Predicting post-treatment symptom severity for adults receiving psychological therapy in routine care for generalised anxiety disorder: a machine learning approach

被引:1
作者
Delamain, H. [1 ]
Buckman, J. E. J. [1 ,2 ]
O'Driscoll, C. [1 ]
Suh, J. W. [1 ]
Stott, J. [3 ]
Singh, S. [4 ]
Naqvi, S. A. [5 ]
Leibowitz, J. [2 ]
Pilling, S. [1 ,6 ]
Saunders, R. [1 ]
机构
[1] UCL, Ctr Outcomes Res & Effectiveness CORE, Res Dept Clin Educ & Hlth Psychol, CORE Data Lab, London, England
[2] Camden & Islington NHS Fdn Trust, iCope Camden & Islington Psychol Therapies Serv, London, England
[3] UCL, ADAPT Lab, Res Dept Clin Educ & Hlth Psychol, London, England
[4] North East London NHS Fdn Trust, Waltham Forest Talking Therapies, London, England
[5] North East London NHS Fdn Trust, Barking & Dagenham & Havering IAPT Serv, London, England
[6] Camden & Islington NHS Fdn Trust, London, England
关键词
Personalised treatment; Prognosis prediction; Outcome monitoring; Ensemble modelling; TRIPOD; TREATMENT OUTCOMES;
D O I
10.1016/j.psychres.2024.115910
中图分类号
R749 [精神病学];
学科分类号
100205 ;
摘要
Approximately half of generalised anxiety disorder (GAD) patients do not recover from first -line treatments, and no validated prediction models exist to inform individuals or clinicians of potential treatment benefits. This study aimed to develop and validate an accurate and explainable prediction model of post -treatment GAD symptom severity. Data from adults receiving treatment for GAD in eight Improving Access to Psychological Therapies (IAPT) services ( n =15,859) were separated into training, validation and holdout datasets. Thirteen machine learning algorithms were compared using 10 -fold cross -validation, against two simple clinically relevant comparison models. The best -performing model was tested on the holdout dataset and model -specific explainability measures identified the most important predictors. A Bayesian Additive Regression Trees model out -performed all comparison models (MSE =16.54 [95 % CI =15.58; 17.51]; MAE =3.19; R 2 =0.33, including a single predictor linear regression model: MSE =20.70 [95 % CI =19.58; 21.82]; MAE =3.94; R 2 =0.14). The five most important predictors were: PHQ-9 anhedonia, GAD -7 annoyance/irritability, restlessness and fear items, then the referralassessment waiting time. The best -performing model accurately predicted post -treatment GAD symptom severity using only pre-treatment data, outperforming comparison models that approximated clinical judgement and remaining within the GAD -7 error of measurement and minimal clinically important differences. This model could inform treatment decision -making and provide desired information to clinicians and patients receiving treatment for GAD.
引用
收藏
页数:8
相关论文
共 46 条
[1]   Predictors of outcomes for patients with common mental health disorders receiving psychological therapies in community settings: a systematic review [J].
Amati, F. ;
Banks, C. ;
Greenfield, G. ;
Green, J. .
JOURNAL OF PUBLIC HEALTH, 2018, 40 (03) :E375-E387
[2]  
Bandelow B, 2017, DIALOGUES CLIN NEURO, V19, P93
[3]   Effective dose 50 method as the minimal clinically important difference: Evidence from depression trials [J].
Bauer-Staeb, Clarissa ;
Kounali, Daphne-Zacharenia ;
Welton, Nicky J. ;
Griffith, Emma ;
Wiles, Nicola J. ;
Lewis, Glyn ;
Faraway, Julian J. ;
Button, Katherine S. .
JOURNAL OF CLINICAL EPIDEMIOLOGY, 2021, 137 :200-208
[4]   Principles and Practice of Explainable Machine Learning [J].
Belle, Vaishak ;
Papantonis, Ioannis .
FRONTIERS IN BIG DATA, 2021, 4
[5]  
Bone C, 2021, LANCET DIGIT HEALTH, V3, pE231, DOI 10.1016/S2589-7500(21)00018-2
[6]   Reporting and Methods in Clinical Prediction Research: A Systematic Review [J].
Bouwmeester, Walter ;
Zuithoff, Nicolaas P. A. ;
Mallett, Susan ;
Geerlings, Mirjam I. ;
Vergouwe, Yvonne ;
Steyerberg, Ewout W. ;
Altman, Douglas G. ;
Moons, Karel G. M. .
PLOS MEDICINE, 2012, 9 (05)
[7]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[8]   Predicting prognosis for adults with depression using individual symptom data: a comparison of modelling approaches [J].
Buckman, J. E. J. ;
Cohen, Z. D. ;
O'Driscoll, C. ;
Fried, E., I ;
Saunders, R. ;
Ambler, G. ;
DeRubeis, R. J. ;
Gilbody, S. ;
Hollon, S. D. ;
Kendrick, T. ;
Watkins, E. ;
Eley, T. C. ;
Peel, A. J. ;
Rayner, C. ;
Kessler, D. ;
Wiles, N. ;
Lewis, G. ;
Pilling, S. .
PSYCHOLOGICAL MEDICINE, 2023, 53 (02) :408-418
[9]   The contribution of depressive 'disorder characteristics' to determinations of prognosis for adults with depression: an individual patient data meta-analysis [J].
Buckman, Joshua E. J. ;
Saunders, Rob ;
Cohen, Zachary D. ;
Barnett, Phoebe ;
Clarke, Katherine ;
Ambler, Gareth ;
DeRubeis, Robert J. ;
Gilbody, Simon ;
Hollon, Steven D. ;
Kendrick, Tony ;
Watkins, Edward ;
Wiles, Nicola ;
Kessler, David ;
Richards, David ;
Sharp, Deborah ;
Brabyn, Sally ;
Littlewood, Elizabeth ;
Salisbury, Chris ;
White, Ian R. ;
Lewis, Glyn ;
Pilling, Stephen .
PSYCHOLOGICAL MEDICINE, 2021, 51 (07) :1068-1081
[10]   The use of machine learning in the study of suicidal and non-suicidal self-injurious thoughts and behaviors: A systematic review [J].
Burke, Taylor A. ;
Ammerman, Brooke A. ;
Jacobucci, Ross .
JOURNAL OF AFFECTIVE DISORDERS, 2019, 245 :869-884