Investigating viral parameter dependence on cell and viral life cycle assumptions

dc.contributor.authorPretorius, Carel Diederik
dc.date.accessioned2007-03-01T12:39:05Z
dc.date.available2007-03-01T12:39:05Z
dc.date.issued2007-03-01T12:39:05Z
dc.descriptionStudent Number: 9811822T - MSc Dissertation - School of Computational and Applied Mathematics - Faculty of Scienceen
dc.description.abstractThis dissertation reviews population dynamic type models of viral infection and introduces some new models to describe strain competition and the infected cell lifecycle. Laboratory data from a recent clinical trial, tracking drug resistant virus in patients given a short course of monotherapy is comprehensively analysed, paying particular attention to reproducibility. A Bayesian framework is introduced, which facilitates the inference of model parameters from the clinical data. It appears that the rapid emergence of resistance is a challenge to popular unstructured models of viral infection, and this challenge is partly addressed. In particular, it appears that minimal ordinary differential equations, with their implicit exponential lifetime (constant hazard) distributions in all compartments, lack the short transient timescales observed clinically. Directions for future work, both in terms of obtaining more informative data, and developing more systematic approaches to model building, are identified.en
dc.format.extent3032883 bytes
dc.format.mimetypeapplication/pdf
dc.identifier.urihttp://hdl.handle.net/10539/2183
dc.language.isoenen
dc.subjectviral infectionen
dc.subjectpopulation dynamicsen
dc.subjectage structureen
dc.subjectstrain competitionen
dc.subjectPCRen
dc.subjectHierarchical Bayesian modellingen
dc.titleInvestigating viral parameter dependence on cell and viral life cycle assumptionsen
dc.typeThesisen
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