Document Type
Article
Journal/Book Title/Conference
Clinical Psychology & Psychotherapy
Volume
27
Issue
4
Publisher
John Wiley & Sons Ltd.
Publication Date
3-4-2020
First Page
559
Last Page
566
Creative Commons License
This work is licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 4.0 License.
Abstract
Within the Routine Outcome Monitoring system “OQ-Analyst,” the questionnaire “Assessment for Signal Cases” (ASC) supports therapists in detecting potential reasons for not-on-track trajectories. Factor analysis and a machine learning algorithm (LASSO with 10-fold cross-validation) were applied, and potential predictors of not-on-track classifications were tested using logistic multilevel modeling methods. The factor analysis revealed a shortened (30 items) version of the ASC with good internal consistency (α = 0.72–0.89) and excellent predictive value (area under the curve = 0.98; positive predictive value = 0.95; negative predictive value = 0.94). Item-level analyses showed that interpersonal problems captured by specific ASC items (not feeling able to speak about problems with family members; feeling rejected or betrayed) are the most important predictors of not-on-track trajectories. It should be considered that our results are based on analyses of ASC items only. Our findings need to be replicated in future studies including other potential predictors of not-on-track trajectories (e.g., changes in medication, specific therapeutic techniques, or treatment adherence), which were not measured this study.
Recommended Citation
Probst, T.,Kleinstäuber, M., Lambert, M. J., Tritt, K., Pieh, C., Loew, T. H., Dahlbender, R. W., & Delgadillo, J. (2020). Why are some cases not on track? An item analysis of the Assessment for Signal Cases during inpatient psychotherapy. Clinical Psychology: Science and Practice, 27,559-566. http://dx.doi.org/10.1002/cpp.2441