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Early Intervention: An Outcomes Based Evaluation of Disparity in Access Taletha M. Derrington, M.A. and Beppie J. Shapiro, Ph.D. Center on Disability Studies, College of Education, University of Hawai`i www.seek.hawaii.edu, taletha@hawaii.edu, beppie@hawaii.edu,
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Definitions Early Intervention – Part C of IDEA, a mandated system of services for babies under age 3 with special needs (EI) Child find – Efforts to ensure that babies with special needs are identified and referred to early intervention
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Context Required Child Find function Community programs No history of evaluation
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Context Infant Toddler Development Programs Delays in 2 domains Public Health Nursing Sections Medical condition or single delay Service areas Geographically defined for rural areas Parental choice for urban areas (2/3 state population)
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Why Did We Study Disparity? National focus on disparities in health care - Minority ethnicity - Low income - Recent immigrants - Limited English proficiency –Homelessness –Uninsured
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What Demographics Predict Disparity? Ethnicity vs. SES
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Unfortunate Coincidence Family demographics predict child delays Same family demographics predict less access to services
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Processes Studied for Equity in Access Public Awareness: Media campaigns, brochures, public education Identification: Parent or professional notices a child’s need Referral to an EI program: First EI record created Intake process at EI program Program contact with parent Intake record created Eligibility determination Enrollment If eligible and parent agrees Service record created
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Demographics Studied for Equity in Access Enrollment Referral Low-Income Uninsured Immigrant Limited English proficiency Military Homeless
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Metric for Equity in Access Ideally: compare # served with # in population (prevalence) Problem: prevalence either unknown or based on # served Assume: prevalence of EI eligible conditions evenly spread across all sub- populations % referred or enrolled = % in population
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How we measured prevalence Census is best population – wide data But census does not give statistics for children aged 0 – 3 So we had to estimate statistics for children 0 – 3 from Census statistics for children aged 0 – 18 or 0-5
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Example: 45,412 children aged 0 – 3/ 295,767 aged birth to 18 =.15 or 15% If census reports 1000 children 0 – 18 are poor, we calculate 1000 X.15 = 150 children 0 – 3 are poor. Note: new assumption – same % among poor as among total population Expect 15% of babies referred to EI to be poor.
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Data Sources Intake records at EI programs (1997) –4 ITDPs –2 PHNs Study-specific questions added to intake (1996-97) –6 ITDPs –5 PHNs –State information & referral line Statewide EI management information system (1997)
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ProcessSub-GroupIntake Study- Specific MIS Referral Low-Income 161286 No data Uninsured 161 No data Immigrant No data 286 No data Limited English proficiency No data 286 No data Military No data 286 No data Homeless No data Sample Sizes - Referral
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Sample Sizes - Enrollment ProcessSub-GroupIntake Study- Specific MIS Enrollment Low-Income 96 No data 911 Uninsured 96 No data 911 Immigrant No data 286 No data Limited English proficiency No data 911 Military No data 911 Homeless No data
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Data Analysis Determine if observed and population %’s differ using chi squared If so, calculate the effect size using “Relative Risk”
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And We Found…
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Income/Public Insurance Referral Public InsurancePoorPublic Insurance Enrollment
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Uninsured Children ReferralEnrollment
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Immigrants Referral
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Limited English Proficiency ReferralEnrollment
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Children in Military Families ReferralEnrollment
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Where Do We Go From Here? Limitations –1997 data; same in 2005? –Estimations for population comparison data
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Uninsured Children 56% less likely to be referred 66% less likely to be enrolled Disparity may be over-estimated Still a cause for concern
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Limited English Proficiency Self-report a limitation for both study and population figures Equity in referral Disparity in enrollment possible for families who speak only some English –Need for interpreter not recognized by program staff? –What happens between referral & enrollment?
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Children in Military Families Equity in referral Disparity in enrollment –Coordination with military Exceptional Family Member Program –What happens between referral & enrollment?
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Homelessness How can you study this without turning away needy families due to stigma? DataPrivacy
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Further Study Multiple risk factors Increased risk, over-representation, or over-referral?
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Group Discussion How can we address demographically based access barriers? –Uninsured –Limited English Proficiency –Military dependents What can we do to address difficult-to- study demographics? How can or should we use data collected several years before its publication?
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February 28, 2005 MAHALO! Please complete an evaluation for this session
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Contact & Reference Taletha M. Derrington, M.A. and Beppie J. Shapiro, Ph.D. Center on Disability Studies, College of Education, University of Hawai`i www.seek.hawaii.edu, taletha@hawaii.edu, beppie@hawaii.edu, Shapiro, B. & Derrington, T. (2004). Equity and Disparity in Access to Services: An Outcomes-Based Evaluation of Early Intervention Child Find. Topics in Early Childhood Special Education, 24(4), 199-212.
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