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[journal article]

dc.contributor.authorBennemann, Björnde
dc.contributor.authorSchwartz, Briande
dc.contributor.authorGiesemann, Juliade
dc.contributor.authorLutz, Wolfgangde
dc.date.accessioned2023-12-08T14:06:08Z
dc.date.available2023-12-08T14:06:08Z
dc.date.issued2022de
dc.identifier.issn1472-1465de
dc.identifier.urihttps://www.ssoar.info/ssoar/handle/document/90960
dc.description.abstractBackground: About 30% of patients drop out of cognitive-behavioural therapy (CBT), which has implications for psychiatric and psychological treatment. Findings concerning drop out remain heterogeneous. Aims: This paper aims to compare different machine-learning algorithms using nested cross-validation, evaluate their benefit in naturalistic settings, and identify the best model as well as the most important variables. Method: The data-set consisted of 2543 out-patients treated with CBT. Assessment took place before session one. Twenty-one algorithms and ensembles were compared. Two parameters (Brier score, area under the curve (AUC)) were used for evaluation. Results: The best model was an ensemble that used Random Forest and nearest-neighbour modelling. During the training process, it was significantly better than generalised linear modelling (GLM) (Brier score: d = -2.93, 95% CI (-3.95, -1.90)); AUC: d = 0.59, 95% CI (0.11 to 1.06)). In the holdout sample, the ensemble was able to correctly identify 63.4% of cases of patients, whereas the GLM only identified 46.2% correctly. The most important predictors were lower education, lower scores on the Personality Style and Disorder Inventory (PSSI) compulsive scale, younger age, higher scores on the PSSI negativistic and PSSI antisocial scale as well as on the Brief Symptom Inventory (BSI) additional scale (mean of the four additional items) and BSI overall scale. Conclusions: Machine learning improves drop-out predictions. However, not all algorithms are suited to naturalistic data-sets and binary events. Tree-based and boosted algorithms including a variable selection process seem well-suited, whereas more advanced algorithms such as neural networks do not.de
dc.languageende
dc.subject.ddcPsychologiede
dc.subject.ddcPsychologyen
dc.subject.otherdrop out; machine learning; ensembles; variable selection; ZIS 92de
dc.titlePredicting patients who will drop out of out-patient psychotherapy using machine learning algorithmsde
dc.description.reviewbegutachtet (peer reviewed)de
dc.description.reviewpeer revieweden
dc.source.journalThe British Journal of Psychiatry
dc.source.volume220de
dc.publisher.countryDEUde
dc.source.issue4de
dc.subject.classozpsychische Störungen, Behandlung und Präventionde
dc.subject.classozPsychological Disorders, Mental Health Treatment and Preventionen
dc.subject.thesozPsychotherapiede
dc.subject.thesozpsychotherapyen
dc.subject.thesozPatientde
dc.subject.thesozpatienten
dc.subject.thesozAlgorithmusde
dc.subject.thesozalgorithmen
dc.subject.thesozambulante Behandlungde
dc.subject.thesozoutpatient treatmenten
dc.subject.thesozVerhaltenstherapiede
dc.subject.thesozbehavior therapyen
dc.subject.thesozPsychiatriede
dc.subject.thesozpsychiatryen
dc.identifier.urnurn:nbn:de:0168-ssoar-90960-0
dc.rights.licenceCreative Commons - Namensnennung 4.0de
dc.rights.licenceCreative Commons - Attribution 4.0en
ssoar.contributor.institutionFDBde
internal.statusformal und inhaltlich fertig erschlossende
internal.identifier.thesoz10040770
internal.identifier.thesoz10049928
internal.identifier.thesoz10035039
internal.identifier.thesoz10035396
internal.identifier.thesoz10060259
internal.identifier.thesoz10048821
dc.type.stockarticlede
dc.type.documentZeitschriftenartikelde
dc.type.documentjournal articleen
dc.source.pageinfo192-201de
internal.identifier.classoz10708
internal.identifier.journal2678
internal.identifier.document32
internal.identifier.ddc150
dc.source.issuetopicPrecision Medicine and Personalised Healthcare in Psychiatryde
dc.identifier.doihttps://doi.org/10.1192/bjp.2022.17de
dc.description.pubstatusVeröffentlichungsversionde
dc.description.pubstatusPublished Versionen
internal.identifier.licence16
internal.identifier.pubstatus1
internal.identifier.review1
internal.pdf.validfalse
internal.pdf.wellformedtrue
internal.pdf.encryptedfalse


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