TY - JOUR
T1 - Predicting remission following CBT for childhood anxiety disorders
T2 - a machine learning approach
AU - Bertie, Lizel-Antoinette
AU - Quiroz, Juan C.
AU - Berkovsky, Shlomo
AU - Arendt, Kristian
AU - Bögels, Susan
AU - Coleman, Jonathan R. I.
AU - Cooper, Peter
AU - Creswell, Cathy
AU - Eley, Thalia C.
AU - Hartman, Catharina
AU - Fjermestadt, Krister
AU - In-Albon, Tina
AU - Lavallee, Kristen
AU - Lester, Kathryn J.
AU - Lyneham, Heidi J
AU - Marin, Carla E.
AU - McKinnon, Anna
AU - McLellan, Lauren F.
AU - Meiser-Stedman, Richard
AU - Nauta, Maaike
AU - Rapee, Ronald M.
AU - Schneider, Silvia
AU - Schniering, Carolyn
AU - Silverman, Wendy K.
AU - Thastum, Mikael
AU - Thirlwall, Kerstin
AU - Waite, Polly
AU - Wergeland, Gro Janne
AU - Wuthrich, Viviana
AU - Hudson, Jennifer L
PY - 2024/12/17
Y1 - 2024/12/17
N2 - BACKGROUND: The identification of predictors of treatment response is crucial for improving treatment outcome for children with anxiety disorders. Machine learning methods provide opportunities to identify combinations of factors that contribute to risk prediction models.METHODS: A machine learning approach was applied to predict anxiety disorder remission in a large sample of 2114 anxious youth (5-18 years). Potential predictors included demographic, clinical, parental, and treatment variables with data obtained pre-treatment, post-treatment, and at least one follow-up.RESULTS: All machine learning models performed similarly for remission outcomes, with AUC between 0.67 and 0.69. There was significant alignment between the factors that contributed to the models predicting two target outcomes: remission of all anxiety disorders and the primary anxiety disorder. Children who were older, had multiple anxiety disorders, comorbid depression, comorbid externalising disorders, received group treatment and therapy delivered by a more experienced therapist, and who had a parent with higher anxiety and depression symptoms, were more likely than other children to still meet criteria for anxiety disorders at the completion of therapy. In both models, the absence of a social anxiety disorder and being treated by a therapist with less experience contributed to the model predicting a higher likelihood of remission.CONCLUSIONS: These findings underscore the utility of prediction models that may indicate which children are more likely to remit or are more at risk of non-remission following CBT for childhood anxiety.
AB - BACKGROUND: The identification of predictors of treatment response is crucial for improving treatment outcome for children with anxiety disorders. Machine learning methods provide opportunities to identify combinations of factors that contribute to risk prediction models.METHODS: A machine learning approach was applied to predict anxiety disorder remission in a large sample of 2114 anxious youth (5-18 years). Potential predictors included demographic, clinical, parental, and treatment variables with data obtained pre-treatment, post-treatment, and at least one follow-up.RESULTS: All machine learning models performed similarly for remission outcomes, with AUC between 0.67 and 0.69. There was significant alignment between the factors that contributed to the models predicting two target outcomes: remission of all anxiety disorders and the primary anxiety disorder. Children who were older, had multiple anxiety disorders, comorbid depression, comorbid externalising disorders, received group treatment and therapy delivered by a more experienced therapist, and who had a parent with higher anxiety and depression symptoms, were more likely than other children to still meet criteria for anxiety disorders at the completion of therapy. In both models, the absence of a social anxiety disorder and being treated by a therapist with less experience contributed to the model predicting a higher likelihood of remission.CONCLUSIONS: These findings underscore the utility of prediction models that may indicate which children are more likely to remit or are more at risk of non-remission following CBT for childhood anxiety.
KW - childhood anxiety
KW - cognitive behavior therapy
KW - machine learning
KW - risk prediction
UR - http://www.scopus.com/inward/record.url?scp=85213051399&partnerID=8YFLogxK
U2 - 10.1017/S0033291724002654
DO - 10.1017/S0033291724002654
M3 - Article
C2 - 39686883
SN - 0033-2917
JO - Psychological Medicine
JF - Psychological Medicine
ER -