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  3. Neurobiologically Based Stratification of Recent-Onset Depression and Psychosis: Identification of Two Distinct Transdiagnostic Phenotypes.
 

Neurobiologically Based Stratification of Recent-Onset Depression and Psychosis: Identification of Two Distinct Transdiagnostic Phenotypes.

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BORIS DOI
10.48350/170827
Publisher DOI
10.1016/j.biopsych.2022.03.021
PubMed ID
35717212
Description
BACKGROUND

Identifying neurobiologically based transdiagnostic categories of depression and psychosis may elucidate heterogeneity and provide better candidates for predictive modeling. We aimed to identify clusters across patients with recent-onset depression (ROD) and recent-onset psychosis (ROP) based on structural neuroimaging data. We hypothesized that these transdiagnostic clusters would identify patients with poor outcome and allow more accurate prediction of symptomatic remission than traditional diagnostic structures.

METHODS

HYDRA (Heterogeneity through Discriminant Analysis) was trained on whole-brain volumetric measures from 577 participants from the discovery sample of the multisite PRONIA study to identify neurobiologically driven clusters, which were then externally validated in the PRONIA replication sample (n = 404) and three datasets of chronic samples (Centre for Biomedical Research Excellence, n = 146; Mind Clinical Imaging Consortium, n = 202; Munich, n = 470).

RESULTS

The optimal clustering solution was two transdiagnostic clusters (cluster 1: n = 153, 67 ROP, 86 ROD; cluster 2: n = 149, 88 ROP, 61 ROD; adjusted Rand index = 0.618). The two clusters contained both patients with ROP and patients with ROD. One cluster had widespread gray matter volume deficits and more positive, negative, and functional deficits (impaired cluster), and one cluster revealed a more preserved neuroanatomical signature and more core depressive symptomatology (preserved cluster). The clustering solution was internally and externally validated and assessed for clinical utility in predicting 9-month symptomatic remission, outperforming traditional diagnostic structures.

CONCLUSIONS

We identified two transdiagnostic neuroanatomically informed clusters that are clinically and biologically distinct, challenging current diagnostic boundaries in recent-onset mental health disorders. These results may aid understanding of the etiology of poor outcome patients transdiagnostically and improve development of stratified treatments.
Date of Publication
2022-10-01
Publication Type
Article
Keyword(s)
Clustering Depression Machine learning Nosology Psychosis Transdiagnostic
Language(s)
en
Contributor(s)
Lalousis, Paris Alexandros
Schmaal, Lianne
Wood, Stephen J
Reniers, Renate L E P
Barnes, Nicholas M
Chisholm, Katharine
Griffiths, Sian Lowri
Stainton, Alexandra
Wen, Junhao
Hwang, Gyujoon
Davatzikos, Christos
Wenzel, Julian
Kambeitz-Ilankovic, Lana
Andreou, Christina
Bonivento, Carolina
Dannlowski, Udo
Ferro, Adele
Lichtenstein, Theresa
Riecher-Rössler, Anita
Romer, Georg
Rosen, Marlene
Bertolino, Alessandro
Borgwardt, Stefan
Brambilla, Paolo
Kambeitz, Joseph
Lencer, Rebekka
Pantelis, Christos
Ruhrmann, Stephan
Salokangas, Raimo K R
Schultze-Lutter, Frauke
Forschungsabteilung Kinder- und Jugendpsychiatrie
Schmidt, André
Meisenzahl, Eva
Koutsouleris, Nikolaos
Dwyer, Dominic
Upthegrove, Rachel
Additional Credits
Forschungsabteilung Kinder- und Jugendpsychiatrie
Series
Biological psychiatry
Publisher
Elsevier
ISSN
1873-2402
Access(Rights)
open.access
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