Predicting Effects of a Digital Stress Intervention for Patients With Depressive Symptoms: Development and Validation of Meta-Analytic Prognostic Models Using Individual Participant Data
Research output: Journal contributions › Journal articles › Research › peer-review
Authors
Objective: Digital stress interventions could be helpful as an “indirect” treatment for depression, but it remains unclear for whom this is a viable option. In this study, we developed models predicting individualized benefits of a digital stress intervention on depressive symptoms at 6-month follow-up. Method: Data of N = 1,525 patients with depressive symptoms (Center for Epidemiological Studies’ Depression Scale, CES-D ≥ 16) from k = 6 randomized trials (digital stress intervention vs. waitlist) were collected. Prognostic models were developed using multilevel least absolute shrinkage and selection operator and boosting algorithms, and were validated using bootstrap bias correction and internal–external cross-validation. Subsequently, expected effects among those with and without a treatment recommendation were estimated based on clinically derived treatment assignment cut points. Results: Performances ranged from R2 = 21.0%–23.4%, decreasing only slightly after model optimism correction (R2 = 17.0%–19.6%). Predictions were greatly improved by including an interim assessment of depressive symptoms (optimism-corrected R2 = 32.6%–35.6%). Using a minimally important difference of d = −0.24 as assignment cut point, approximately 84.6%–93.3% of patients are helped by this type of intervention, while the remaining 6.7%–15.4% would experience clinically negligible benefits (δˆ = −0.02 to −0.19). Using reliable change as cut point, a smaller subset (39.3%–46.2%) with substantial expected benefits (δˆ = −0.68) receives a treatment recommendation. Conclusions: Meta-analytic prognostic models applied to individual participant data can be used to predict differential benefits of a digital stress intervention as an indirect treatment for depression. While most patients seem to benefit, the developed models could be helpful as a screening tool to identify those for whom a more intensive depression treatment is needed.
Original language | English |
---|---|
Journal | Journal of Consulting and Clinical Psychology |
Volume | 92 |
Issue number | 4 |
Pages (from-to) | 226-235 |
Number of pages | 10 |
ISSN | 0022-006X |
DOIs | |
Publication status | Published - 01.04.2024 |
Bibliographical note
Funding Information:
Mathias Harrer is supported by a fellowship of the Bavarian Research Institute for Digital Transformation, an institute of the Bavarian Academy of Sciences and Humanities (Grant Z.5-M7426.6.5/3/21).
Publisher Copyright:
© 2023 American Psychological Association
- depression, heterogeneity of treatment effects, machine learning, prognosis, stress
- Psychology