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Psychosis prediction in secondary mental health services. A broad, comprehensive approach to the “at risk mental state” syndrome.

Authors :
Francesconi, M.
Minichino, A.
Carrión, R.E.
Delle Chiaie, R.
Bevilacqua, A.
Parisi, M.
Rullo, S.
Bersani, F. Saverio
Biondi, M.
Cadenhead, K.
Source :
European Psychiatry. Feb2017, Vol. 40, p96-104. 9p.
Publication Year :
2017

Abstract

Background Accuracy of risk algorithms for psychosis prediction in “at risk mental state” (ARMS) samples may differ according to the recruitment setting. Standardized criteria used to detect ARMS individuals may lack specificity if the recruitment setting is a secondary mental health service. The authors tested a modified strategy to predict psychosis conversion in this setting by using a systematic selection of trait-markers of the psychosis prodrome in a sample with a heterogeneous ARMS status. Methods 138 non-psychotic outpatients (aged 17–31) were consecutively recruited in secondary mental health services and followed-up for up to 3 years (mean follow-up time, 2.2 years; SD = 0.9). Baseline ARMS status, clinical, demographic, cognitive, and neurological soft signs measures were collected. Cox regression was used to derive a risk index. Results 48% individuals met ARMS criteria (ARMS-Positive, ARMS+). Conversion rate to psychosis was 21% for the overall sample, 34% for ARMS+, and 9% for ARMS-Negative (ARMS−). The final predictor model with a positive predictive validity of 80% consisted of four variables: Disorder of Thought Content, visuospatial/constructional deficits, sensory-integration, and theory-of-mind abnormalities. Removing Disorder of Thought Content from the model only slightly modified the predictive accuracy (−6.2%), but increased the sensitivity (+9.5%). Conclusions These results suggest that in a secondary mental health setting the use of trait-markers of the psychosis prodrome may predict psychosis conversion with great accuracy despite the heterogeneity of the ARMS status. The use of the proposed predictive algorithm may enable a selective recruitment, potentially reducing duration of untreated psychosis and improving prognostic outcomes. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09249338
Volume :
40
Database :
Academic Search Index
Journal :
European Psychiatry
Publication Type :
Academic Journal
Accession number :
121275488
Full Text :
https://doi.org/10.1016/j.eurpsy.2016.09.002