Individual-Level Prediction of Exposure Therapy Outcome Using Structural and Functional MRI Data in Spider Phobia: A Machine-Learning Study
Alice V. Chavanne, Charlotte Meinke, Till Langhammer, Kati Roesmann, Joscha Boehnlein, Bettina Gathmann, Martin J. Herrmann, Markus Junghoefer, Luisa Klahn, Hanna Schwarzmeier, Fabian R. Seeger, Niklas Siminski, Thomas Straube, Udo Dannlowski, Ulrike Lueken, Elisabeth J. Leehr, Kevin Hilbert- Psychiatry and Mental health
- Clinical Psychology
Machine-learning prediction studies have shown potential to inform treatment stratification, but recent efforts to predict psychotherapy outcomes with clinical routine data have only resulted in moderate prediction accuracies. Neuroimaging data showed promise to predict treatment outcome, but previous prediction attempts have been exploratory and reported small clinical sample sizes. Herein, we aimed to examine the incremental predictive value of neuroimaging data in contrast to clinical and demographic data alone (for which results were previously published), using a two-level multimodal ensemble machine-learning strategy. We used pretreatment structural and task-based fMRI data to predict virtual reality exposure therapy outcome in a bicentric sample of