Title: Using Data To Guide Continuous Improvement: Data Analysis
1Using Data To Guide Continuous Improvement Data
Analysis
- OSEP National Early Childhood Conference
- February 7, 2005
- Accountability and System Improvement
- Work Group
2Purpose of the Workshop
- To provide states and lead agencies with an
experience in systematically analyzing data from
multiple sources, in order to make informed
decisions in identifying strategies for improving
outcomes for infants, toddlers, preschoolers and
their families and compliance.
3Outcomes for Participants
- Gain a deeper understanding of the role of data
analysis in continuous improvement planning - Learn how to turn data into meaningful
information that can be used to improve services
and results for infants, toddlers, and
preschoolers with disabilities and their families
4OSEPs Accountability Strategy
5OSEPs Accountability Strategy
Focused Monitoring
High Risk
Continuous Improvement
System Verification
Inquiry Level I Information Review Level
II SEA/LA State Visit Level III SEA/LA and
Local Level State Visit
Intervention Technical Assistance Revision to
Annual Performance Report Required Targeted
Corrective Action Plan Sanctions
6Merging Reporting Requirements
- Monitoring Priorities and Timelines (Clusters,
Probes) - Targets
- Improvement Activities
- Timelines, Resources
State Performance Plan
APR
- Performance on Targets
- Explanation of Progress and Slippage
- Revisions to Activities, Timelines, Resources and
Targets
Annual Performance Report
7Elements of a Continuous Improvement Process
- State Performance Planning
- Self-Assessing
- Improvement Planning
- Data Analysis
- Target Setting
- Future Activities/Strategies
- Improvement Plan Implementation
- Reporting-Annual Performance Report
Keep needs revisions?
8Data Analysis
9Data Analysis
- Compare present levels of system performance to
baseline and targets - to formulate educated guesses (hypotheses),
- to identify strengths and weaknesses, and
- to determine areas for improvement through a
systematic examination of performance data.
10Why is systematic data analysis important?
- Check Assumptions
- Target Limited Resources
- Set High Expectations
- Heighten Accountability
- Focus on Continuous Improvement
- Examine Results
11Data analysis use - considerations
- Get ready what do you know already?
- Identify areas for comparison.
- Examine trends and relationships.
- Identify and define (possible) problem areas.
- Review and evaluate data to determine hypotheses.
- Develop potential improvement strategies.
- Evaluate how did the interventions work?
- What are alternate hypotheses?
12EXERCISE
- Part 1 Indicators Measures
- Part 2 Baseline/Trend Data
- Part 3 Analysis
- Part 4 Future Targets
13Wrap-up
14Why is this important?
- Focus improvement efforts
- Target scarce resources
- Improve results for children with disabilities
15Thanks to the Accountability and System
Improvement Work Group
- EspeciallyMarsha Brauen, Lynne Kahn, Jane Nell
Luster, Kristen Reedy, Jim Henson, and Dick
Zeller - and
- OSEP StaffLarry Ringer, Rex Shipp,
- Rhonda Spence, and Maral Taylor