TY - JOUR
T1 - Process-based therapy
T2 - A common ground for understanding and utilizing therapeutic practices.
AU - Ciarrochi, Joseph
AU - Hernández, Cristóbal
AU - Hill, Diana
AU - Ong, Clarissa
AU - Gloster, Andrew T.
AU - Levin, Michael E.
AU - Yap, Keong
AU - Fraser, Madeleine I.
AU - Sahdra, Baljinder K.
AU - Hofmann, Stefan G.
AU - Hayes, Steven C.
N1 - Publisher Copyright:
© 2024 The Author(s) Open Access funding provided by Australian Catholic University: This work is licensed under a Creative Commons Attribution 4.0 International License (CC BY 4.0; https://creativecommons.org/licenses/by/4.0). This license permits copying and redistributing the work in any medium or format, as well as adapting the material for any purpose, even commercially.
PY - 2024
Y1 - 2024
N2 - This article critiques the “protocol-for-syndrome” model in mental health research, highlighting two primary concerns: the complexity of protocols that include change processes irrelevant to many individuals, and the inadequacy of Diagnostic and Statistical Manual of Mental Disorders syndromes to capture the nuances of individual well-being and suffering. Advocating a shift to a process-based therapy (PBT) approach, the article proposes a coherent integration of diverse change processes and interventions to enrich therapy practices. It introduces a slightly revised extended evolutionary metamodel (EEMM) as a comprehensive framework that provides a consistent language for discussing change processes, focusing on the key drivers of variation, selection, and retention, and categorizing these into dimensions (such as cognition, emotion, self, motivation) and levels (from biology/physiology to psychology and social relationships/culture). The article details the application of EEMM in classifying therapeutic processes, validated through both human and artificial intelligence (AI) ratings. Furthermore, we developed an AI tool built on Distilled Bidirectional Encoder Representations from Transformers (distilBERT) models for categorizing therapeutic content, proving effective and accessible for community engagement and ongoing enhancement. The article also explores network theory and new analytics as tools for therapists to customize therapy to individual client needs. In summary, PBT supports therapeutic diversity while establishing common ground among different methods and approaches. This enhances communication, cooperation, and comparison, fostering the development of tailored and effective therapy strategies. It also opens the door to the potential unification of psychotherapy. Public Health Significance Statement—The article presents an innovative approach to mental health treatment, advocating for process-based therapy (PBT) over traditional models. PBT offers a personalized framework, aligning various therapeutic methods to an individual’s unique mental health needs. By leveraging an artificial intelligence tool for categorizing therapy content and utilizing network theory for tailored treatments, PBT aims to enhance the effectiveness of therapy and client well-being.
AB - This article critiques the “protocol-for-syndrome” model in mental health research, highlighting two primary concerns: the complexity of protocols that include change processes irrelevant to many individuals, and the inadequacy of Diagnostic and Statistical Manual of Mental Disorders syndromes to capture the nuances of individual well-being and suffering. Advocating a shift to a process-based therapy (PBT) approach, the article proposes a coherent integration of diverse change processes and interventions to enrich therapy practices. It introduces a slightly revised extended evolutionary metamodel (EEMM) as a comprehensive framework that provides a consistent language for discussing change processes, focusing on the key drivers of variation, selection, and retention, and categorizing these into dimensions (such as cognition, emotion, self, motivation) and levels (from biology/physiology to psychology and social relationships/culture). The article details the application of EEMM in classifying therapeutic processes, validated through both human and artificial intelligence (AI) ratings. Furthermore, we developed an AI tool built on Distilled Bidirectional Encoder Representations from Transformers (distilBERT) models for categorizing therapeutic content, proving effective and accessible for community engagement and ongoing enhancement. The article also explores network theory and new analytics as tools for therapists to customize therapy to individual client needs. In summary, PBT supports therapeutic diversity while establishing common ground among different methods and approaches. This enhances communication, cooperation, and comparison, fostering the development of tailored and effective therapy strategies. It also opens the door to the potential unification of psychotherapy. Public Health Significance Statement—The article presents an innovative approach to mental health treatment, advocating for process-based therapy (PBT) over traditional models. PBT offers a personalized framework, aligning various therapeutic methods to an individual’s unique mental health needs. By leveraging an artificial intelligence tool for categorizing therapy content and utilizing network theory for tailored treatments, PBT aims to enhance the effectiveness of therapy and client well-being.
KW - artificial intelligence rating of processes
KW - evidence-based processes
KW - mediational analysis
KW - network theory
KW - process-based therapy
UR - http://www.scopus.com/inward/record.url?scp=85206115207&partnerID=8YFLogxK
U2 - 10.1037/int0000348
DO - 10.1037/int0000348
M3 - Article
AN - SCOPUS:85206115207
SN - 1053-0479
VL - 34
SP - 265
EP - 290
JO - Journal of Psychotherapy Integration
JF - Journal of Psychotherapy Integration
IS - 3
ER -