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Sandra M. Chafouleas; Dakota W. Cintron; Jessica B. Koslouski; Amy M. Briesch; D. Betsy McCoach; Jennifer N. Dineen – Grantee Submission, 2024
Introduction: Leadership support has been identified as a key facilitator to successful implementation of school-based initiatives. School leadership contributions to student academic success and school reform have been documented, but less work has focused on the effects of leadership on school mental health initiatives such as social, emotional,…
Descriptors: School Districts, School Administration, Administrator Attitudes, Student Needs
Thompson, Aaron M.; Huang, Francis; Smith, Tyler; Reinke, Wendy M.; Herman, Keith C. – School Mental Health, 2021
The purpose of this paper is to confirm the factor structure, examine the invariance, and investigate the predictive validity using disciplinary data for 5262 high school students who completed the Early Identification System--Student Response (EIS-SR). The development and theory of the EIS-SR is discussed along with prior work. Building off of…
Descriptors: Factor Structure, Factor Analysis, Predictive Validity, Identification
Sheldrick, R. Christopher; Frenette, Elizabeth; Vera, Juan Diego; Mackie, Thomas I.; Martinez-Pedraza, Frances; Hoch, Noah; Eisenhower, Abbey; Fettig, Angel; Carter, Alice S. – Journal of Autism and Developmental Disorders, 2019
U.S. guidelines for detecting autism emphasize screening and also incorporate clinical judgment. However, most research focuses on the former. Among 1,654 children participating in a multi-stage screening protocol for autism, we used mixed methods to evaluate: (1) the effectiveness of a clinical decision rule that encouraged further assessment…
Descriptors: Autism, Pervasive Developmental Disorders, Children, Screening Tests
Emam, Mahmoud Mohamed – Emotional & Behavioural Difficulties, 2018
Identification of children who exhibit emotional and behavioural difficulties (EBDs) has been prioritized in several countries in the Middle East and North Africa (MENA) region including Oman. Research showed that cognitive attribution processes are biased and defective in atypical populations such as students with learning disabilities (LD). The…
Descriptors: Predictor Variables, Emotional Disturbances, Behavior Problems, Learning Disabilities
Rasberry, Catherine N.; Liddon, Nicole; Adkins, Susan Hocevar; Lesesne, Catherine A.; Hebert, Andrew; Kroupa, Elizabeth; Rose, India D.; Morris, Elana – Journal of School Nursing, 2017
This study examined predictors of having received HIV and sexually transmitted disease (STD) testing and having been referred by school staff for HIV/STD testing. In 2014, students in seven high schools completed paper-and-pencil questionnaires assessing demographic characteristics, sexual behavior, referrals for HIV/STD testing, and HIV/STD…
Descriptors: School Personnel, Statistical Analysis, Sexually Transmitted Diseases, Acquired Immunodeficiency Syndrome (AIDS)
Splett, Joni W.; Trainor, Kathryn M.; Raborn, Anthony; Halliday-Boykins, Colleen A.; Garzona, Marlene E.; Dongo, Melissa D.; Weist, Mark D. – Behavioral Disorders, 2018
Despite schools increasingly adopting multitiered systems of support (MTSS) for prevention and intervention of mental health concerns, many are slow to adopt universal mental health screening (UMHS), a core MTSS feature, due to concerns about their limited capacity to meet the needs of all identified. In this study, we examined differences in the…
Descriptors: Comparative Analysis, Child Behavior, Rating Scales, Mental Health
Lawrence, K. S. – National Center on Schoolwide Inclusive School Reform: The SWIFT Center, 2016
This brief describes how to use a free online behavior screener to identify student support needs in middle and high schools. Inclusive Behavior Instruction utilizes data to identify appropriate social-emotional supports for all students. The Lane et al. (2016) study demonstrated system-wide use of a free online behavior screener at the middle and…
Descriptors: Screening Tests, Student Behavior, Behavior Problems, Middle School Students
Jennings, Danielle J.; Hanline, Mary Frances – Topics in Early Childhood Special Education, 2013
This study researched the predictive impact of developmental screening results and the effects of child and family characteristics on completion of referrals given for evaluation. Logistical and hierarchical logistic regression analyses were used to determine the significance of 10 independent variables on the predictor variable. The number of…
Descriptors: Referral, Screening Tests, Family Characteristics, Regression (Statistics)
Jennings, Danielle J. – ProQuest LLC, 2012
Developmental screening programs identify young children with delayed skill growth or challenging behaviors and refer them to community agencies for evaluation or other services. This research studied the predictive impact of developmental screening results and child and family characteristics on the completion of these referrals for evaluation. A…
Descriptors: Screening Tests, Disability Identification, Young Children, Developmental Delays

Ysseldyke, James E.; O'Sullivan, Patrick J. – Journal of School Psychology, 1987
Examined ability of social, economic, and educational variables to predict screening referral rates among 398 school districts in statewide preschool screening program. Results from two studies indicated that screening referral rates were not related to broad social, economic, and educational factors in any simple way. Suggests implications for…
Descriptors: Economic Factors, Handicap Identification, Predictor Variables, Preschool Children

Maxon, Antonia Brancia; White, Karl R.; Culpepper, Brandt; Vohr, Betty R. – Journal of Communication Disorders, 1997
Describes factors that can affect the referral rate for otoacoustic emission-based newborn hearing screening and discusses the screening results of 1,328 newborns screened with transient evoked otoaoustic emissions prior to hospital discharge. The youngest infants were as likely to pass as infants who were 24-27 hours old. (Author/CR)
Descriptors: Age Differences, Auditory Tests, Evaluation Methods, Hearing Impairments

Roth, Maryann; And Others – Exceptional Children, 1993
Kindergarten children (n=161) screened with the "Early Prevention of School Failure" (EPSF) measure were examined several years later. Students who had been retained, referred to special education, or placed in special education demonstrated significantly lower EPSF scores. The fine motor and auditory modalities were the most powerful…
Descriptors: Academic Failure, At Risk Persons, Auditory Perception, Followup Studies

La Paro, Karen M.; Olsen, Kristin; Pianta, Robert C. – Exceptional Children, 2002
Analysis of data for the NICHD Study of Early Child Care revealed different prediction models for children (n=5,416). Early home environment, later behavior problems, and children's health problems contributed to identification by medical professionals, while early home environment and socioeconomic status contributed to identification based on…
Descriptors: Behavior Problems, Child Development, Child Health, Data Analysis