An algorithm for psychosocial screening of fragile families belonging to the Modena AUSL

Journal title MALTRATTAMENTO E ABUSO ALL’INFANZIA
Author/s Carlo Foddis, Rosalba Di Biase, Daniele Di Girolamo, Beatrice Manfredi, Lucio Silingardi, Rossella Miglio, Luca Milani
Publishing Year 2024 Issue 2023/3
Language Italian Pages 24 P. 85-108 File size 358 KB
DOI 10.3280/MAL2023-003006
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The research proposes an initial validation of the Psychosocial Risk/Risk Screening Parenting Algorithm (SRP), developed to support Child Protection Services in the assessment of refer-ring families. The SRP produces a predictive output of the risk of adverse childhood experi-ence (ACE) by processing information derived from: the Risk and Psychosocial Protection Factor Assessment Protocol (FdR-FP Protocol); the Parenting Stress Index (PSI - SF); the Strengths and Difficulties Questionnaire (SDQ). The participants were 122 minors (73 females; mean age 9.31 years; range = 0-17 aa; SD = 4.34). The results (Cramer’s V 0.541; p-value associated with Chi-square test < 0.001) show good margins of predictive ef-fectiveness of the instrument.

Keywords: Adverse Childood Experiences; Decision making; FdR-FP Protocol; Parenting Stress Index; Strengths and Difficulties Questionnaire.

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Carlo Foddis, Rosalba Di Biase, Daniele Di Girolamo, Beatrice Manfredi, Lucio Silingardi, Rossella Miglio, Luca Milani, Un algoritmo di screening psicosociale dei nuclei familiari fragili afferenti alla AUSL di Modena in "MALTRATTAMENTO E ABUSO ALL’INFANZIA" 3/2023, pp 85-108, DOI: 10.3280/MAL2023-003006