1 / 29

Quality Improvement Methodology – Next Steps

Quality Improvement Methodology – Next Steps. Purpose of this Session. Consider the components of a learning system in your own improvement activity : 4. Sequential testing of new theories 6. Planning for spread at scale

wilbur
Télécharger la présentation

Quality Improvement Methodology – Next Steps

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quality Improvement Methodology – Next Steps

  2. Purpose of this Session Consider the components of a learning system in your own improvement activity : 4. Sequential testing of new theories 6. Planning for spread at scale What stage are you at in relation to these aspects of the improvement journey? What do you need to do next to ensure that your tests are scaled up and spread correctly?

  3. Aim Measures Changes Testing & Implementation The Improvement Guide, API

  4. Cycles of Tests Build Confidence Changes that will result in improvement Learning from data Proposals, theories, hunches, intuition

  5. Startsmall • 1 child • 1 day • 1 family • 1 setting • Move to 3,5,7…. as confidence grows

  6. Years Quarters Months Weeks Days Hours Minutes You can only learn as quickly as you test! Drop down next “two levels” to plan test cycle!

  7. Components of a Learning System • System level measures • Explicit theory or rationale for system changes • Segmentation of the population • Learn by testing changes sequentially • Use informative cases: “Act for the individual learn for the population” • Learning during scale-up and spread with a production plan to go to scale • Periodic review • People to manage and oversee the learning system From Tom Nolan PhD, IHI

  8. Sequential Testing & Scale Up Aim Achieve improved communication process for HV and SW handovers using standardised format Sustain in practice and spread to other areas Data/learning/adapting Implement Cycle 6: Test all handovers-1 week Cycle 5: other team HVs/SWs- 1 day Cycle 4:Test with all handovers-1 HV/1week Cycle 3: Test with 5 more families/ same HV (Mon/Tu) Hunch/Theory A structured handover will ensure accurate information sharing between prof teams Cycle 2: Test with 3 family handovers/ same HV (Wed) Cycle 1: Test developed handover form 1 HV/1 SW 1 family (Mon)

  9. Learning Through Sequential Testing Where are you currently? Can you describe an example of the following? Multiple tests with different people/under different conditions? Learning/data captured to describe your testing journey?

  10. Testing v Implementation Testing – Trying and adapting existing knowledge on small scale. Learning what works in your system. Multiple tests in a variety of conditions………………… Implementation– Making the change a part of the day-to-day operation of the system. Permanent change Would the change persist even if its champion were to leave the organisation? Avoid implementation until confident that processes are robust

  11. How ManyTests?

  12. Components of a Learning System • System level measures • Explicit theory or rationale for system changes • Segmentation of the population • Learn by testing changes sequentially • Use informative cases: “Act for the individual learn for the population” • Learning during scale-up and spread with a production plan to go to scale • Periodic review • People to manage and oversee the learning system From Tom Nolan PhD, IHI

  13. A Framework for Spread • Leadership • Topic is a key strategic initiative • Goals and incentives aligned • Executive sponsor assigned • Day-to-day managers identified Measurement and Feedback • Social System • Key messages • Communities • Technical support • Transition issues • Set-up • Target population • Adopter audiences • Successful sites • Key partners • Initial spread plan • Better Ideas • Develop the case • Describe the ideas Communication (awareness & technical) Knowledge Management Institute for Healthcare Improvement

  14. Things to Consider • Checklists For Spread • Leadership, Better Ideas & Set Up • General Communication & knowledge • transfer • Developing Measurement, Feedback • and Knowledge Management Systems

  15. Are You Ready for Scale up & Spread? In the context of your current improvement activity: Have you been testing a theory so that it could be considered ready for implementation in the area you are working? and/or… Do you have a strategy for moving to scale up and spread to other sites/teams?

  16. The Seven Spreadly Sins Step 1 Start with large pilots Step 2 Find one person willing to do it all Step 3 Expect vigilance and hard work to solve the problem Step 4 If a pilot works then spread the pilot unchanged Step 5 Require the person and team who drove the pilot to be responsible for system-wide spread Step 6 Look at process and outcome measures on a quarterly basis Step 7 Early on expect marked improvement in outcomes without attention to process reliability Institute for Healthcare Improvement

  17. Sustaining Improvement Having the correct measures to provide assurance that new processes are reliable Measuring compliance or satisfaction through regular and random sampling of the population Understanding the variation that exists in your data

  18. What measures? Outcome measures – directly relates to the overall aim what is the result? how is the system performing? Process measures – are the processes that contribute to the aim performing as planned? Balancingmeasures – assessing from different dimensions unanticipated consequences, other factors influencing the outcome

  19. N T V R If we don’t understand the variation that lives in our data, we will be tempted to… O I A A I • Deny the data as it doesn’t fit with our view of reality • See trends where there are none • Try to explain natural variation as special events • Blame and give credit to people for things over which they have no control • Distort the process that produced the data • Kill the messenger!

  20. Common Cause Variation

  21. Measurement of Improvement Define measures that will measure the impact of the Improvement work over time They will guide your progress through and beyond testing to implementation and monitoring for continuous improvement. Different ways of measuring e.g., • Percent compliance with process • A count of correct attempts/number of attendances • Verbal feedback /surveys

  22. Why a run chart and not just a graph or table? Run Chart Prompt sticker used on all referrals Testing screening tool with 3 Families Prompt sticker tested in case referral Median = 84% Testing screening tool with 5 families Testing screening tool with 1 family Testing with all Families Month HC Data Guide

  23. Non-Random Rules For Run Charts A Shift: 6 or more A Trend: 5 or more Too many or too few runs An astronomical data point Source: The Data Guide by L. Provost and S. Murray, Austin, Texas, February, 2007:

  24. What is this data telling you? Month Data 11 1 3 4 5 9 10 4 11 7 10 10 7 6 22 4 2 2 1 3 4

  25. What is this data telling you? Astronomical Point Shift Median = 5 Trend Shift Month Median 1 1 2 2 3 3 4 4 4 4 5 6 7 7 9 10 10 10 11 11 22

  26. Measurement Principles • Develop aims before measuring • Design measures around aims ‘How Good By When’ • Be clear on your operational definitions • Establish a reliable baseline • Track progress over time using annotated run charts • Teams need measures to give them feedback that the changes they are making are resulting in improvement • Need to understand common cause and special cause variation to ensure we don’t over/under react to situations

  27. Appreciation of a System • Complex system of interaction between people, procedures and equipment • Success depends on integration, not performance of individual parts • Theory of Knowledge • Change is prediction of improvement • based on knowledge of the system • Learning from theory, experience • Operational definitions are the basis • for improvement with PDSA cycles for • learning • Psychology • Interaction of people with systems • Motivation & will of individuals & teams • Situation awareness/decision making • Managing stress and fatigue • Helps planning for change management Improvement • Understanding Variation • Variation is to be expected – everything we measure varies • We make decisions based on interpretation • Data over time – data story of what has been happening Aims & Values

  28. What’s the Scope of Change? System Targeted for Implementation(Defined by Aim) Single-unit prototype: segments As you move from pilot testing to implementation to spread, your population of interest will need to be adjusted. Spread to Total System(Additional units, sites, organisations)

  29. Thank You

More Related