Prediction model for pre-existing mental health difficulties in cases of child sexual assault reporting to Saint Mary's Sexual Assault Referral Centre

IF 1.2 4区 医学 Q3 MEDICINE, LEGAL
Rabiya Majeed-Ariss , Glen P. Martin , Wofa Saleh , Cath White
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引用次数: 0

Abstract

Background

Child sexual assault (CSA) is associated with mental health (MH) difficulties, both as a risk factor and as a consequence. Research is lacking on predictive factors that indicate which children attending a Sexual Assault Referral Centre (SARC) are more likely to have pre-existing MH difficulties.

Objectives

(1) To identify the prevalence of pre-existing MH difficulties across children attending Saint Marys SARC in Manchester. (2) To develop and internally validate a risk prediction model for children attending SARC with pre-existing MH difficulties, which could be used to triage such patients.

Methods

Our primary outcome was any history of self-reported MH difficulty and/or current psychiatric medication. We developed the predictive model for this primary outcome using logistic regression. From a list of 7 candidate predictors for potential inclusion in the model, we used stepwise selection to determine the final variables in the model. Calibration and discrimination of the model was assessed using bootstrap internal validation.

Results

The analysis cohort included 492 cases of CSA (aged over 11 years). Of these, 218 cases (44.31 %) had the primary outcome. After applying variable selection, the developed prediction model included 4 predictors of MH difficulties (age, gender, location of alleged assault, and time between alleged assault and SARC attendance), and achieved good performance, upon internal validation, in terms of both calibration (calibration-in-the-large of −0.01 [-0.186, 0.162], calibration slope of 0.77 [0.52, 1.15]) and discrimination (AUC of 0.59 [0.56, 0.61]).

Conclusions

Being able to predict which children attending a SARC are likely to have MH difficulties would enable proactive tailoring of interventions and swift referrals. A timely response is known to have a positive impact on children's MH outcomes.
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来源期刊
CiteScore
2.70
自引率
6.70%
发文量
106
审稿时长
57 days
期刊介绍: The Journal of Forensic and Legal Medicine publishes topical articles on aspects of forensic and legal medicine. Specifically the Journal supports research that explores the medical principles of care and forensic assessment of individuals, whether adult or child, in contact with the judicial system. It is a fully peer-review hybrid journal with a broad international perspective. The Journal accepts submissions of original research, review articles, and pertinent case studies, editorials, and commentaries in relevant areas of Forensic and Legal Medicine, Context of Practice, and Education and Training. The Journal adheres to strict publication ethical guidelines, and actively supports a culture of inclusive and representative publication.
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