Garira, WAmey, A. K. ABessong, P. OShoko, Claris2015-07-162015-07-162015-07-16Shoko, C. 2015. Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa. . . http://hdl.handle.net/11602/302http://hdl.handle.net/11602/302MSc (Statistics)Department of StatisticsThe study explores the stochastic approach to multi-state modeling of HIV dynamic evolution and identification of the model that best describes HIV progression on individuals under ART. The effects of TB co-infection, as well as the patients' development of adverse reaction to drugs to the transition rates are also examined. The study uses a cohort analysis of the surveillance data for HIV-infected patients under antiretroviral (ART) from the Wellness Clinic in Bela Bela, South Africa. The survey was conducted between 2005 and 2009 and a follow up was done after every 6 months. The method par titions the HIV infection period into five CD4-cell count intervals followed by the end points, that is, death and withdrawal from study. The analysis is based on transition probabilities, transition rates (hazards), mean sojourn times, and time to absorption. The effects of the covariates, namely sex, age, TB co-infection, drug reaction, body mass index (BMI), baseline viral load (VLBL) and the CD4+ cell count baseline on enrollment, on transition in tensities for each model are also analysed. The likelihood ratio test is used to compare the fitted models, and the test shows that the time inhomogeneous model describes the data better than the time homogeneous models. The results show that the rates of immune recovery are generally higher than the rates of immune deterioration. The patients who developed TB during treat ment have higher rates of immune deterioration than recovery. Having TB as the initial marker of AIDS has higher contributory effects to the deaths from all the stages except from the AIDS defining stage. Reaction to drugs was the leading cause of transition from a CD4+ cell count 2: 750 to a CD4+ cell count between 500 and 750.1 online resource (xiv, 138 leaves): illustrations (some color)enUniversity of VendaCovariatesUCTDHomogeneous Markov modelsLikelihood ratio testLongitudinal data616.97920968251HIV infection -- South Africa -- LimpopoHIV-positive persons -- South Africa -- LimpopoAID (Disease) -- Patients -- South Africa -- LimpopoTubeculosis -- Patients -- South Africa -- LimpopoTuberculosis -- Prevention -- South Africa -- LimpopoStochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South AfricaDissertationShoko C. Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa. []. , 2015 [cited yyyy month dd]. Available from: http://hdl.handle.net/11602/302Shoko, C. (2015). <i>Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa</i>. (). . Retrieved from http://hdl.handle.net/11602/302Shoko, Claris. <i>"Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa."</i> ., , 2015. http://hdl.handle.net/11602/302TY - Dissertation AU - Shoko, Claris DA - 2015-07-16 DB - ResearchSpace DP - Univen KW - Covariates KW - Homogeneous Markov models KW - Likelihood ratio test KW - Longitudinal data LK - https://univendspace.univen.ac.za PY - 2015 T1 - Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa TI - Stochastic modelling of HIV/AIDS epidemiology with TB co-infection drug reaction in South Africa UR - http://hdl.handle.net/11602/302 ER -