Identifying factors associated with smoking in Gauteng in the presence of missing data.
Date
2014
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Abstract
Smoking still remains one of the leading preventable causes of death in South
Africa. It increases the chances of lung diseases such as emphysema, chronic
bronchitis and many other diseases. The current research aims to model the
smoking survey data which was part of the October 1996 omnibus smoking
survey in Gauteng (South Africa). The surveyed variables were race,
sex, marital status, socio-economic status, smoking status, age and education
level. Generalized Linear Models (GLMs) and Generalized Linear
Mixed Models (GLMMs) were used to model this data. Multiple Correspondence
Analysis (MCA) was used to check for the relationships and correlation
among the variables. Furthermore, the problem of missing data
was addressed using the classical methods such as Last Observation Carried
Forward (LOCF) as well as more modern advanced methods viz. Inverse
Probability Weighting (IPW) and Multiple Imputation (MI).
The percentage of smokers was found to be lower than that of non-smokers
amongst all the surveyed variables. Race, sex, age and socio-economic status
were found to be signi cant when tted with both GLMs and GLMMs. It
was found that race and socio-economic status were closely correlated, education
was closely correlated with race, education was closely correlated with
socio-economic status, and age was closely correlated with marital status.
MI and IPW estimators were found to be more consistent than the LOCF
estimators. In spite of the e ort by several health policy makers of trying
to alert people about the dangers of smoking, there appears to be a lack of
awareness that smoking causes tuberculosis (TB), lung cancer, stroke, throat
and mouth cancer, as well as various other lung and heart diseases.
Description
M. Sc. University of KwaZulu-Natal, Pietermaritzburg 2014.
Keywords
Smoking--Gauteng., Smoking--Statistics., Theses--Statistics.