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A multicentre study on grey matter morphometric biomarkers for classifying early schizophrenia and parkinson's disease psychosis
- Publication Year :
- 2023
- Publisher :
- Springer Science and Business Media LLC, 2023.
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Abstract
- Psychotic symptoms occur in a majority of schizophrenia patients and in ~50% of all Parkinson's disease (PD) patients. Altered grey matter (GM) structure within several brain areas and networks may contribute to their pathogenesis. Little is known, however, about transdiagnostic similarities when psychotic symptoms occur in different disorders, such as in schizophrenia and PD. The present study investigated a large, multicenter sample containing 722 participants: 146 patients with first episode psychosis, FEP; 106 individuals in at-risk mental state for developing psychosis, ARMS; 145 healthy controls matching FEP and ARMS, Con-Psy; 92 PD patients with psychotic symptoms, PDP; 145 PD patients without psychotic symptoms, PDN; 88 healthy controls matching PDN and PDP, Con-PD. We applied source-based morphometry in association with receiver operating curves (ROC) analyses to identify common GM structural covariance networks (SCN) and investigated their accuracy in identifying the different patient groups. We assessed group-specific homogeneity and variability across the different networks and potential associations with clinical symptoms. SCN-extracted GM values differed significantly between FEP and Con-Psy, PDP and Con-PD, PDN and Con-PD, as well as PDN and PDP, indicating significant overall grey matter reductions in PD and early schizophrenia. ROC analyses showed that SCN-based classification algorithms allow good classification (AUC ~0.80) of FEP and Con-Psy, and fair performance (AUC ~0.72) when differentiating PDP from Con-PD. Importantly, the best performance was found in partly the same networks, including the thalamus. Alterations within selected SCNs may be related to the presence of psychotic symptoms in both early schizophrenia and PD psychosis, indicating some commonality of underlying mechanisms. Furthermore, results provide evidence that GM volume within specific SCNs may serve as a biomarker for identifying FEP and PDP.
- Subjects :
- 2 Aetiology
Parkinson's Disease
Prevention
5202 Biological Psychology
Neurosciences
32 Biomedical and Clinical Sciences
3 Good Health and Well Being
Neurodegenerative
Serious Mental Illness
Brain Disorders
Mental Health
Clinical Research
52 Psychology
Schizophrenia
2.1 Biological and endogenous factors
Subjects
Details
- Database :
- OpenAIRE
- Accession number :
- edsair.dedup.wf.001..ad715b53130febc8b33f826d8ae02427