID-19  (NOVEL CORONA  VIRUS DISEASE PANDEMIC ).pptxCOVID-19  (NOVEL CORONA  VIRUS DISEASE PANDEMIC ).pptx
COVID-19 (NOVEL CORONA VIRUS DISEASE PANDEMIC ).pptxBibekananda shah
 
Presentation on Parasympathetic Nervous System
Presentation on Parasympathetic Nervous SystemPresentation on Parasympathetic Nervous System
Presentation on Parasympathetic Nervous SystemPrerana Jadhav
 
SWD (Short wave diathermy)- Physiotherapy.ppt
SWD (Short wave diathermy)- Physiotherapy.pptSWD (Short wave diathermy)- Physiotherapy.ppt
SWD (Short wave diathermy)- Physiotherapy.pptMumux Mirani
 
April 2024 ONCOLOGY CARTOON by DR KANHU CHARAN PATRO
April 2024 ONCOLOGY CARTOON by  DR KANHU CHARAN PATROApril 2024 ONCOLOGY CARTOON by  DR KANHU CHARAN PATRO
April 2024 ONCOLOGY CARTOON by DR KANHU CHARAN PATROKanhu Charan
 
systemic bacteriology (7)............pptx
systemic bacteriology (7)............pptxsystemic bacteriology (7)............pptx
systemic bacteriology (7)............pptxEyobAlemu11
 
Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.ANJALI
 
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand University
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand UniversityCEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand University
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand UniversityHarshChauhan475104
 
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdf
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdfSGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdf
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdfHongBiThi1
 
Informed Consent Empowering Healthcare Decision-Making.pptx
Informed Consent Empowering Healthcare Decision-Making.pptxInformed Consent Empowering Healthcare Decision-Making.pptx
Informed Consent Empowering Healthcare Decision-Making.pptxSasikiranMarri
 
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfLippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfSreeja Cherukuru
 
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdf
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdfMedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdf
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdfSasikiranMarri
 
epilepsy and status epilepticus for undergraduate.pptx
epilepsy and status epilepticus  for undergraduate.pptxepilepsy and status epilepticus  for undergraduate.pptx
epilepsy and status epilepticus for undergraduate.pptxMohamed Rizk Khodair
 
Case Report Peripartum Cardiomyopathy.pptx
Case Report Peripartum Cardiomyopathy.pptxCase Report Peripartum Cardiomyopathy.pptx
Case Report Peripartum Cardiomyopathy.pptxNiranjan Chavan
 
Apiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptApiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptkedirjemalharun
 
Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Prerana Jadhav
 

Kürzlich hochgeladen (20)

Culture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptxCulture and Health Disorders Social change.pptx
Culture and Health Disorders Social change.pptx
 
Nutrition of OCD for my Nutritional Neuroscience Class
Nutrition of OCD for my Nutritional Neuroscience ClassNutrition of OCD for my Nutritional Neuroscience Class
Nutrition of OCD for my Nutritional Neuroscience Class
 
History and Development of Pharmacovigilence.pdf
History and Development of Pharmacovigilence.pdfHistory and Development of Pharmacovigilence.pdf
History and Development of Pharmacovigilence.pdf
 
Big Data Analysis Suggests COVID Vaccination Increases Excess Mortality Of ...
Big Data Analysis Suggests COVID  Vaccination Increases Excess Mortality Of  ...Big Data Analysis Suggests COVID  Vaccination Increases Excess Mortality Of  ...
Big Data Analysis Suggests COVID Vaccination Increases Excess Mortality Of ...
 
COVID-19 (NOVEL CORONA VIRUS DISEASE PANDEMIC ).pptx
COVID-19  (NOVEL CORONA  VIRUS DISEASE PANDEMIC ).pptxCOVID-19  (NOVEL CORONA  VIRUS DISEASE PANDEMIC ).pptx
COVID-19 (NOVEL CORONA VIRUS DISEASE PANDEMIC ).pptx
 
Presentation on Parasympathetic Nervous System
Presentation on Parasympathetic Nervous SystemPresentation on Parasympathetic Nervous System
Presentation on Parasympathetic Nervous System
 
SWD (Short wave diathermy)- Physiotherapy.ppt
SWD (Short wave diathermy)- Physiotherapy.pptSWD (Short wave diathermy)- Physiotherapy.ppt
SWD (Short wave diathermy)- Physiotherapy.ppt
 
April 2024 ONCOLOGY CARTOON by DR KANHU CHARAN PATRO
April 2024 ONCOLOGY CARTOON by  DR KANHU CHARAN PATROApril 2024 ONCOLOGY CARTOON by  DR KANHU CHARAN PATRO
April 2024 ONCOLOGY CARTOON by DR KANHU CHARAN PATRO
 
systemic bacteriology (7)............pptx
systemic bacteriology (7)............pptxsystemic bacteriology (7)............pptx
systemic bacteriology (7)............pptx
 
Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.Statistical modeling in pharmaceutical research and development.
Statistical modeling in pharmaceutical research and development.
 
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand University
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand UniversityCEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand University
CEHPALOSPORINS.pptx By Harshvardhan Dev Bhoomi Uttarakhand University
 
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdf
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdfSGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdf
SGK HÓA SINH NĂNG LƯỢNG SINH HỌC 2006.pdf
 
Informed Consent Empowering Healthcare Decision-Making.pptx
Informed Consent Empowering Healthcare Decision-Making.pptxInformed Consent Empowering Healthcare Decision-Making.pptx
Informed Consent Empowering Healthcare Decision-Making.pptx
 
Epilepsy
EpilepsyEpilepsy
Epilepsy
 
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdfLippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
Lippincott Microcards_ Microbiology Flash Cards-LWW (2015).pdf
 
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdf
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdfMedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdf
MedDRA-A-Comprehensive-Guide-to-Standardized-Medical-Terminology.pdf
 
epilepsy and status epilepticus for undergraduate.pptx
epilepsy and status epilepticus  for undergraduate.pptxepilepsy and status epilepticus  for undergraduate.pptx
epilepsy and status epilepticus for undergraduate.pptx
 
Case Report Peripartum Cardiomyopathy.pptx
Case Report Peripartum Cardiomyopathy.pptxCase Report Peripartum Cardiomyopathy.pptx
Case Report Peripartum Cardiomyopathy.pptx
 
Apiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.pptApiculture Chapter 1. Introduction 2.ppt
Apiculture Chapter 1. Introduction 2.ppt
 
Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.Presentation on General Anesthetics pdf.
Presentation on General Anesthetics pdf.
 

Stephen Sutch: Risk stratification and model development: Potential of new data and predictive modelling

  • 1. Risk Stratification and Model Development: Potential of “new” data and Predictive Modelling Stephen Sutch, MAppSc, BSc. Doctoral Student Johns Hopkins Bloomberg School of Public Health Baltimore, Maryland 21205 USA ssutch@jhsph.edu Presented at Nuffield Trust 13 June 2012
  • 2. Themes • Risk stratification of whole population • Improving the use of clinical data in predictive modelling – Use of other data, Rx, Labs, frailty …. • Build models for specific purposes/outcomes • Classification and Predictive Modelling, contextual information Copyright 2008 Johns Hopkins University 2
  • 3. Working Definitions • Case mix / risk adjustment (RA) - taking health status / risk into consideration for health care finance, payment, provider performance assessment and patient outcome monitoring. • Predictive modeling (PM) - prospective (or concurrent) application of risk measures and statistical technique to identify “high risk” individuals who would likely benefit from care management interventions. 3 Copyright 2008 Johns Hopkins University 3
  • 4. The risk measurement pyramid Management Applications High Case- Disease Management Burden Disease Needs Management Assessment Single High Practice Impact Resource Disease Management Quality Improvement Users Payment/ Finance Users & Non-Users Population Segment Copyright 2008 Johns Hopkins University 4
  • 5. Using Predictive Modeling to Assign Persons Within the Care Management Pyramid 5% Level 3 High risk Intensive Case and Disease with multiple Management chronic illness 15% Level 2 Moderate risk patients with single chronic Health Coaching and Lifestyle illness or risk factors Management 80% Level 1 Health Education and Low risk Promotion Copyright 2008 Johns Hopkins University 5
  • 6. Purposes of Predictive modeling • Clinical prediction - Individual patient, to improve clinical decision-making • Population predictive models - Groups of patients, to forecast healthcare trends and identify candidates for healthcare interventions (e.g. DM programs) Copyright 2008 Johns Hopkins University 6
  • 7. Key non statistical considerations for model selection if it is to be used administratively • Transparency – How easily can the model be understood and explained? • Clinical Texture – Does the system make sense to clinicians? • Flexibility – Does the system support a range of applications? • Customisable – Adjusts to local data, new models easy to derive and validate? Copyright 2008 Johns Hopkins University 7
  • 8. Value of Predictive Modeling Population of Persons Across Two Year Period Prior Predicted High Cost High Risk Year-1 Year-2 (Prior Use) (Using Year-1 Data) Actual High Cost High Risk, Year-2 Current Costs Not High Low, Future Risk Costs High Copyright 2008 Johns Hopkins University 8
  • 9. Data • Secondary Care – Acute Hospitals, Inpatient, Outpatient, – Mental Health, Rehabilitation, Community care – Diagnoses, Procedures • Primary Care – Attendances, Diagnoses, Prescribing – Labs, Examinations, Findings, Dispensing • Patient Data – Risk factors, lifestyle factors, Health Status, Rx Possession, Self Care Copyright 2008 Johns Hopkins University 9
  • 10. Distribution of READ Codes: Illustration Drugs 39% Other Findings 2% 23% Clinical findings 8% Administration Procedures 11% 17% Copyright 2008 Johns Hopkins University 10
  • 11. GP diagnosis Coding and Drug prescribing Diagnosis coding & drug PCT data US data prescribing by GP Prevalence Diags/Drugs Prevalence Diags/Drugs 3.60% Dx + Rx 2.67% Dx + Rx Asthma 8.69% 0.71% Dx Only 9.77% 1.48% Dx Only 4.38% Rx Only 5.63% Rx Only 0.18% Dx + Rx 0.30% Dx + Rx Congestive Heart Failure 2.52% 0.05% Dx Only 1.85% 0.85% Dx Only 2.29% Rx Only 0.70% Rx Only 1.36% Dx + Rx 1.28% Dx + Rx Depression 6.23% 0.25% Dx Only 10.38% 0.66% Dx Only 4.62% Rx Only 8.43% Rx Only 0.60% Dx + Rx 2.77% Dx + Rx Diabetes 3.91% 3.25% Dx Only 5.45% 2.23% Dx Only 0.06% Rx Only 0.44% Rx Only 1.28% Dx + Rx 5.23% Dx + Rx Hyperlipidemia 5.32% 0.22% Dx Only 14.87% 6.85% Dx Only 3.82% Rx Only 2.78% Rx Only 4.53% Dx + Rx 8.78% Dx + Rx Hypertension 13.09% 0.45% Dx Only 18.95% 6.05% Dx Only 8.11% Rx Only 4.12% Rx Only Copyright 2008 Johns Hopkins University 11
  • 12. Stratifying Whole Populations • Multimorbidity – Understanding and measuring • Classification of health need – Stratification of disease popultions • Multiple purposes • Validation on whole populations – Generalisable? Copyright 2008 Johns Hopkins University 12
  • 13. Co-Morbidity is key – Multiple morbidities encountered in UK GP practices Average consultation in elderly involves someone with 1.9 QOF diseases and 6.7 chronic diseases using ACG/EDC chronic disease designations Source: Salisbury et al. From GPRD data, 488 practices 2005-2008 Copyright 2008 Johns Hopkins University 13
  • 14. Co-morbidities are the norm for those with common “index” chronic conditions (US 65+) Diabetes 9% 22% 21% 21% 27% Heart Disease 11% 21% 25% 24% 19% Arthritis 12% 22% 23% 22% 21% Hypertension 17% 24% 23% 20% 16% 0% 20% 40% 60% 80% 100% Single Condition Condition + 1 Condition + 2 Condition + 3 Condition + 4+ Source: From US Medicare (65+) data . Partnership for Solutions, Johns Hopkins University Copyright 2008 Johns Hopkins University 14
  • 15. Risk Stratification – Endocrine Disorders Source: Ashton Leigh Wigan PCT, Pilot Project Copyright 2008 Johns Hopkins University 15
  • 16. Case Management and Disease Management: Identification of individuals at risk • Disease Management, Wellness Program Identification – E.g. Diabetes, Hypertension Pharmacy Gaps, Poorly Controlled Asthma, Untreated Schizophrenia • Case Management Program Identification – E.g High Medical Needs, Emerging Risk, High Risk for Poor Coordination, Potential Home Health Needs • Pharmacy Management Program Identification – E.g. Poly-pharmacy and Medication Gaps / No Ambulatory Care, High Rx Users • Utilization Management Program Identification – E.g. High Risk for Hospitalization, Emergency Room for Primary Care, Risk for High Utilization Copyright 2008 Johns Hopkins University 16
  • 17. Identify high risk members of population based on multi-morbidity oriented “Relative Risk Score” • Risk predicted to increase • Total costs predicted to increase • 7 chronic conditions • 13 doctors Copyright 2008 Johns Hopkins University 17
  • 18. Patient risk information in support of GPs, Community Matrons • Numerous co-morbidities • At risk for future hospitalization • ER Visit with no admission • Poly-pharmacy use • Tobacco Use Copyright 2008 Johns Hopkins University 18
  • 19. Patient View: Comprehensive Patient Clinical Profile Context for Forming Care Management Strategies. Copyright 2008 Johns Hopkins University 19
  • 20. Current Challenges • Recognizing Multimorbidity – Recording of diagnoses, patterns • Cost data • Pharmacy data – Prescribed v Dispensed (possession?) • Integrated records – GP, OP, A&E, IP, MH, Social Care • Other data – Functional status, Health Risk factors, Health Status, Individual Data Copyright 2008 Johns Hopkins University 20
  • 21. The Future • Ensuring Risk Stratification is fit for purpose • Complimenting case management • A means to an end, not an end in itself, supporting effective care management and equity • Integrated care, integrated data and information support • Understanding individuals’ morbidity burden Copyright 2008 Johns Hopkins University 21