A1 Refereed original research article in a scientific journal

A subpopulation model to analyze heterogeneous cell differentiation dynamics




AuthorsChan Yat Hin, Intosalmi Jukka, Rautio Sini, Lähdesmäki Harri

PublisherOXFORD UNIV PRESS

Publication year2016

JournalBioinformatics

Journal name in sourceBIOINFORMATICS

Journal acronymBIOINFORMATICS

Volume32

Issue21

First page 3306

Last page3313

Number of pages8

ISSN1367-4803

eISSN1460-2059

DOIhttps://doi.org/10.1093/bioinformatics/btw395


Abstract
Motivation: Cell differentiation is steered by extracellular signals that activate a cell type specific transcriptional program. Molecular mechanisms that drive the differentiation can be analyzed by combining mathematical modeling with population average data. For standard mathematical models, the population average data is informative only if the measurements come from a homogeneous cell culture. In practice, however, the differentiation efficiencies are always imperfect. Consequently, cell cultures are inherently mixtures of several cell types, which have different molecular mechanisms and exhibit quantitatively different dynamics. There is an urgent need for data-driven mathematical modeling approaches that can detect possible heterogeneity and, further, recover the molecular mechanisms from heterogeneous data.Results: We develop a novel method that models a heterogeneous population using homogeneous subpopulations that evolve in parallel. Different subpopulations can represent different cell types and each subpopulation can have cell type specific molecular mechanisms. We present statistical methodology that can be used to quantify the effect of heterogeneity and to infer the subpopulation specific molecular interactions. After a proof of principle study with simulated data, we apply our methodology to analyze the differentiation of human Th17 cells using time-course RNA sequencing data. We construct putative molecular networks driving the T cell activation and Th17 differentiation and allow the cell populations to be split into two subpopulations in the case of heterogeneous samples. Our analysis shows that the heterogeneity indeed has a statistically significant effect on observed dynamics and, furthermore, our statistical methodology can infer both the subpopulation specific molecular mechanisms and the effect of heterogeneity.



Last updated on 2024-26-11 at 23:23