Quality of Life, Risk and Recovery in a National Forensic Mental Health Service: A D-FOREST study from DUNDRUM Hospital

H. Amin, I. Edet, N. Basrak, G. Crudden,H. Kennedy,M. Davoren

European Psychiatry(2022)

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摘要
Introduction Secure forensic mental health services have a dual role, to treat mental disorder and reduce violent recidivism. Quality of life is a method of assessing an individual patients’ perception of their own life and is linked to personal recovery. Placement in secure forensic hospital settings should not be a barrier to achieving meaningful quality of life. The WHO-QuOL measure is a self-rated tool, internationally validated used to measure patients own perception of their quality of life. Objectives This aim of this study was to assess self-reported quality of life in a complete National cohort of forensic in-patients, and ascertain the associations between quality of life and measures of violence risk, recovery and functioning. Methods This is a cross sectional study, set in Dundrum Hospital, the site of Ireland’s National Forensic Mental Health Service. It therefore includes a complete national cohort of forensic in-patients. The WHO-QuOL was offered to all 95 in-patients in Dundrum Hospital during December 2020 – January 2021, as was PANSS (Positive and Negative Symptoms for Schizophrenia Scale). During the study period the researchers collated the scores from HCR-20 (violence risk), therapeutic programme completion (DUNDRUM-3) and recovery (DUNDRUM-4). Data was gathered as part of the Dundrum Forensic Redevelopment Evaluation Study (D-FOREST). Results Lower scores on dynamic violence risk, better recovery and functioning scores were associated with higher self-rated quality of life. Conclusions The quality of life scale was meaningful in a secure forensic hospital setting. Further analysis will test relationships between symptoms, risk and protective factors and global function. Disclosure No significant relationships.
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关键词
Forensic in-patients,Quality of Life,Risk,Recovery
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