improving data, improving outcomes

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Robert L. Fischer, Ph.D., Claudia J. Coulton, Ph.D., & Seok-Joo Kim, Ph.D. Center on Urban Poverty & Community Development Jack, Joseph and Morton Mandel School of Applied Social Sciences Case Western Reserve University Cleveland, Ohio September 16, 2013; Washington, DC “Improving Data, Improving Outcomes” How Can Partnerships with Higher Education Help Your State Agency Use Early Childhood Data for Decision-Making?

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Page 1: Improving Data, Improving Outcomes

Robert L. Fischer, Ph.D., Claudia J. Coulton, Ph.D., & Seok-Joo Kim, Ph.D.

Center on Urban Poverty & Community Development Jack, Joseph and Morton Mandel School of Applied Social Sciences

Case Western Reserve University Cleveland, Ohio

September 16, 2013; Washington, DC

“Improving Data, Improving Outcomes”

How Can Partnerships with Higher Education Help Your State Agency Use Early Childhood Data

for Decision-Making?

Page 2: Improving Data, Improving Outcomes

Overview

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• State-wide resource in Ohio (Ohio Educational Research Center)

• Local data system in Cuyahoga County (Cleveland)

• Leveraging existing data to answer new questions

• Recommendations for pursuing this kind of work

Page 3: Improving Data, Improving Outcomes

Overview

Educational Data Projects from State to Local.

State

County

Local

OERC

CHILD system

Projects (examples)

Ohio

Cuyahoga

Cleveland

Area Project

• Education projects • Collaboration with

partners

Implementation Level

• Database for children • Geographic analyses

I. Health care II. Homeless family III. 3rd Grade reading*

*OERC project

Researcher

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Page 4: Improving Data, Improving Outcomes

State: The OERC

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The Ohio Education Research Center (OERC), is a network of Ohio-based researchers and research institutions, that develops and implements a statewide, preschool-through-workforce research agenda to address critical issues of education practice and policy. • Provide timely and high quality evaluation &

research products • Maintain a research data base • Bridge needs, research, practice & policy • Bring together resources to improve access to knowledge

Page 5: Improving Data, Improving Outcomes

Cleveland, OH

Ohio Education Research Center

State: The OERC

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Current Projects

Investigating the pathway to proficiency from Birth

through 3rd grade

Standards / Assess- ments

State Success Factors

Teachers &

Leaders

STEM Education Initiatives

Future-Ready

Students

Early Childhood Education

Improve- ment &

Innovation

Improving with Data

Cleveland, Ohio

Page 6: Improving Data, Improving Outcomes

County: CHILD system

• Data helps inform our understanding of the early childhood system

• Individuals and families interact with multiple systems and services, so integrated data offers a more complete view of reality [“Big Data”]

• Understanding of how systems work and how to better meet existing needs can be informed by integrated data

• Service models emphasize long term and collective impact, so data needed across services and over time

The Need for Integrated Data.

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Page 7: Improving Data, Improving Outcomes

ID6

ID5 ID4

ID3

ID2 ID1

• Abuse/neglect reports • Involvement with

ongoing services

• Home visiting • Special needs child care • Early childhood mental

health • Universal pre-k

• Attendance • KRA-L • Proficiency test • Graduation test • Disability

• Medicaid • Food Stamp • TANF • Child care voucher

• Infant mortality • Elevated Blood Lead

• Teen births • Low weight birth

County: CHILD system

Concept.

Public Assists

Public School

Common ID

ChildHood Integrated

Longitudinal Data (CHILD) System

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Page 8: Improving Data, Improving Outcomes

County: CHILD system Structure.

Geocode & Standardize

Updated IDS Register-includes ID#’s, names, addresses, DOB, etc.

IDS Register-includes ID#’s, names, addresses, DOB, etc. Outcomes

E.g. Kindergarten Readiness Scores among children in UPK program

Profiles E.g. Birth characteristics & service use for children entering kindergarten

Geographic E.g. % LBW births receiving ongoing home visits by neighborhood

Time Trends e.g. Total Children Served by birth cohort

Data files-Births, Home

Visiting, DCFS, UPK, KRA-L, Medicaid, etc.

Longitudinal Master Files for Each Data Source

REPORTS

Match New Records to IDS Register

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Page 9: Improving Data, Improving Outcomes

Geographic Analyses

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Indicators County District 2 (2008)

County District 8 (2008)

Cuyahoga County (2008)

Births 1,443 1,877 16,246

# Teen Births, mother’s age 10-14 (per 1,000) 2 (1) 12 (2) 42 (1)

# Teen Births, mother’s age 15-19 (per 1,000) 124 (39) 358 (79) 2,031 (41)

% Mothers without High School diploma 14% 32% 19%

% Low Birth Weight 9% 14% 10%

% Premature Low Weight Births 6% 9% 7%

% Mothers w/adequate prenatal care 52% 42% 53%

% Mothers w/out prenatal care 1% 2% 1%

% Healthy Births 53% 36% 49%

# Infant Death (per 1,000 births) 10 (7) 29 (15) 164 (10)

Page 10: Improving Data, Improving Outcomes

Cleveland Metropolitan School District Profile

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Indicators Kindergarten 2008-9 Cleveland Cuyahoga

County

% Teen Births, mother’s age 10-14 <1 <1 <1

% Teen Births, mother’s age 15-19 22.4 16.7 9.8

% Mothers without High School diploma 41.7 30.2 15.9

% Low Birth Weight 12.6 11.6 9.4

% Premature Low Weight Births 8.7 8.2 6.7

% Mothers w/adequate prenatal care (Kessner Index) 63.1 69.4 81.3

% Mothers w/out prenatal care 1.9 1.9 .9

% Health Births 56.4 61.5 70.9

% Children with a substantiated or indicated report of abuse/neglect by age 4 12.1 9.6 5.1

% Children referred to ongoing services with Child & Family Services by age 4 19.8 14.7 7.6

% Children with any report of abuse/neglect by age 4, including substantiated and unsubstantiated 35.2 26.7 14.7

% Children in households receiving Food Stamps in 2008 76.9 51.1 28.8

% Children in households receiving Cash Assistance in 2008 19.0 11.3 6.1

Page 11: Improving Data, Improving Outcomes

Data Influence Examples

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1) More children have access to health care via public insurance, but are they using it?

2) How are homeless families involved with child welfare services?

3) What children will be most impacted by the State’s 3rd Grade reading Guarantee?

Page 12: Improving Data, Improving Outcomes

Local Example I: Child Health

• Dramatic increase in health insurance coverage for children ages 0-6 in the county: Hooray!

• But only 43% of children get all the recommended well-child visits in the first year of life: Oh no!

• Data show that 49% of these families were involved with supportive services close to birth, so we can use that connection to reach families: Hooray!

• But wait, due to data lags and coordination issues, outreach would happen too late to have an effect: Oh, no!

• A preventive approach could be adopted by having dedicated staff at clinics reach out to families…

• Result o Medical Home Pilot launched at two health clinics; 86% of families

completed scheduled well-child visits, double the rate for children born on Medicaid in Cuyahoga County; one clinic has integrated the model into care with 9 patient advocates serving the needs of families with infants

Summary.

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Page 13: Improving Data, Improving Outcomes

Local Example II: Homeless Families

• County undertaking social impact bond approach to social services o Fund preventive services that pay for themselves through lower use of

later high-cost services • Focus on homeless families who are also involved with child welfare

services o High-costs associated with of out-of-home placements and shelter stays

• Found that 30% of women in shelter had children involved with welfare agency o 52% of these women had no children with them in shelter o 25% of their children were in a foster care placement

• County developing strategies to intervene with mothers before they become homeless and to intervene when mothers enter shelters

Summary.

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Page 14: Improving Data, Improving Outcomes

Example III: 3rd Grade Reading

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Study Significance. • Importance of early childhood exposures o Early exposure to stressful circumstances, environmental hazards, and less than

optimal early learning environments negatively and persistently affect early development.

• Usefulness of longitudinal data • State adopted ‘3rd Grade reading Guarantee’ to ensure that students pass

reading proficiency test before advancing beyond 3rd grade • Districts can project how many of their students will be held back when the

policy is implemented • What is less understood is o What early childhood factors best predict the students who will be impacted by

this policy? o What early childhood interventions appear to lessen the odds a child will not

attain third grade reading proficiency?

Page 15: Improving Data, Improving Outcomes

Example III: 3rd Grade Reading

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Cohort Design.

Cohort 1

Cohort 2

Cohort 3

Cohort 4

B 3rd K

B 3rd K

B 3rd K

B 3rd K

2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 Year

Collected

Recently collected

Will be collected

Page 16: Improving Data, Improving Outcomes

Birth

Home Visits Medical

Pre-K

Child Care

Nhood / Residence

Family Economic

3rd K

• Birth weight • Maternal risk • Housing distress

• Abuse/Neglect • Out-of-home placement

• Access to well-child care

• Cash assist/ Poverty

• Food insecurity

• Newborn home visit • Help Me Grow • Mom’s First

• Out-of-home child care

• Public preschool • Universal Pre-K

Pilot

• Nhood condition • Housing distress • Residential instability

Child Welfare

• KRA-L • STAR • STAR Early Literacy • NWEA MAP • OAA • Benchmark Assessments

K-3 Outcomes

1st

Example III: 3rd Grade Reading

Conceptual model

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Page 17: Improving Data, Improving Outcomes

Example III: 3rd Grade Reading

• Sample (N=3,679): Children who took KRA-L in 2007 & 2008 and 3rd grade proficiency test in 2010 & 2011 in Cleveland Metropolitan School District, OH.

• Sample and variables will be updated.

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Current Process

Educational Information % Demographic / Welfare / Neighborhood %

Pass of 3rd grade readting test 55.7 Girl 49.7

KRA-L band 1 (Score 1-13) 38.1 Hispanic 10.6 KRA-L band 2 (Score 14-23) 44.6 African-American 69.3 KRA-L band 3 (Score 24-29) 17.3 Other race 4.3

White 15.8 Below 11% of attendance at Kindergarten 29.7

TANF + (Medicaid or SNAP) at Kindergarten 17.3 Reported disability before 3rd grade 14.5 Medicaid or SNAP at Kindergarten 67.4

No assistance at Kindergarten 15.3

Living a census tract with poverty rate above 30% at Kindergarten

49.4

(Substantiated or indicated) maltreatment before Kindergarten

17.5

Page 18: Improving Data, Improving Outcomes
Page 19: Improving Data, Improving Outcomes

Example III: 3rd Grade Reading

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Implications.

• Collaboration with Cleveland Metropolitan School District oData Sharing oUses

- Building profiles - Community collaborative planning - Risk factor reduction

• Helpful to establish educational planning; especially schools with large numbers of disadvantaged students

• Understand challenges for 3rd grade guarantee

Page 20: Improving Data, Improving Outcomes

Discussion

Observations… • Data don’t make policy… People with data make policy • Policy shapes research • Everyone wants outcomes… few want to pay for them (or

pay very much) • Great divides need to be bridged in terms of institutional

practice and philosophy

Data into Practice

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Page 21: Improving Data, Improving Outcomes

Discussion

• Data inclusion decisions oRelevance oContinuity oCorrect geography

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Ongoing Challenges for Integrated Data.

• Data usage issues oData access oData quality oData linkage

Page 22: Improving Data, Improving Outcomes

Discussion

Recommendations.

• Identify what data exist and in what form it exists; consider partnering with universities in this work

• Become familiar with relevant federal and state laws and policies regarding data sharing/use

• Convene interested parties – data holders and data users – to discuss the opportunities to learn from integrated data

• Pilot data matching procedures to demonstrate how specific questions can be answered

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Page 23: Improving Data, Improving Outcomes

Discussion

• Institute of Education Sciences has funding work to integrate data related to young children

• US Department of Education Race to the Top funds can be used for longitudinal data systems using integrated data

• Various federal funding opportunities exist for studies that could develop and draw on integrated data systems

• MacArthur Foundation very interested in use of integrated data

Funding Prospects.

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Page 24: Improving Data, Improving Outcomes

Thank you! Q / A

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Contact Information: Robert Fischer, Ph.D. ([email protected]) Resources

• Ohio Education Research Center: http://oerc.osu.edu/ • Center on Urban Poverty & Community Development: http://povertycenter.case.edu/ • NEO CANDO: http://neocando.case.edu/

State

Local

County