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Factor graph analysis of live cell-imaging data reveals mechanisms of cell fate decisions

Authors :
Niederberger, Theresa
Failmezger, Henrik
Uskat, Diana
Poron, Don
Glauche, Ingmar
Scherf, Nico
Roeder, Ingo
Schroeder, Timm
Tresch, Achim
Niederberger, Theresa
Failmezger, Henrik
Uskat, Diana
Poron, Don
Glauche, Ingmar
Scherf, Nico
Roeder, Ingo
Schroeder, Timm
Tresch, Achim
Publication Year :
2015

Abstract

Motivation: Cell fate decisions have a strong stochastic component. The identification of the underlying mechanisms therefore requires a rigorous statistical analysis of large ensembles of single cells that were tracked and phenotyped over time. Results: We introduce a probabilistic framework for testing elementary hypotheses on dynamic cell behavior using time-lapse cell-imaging data. Factor graphs, probabilistic graphical models, are used to properly account for cell lineage and cell phenotype information. Our model is applied to time-lapse movies of murine granulocyte-macrophage progenitor (GMP) cells. It decides between competing hypotheses on the mechanisms of their differentiation. Our results theoretically substantiate previous experimental observations that lineage instruction, not selection is the cause for the differentiation of GMP cells into mature monocytes or neutrophil granulocytes.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1364940360
Document Type :
Electronic Resource