Dose-response Modeling Applications in Field of Environmental Health
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Authors
H. Jafari
- Assistant professor Statistic faculty, Razi University of Kermanshah.
H. S. Bazargani
- Assistant professor Epidemiology and Statistics, Road traffic injury research center, Department of statistics & epidemiology, Tabriz University of medical science, Tabriz, Iran.
Y. Khaki
- M.S. in statistic, Razi University of Kermanshah.
T. Jafari
- Young Researchers and Elite Club, Tabriz Branch, Islamic Azad University, Tabriz, Iran.
Abstract
Characteristics and applications of benchmark Dose (BMD) modeling in assessing environmental risks affecting the health status is discussed in this article. BMD is a method usually used to estimate the critical dose or the amount of a chemical leading to a known outcome.
This article discusses a statistic model processing Dose-Response variables as a clear and precise answer that introduces constancy and stability and shows that it is a more basic and practical rather than old and traditional method to assess risk of chemicals by assigning their critical volume or Dose.
Share and Cite
ISRP Style
H. Jafari, H. S. Bazargani, Y. Khaki, T. Jafari, Dose-response Modeling Applications in Field of Environmental Health, Journal of Mathematics and Computer Science, 9 (2014), no. 4, 401 - 407
AMA Style
Jafari H., Bazargani H. S., Khaki Y., Jafari T., Dose-response Modeling Applications in Field of Environmental Health. J Math Comput SCI-JM. (2014); 9(4):401 - 407
Chicago/Turabian Style
Jafari, H., Bazargani, H. S., Khaki, Y., Jafari, T.. "Dose-response Modeling Applications in Field of Environmental Health." Journal of Mathematics and Computer Science, 9, no. 4 (2014): 401 - 407
Keywords
- Dose-Response
- Benchmark Dose (BMD)
- BMDL
- Risk Assessment
- U.S.EPA
- BMR
- LOAEL
- NOAEL.
MSC
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