dc.contributor.author
Hammelrath, Leona
dc.contributor.author
Hilbert, Kevin
dc.contributor.author
Heinrich, Manuel
dc.contributor.author
Zagorscak, Pavle
dc.contributor.author
Knaevelsrud, Christine
dc.date.accessioned
2024-05-30T07:11:00Z
dc.date.available
2024-05-30T07:11:00Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/41872
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-41593
dc.description.abstract
Background
Internet-based interventions produce comparable effectiveness rates as face-to-face therapy in treating depression. Still, more than half of patients do not respond to treatment. Machine learning (ML) methods could help to overcome these low response rates by predicting therapy outcomes on an individual level and tailoring treatment accordingly. Few studies implemented ML algorithms in internet-based depression treatment using baseline self-report data, but differing results hinder inferences on clinical practicability. This work compares algorithms using features gathered at baseline or early in treatment in their capability to predict non-response to a 6-week online program targeting depression.
Methods
Our training and test sample encompassed 1270 and 318 individuals, respectively. We trained random forest algorithms on self-report and process features gathered at baseline and after 2 weeks of treatment. Non-responders were defined as participants not fulfilling the criteria for reliable and clinically significant change on PHQ-9 post-treatment. Our benchmark models were logistic regressions trained on baseline PHQ-9 sum or PHQ-9 early change, using 100 iterations of randomly sampled 80/20 train-test-splits.
Results
Best performances were reached by our models involving early treatment characteristics (recall: 0.75–0.76; AUC: 0.71–0.77). Therapeutic alliance and early symptom change constituted the most important predictors. Models trained on baseline data were not significantly better than our benchmark.
Conclusions
Fair accuracies were only attainable by involving information from early treatment stages. In-treatment adaptation, instead of a priori selection, might constitute a more feasible approach for improving response when relying on easily accessible self-report features. Implementation trials are needed to determine clinical usefulness.
en
dc.format.extent
10 Seiten
dc.rights.uri
https://creativecommons.org/licenses/by-nc-sa/4.0/
dc.subject
e-mental-health
en
dc.subject
early change
en
dc.subject
health informatics
en
dc.subject
machine learning
en
dc.subject
precision therapy
en
dc.subject.ddc
100 Philosophie und Psychologie::150 Psychologie::150 Psychologie
dc.title
Select or adjust? How information from early treatment stages boosts the prediction of non-response in internet-based depression treatment
dc.type
Wissenschaftlicher Artikel
dcterms.bibliographicCitation.doi
10.1017/S0033291723003537
dcterms.bibliographicCitation.journaltitle
Psychological Medicine
dcterms.bibliographicCitation.number
8
dcterms.bibliographicCitation.pagestart
1641
dcterms.bibliographicCitation.pageend
1650
dcterms.bibliographicCitation.volume
54
dcterms.bibliographicCitation.url
https://doi.org/10.1017/S0033291723003537
refubium.affiliation
Erziehungswissenschaft und Psychologie
refubium.affiliation.other
Arbeitsbereich Klinisch-Psychologische Intervention
refubium.funding
Cambridge
refubium.note.author
Die Publikation wurde aus Open Access Publikationsgeldern der Freien Universität Berlin gefördert.
refubium.resourceType.isindependentpub
no
dcterms.accessRights.openaire
open access
dcterms.isPartOf.eissn
1469-8978