Examining the relationship between choice, therapeutic alliance and outcomes in mental health services
Subject1117 Public Health and Health Services
Health services & systems
Behavioral and Social Science
Basic Behavioral and Social Science
Permanent link to this recordhttp://hdl.handle.net/20.500.12613/5426
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AbstractBackground: Self-determination within mental health services is increasingly recognized as an ethical imperative, but we still know little about the impact of choice on outcomes among people with severe mental illnesses. This study examines whether choice predicts outcomes and whether this relationship is mediated by therapeutic alliance. Method: The study sample of 396 participants completed a survey measuring choice, therapeutic alliance, recovery, quality of life and functioning. Multivariate analyses examined choice as a predictor of outcomes, and Sobel tests assessed alliance as a mediator. Results: Choice variables predicted recovery, quality of life and perceived outcomes. Sobel tests indicated that the relationship between choice and outcome variables was mediated by therapeutic alliance. Implications: The study demonstrates that providing more choice and opportunities for collaboration within services does improve consumer outcomes. The results also show that collaboration is dependent on the quality of the relationship between the provider and consumer. © 2013 by the authors; licensee MDPI, Basel, Switzerland.
Citation to related workMDPI AG
Has partJournal of Personalized Medicine
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