随机对照试验
物理疗法
医学
腰痛
基线(sea)
物理医学与康复
慢性疼痛
运动(音乐)
心理学
替代医学
内科学
美学
海洋学
地质学
哲学
病理
作者
Camille Garnsey,Katherine E. Gnall,Mariel Emrich,Crystal L. Park,Angela Starkweather,Wanli Xu,Erik J. Groessl,Tania B. Huedo–Medina
标识
DOI:10.1177/08901171251315014
摘要
PurposeExamine whether baseline participant characteristics predict engagement in a movement-based RCT for chronic low back pain (CLBP).DesignLongitudinal study within an RCT.SettingOnline.Subjects138 individuals with CLBP (18-79 years).InterventionParticipants were randomized to a 12-week intervention of twice-weekly synchronous online yoga OR stretching/strengthening classes, and received 20-min pre-recorded home videos to complete daily.MeasuresBaseline questionnaires assessed sociodemographic, psychosocial, and pain factors (100% response rate). Engagement was operationalized as minutes of class attended + minutes of home videos completed.ResultsBivariate correlations were computed between baseline variables and engagement. Three multivariate negative binomial generalized linear models (GLMs) were constructed to simultaneously examine predictors of engagement in the domains of sociodemographic, psychosocial, and pain-related factors. Greater engagement was significantly associated with greater baseline age, educational attainment, energy, and emotional well-being, and less emotion regulation difficulties, cannabis use problems, and pain interference (|rs| = .19-.33). In the domain specific GLMs, education (B = .491, P = .017) and cannabis use problems (B = -.048, P = .027) were the only significant predictors in the sociodemographic and psychosocial models, respectively. Neither pain interference nor pain severity were significant in the pain model.ConclusionFactors identified can inform strategies to increase engagement in movement-based CLBP interventions, potentially improving research validity and outcomes. Limitations include lack of racial diversity and not testing how engagement fluctuates throughout the intervention.
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