Feasibility of a virtual adaptation of a yoga intervention for Veterans with chronic pain and posttraumatic stress disorder

Abstract: Purpose/Objective: This study assessed the feasibility and acceptability of a yoga intervention for veterans with comorbid posttraumatic stress disorder (PTSD) and chronic pain (CP) that was adapted for virtual implementation. Research Method/Design: This pilot feasibility study at a large, mid-Atlantic Veteran's Affairs (VA) Medical Center with veterans with both PTSD and CP examined the adaptation of an eight-session virtual yoga group intervention. Participants (n = 18, 11 completers) were primarily male (82.4%), African American (76.5%), with no prior yoga experience (70.6%). A measure of client satisfaction was administered at completion and attendance rates were examined. Self-reported symptom measures were also assessed. Results: There were no instances of injuries or other adverse effects related to the study. This study yielded a 39% attrition rate, consistent with in-person yoga interventions. Mean number of sessions attended was 5.53 (SD = 1.73). Participants rated overall satisfaction as high (M = 28.09; SD = 3.96; potential range 8-32). Conclusions/Implications: This study provides initial data on the acceptability of a virtual yoga intervention for veterans with comorbid PTSD and CP, with attrition and satisfaction rates in line with prior in-person iterations. Implications of virtual adaption and considerations for future efforts will be discussed.

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