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Prediction Models of Functional Outcomes for Individuals in the Clinical High-Risk State for Psychosis or With Recent-Onset Depression: A Multimodal, Multisite Machine Learning Analysis
JournalArticle (Originalarbeit in einer wissenschaftlichen Zeitschrift)
 
ID 4524015
Author(s) Koutsouleris, Nikolaos; Kambeitz-Ilankovic, Lana; Ruhrmann, Stephan; Rosen, Marlene; Ruef, Anne; Dwyer, Dominic B.; Paolini, Marco; Chisholm, Katharine; Kambeitz, Joseph; Haidl, Theresa; Schmidt, André; Gillam, John; Schultze-Lutter, Frauke; Falkai, Peter; Reiser, Maximilian; Riecher-Rössler, Anita; Upthegrove, Rachel; Hietala, Jarmo; Salokangas, Raimo K. R.; Pantelis, Christos; Meisenzahl, Eva; Wood, Stephen J.; Beque, Dirk; Brambilla, Paolo; Borgwardt, Stefan; Pronia Consortium,
Author(s) at UniBasel Schmidt, André
Year 2018
Title Prediction Models of Functional Outcomes for Individuals in the Clinical High-Risk State for Psychosis or With Recent-Onset Depression: A Multimodal, Multisite Machine Learning Analysis
Journal JAMA psychiatry
Volume 75
Number 11
Pages / Article-Number 1156-1172
Mesh terms Adult; Case-Control Studies; Depression, diagnosis, pathology, psychology; Depressive Disorder, diagnosis, pathology, psychology; Female; Gray Matter, diagnostic imaging, pathology; Humans; Machine Learning; Male; Neuroimaging; Neuropsychological Tests; Psychotic Disorders, diagnosis, pathology, psychology; Social Adjustment; Young Adult
Abstract Social and occupational impairments contribute to the burden of psychosis and depression. There is a need for risk stratification tools to inform personalized functional-disability preventive strategies for individuals in at-risk and early phases of these illnesses.; To determine whether predictors associated with social and role functioning can be identified in patients in clinical high-risk (CHR) states for psychosis or with recent-onset depression (ROD) using clinical, imaging-based, and combined machine learning; assess the geographic, transdiagnostic, and prognostic generalizability of machine learning and compare it with human prognostication; and explore sequential prognosis encompassing clinical and combined machine learning.; This multisite naturalistic study followed up patients in CHR states, with ROD, and with recent-onset psychosis, and healthy control participants for 18 months in 7 academic early-recognition services in 5 European countries. Participants were recruited between February 2014 and May 2016, and data were analyzed from April 2017 to January 2018.; Performance and generalizability of prognostic models.; A total of 116 individuals in CHR states (mean [SD] age, 24.0 [5.1] years; 58 [50.0%] female) and 120 patients with ROD (mean [SD] age, 26.1 [6.1] years; 65 [54.2%] female) were followed up for a mean (SD) of 329 (142) days. Machine learning predicted the 1-year social-functioning outcomes with a balanced accuracy of 76.9% of patients in CHR states and 66.2% of patients with ROD using clinical baseline data. Balanced accuracy in models using structural neuroimaging was 76.2% in patients in CHR states and 65.0% in patients with ROD, and in combined models, it was 82.7% for CHR states and 70.3% for ROD. Lower functioning before study entry was a transdiagnostic predictor. Medial prefrontal and temporo-parieto-occipital gray matter volume (GMV) reductions and cerebellar and dorsolateral prefrontal GMV increments had predictive value in the CHR group; reduced mediotemporal and increased prefrontal-perisylvian GMV had predictive value in patients with ROD. Poor prognoses were associated with increased risk of psychotic, depressive, and anxiety disorders at follow-up in patients in the CHR state but not ones with ROD. Machine learning outperformed expert prognostication. Adding neuroimaging machine learning to clinical machine learning provided a 1.9-fold increase of prognostic certainty in uncertain cases of patients in CHR states, and a 10.5-fold increase of prognostic certainty for patients with ROD.; Precision medicine tools could augment effective therapeutic strategies aiming at the prevention of social functioning impairments in patients with CHR states or with ROD.
Publisher American Medical Association
ISSN/ISBN 2168-622X ; 2168-6238
edoc-URL https://edoc.unibas.ch/79796/
Full Text on edoc No
Digital Object Identifier DOI 10.1001/jamapsychiatry.2018.2165
PubMed ID http://www.ncbi.nlm.nih.gov/pubmed/30267047
Document type (ISI) Journal Article
 
   

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