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Predicting personalized process-outcome associations in psychotherapy using machine learning approaches—A demonstration

Predicting personalized process-outcome associations in psychotherapy using machine learning... AbstractObjective: Personalized treatment methods have shown great promise in efficacy studies across many fields of medicine and mental health. Little is known, however, about their utility in process-outcome research. This study is the first to apply personalized treatment methods in the field of process-outcome research, as demonstrated based on the alliance-outcome association. Method: Using a sample of 741 patients, individual regressions were fitted to estimate within-patient effects of the alliance-outcome association. The Boruta algorithm was used to identify patient intake characteristics that moderate the within-patient alliance-outcome association. The nearest neighbor approach was used to identify patients whose relevant pretreatment characteristics were similar to those of a target patient. The alliance-outcome associations of the most similar patients were subsequently used to predict the alliance-outcome association of the target patient. Results: Irrespective of the number of selected nearest neighbors, the correlation between the observed and predicted alliance-outcome associations was low and insignificant. According to the true error of the prediction, the demonstrated approach was unable to improve predictions made with a simple comparison model. Conclusion: The study demonstrated the application of personalized treatment methods in process-outcome research and opens many new paths for future research. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Psychotherapy Research Taylor & Francis

Predicting personalized process-outcome associations in psychotherapy using machine learning approaches—A demonstration

Predicting personalized process-outcome associations in psychotherapy using machine learning approaches—A demonstration

Psychotherapy Research , Volume 30 (3): 10 – Apr 2, 2020

Abstract

AbstractObjective: Personalized treatment methods have shown great promise in efficacy studies across many fields of medicine and mental health. Little is known, however, about their utility in process-outcome research. This study is the first to apply personalized treatment methods in the field of process-outcome research, as demonstrated based on the alliance-outcome association. Method: Using a sample of 741 patients, individual regressions were fitted to estimate within-patient effects of the alliance-outcome association. The Boruta algorithm was used to identify patient intake characteristics that moderate the within-patient alliance-outcome association. The nearest neighbor approach was used to identify patients whose relevant pretreatment characteristics were similar to those of a target patient. The alliance-outcome associations of the most similar patients were subsequently used to predict the alliance-outcome association of the target patient. Results: Irrespective of the number of selected nearest neighbors, the correlation between the observed and predicted alliance-outcome associations was low and insignificant. According to the true error of the prediction, the demonstrated approach was unable to improve predictions made with a simple comparison model. Conclusion: The study demonstrated the application of personalized treatment methods in process-outcome research and opens many new paths for future research.

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References (40)

Publisher
Taylor & Francis
Copyright
© 2019 Society for Psychotherapy Research
ISSN
1468-4381
eISSN
1050-3307
DOI
10.1080/10503307.2019.1597994
Publisher site
See Article on Publisher Site

Abstract

AbstractObjective: Personalized treatment methods have shown great promise in efficacy studies across many fields of medicine and mental health. Little is known, however, about their utility in process-outcome research. This study is the first to apply personalized treatment methods in the field of process-outcome research, as demonstrated based on the alliance-outcome association. Method: Using a sample of 741 patients, individual regressions were fitted to estimate within-patient effects of the alliance-outcome association. The Boruta algorithm was used to identify patient intake characteristics that moderate the within-patient alliance-outcome association. The nearest neighbor approach was used to identify patients whose relevant pretreatment characteristics were similar to those of a target patient. The alliance-outcome associations of the most similar patients were subsequently used to predict the alliance-outcome association of the target patient. Results: Irrespective of the number of selected nearest neighbors, the correlation between the observed and predicted alliance-outcome associations was low and insignificant. According to the true error of the prediction, the demonstrated approach was unable to improve predictions made with a simple comparison model. Conclusion: The study demonstrated the application of personalized treatment methods in process-outcome research and opens many new paths for future research.

Journal

Psychotherapy ResearchTaylor & Francis

Published: Apr 2, 2020

Keywords: personalized mental health; nearest neighbor; alliance-outcome research; within- and between-patients effects; longitudinal data; moderators of alliance-outcome association; salute mentale personalizzata; vicino più prossimo; allenaza-outcome; effetti entro e tra i pazienti; dati longitudinali; moderatori dell'associazione alleanza- outcome; saúde mental personalizada; vizinho mais próximo; pesquisa de aliança-resultado; efeitos intra e entre pacientes; dados longitudinais; moderadores da associação aliança-resultado; 個人化心理健康; 最鄰近者; 同盟-效果研究; 病人內-間效應; 縱貫性資料; 同盟關係-效果關連的調節因子

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