Predictors of fatigue self-management behaviors in adults with multiple sclerosis

Author:

Wang Emily1,Chang Julia H.C.2,Plow Matthew2

Affiliation:

1. Loyola University of Chicago Stritch School of Medicine, Loyola University Chicago, Maywood, IL, USA

2. Frances Payne Bolton School of Nursing, Case Western Reserve University, Cleveland, OH, USA

Abstract

BACKGROUND: Fatigue is one of the most common and disabling symptoms in people with multiple sclerosis (MS). Fatigue self-management behaviors may be effective in reducing the impact of fatigue in people with MS. However, few studies have examined the factors that influence engagement in fatigue self-management behaviors. OBJECTIVE: Identify factors that directly and indirectly influence fatigue self-management behaviors. METHODS: Participants with MS (n = 287) completed online questionnaires at baseline and 6-weeks. Guided by the Self- and Family Management Framework, we examined the influence of health status, resources and environment, healthcare utilization, and self-management processes on fatigue self-management behaviors at 6-weeks. Multiple regression and path analyses were conducted. RESULTS: The final regression model variables accounted for 41.58% of the variance in fatigue self-management behaviors, which included outcome expectations (β= 0.287), disability (β= 0.265), environmental barriers (β= 0.188), self-efficacy (β= 0.153), symptom severity (β= 0.113), living in an urban community (β= –0.108), and living alone (β= 0.103). Path analysis indicated that outcome expectations may mediate the relationship between disability levels and fatigue self-management behavior. CONCLUSIONS: Health status (i.e., disability and symptom severity), environmental factors (e.g., living situation), and self-management processes (i.e., self-efficacy and outcome expectations) may play an important role in influencing engagement in fatigue self-management behaviors.

Publisher

IOS Press

Subject

Neurology (clinical),Rehabilitation,Physical Therapy, Sports Therapy and Rehabilitation

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