Pei-Pei Zhang1, Chun Chang. 1. Department of Social Medicine & Health Education Medicine, School of Public Health, Peking University, Beijing 100191, China.
Abstract
OBJECTIVE: To measure, evaluate health literacy and discover its relative factors among residents of three cities in China. METHODS: Multiple cluster sampling was employed and 3300 respondents were surveyed by self-designed questionnaires in Beijing, Datong and Shenzhen city during May to September in 2011. Information on demographic characteristics, health knowledge and health literacy was collected. Respondents' health literacy scores were statistically reported and evaluated referring to education level. To explore relative factors of health literacy, multiple linear regression model with score of health literacy as dependent variable, respondents' demographic characteristics and health knowledge as independent variables was built by multiple linear regression analysis. RESULTS: Questionnaires were conducted among 3300 residents and resulted in 90.9% (3000/3300) qualified sample return. Respondents were (31.6 ± 12.0) (15 - 65) years old, who got (19.92 ± 5.17) (2 - 28) scores in the health literacy test with an average correct rate of 71.1%. The proportion of subjects with low (< 20.5 grades), medium (20.5 - 24.5 grades), and high (> 24.5 grades) level of health literacy were 46.6% (1398/3000), 33.1% (993/3000) and 20.3% (609/3000) respectively. The multiple linear regression model showed that positive correlation factors of health literacy included health knowledge (β = 0.28), education level (β = 0.28), income (β = 0.14), gender (β = 0.05), nationality (β = 0.05), registered permanent residence (β = 0.05) (all P values < 0.05) and the negative correlated factors included age (β = -0.28), occupation (β = -0.05), respectively (all P values < 0.05). CONCLUSION: Over 50% residents in the three studied cities had medium and above health literacy. The positive correlated factors of health literacy included health knowledge, education level, income, gender, nationality, registered permanent residence and the negative correlated factors included age and occupation.
OBJECTIVE: To measure, evaluate health literacy and discover its relative factors among residents of three cities in China. METHODS: Multiple cluster sampling was employed and 3300 respondents were surveyed by self-designed questionnaires in Beijing, Datong and Shenzhen city during May to September in 2011. Information on demographic characteristics, health knowledge and health literacy was collected. Respondents' health literacy scores were statistically reported and evaluated referring to education level. To explore relative factors of health literacy, multiple linear regression model with score of health literacy as dependent variable, respondents' demographic characteristics and health knowledge as independent variables was built by multiple linear regression analysis. RESULTS: Questionnaires were conducted among 3300 residents and resulted in 90.9% (3000/3300) qualified sample return. Respondents were (31.6 ± 12.0) (15 - 65) years old, who got (19.92 ± 5.17) (2 - 28) scores in the health literacy test with an average correct rate of 71.1%. The proportion of subjects with low (< 20.5 grades), medium (20.5 - 24.5 grades), and high (> 24.5 grades) level of health literacy were 46.6% (1398/3000), 33.1% (993/3000) and 20.3% (609/3000) respectively. The multiple linear regression model showed that positive correlation factors of health literacy included health knowledge (β = 0.28), education level (β = 0.28), income (β = 0.14), gender (β = 0.05), nationality (β = 0.05), registered permanent residence (β = 0.05) (all P values < 0.05) and the negative correlated factors included age (β = -0.28), occupation (β = -0.05), respectively (all P values < 0.05). CONCLUSION: Over 50% residents in the three studied cities had medium and above health literacy. The positive correlated factors of health literacy included health knowledge, education level, income, gender, nationality, registered permanent residence and the negative correlated factors included age and occupation.