Developing an Automated Assessment of In-session Patient Activation for Psychological Therapy: Codevelopment Approach
JMIR Medical Informatics2022Vol. 10(11), pp. e38168–e38168
Citations Over Time
Sam Malins, Grazziela P. Figueredo, Tahseen Jilani, Yunfei Long, Jacob A Andrews, Mat Rawsthorne, Cosmin Manolescu, Jérémie Clos, Fred Higton, David Waldram, Daniel Hunt, Elvira Pérez Vallejos, Nima Moghaddam
Abstract
Coproduced language features identified through a multidisciplinary collaboration can be used to discriminate among psychological therapy session contents based on patient activation among patients experiencing multiple long-term physical and mental health conditions.
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