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Machine learning based prediction and the influence of complement – Coagulation pathway proteins on clinical outcome:Results from the NEURAPRO trial
- Source :
- Susai , S R , Mongan , D , Healy , C , Cannon , M , Cagney , G , Wynne , K , Byrne , J F , Markulev , C , Schäfer , M R , Berger , M , Mossaheb , N , Schlögelhofer , M , Smesny , S , Hickie , I B , Berger , G E , Chen , E Y H , de Haan , L , Nieman , D H , Nordentoft , M , Riecher-Rössler , A , Verma , S , Street , R , Thompson , A , Ruth Yung , A , Nelson , B , McGorry , P D , Föcking , M , Paul Amminger , G & Cotter , D 2022 , ' Machine learning based prediction and the influence of complement – Coagulation pathway proteins on clinical outcome : Results from the NEURAPRO trial ' , Brain, Behavior, and Immunity , vol. 103 , pp. 50-60 .
- Publication Year :
- 2022
-
Abstract
- Background: Functional outcomes are important measures in the overall clinical course of psychosis and individuals at clinical high-risk (CHR), however, prediction of functional outcome remains difficult based on clinical information alone. In the first part of this study, we evaluated whether a combination of biological and clinical variables could predict future functional outcome in CHR individuals. The complement and coagulation pathways have previously been identified as being of relevance to the pathophysiology of psychosis and have been found to contribute to the prediction of clinical outcome in CHR participants. Hence, in the second part we extended the analysis to evaluate specifically the relationship of complement and coagulation proteins with psychotic symptoms and functional outcome in CHR. Materials and methods: We carried out plasma proteomics and measured plasma cytokine levels, and erythrocyte membrane fatty acid levels in a sub-sample (n = 158) from the NEURAPRO clinical trial at baseline and 6 months follow up. Functional outcome was measured using Social and Occupational Functional assessment Score (SOFAS) scale. Firstly, we used support vector machine learning techniques to develop predictive models for functional outcome at 12 months. Secondly, we developed linear regression models to understand the association between 6-month follow-up levels of complement and coagulation proteins with 6-month follow-up measures of positive symptoms summary (PSS) scores and functional outcome. Results and conclusion: A prediction model based on clinical and biological data including the plasma proteome, erythrocyte fatty acids and cytokines, poorly predicted functional outcome at 12 months follow-up in CHR participants. In linear regression models, four complement and coagulation proteins (coagulation protein X, Complement C1r subcomponent like protein, Complement C4A & Complement C5) indicated a significant association with functional outcome; and two
Details
- Database :
- OAIster
- Journal :
- Susai , S R , Mongan , D , Healy , C , Cannon , M , Cagney , G , Wynne , K , Byrne , J F , Markulev , C , Schäfer , M R , Berger , M , Mossaheb , N , Schlögelhofer , M , Smesny , S , Hickie , I B , Berger , G E , Chen , E Y H , de Haan , L , Nieman , D H , Nordentoft , M , Riecher-Rössler , A , Verma , S , Street , R , Thompson , A , Ruth Yung , A , Nelson , B , McGorry , P D , Föcking , M , Paul Amminger , G & Cotter , D 2022 , ' Machine learning based prediction and the influence of complement – Coagulation pathway proteins on clinical outcome : Results from the NEURAPRO trial ' , Brain, Behavior, and Immunity , vol. 103 , pp. 50-60 .
- Notes :
- English
- Publication Type :
- Electronic Resource
- Accession number :
- edsoai.on1349064032
- Document Type :
- Electronic Resource