Nikolaos Koutsouleris1, Lana Kambeitz-Ilankovic1, Stephan Ruhrmann2, Marlene Rosen2, Anne Ruef1, Dominic B Dwyer1, Marco Paolini1, Katharine Chisholm3, Joseph Kambeitz1, Theresa Haidl2, André Schmidt4, John Gillam5,6, Frauke Schultze-Lutter7, Peter Falkai1, Maximilian Reiser8, Anita Riecher-Rössler4, Rachel Upthegrove9,3, Jarmo Hietala10, Raimo K R Salokangas10, Christos Pantelis11,12, Eva Meisenzahl7, Stephen J Wood3,5,6, Dirk Beque13, Paolo Brambilla14, Stefan Borgwardt4. 1. Department of Psychiatry and Psychotherapy, Ludwig-Maximilian-University, Munich, Germany. 2. Department of Psychiatry and Psychotherapy, University of Cologne, Cologne, Germany. 3. School of Psychology, University of Birmingham, United Kingdom. 4. Department of Psychiatry, University Psychiatric Clinic, Psychiatric University Hospital, University of Basel, Basel, Switzerland. 5. Orygen, the National Centre of Excellence for Youth Mental Health, Melbourne, Australia. 6. Centre for Youth Mental Health, University of Melbourne, Melbourne, Australia. 7. Department of Psychiatry and Psychotherapy, Medical Faculty, Heinrich-Heine University, Düsseldorf, Germany. 8. Department of Radiology, Ludwig-Maximilian-University, Munich, Germany. 9. Institute of Mental Health, University of Birmingham, Birmingham, United Kingdom. 10. Department of Psychiatry, University of Turku, Turku, Finland. 11. Melbourne Neuropsychiatry Centre, University of Melbourne, Melbourne, Australia. 12. Melbourne Health, Melbourne, Australia. 13. Corporate Global Research, GE Corporation, Munich, Germany. 14. Department of Neurosciences and Mental Health, Fondazione IRCCS Ca' Granda Ospedale Maggiore Policlinico, University of Milan, Milan, Italy.
Abstract
Importance: 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. Objective: 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. Design, Setting, and Participants: 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. ain Outcomes and Measures: Performance and generalizability of prognostic models. Results: 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. Conclusions and Relevance: Precision medicine tools could augment effective therapeutic strategies aiming at the prevention of social functioning impairments in patients with CHR states or with ROD.
Importance: 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. Objective: 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. Design, Setting, and Participants: 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. ain Outcomes and Measures: Performance and generalizability of prognostic models. Results: 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. Conclusions and Relevance: Precision medicine tools could augment effective therapeutic strategies aiming at the prevention of social functioning impairments in patients with CHR states or with ROD.
Authors: Matcheri S Keshavan; Shaun M Eack; Jessica A Wojtalik; Konasale M R Prasad; Alan N Francis; Tejas S Bhojraj; Deborah P Greenwald; Susan S Hogarty Journal: Schizophr Res Date: 2011-06-08 Impact factor: 4.939
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Authors: Dominic B Dwyer; Janos L Kalman; Monika Budde; Joseph Kambeitz; Anne Ruef; Linda A Antonucci; Lana Kambeitz-Ilankovic; Alkomiet Hasan; Ivan Kondofersky; Heike Anderson-Schmidt; Katrin Gade; Daniela Reich-Erkelenz; Kristina Adorjan; Fanny Senner; Sabrina Schaupp; Till F M Andlauer; Ashley L Comes; Eva C Schulte; Farah Klöhn-Saghatolislam; Anna Gryaznova; Maria Hake; Kim Bartholdi; Laura Flatau-Nagel; Markus Reitt; Silke Quast; Sophia Stegmaier; Milena Meyers; Barbara Emons; Ida Sybille Haußleiter; Georg Juckel; Vanessa Nieratschker; Udo Dannlowski; Tomoya Yoshida; Max Schmauß; Jörg Zimmermann; Jens Reimer; Jens Wiltfang; Eva Reininghaus; Ion-George Anghelescu; Volker Arolt; Bernhard T Baune; Carsten Konrad; Andreas Thiel; Andreas J Fallgatter; Christian Figge; Martin von Hagen; Manfred Koller; Fabian U Lang; Moritz E Wigand; Thomas Becker; Markus Jäger; Detlef E Dietrich; Harald Scherk; Carsten Spitzer; Here Folkerts; Stephanie H Witt; Franziska Degenhardt; Andreas J Forstner; Marcella Rietschel; Markus M Nöthen; Nikola Mueller; Sergi Papiol; Urs Heilbronner; Peter Falkai; Thomas G Schulze; Nikolaos Koutsouleris Journal: JAMA Psychiatry Date: 2020-05-01 Impact factor: 21.596