A multi-level analysis of risk factors for Schistosoma japonic...

Collect this paper and discover other ones on Labmeeting. Learn more.
- Hide Abstract
OBJECTIVE: The aim of this study was to explore the risk factors of schistosomiasis japonica in China, using a hierarchical multi-level model with individuals nested within villages. METHODS: A cross-sectional survey of schistosomiasis japonica was conducted in 16 villages in the Chinese province of Hunan. A multi-level modeling technique (HLM version 6.04) was used to assess risk factors of schistosomiasis. The results from this multi-level model were compared with those from a conventional single-level logistic regression model. RESULTS: A total of 10,245 individuals were enrolled in this study, of whom about 4.1% were infected with Schistosoma japonicum. In the multi-level model analysis, individual level variables such as gender, age, and occupation, and village level variables such as type of S. japonicum endemic area, drinking water source, sewage treatment, June temperature, and April rainfall were associated with schistosomiasis japonica infection. Conventional single-level logistic regression analysis selected more independent variables, and had narrower confidence intervals around the corresponding regression coefficients. In particular, per capita income, precipitation in October, and density of infected snails were statistically significant in the conventional single-level logistic regression analysis but not in the multi-level model. CONCLUSIONS: Multi-level modeling is a useful tool in the analysis of risk factors of schistosomiasis japonica. Because the multi-level model captures the hierarchical structure of the data, it may be considered a more appropriate analytical tool for data of this type. This technique may also be useful in the analysis of other infectious diseases with a similar hierarchical structure.
International journal of infectious diseases : IJID : official publication of the International Society for Infectious Diseases 13(6):e407-12, 2009 NovWho cited this? | PubMed ID: 19398361 | Fulltext


+ Click Here for Related Papers


Join Labmeeting

  • Organize and search your PDF collection
  • Collect papers
  • Search millions of papers
  • Keep up to date with paper alerts
  • Read your papers from anywhere
  • Recommend papers to colleagues
  • Manage your lab

Join Labmeeting

Labmeeting is a web service for researchers. Sign up with your academic email address.

Individuals or corporations not affiliated with an academic institution can request a trial subscription.


Got a question?
The Labmeeting Network
has the answer.
Ask scientists at top universities like Harvard, Stanford, and MIT for their expert opinion!