Skip to main content
Login | Suomeksi | På svenska | In English

Experimentally-based Mathematical Modeling to Analyze T Helper 17 Cell Differentiation in Heterogeneous Cell Populations

Show simple item record

dc.date.accessioned 2015-12-14T08:18:03Z und
dc.date.accessioned 2017-10-24T12:21:50Z
dc.date.available 2015-12-14T08:18:03Z und
dc.date.available 2017-10-24T12:21:50Z
dc.date.issued 2015-12-14T08:18:03Z
dc.identifier.uri http://radr.hulib.helsinki.fi/handle/10138.1/5223 und
dc.identifier.uri http://hdl.handle.net/10138.1/5223
dc.title Experimentally-based Mathematical Modeling to Analyze T Helper 17 Cell Differentiation in Heterogeneous Cell Populations en
ethesis.discipline Mathematics en
ethesis.discipline Matematiikka fi
ethesis.discipline Matematik sv
ethesis.discipline.URI http://data.hulib.helsinki.fi/id/44bc4f03-6035-4697-993b-cfc4cea667eb
ethesis.department.URI http://data.hulib.helsinki.fi/id/61364eb4-647a-40e2-8539-11c5c0af8dc2
ethesis.department Institutionen för matematik och statistik sv
ethesis.department Department of Mathematics and Statistics en
ethesis.department Matematiikan ja tilastotieteen laitos fi
ethesis.faculty Matematisk-naturvetenskapliga fakulteten sv
ethesis.faculty Matemaattis-luonnontieteellinen tiedekunta fi
ethesis.faculty Faculty of Science en
ethesis.faculty.URI http://data.hulib.helsinki.fi/id/8d59209f-6614-4edd-9744-1ebdaf1d13ca
ethesis.university.URI http://data.hulib.helsinki.fi/id/50ae46d8-7ba9-4821-877c-c994c78b0d97
ethesis.university Helsingfors universitet sv
ethesis.university University of Helsinki en
ethesis.university Helsingin yliopisto fi
dct.creator Chan, Yat Hin
dct.issued 2015
dct.language.ISO639-2 eng
dct.abstract During the recent years, there has been an increasing interest among both biologists and mathematicians to model and understand gene regulatory mechanisms that drive cell differentiation processes. Mathematical modeling of these processes is often based on the assumption of homogeneous cell population. However, in many applications the cell populations of interest can be heterogeneous. For example, CD4+ T cell populations that are studied in this thesis may consist of many distinct T helper (Th) cell subtypes. Consequently, cell populations in cell differentiation studies are inevitably heterogeneous. In this thesis, we develop a new modeling approach that takes the possibility of a heterogeneous population into account and apply this approach to study the Th17 cell differentiation. More specifically, we design ordinary differential equation (ODE) models that take the heterogeneity into account by describing approximative subpopulations that evolve in parallel within a population and have cell type specific regulatory mechanisms and dynamics. In our application, we allow the cell population to be split into two subpopulations, an activated T helper (Th0) cell subpopulation and an actively differentiating Th17 cell subpopulation. Both Th0 and Th17 cell dynamics share the same rate parameters to describe the common reaction mechanisms within the subtypes. Three models, homogeneous population (M1), replicate-independent heterogeneous population (M2) and replicate-dependent heterogeneous population (M3), are constructed. In order to infer Th17 cell differentiation dynamics and to detect possible heterogeneity during differentiation in a data-driven manner, we combine mathematical modeling with RNA sequencing (RNA-Seq) data using statistical modeling. To carry out posterior analysis, we use Bayesian inference with population-based Markov chain Monte Carlo (popMCMC) sampling method. Our results show strong evidence for the replicate-dependent heterogeneous population model (M3) evolving in Th17 lineage polarizing condition. In addition, the model makes it possible to predict the resulting molecular dynamics. en
dct.language en
ethesis.language.URI http://data.hulib.helsinki.fi/id/languages/eng
ethesis.language English en
ethesis.language englanti fi
ethesis.language engelska sv
ethesis.thesistype pro gradu-avhandlingar sv
ethesis.thesistype pro gradu -tutkielmat fi
ethesis.thesistype master's thesis en
ethesis.thesistype.URI http://data.hulib.helsinki.fi/id/thesistypes/mastersthesis
dct.identifier.urn URN:NBN:fi-fe2017112252363
dc.type.dcmitype Text

Files in this item

Files Size Format View
chan_thesis.pdf 3.491Mb PDF

This item appears in the following Collection(s)

Show simple item record