determinants of quality of work life among nurses working in hawassa town public health facilities, south ethiopia: a cross-sectional study

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2017
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Abstract
Background. A high quality of work life (QWL) is a crucial issue for health care facilities to have qualified, dedicated, and inspired employees. Among different specialties in health care settings, nurses have a major share among other health care providers. So, they should experience a better QWL to deliver high-quality holistic care to those who need help. Objective. To assess the level of quality of work life and its predictors among nurses working in Hawassa town public health facilities, South Ethiopia. Methods. A facility based cross-sectional study was conducted on 253 nurses of two hospitals and nine health centers. The total sample size was allocated to each facility based on the number of nurses in each facility. Data were collected using a structured questionnaire. The interitem consistency of the scale used to measure QWL had Cronbach’s alpha value of 0.86. A multinomial logistic regression model was fitted to identify significant predictors of quality of work life using SPSS version 20. Results. The study showed that 67.2% of the nurses were dissatisfied with the quality of their work life. We found that educational status, monthly income, working unit, and work environment were strong predictors of quality of work life among nurses (p<0.05). Conclusion. Significant proportions of the nurses were dissatisfied with the quality of their work life. The findings in this study and studies reported from elsewhere pinpoint that perception of nurses about the quality of their work life can be modified if health care managers are considerate of the key issues surrounding QWL.
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Authors ;Lolemo Kelbiso;Admasu Belay;Mirkuzie Woldie
Journal Veterinary parasitology
Year 2017
DOI
10.1155/2017/5181676
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