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Background. ? of states are pursuing development and implementation of health information exchange (HIE)New York State is investing $250 million in infrastructure for health information technology (health IT) and HIELargest state-based investment of taxpayer dollars. . www.staterhio.org, www.heal
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1. Developing a Metric Set for Measuring and Reporting Ambulatory Quality of Care in the Setting of Health IT with HIE Lisa M. Kern, MD, MPH
Rina V. Dhopeshwarkar, MPH
Rainu Kaushal, MD, MPH
HITEC
Cornell University
New York-Presbyterian Hospital
2. Background ľ of states are pursuing development and implementation of health information exchange (HIE)
New York State is investing $250 million in infrastructure for health information technology (health IT) and HIE
Largest state-based investment of taxpayer dollars
3. HEAL NY Program HEAL NY: Healthcare Efficiency and Affordability Law for New Yorkers Capital Grants Program
Funding distributed in waves:
1st wave in 2006
2nd wave in 2008
Projects include both health IT and HIE
Grantees were required to evaluate the effects of their projects
4. HITEC: The Health Information Technology Evaluation Collaborative A formal collaborative of 4 universities in New York (Cornell, Columbia, SUNY Albany, University of Rochester)
Established with the endorsement of the New York State Department of Health
Established to conduct rigorous evaluations of HEAL NY projects in order to maximize learning and produce generalizable results
5. How do you measure the impact on health care quality of health IT with HIE?
6. Limitations of Existing Metric Sets Existing metric sets developed to evaluate the quality of healthcare delivered in an ambulatory care setting:
Rely on manual chart review (expensive and laborious)
Claims data (lack clinical nuance)
Do not presume communication between health care providers
Not designed to take into account incremental effect of receiving clinical data from outside sources
7. Specific Aims Develop a modified set of quality metrics that can be retrieved electronically and is sensitive to the types of improvements in quality that health IT with HIE may contribute to the ambulatory care setting
Validate the modified quality metrics set through review by a panel of national experts in quality measurement and national experts in HIE
To test the reliability of electronic retrieval of the modified quality metrics set, by comparing electronic retrieval to manual retrieval
To evaluate the long-term effects of using health IT with HIE on improving health care quality, using the modified metric set
8. 8 Conceptual Framework
9. 9 Overall Methodology in Brief Conduct a literature review for existing ambulatory care quality metric sets.
Determine if any of the metrics retrieved should be excluded.
Articulate the domains and assumptions upon which each metric would be rated.
Rate the existing metrics.
Develop novel metrics.
10. 10 Inclusion Criteria for Metric Sets Included metric sets had to be:
Endorsed by
A national quality organization,
A national professional organization, or
A national research organization,
OR
Specifically address quality of transitions across health care settings
Included metric sets could be general or disease-specific
11. 11 Exclusion Criteria Not in the ambulatory setting
Emergency department care was excluded.
Not adult primary care
Obstetrics, pediatrics, cancer care and HIV care were excluded.
Provider, practice or health plan characteristics
Satisfaction or experience of patients or providers
12. 12 Metric Selection (continued)
13. Rating Process: Round One Each metric was reviewed by 2 raters on 2 dimensions, each on a scale from 0-6
Impact of HIE on medical decision making
Suitability for electronic reporting
Ratings were summed across dimensions and averaged across raters
59 metrics scored high (=9 out of 12)
14. Rating Process: Round Two Each metric was reviewed by several raters on 5 dimensions, each on a scale from 0-6
Feasibility of delivering data electronically
Impact on medical decision making
Clinical importance
Feasibility of reporting data electronically
Global rating (4-7 raters for each metric)
Ratings were averaged across raters for the global rating
18 scored high (=4 out of 6)
15. Diseases Represented by Top-Scoring Existing Metrics Asthma (1 metric)
Cardiovascular Disease (3)
Congestive Heart Failure (1)
Diabetes (4)
Medication/Allergy Management (2)
Mental Health (1)
Osteoporosis (1)
Prevention (5)
16. Novel Metrics Developed through an iterative process with national quality experts
Cover topics related to efficiency and coordination of care
Test Ordering (3 metrics)
Medications (4)
Referrals (2)
Revisits (3)
17. Next Step Test reliability of electronic reporting vs. manual chart review for selected existing metrics and for novel metrics
19. Assumptions for Determining EHR+HIE Sensitivity We assumed the perspective of a primary care physician who has the following characteristics:
Is board-certified and competent
Has been in a community-based practice x 10 years
Has a relatively stable panel of patients
Has an electronic health record (EHR), which is linked only to generalist partners
Is in a practice with the technical capacity to participate in an HIE
20. Factors Relevant for RatingEHR+HIE Sensitivity Whether needed data elements would be missing in the absence of HIE (Relevance)
Ease of electronic transmission of data elements to the provider (Feasibility)
Impact of electronic transmission (Impact) on:
Processes of care and/or patient outcomes
Utilization
21. Factors Relevant for RatingSuitability for eReporting How commonly this metric appears in other quality metric sets (Importance)
How often the data needed for this metric are currently structured (Feasibility)
If data are not currently structured, how easy would it be technically to create a structured format (Feasibility)
22. Factors Relevant for RatingSuitability for eReporting How much electronic reporting would rely on providers’ style of documentation (Physician burden)
How valid an electronically reported version of this metric would be (Validity)