Multimodal Machine Learning Workflows for Prediction of Psychosis in Patients With Clinical High-Risk Syndromes and Recent-Onset Depression

dc.contributor.authorKoutsouleris Nikolaos
dc.contributor.authorDwyer Dominic B.
dc.contributor.authorDegenhardt Franziska
dc.contributor.authorMaj Carlo
dc.contributor.authorUrquijo-Castro Maria Fernanda
dc.contributor.authorSanfelici Rachele
dc.contributor.authorPopovic David
dc.contributor.authorOeztuerk Oemer
dc.contributor.authorHaas Shalaila S.
dc.contributor.authorWeiske Johanna
dc.contributor.authorRuef Anne
dc.contributor.authorKambeitz-Ilankovic Lana
dc.contributor.authorAntonucci Linda A.
dc.contributor.authorNeufang Susanne
dc.contributor.authorSchmidt-Kraepelin Christian
dc.contributor.authorRuhrmann Stephan
dc.contributor.authorPenzel Nora
dc.contributor.authorKambeitz Joseph
dc.contributor.authorHaidl Theresa K.
dc.contributor.authorRosen Marlene
dc.contributor.authorChisholm Katharine
dc.contributor.authorRiecher-Rössler Anita
dc.contributor.authorEgloff Laura
dc.contributor.authorSchmidt André
dc.contributor.authorAndreou Christina
dc.contributor.authorHietala Jarmo
dc.contributor.authorSchirmer Timo
dc.contributor.authorRomer Georg
dc.contributor.authorWalger Petra
dc.contributor.authorFranscini Maurizia
dc.contributor.authorTraber-Walker Nina
dc.contributor.authorSchimmelmann Benno G.
dc.contributor.authorFlückiger Rahel
dc.contributor.authorMichel Chantal
dc.contributor.authorRössler Wulf
dc.contributor.authorBorisov Oleg
dc.contributor.authorKrawitz Peter M.
dc.contributor.authorHeekeren Karsten
dc.contributor.authorBuechler Roman
dc.contributor.authorPantelis Christos
dc.contributor.authorFalkai Peter
dc.contributor.authorSalokangas Raimo K. R.
dc.contributor.authorLencer Rebekka
dc.contributor.authorBertolino Alessandro
dc.contributor.authorBorgwardt Stefan
dc.contributor.authorNoethen Markus
dc.contributor.authorBrambilla Paolo
dc.contributor.authorWood Stephen J.
dc.contributor.authorUpthegrove Rachel
dc.contributor.authorSchultze-Lutter Frauke
dc.contributor.authorTheodoridou Anastasia
dc.contributor.authorMeisenzahl Eva
dc.contributor.authorPRONIA Consortium
dc.contributor.organizationfi=psykiatria|en=Psychiatry|
dc.contributor.organization-code1.2.246.10.2458963.20.16217176722
dc.converis.publication-id51350143
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/51350143
dc.date.accessioned2022-10-27T11:55:33Z
dc.date.available2022-10-27T11:55:33Z
dc.description.abstract<p>Importance </p><p>Diverse models have been developed to predict psychosis in patients with clinical high-risk (CHR) states. Whether prediction can be improved by efficiently combining clinical and biological models and by broadening the risk spectrum to young patients with depressive syndromes remains unclear. </p><p>Objectives <br>To evaluate whether psychosis transition can be predicted in patients with CHR or recent-onset depression (ROD) using multimodal machine learning that optimally integrates clinical and neurocognitive data, structural magnetic resonance imaging (sMRI), and polygenic risk scores (PRS) for schizophrenia; to assess models' geographic generalizability; to test and integrate clinicians' predictions; and to maximize clinical utility by building a sequential prognostic system. </p><p>Design, Setting, and Participants <br>This multisite, longitudinal prognostic study performed in 7 academic early recognition services in 5 European countries followed up patients with CHR syndromes or ROD and healthy volunteers. The referred sample of 167 patients with CHR syndromes and 167 with ROD was recruited from February 1, 2014, to May 31, 2017, of whom 26 (23 with CHR syndromes and 3 with ROD) developed psychosis. Patients with 18-month follow-up (n = 246) were used for model training and leave-one-site-out cross-validation. The remaining 88 patients with nontransition served as the validation of model specificity. Three hundred thirty-four healthy volunteers provided a normative sample for prognostic signature evaluation. Three independent Swiss projects contributed a further 45 cases with psychosis transition and 600 with nontransition for the external validation of clinical-neurocognitive, sMRI-based, and combined models. Data were analyzed from January 1, 2019, to March 31, 2020. </p><p>Main Outcomes and Measures <br>Accuracy and generalizability of prognostic systems. </p><p>Results <br>A total of 668 individuals (334 patients and 334 controls) were included in the analysis (mean [SD] age, 25.1 [5.8] years; 354 [53.0%] female and 314 [47.0%] male). Clinicians attained a balanced accuracy of 73.2% by effectively ruling out (specificity, 84.9%) but ineffectively ruling in (sensitivity, 61.5%) psychosis transition. In contrast, algorithms showed high sensitivity (76.0%-88.0%) but low specificity (53.5%-66.8%). A cybernetic risk calculator combining all algorithmic and human components predicted psychosis with a balanced accuracy of 85.5% (sensitivity, 84.6%; specificity, 86.4%). In comparison, an optimal prognostic workflow produced a balanced accuracy of 85.9% (sensitivity, 84.6%; specificity, 87.3%) at a much lower diagnostic burden by sequentially integrating clinical-neurocognitive, expert-based, PRS-based, and sMRI-based risk estimates as needed for the given patient. Findings were supported by good external validation results. </p><p>Conclusions and Relevance<br>These findings suggest that psychosis transition can be predicted in a broader risk spectrum by sequentially integrating algorithms' and clinicians' risk estimates. For clinical translation, the proposed workflow should undergo large-scale international validation.</p><p>Question <br>Can a transition to psychosis be predicted in patients with clinical high-risk states or recent-onset depression by optimally integrating clinical, neurocognitive, neuroimaging, and genetic information with clinicians' prognostic estimates? </p><p>Findings <br>In this prognostic study of 334 patients and 334 control individuals, machine learning models sequentially combining clinical and biological data with clinicians' estimates correctly predicted disease transitions in 85.9% of cases across geographically distinct patient populations. The clinicians' lack of prognostic sensitivity, as measured by a false-negative rate of 38.5%, was reduced to 15.4% by the sequential prognostic model. </p><p>Meaning <br>These findings suggest that an individualized prognostic workflow integrating artificial and human intelligence may facilitate the personalized prevention of psychosis in young patients with clinical high-risk syndromes or recent-onset depression.</p>
dc.format.pagerange195
dc.format.pagerange209
dc.identifier.eissn2168-6238
dc.identifier.jour-issn2168-622X
dc.identifier.olddbid172849
dc.identifier.oldhandle10024/155943
dc.identifier.urihttps://www.utupub.fi/handle/11111/54994
dc.identifier.urlhttps://jamanetwork.com/journals/jamapsychiatry/fullarticle/2773732
dc.identifier.urnURN:NBN:fi-fe2021042821954
dc.language.isoen
dc.okm.affiliatedauthorHietala, Jarmo
dc.okm.affiliatedauthorSalokangas, Raimo
dc.okm.discipline3124 Neurology and psychiatryen_GB
dc.okm.discipline3124 Neurologia ja psykiatriafi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisherAMER MEDICAL ASSOC
dc.publisher.countryUnited Statesen_GB
dc.publisher.countryYhdysvallat (USA)fi_FI
dc.publisher.country-codeUS
dc.relation.doi10.1001/jamapsychiatry.2020.3604
dc.relation.ispartofjournalJAMA Psychiatry
dc.relation.issue2
dc.relation.volume78
dc.source.identifierhttps://www.utupub.fi/handle/10024/155943
dc.titleMultimodal Machine Learning Workflows for Prediction of Psychosis in Patients With Clinical High-Risk Syndromes and Recent-Onset Depression
dc.year.issued2021

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