Journal of Contextual Behavioral Science (JCBS)
Volume 40, April 2026
Authors
A. Lavefjord, F.T.A. Sundström, A. Hammar, L. Preihs, J.Clason van de Leur, S. Forslund, S. Scholten, K. Magnusson, L. Klintwall, M. Buhrman, & L.M. McCracken
Key Findings
- We examined perceived causal network centrality as a treatment guiding principle.
- All participants demonstrated at least one outcome change in line with hypotheses.
- This guiding method does not seem universally beneficial in all circumstances.
Abstract
Introduction
Idiographic network analysis, assessing associations between a system of variables of interest, also called nodes, is a proposed method for personalizing psychological treatment. The aim of this study was to test the centrality hypothesis that a treatment condition delivering interventions guided by the most central network node will yield better outcomes compared to a treatment condition delivering interventions guided by the least central node. We tested this using perceived causal networks (PECAN) and focusing on psychological inflexibility processes. Effects were examined in terms of pain interference, motivation, and pain intensity.
Method
We used a single case design with multiple baselines across six participants. Therapists were blind to treatment conditions. While participants were not blind to the responses that they provided for creating the PECAN, they were blind to the resulting network and the treatment conditions. Randomization was applied to baseline length and to whether the most central node or the least central node intervention came first.
Results
All participants had at least one outcome changing in beneficial directions in line with hypotheses. However, two participants also had one outcome each that changed in contradiction to the hypotheses.
Discussion
Adapting psychological treatment by matching interventions to the most central node in a perceived causal network looks promising. However, it is unlikely that this method will always be the best matching method. We need to keep exploring additional personalization methods and under which circumstances they are efficient.