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  3. Using combined environmental-clinical classification models to predict role functioning outcome in clinical high-risk states for psychosis and recent-onset depression.
 

Using combined environmental-clinical classification models to predict role functioning outcome in clinical high-risk states for psychosis and recent-onset depression.

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BORIS DOI
10.48350/165820
Publisher DOI
10.1192/bjp.2022.16
PubMed ID
35152923
Description
BACKGROUND

Clinical high-risk states for psychosis (CHR) are associated with functional impairments and depressive disorders. A previous PRONIA study predicted social functioning in CHR and recent-onset depression (ROD) based on structural magnetic resonance imaging (sMRI) and clinical data. However, the combination of these domains did not lead to accurate role functioning prediction, calling for the investigation of additional risk dimensions. Role functioning may be more strongly associated with environmental adverse events than social functioning.

AIMS

We aimed to predict role functioning in CHR, ROD and transdiagnostically, by adding environmental adverse events-related variables to clinical and sMRI data domains within the PRONIA sample.

METHOD

Baseline clinical, environmental and sMRI data collected in 92 CHR and 95 ROD samples were trained to predict lower versus higher follow-up role functioning, using support vector classification and mixed k-fold/leave-site-out cross-validation. We built separate predictions for each domain, created multimodal predictions and validated them in independent cohorts (74 CHR, 66 ROD).

RESULTS

Models combining clinical and environmental data predicted role outcome in discovery and replication samples of CHR (balanced accuracies: 65.4% and 67.7%, respectively), ROD (balanced accuracies: 58.9% and 62.5%, respectively), and transdiagnostically (balanced accuracies: 62.4% and 68.2%, respectively). The most reliable environmental features for role outcome prediction were adult environmental adjustment, childhood trauma in CHR and childhood environmental adjustment in ROD.

CONCLUSIONS

Findings support the hypothesis that environmental variables inform role outcome prediction, highlight the existence of both transdiagnostic and syndrome-specific predictive environmental adverse events, and emphasise the importance of implementing real-world models by measuring multiple risk dimensions.
Date of Publication
2022
Publication Type
Article
Subject(s)
600 Technology > 610 Medicine & health
Keyword(s)
Machine learning PRONIA personalised psychiatry psychosis role functioning
Language(s)
en
Contributor(s)
Antonucci, Linda A
Penzel, Nora
Sanfelici, Rachele
Pigoni, Alessandro
Kambeitz-Ilankovic, Lana
Dwyer, Dominic
Ruef, Anne
Sen Dong, Mark
Öztürk, Ömer Faruk
Chisholm, Katharine
Haidl, Theresa
Rosen, Marlene
Ferro, Adele
Pergola, Giulio
Andriola, Ileana
Blasi, Giuseppe
Ruhrmann, Stephan
Schultze-Lutter, Frauke
Forschungsabteilung Kinder- und Jugendpsychiatrie
Universitätsklinik für Kinder- und Jugendpsychiatrie und Psychotherapie (KJP)
Falkai, Peter
Kambeitz, Joseph
Lencer, Rebekka
Dannlowski, Udo
Upthegrove, Rachel
Salokangas, Raimo K R
Pantelis, Christos
Meisenzahl, Eva
Wood, Stephen J
Brambilla, Paolo
Borgwardt, Stefan
Bertolino, Alessandro
Koutsouleris, Nikolaos
Additional Credits
Forschungsabteilung Kinder- und Jugendpsychiatrie
Series
The British journal of psychiatry
Publisher
Cambridge University Press
ISSN
1472-1465
Access(Rights)
restricted
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