Moving toward precision PTSD treatment: predicting veterans' intensive PTSD treatment response using continuously updating machine learning models

被引:3
作者
Smith, Dale L. [1 ,2 ]
Held, Philip [1 ]
机构
[1] Rush Univ, Dept Psychiat & Behav Sci, Med Ctr, 325 S Paulina St,Suite 200, Chicago, IL 60612 USA
[2] Olivet Nazarene Univ, Behav Sci, 1 Univ Ave, Bourbonnais, IL 60914 USA
关键词
Cognitive processing therapy; longitudinal analysis; machine learning; precision medicine; PTSD; veterans; POSTTRAUMATIC-STRESS-DISORDER; COGNITIVE-PROCESSING THERAPY; SYMPTOM CHANGE; MENTAL-HEALTH; OUTCOMES; PATTERNS; VALIDITY;
D O I
10.1017/S0033291722002689
中图分类号
B849 [应用心理学];
学科分类号
040203 ;
摘要
Background. Considerable heterogeneity exists in treatment response to first-line posttraumatic stress disorder (PTSD) treatments, such as Cognitive Processing Therapy (CPT). Relatively little is known about the timing of when during a course of care the treatment response becomes apparent. Novel machine learning methods, especially continuously updating prediction models, have the potential to address these gaps in our understanding of response and optimize PTSD treatment. Methods. Using data from a 3-week (n = 362) CPT-based intensive PTSD treatment program (ITP), we explored three methods for generating continuously updating prediction models to predict endpoint PTSD severity. These included Mixed Effects Bayesian Additive Regression Trees (MixedBART), Mixed Effects Random Forest (MERF) machine learning models, and Linear Mixed Effects models (LMM). Models used baseline and self-reported PTSD symptom severity data collected every other day during treatment. We then validated our findings by examining model performances in a separate, equally established, 2-week CPT-based ITP (n = 108). Results. Results across approaches were very similar and indicated modest prediction accuracy at baseline (R-2 similar to 0.18), with increasing accuracy of predictions of final PTSD severity across program timepoints (e.g. mid-program R-2 similar to 0.62). Similar findings were obtained when the models were applied to the 2-week ITP. Neither the MERF nor the MixedBART machine learning approach outperformed LMM prediction, though benefits of each may differ based on the application. Conclusions. Utilizing continuously updating models in PTSD treatments may be beneficial for clinicians in determining whether an individual is responding, and when this determination can be made.
引用
收藏
页码:5500 / 5509
页数:10
相关论文
共 49 条
[1]   A scoping review of machine learning in psychotherapy research [J].
Aafjes-van Doorn, Katie ;
Kamsteeg, Celine ;
Bate, Jordan ;
Aafjes, Marc .
PSYCHOTHERAPY RESEARCH, 2021, 31 (01) :92-116
[2]  
[Anonymous], mary of The Practice Guideline for Individualized Medica
[3]  
[Anonymous], 2017, VA Acquisition Management
[4]   A meta-analytic review of cognitive processing therapy for adults with posttraumatic stress disorder [J].
Asmundson, Gordon J. G. ;
Thorisdottir, Audur S. ;
Roden-Foreman, Jacob W. ;
Baird, Scarlett O. ;
Witcraft, Sara M. ;
Stein, Aliza T. ;
Smits, Jasper A. J. ;
Powers, Mark B. .
COGNITIVE BEHAVIOUR THERAPY, 2019, 48 (01) :1-14
[5]   The Posttraumatic Stress Disorder Checklist for DSM-5 (PCL-5): Development and Initial Psychometric Evaluation [J].
Blevins, Christy A. ;
Weathers, Frank W. ;
Davis, Margaret T. ;
Witte, Tracy K. ;
Domino, Jessica L. .
JOURNAL OF TRAUMATIC STRESS, 2015, 28 (06) :489-498
[6]   Psychometric Properties of the PTSD Checklist for Diagnostic and Statistical Manual of Mental Disorders-Fifth Edition (PCL-5) in Veterans [J].
Bovin, Michelle J. ;
Marx, Brian P. ;
Weathers, Frank W. ;
Gallagher, Matthew W. ;
Rodriguez, Paola ;
Schnurr, Paula P. ;
Keane, Terence M. .
PSYCHOLOGICAL ASSESSMENT, 2016, 28 (11) :1379-1391
[7]   The AUDIT alcohol consumption questions (AUDIT-C) - An effective brief screening test for problem drinking [J].
Bush, K ;
Kivlahan, DR ;
McDonell, MB ;
Fihn, SD ;
Bradley, KA .
ARCHIVES OF INTERNAL MEDICINE, 1998, 158 (16) :1789-1795
[8]   The promise of machine learning in predicting treatment outcomes in psychiatry [J].
Chekroud, Adam M. ;
Bondar, Julia ;
Delgadillo, Jaime ;
Doherty, Gavin ;
Wasil, Akash ;
Fokkema, Marjolein ;
Cohen, Zachary ;
Belgrave, Danielle ;
DeRubeis, Robert ;
Iniesta, Raquel ;
Dwyer, Dominic ;
Choi, Karmel .
WORLD PSYCHIATRY, 2021, 20 (02) :154-170
[9]   BART: BAYESIAN ADDITIVE REGRESSION TREES [J].
Chipman, Hugh A. ;
George, Edward I. ;
McCulloch, Robert E. .
ANNALS OF APPLIED STATISTICS, 2010, 4 (01) :266-298
[10]   Clinical Research Machine Learning Compared With Conventional Statistical Models for Predicting Myocardial Infarction Readmission and Mortality: A Systematic Review [J].
Cho, Sung Min ;
Austin, Peter C. ;
Ross, Heather J. ;
Abdel-Qadir, Husam ;
Chicco, Davide ;
Tomlinson, George ;
Taheri, Cameron ;
Foroutan, Farid ;
Lawler, Patrick R. ;
Billia, Filio ;
Gramolini, Anthony ;
Epelman, Slava ;
Wang, Bo ;
Lee, Douglas S. .
CANADIAN JOURNAL OF CARDIOLOGY, 2021, 37 (08) :1207-1214