Explaining fatigue in multiple sclerosis: cross-validation of a biopsychosocial model

被引:0
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作者
Melloney L. M. Wijenberg
Sven Z. Stapert
Sebastian Köhler
Yvonne Bol
机构
[1] Maastricht University,Faculty of Psychology and Neuroscience
[2] Maastricht University,Faculty of Health, Medicine and Life Sciences, School for Mental Health and Neuroscience
[3] Zuyderland Medical Center,Department of Medical Psychology/Academic MS Center Limburg
来源
关键词
Multiple sclerosis; Fatigue; Catastrophizing; Physical disability; Structural equation modelling; Biopsychosocial model;
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摘要
Fatigue is a common and disabling symptom in patients with multiple sclerosis (MS), but its pathogenesis is still poorly understood and consequently evidence-based treatment options are limited. Bol et al. (J Behav Med 33(5):355–363, 2010) suggested a new model, which explains fatigue in MS from a biopsychosocial perspective, including cognitive-behavioral factors. For purposes of generalization to clinical practice, cross-validation of this model in another sample of 218 patients with MS was performed using structural equation modeling. Path analysis indicated a close and adequate global fit (RMSEA = 0.053 and CFI = 0.992). The cross-validated model indicates a significant role for disease severity, depression and a fear-avoidance cycle in explaining MS-related fatigue. Modifiable factors, such as depression and catastrophizing thoughts, propose targets for treatment options. Our findings are in line with recent evidence for the effectiveness of a new generation of cognitive behavioral therapy, including acceptance and mindfulness-based interventions, and provide a theoretical framework for treating fatigue in MS.
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页码:815 / 822
页数:7
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