Levent Dumenci1, Kurt Kroenke2, Francis J Keefe3, Dennis C Ang4, James Slover5, Robert A Perera6, Daniel L Riddle7. 1. Department of Epidemiology and Biostatistics, Temple University, Philadelphia, PA, USA. 2. Indiana University School of Medicine, and Regenstrief Institute, Indianapolis, IN, USA. 3. Pain Prevention and Treatment Research, Department of Psychiatry and Behavioral Sciences, Duke University, Durham, NC, USA. 4. Section of Rheumatology, Department of Medicine, Wake Forest School of Medicine, Winston-Salem, NC, USA. 5. Department of Orthopaedic Surgery, New York University Medical Center, New York, NY, USA. 6. Department of Biostatistics, Virginia Commonwealth University, Richmond, VA, USA. 7. Departments of Physical Therapy, Orthopaedic Surgery and Rheumatology, Virginia Commonwealth University, Richmond, VA, USA.
Abstract
BACKGROUND: Research on the role of trait versus state characteristics of a variety of measures among persons experiencing pain has been a focus for the past few decades. Studying the trait versus state nature of the Pain Catastrophizing Scale (PCS) and the Patient Health Questionnaire (PHQ-8) depression scale would be highly informative given both are commonly measured in pain populations and neither scale has been studied for trait/state contributions. METHODS: The PHQ-8 and PCS were obtained on persons undergoing knee arthroplasty at baseline, 2-, 6- and 12-month post-surgery (N = 402). The multi-trait generalization of the latent trait-state model was used to partition trait and state variability in PCS and PHQ-8 item responses simultaneously. A set of variables were used to predict trait catastrophizing and trait depression. RESULTS: For total scores, the latent traits and latent states explain 63.2% (trait = 43.2%; state = 20.0%) and 50.2% (trait = 29.4%; state = 20.8%) of the variability in PCS and PHQ-8, respectively. Patients with a high number of bodily pain sites, high levels of anxiety, young patients and African-American patients had high levels of trait catastrophizing and trait depression. The PCS and the PHQ-8 consist of both enduring trait and dynamic state characteristics, with trait characteristics dominating for both measures. CONCLUSION: Clinicians and researchers using these scales should not assume the obtained measurements solely reflect either trait- or state-based characteristics. SIGNIFICANCE: Clinicians and researchers using the PCS or PHQ-8 scales are measuring both state and trait characteristics and not just trait- or state-based characteristics.
BACKGROUND: Research on the role of trait versus state characteristics of a variety of measures among persons experiencing pain has been a focus for the past few decades. Studying the trait versus state nature of the Pain Catastrophizing Scale (PCS) and the Patient Health Questionnaire (PHQ-8) depression scale would be highly informative given both are commonly measured in pain populations and neither scale has been studied for trait/state contributions. METHODS: The PHQ-8 and PCS were obtained on persons undergoing knee arthroplasty at baseline, 2-, 6- and 12-month post-surgery (N = 402). The multi-trait generalization of the latent trait-state model was used to partition trait and state variability in PCS and PHQ-8 item responses simultaneously. A set of variables were used to predict trait catastrophizing and trait depression. RESULTS: For total scores, the latent traits and latent states explain 63.2% (trait = 43.2%; state = 20.0%) and 50.2% (trait = 29.4%; state = 20.8%) of the variability in PCS and PHQ-8, respectively. Patients with a high number of bodily pain sites, high levels of anxiety, young patients and African-American patients had high levels of trait catastrophizing and trait depression. The PCS and the PHQ-8 consist of both enduring trait and dynamic state characteristics, with trait characteristics dominating for both measures. CONCLUSION: Clinicians and researchers using these scales should not assume the obtained measurements solely reflect either trait- or state-based characteristics. SIGNIFICANCE: Clinicians and researchers using the PCS or PHQ-8 scales are measuring both state and trait characteristics and not just trait- or state-based characteristics.
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Authors: David Kec; Aneta Rajdova; Jana Raputova; Blanka Adamova; Iva Srotova; Eva Kralickova Nekvapilova; Radka Neuzilova Michalcakova; Magda Horakova; Jana Belobradkova; Jindrich Olsovsky; Pavel Weber; Gabriel Hajas; Michaela Kaiserova; Radim Mazanec; Veronika Potockova; Edvard Ehler; Martin Forgac; Frank Birklein; Nurcan Üçeyler; Claudia Sommer; Josef Bednarik; Eva Vlckova Journal: Eur J Pain Date: 2021-10-10 Impact factor: 3.651