Literature DB >> 25735415

Using Bayesian statistics for modeling PTSD through Latent Growth Mixture Modeling: implementation and discussion.

Sarah Depaoli1, Rens van de Schoot2,3, Nancy van Loey4,5, Marit Sijbrandij6,7.   

Abstract

BACKGROUND: After traumatic events, such as disaster, war trauma, and injuries including burns (which is the focus here), the risk to develop posttraumatic stress disorder (PTSD) is approximately 10% (Breslau & Davis, 1992). Latent Growth Mixture Modeling can be used to classify individuals into distinct groups exhibiting different patterns of PTSD (Galatzer-Levy, 2015). Currently, empirical evidence points to four distinct trajectories of PTSD patterns in those who have experienced burn trauma. These trajectories are labeled as: resilient, recovery, chronic, and delayed onset trajectories (e.g., Bonanno, 2004; Bonanno, Brewin, Kaniasty, & Greca, 2010; Maercker, Gäbler, O'Neil, Schützwohl, & Müller, 2013; Pietrzak et al., 2013). The delayed onset trajectory affects only a small group of individuals, that is, about 4-5% (O'Donnell, Elliott, Lau, & Creamer, 2007). In addition to its low frequency, the later onset of this trajectory may contribute to the fact that these individuals can be easily overlooked by professionals. In this special symposium on Estimating PTSD trajectories (Van de Schoot, 2015a), we illustrate how to properly identify this small group of individuals through the Bayesian estimation framework using previous knowledge through priors (see, e.g., Depaoli & Boyajian, 2014; Van de Schoot, Broere, Perryck, Zondervan-Zwijnenburg, & Van Loey, 2015).
METHOD: We used latent growth mixture modeling (LGMM) (Van de Schoot, 2015b) to estimate PTSD trajectories across 4 years that followed a traumatic burn. We demonstrate and compare results from traditional (maximum likelihood) and Bayesian estimation using priors (see, Depaoli, 2012, 2013). Further, we discuss where priors come from and how to define them in the estimation process.
RESULTS: We demonstrate that only the Bayesian approach results in the desired theory-driven solution of PTSD trajectories. Since the priors are chosen subjectively, we also present a sensitivity analysis of the Bayesian results to illustrate how to check the impact of the prior knowledge integrated into the model.
CONCLUSIONS: We conclude with recommendations and guidelines for researchers looking to implement theory-driven LGMM, and we tailor this discussion to the context of PTSD research.

Entities:  

Keywords:  Bayesian estimation; Latent Growth Mixture Modeling; PTSD; delayed onset; sensitivity analysis

Year:  2015        PMID: 25735415      PMCID: PMC4348411          DOI: 10.3402/ejpt.v6.27516

Source DB:  PubMed          Journal:  Eur J Psychotraumatol        ISSN: 2000-8066


  12 in total

1.  PTSD symptom trajectories: from early to chronic response.

Authors:  Meaghan L O'Donnell; Peter Elliott; Winnie Lau; Mark Creamer
Journal:  Behav Res Ther       Date:  2006-05-18

2.  Linear and nonlinear growth models: describing a Bayesian perspective.

Authors:  Sarah Depaoli; Jonathan Boyajian
Journal:  J Consult Clin Psychol       Date:  2013-12-23

3.  Posttraumatic stress disorder in an urban population of young adults: risk factors for chronicity.

Authors:  N Breslau; G C Davis
Journal:  Am J Psychiatry       Date:  1992-05       Impact factor: 18.112

Review 4.  Weighing the Costs of Disaster: Consequences, Risks, and Resilience in Individuals, Families, and Communities.

Authors:  George A Bonanno; Chris R Brewin; Krzysztof Kaniasty; Annette M La Greca
Journal:  Psychol Sci Public Interest       Date:  2010-01

5.  Mixture class recovery in GMM under varying degrees of class separation: frequentist versus Bayesian estimation.

Authors:  Sarah Depaoli
Journal:  Psychol Methods       Date:  2013-03-25

Review 6.  Loss, trauma, and human resilience: have we underestimated the human capacity to thrive after extremely aversive events?

Authors:  George A Bonanno
Journal:  Am Psychol       Date:  2004-01

7.  Trajectories of PTSD risk and resilience in World Trade Center responders: an 8-year prospective cohort study.

Authors:  R H Pietrzak; A Feder; R Singh; C B Schechter; E J Bromet; C L Katz; D B Reissman; F Ozbay; V Sharma; M Crane; D Harrison; R Herbert; S M Levin; B J Luft; J M Moline; J M Stellman; I G Udasin; P J Landrigan; S M Southwick
Journal:  Psychol Med       Date:  2013-04-03       Impact factor: 7.723

8.  Long-term trajectories of PTSD or resilience in former East German political prisoners.

Authors:  Andreas Maercker; Ira Gäbler; Jennifer O'Neil; Matthias Schützwohl; Mario Müller
Journal:  Torture       Date:  2012-10-19

9.  Applications of Latent Growth Mixture Modeling and allied methods to posttraumatic stress response data.

Authors:  Isaac R Galatzer-Levy
Journal:  Eur J Psychotraumatol       Date:  2015-03-02

10.  Analyzing small data sets using Bayesian estimation: the case of posttraumatic stress symptoms following mechanical ventilation in burn survivors.

Authors:  Rens van de Schoot; Joris J Broere; Koen H Perryck; Mariëlle Zondervan-Zwijnenburg; Nancy E van Loey
Journal:  Eur J Psychotraumatol       Date:  2015-03-11
View more
  4 in total

1.  Latent Growth Mixture Models to estimate PTSD trajectories.

Authors:  Rens Van de Schoot
Journal:  Eur J Psychotraumatol       Date:  2015-03-02

2.  Latent trajectory studies: the basics, how to interpret the results, and what to report.

Authors:  Rens van de Schoot
Journal:  Eur J Psychotraumatol       Date:  2015-03-02

3.  Applications of Latent Growth Mixture Modeling and allied methods to posttraumatic stress response data.

Authors:  Isaac R Galatzer-Levy
Journal:  Eur J Psychotraumatol       Date:  2015-03-02

4.  Systematic search of Bayesian statistics in the field of psychotraumatology.

Authors:  Rens van de Schoot; Naomi Schalken; Miranda Olff
Journal:  Eur J Psychotraumatol       Date:  2017-10-31
  4 in total

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