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Original Articles

Assessing the quality of life in patients with multiple sclerosis in Kuwait: a cross sectional study

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Pages 391-399 | Received 27 Nov 2016, Accepted 02 Aug 2017, Published online: 13 Aug 2017
 

Abstract

The main objective of this paper was to assess the level and the determinants of quality of life (QOL) amongst patients with multiple sclerosis (MS). A cross-sectional study was conducted among a convenience sample of 200 adult MS patients. Inclusion criteria were: MS diagnosis for at least one year, and aged 21+ years. However, exclusion criteria were: having other neurological diseases, serious cardiovascular, orthopedic or other disability precluding participation. Self-administered questionnaire employed MSQOL-54 with two outcomes: Physical Health Composite (PHC) and mental health composite (MHC). Satisfaction with Daily Occupation scale was adopted through face to face interviews. The median of PHC and MHC scores were 48.9/100, and 53.4/100 respectively. Multivariate analysis revealed that unemployment was a determinant of poor PHC, while low monthly income was a predictor of poor MHC. Additionally, low endurance and sensory problems were associated with poor PHC, and MHC, while motor problems were allied with only poor PHC. Patient’s satisfaction level with performing activities of daily living was positively associated with PHC and MHC. Assessment of QOL is suggested to be comprised in medical settings.

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