National Outcome Measures: Using Data to Show the Way Forward Second Canadian Roundtable on Child Welfare Outcomes Fred Wulczyn, Ph.D.
slide 2 Objectives You have the data - now what? Methods/analysis - getting a clearer picture Risk or case mix adjustment Better methods/better questions Analysis - using the data to manage (reduce and induce) variation Linking outcomes and finance Admission, duration, and unit cost strategies
slide 3 BD: Before there was data Fact or Fiction - how much did it matter?
slide 4 AD: After we have data
slide 5 Develop a theory of change (Tell a story but no more fiction) Look for differences This happens more often for this group This isn’t as common in this part of the province Develop an intervention or interventions If we do this this will happen more often Asking good questions is important
slide 6 What is this notion of risk or case mix adjustment? Why does performance vary? Provinces Providers Children and families Why do we care? Promotes better theories of etiology and intervention Targeting may improve effectiveness
slide 7 Incidence per 1000: The Likelihood of Placement
slide 8 Variation in Incidence Place and Age
slide 9 Placement Stability - Creating a better measure Two views of stability Who is at risk? When is the risk highest? Moves per child addresses the first Moves per day does a better job with the first but not the second.
slide 10 Ask ‘Richer’ Questions: 3 view of stability Percent of children Moves per 100 days Moves per 100 days by time in care who moved at least once
slide 11 Monitoring Looking for whether the changes you made induced the change you were looking for Depends on a baseline
slide 12 Time to Permanency Median Duration
slide 13 Digging Deeper How important is it? A hypothetical: Two counties each working to improve permanency. The counties have selected different strategies. After a period of time, the public agency pulls everyone together. The question: with the resources we have, which intervention represents the better bet? Vital statistics Children served: 350 in each Success
slide 14 Conclusion: Invest resources in the County B intervention because the permanency rate is higher. Children will go home sooner and tax dollars will be spent more wisely Everybody is a winner.
slide 15 What a minute: Are you sure? What gives? Permanency rates in County A are actually higher. Why the difference? County B serves more Type A children. Type A children have higher overall permanency rates than Type B children; thus the aggregate data show a different result. New Conclusion County A’s program is probably the better bet
slide 16 Return on Investment - Shifting the dialogue Spending vs. investment ‘Purchase’ more of what works, less of what does not Underscores the importance of outcomes Know what and why you do what you do Underscores the importance of data for looking back in time and for setting goals and expectations.
slide 17 Basic Fiscal Model Revenue = Units * Unit Cost
slide 18 Link Outcomes and Funding
slide 19 Take Away Gathering data is only the start Collecting data begs the question: “What do you mean?” Data dramatically improves the possibility of success Data is central to the rights of children and families