five

Study’s minimal underlying data set.

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NIAID Data Ecosystem2026-05-01 收录
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Introduction Any type of activity that results in caloric expenditure has the potential to reduce the risk of cardiovascular diseases; nonetheless, most people, especially office workers, are physically inactive. This study sought to evaluate the extent of physical inactivity and its determinants among the staff of selected banks in Accra, Ghana. Methods This was a cross-sectional study involving 219 banking staff randomly selected from five commercial banking institutions in Accra, Ghana. Demographic data was collected with a structured questionnaire. Physical inactivity was assessed using the Global Physical Activity Questionnaire. Study associations were determined using univariate analysis, and multivariate logistic regression models with adjusted odds ratio (AOR) and 95% confidence intervals (CI) estimated. Results Two hundred and nineteen (219) participants were recruited, out of which 56.6% were males and 43.4% were females. The mean age (± SD) of the participants was 40.0±7.9 years. Physical inactivity was observed in 179 (81.7%) participants. The following were independently associated with physical inactivity: travel-related activities (AOR, 0.151; 95% CI, 0.059–0.384; p<0.001); working in the bank for 6–10 years (AOR, 4.617; 95% CI, 1.590–13.405; p = 0.005); and working in the bank for 11 years and above (AOR, 2.816; 95% CI, 1.076–7.368; p = 0.035). Conclusion Physical inactivity was very high among bankers. Travel-related activities reduced physical inactivity whiles working at the bank for more than six years increased physical inactivity. Thus, promoting regular physical activity, frequent monitoring, and implementation of other appropriate healthy lifestyle intervention strategies are vital to reduce risk of early onset disease conditions associated with physical inactivity in this population.
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2023-05-11
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