Yeast mating and image-based quantification of spatial pattern formation.

Communication between cells is a ubiquitous feature of cell populations and is frequently realized by secretion and detection of signaling molecules. Direct visualization of the resulting complex gradients between secreting and receiving cells is often impossible due to the small size of diffusing m...

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Main Authors: Christian Diener, Gabriele Schreiber, Wolfgang Giese, Gabriel del Rio, Andreas Schröder, Edda Klipp
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-06-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC4072512?pdf=render
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author Christian Diener
Gabriele Schreiber
Wolfgang Giese
Gabriel del Rio
Andreas Schröder
Edda Klipp
author_facet Christian Diener
Gabriele Schreiber
Wolfgang Giese
Gabriel del Rio
Andreas Schröder
Edda Klipp
author_sort Christian Diener
collection DOAJ
description Communication between cells is a ubiquitous feature of cell populations and is frequently realized by secretion and detection of signaling molecules. Direct visualization of the resulting complex gradients between secreting and receiving cells is often impossible due to the small size of diffusing molecules and because such visualization requires experimental perturbations such as attachment of fluorescent markers, which can change diffusion properties. We designed a method to estimate such extracellular concentration profiles in vivo by using spatiotemporal mathematical models derived from microscopic analysis. This method is applied to populations of thousands of haploid yeast cells during mating in order to quantify the extracellular distributions of the pheromone α-factor and the activity of the aspartyl protease Bar1. We demonstrate that Bar1 limits the range of the extracellular pheromone signal and is critical in establishing α-factor concentration gradients, which is crucial for effective mating. Moreover, haploid populations of wild type yeast cells, but not BAR1 deletion strains, create a pheromone pattern in which cells differentially grow and mate, with low pheromone regions where cells continue to bud and regions with higher pheromone levels and gradients where cells conjugate to form diploids. However, this effect seems to be exclusive to high-density cultures. Our results show a new role of Bar1 protease regulating the pheromone distribution within larger populations and not only locally inside an ascus or among few cells. As a consequence, wild type populations have not only higher mating efficiency, but also higher growth rates than mixed MATa bar1Δ/MATα cultures. We provide an explanation of how a rapidly diffusing molecule can be exploited by cells to provide spatial information that divides the population into different transcriptional programs and phenotypes.
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spelling doaj.art-5a76b7326df4461a9daff3a9f443d3912022-12-21T19:55:01ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582014-06-01106e100369010.1371/journal.pcbi.1003690Yeast mating and image-based quantification of spatial pattern formation.Christian DienerGabriele SchreiberWolfgang GieseGabriel del RioAndreas SchröderEdda KlippCommunication between cells is a ubiquitous feature of cell populations and is frequently realized by secretion and detection of signaling molecules. Direct visualization of the resulting complex gradients between secreting and receiving cells is often impossible due to the small size of diffusing molecules and because such visualization requires experimental perturbations such as attachment of fluorescent markers, which can change diffusion properties. We designed a method to estimate such extracellular concentration profiles in vivo by using spatiotemporal mathematical models derived from microscopic analysis. This method is applied to populations of thousands of haploid yeast cells during mating in order to quantify the extracellular distributions of the pheromone α-factor and the activity of the aspartyl protease Bar1. We demonstrate that Bar1 limits the range of the extracellular pheromone signal and is critical in establishing α-factor concentration gradients, which is crucial for effective mating. Moreover, haploid populations of wild type yeast cells, but not BAR1 deletion strains, create a pheromone pattern in which cells differentially grow and mate, with low pheromone regions where cells continue to bud and regions with higher pheromone levels and gradients where cells conjugate to form diploids. However, this effect seems to be exclusive to high-density cultures. Our results show a new role of Bar1 protease regulating the pheromone distribution within larger populations and not only locally inside an ascus or among few cells. As a consequence, wild type populations have not only higher mating efficiency, but also higher growth rates than mixed MATa bar1Δ/MATα cultures. We provide an explanation of how a rapidly diffusing molecule can be exploited by cells to provide spatial information that divides the population into different transcriptional programs and phenotypes.http://europepmc.org/articles/PMC4072512?pdf=render
spellingShingle Christian Diener
Gabriele Schreiber
Wolfgang Giese
Gabriel del Rio
Andreas Schröder
Edda Klipp
Yeast mating and image-based quantification of spatial pattern formation.
PLoS Computational Biology
title Yeast mating and image-based quantification of spatial pattern formation.
title_full Yeast mating and image-based quantification of spatial pattern formation.
title_fullStr Yeast mating and image-based quantification of spatial pattern formation.
title_full_unstemmed Yeast mating and image-based quantification of spatial pattern formation.
title_short Yeast mating and image-based quantification of spatial pattern formation.
title_sort yeast mating and image based quantification of spatial pattern formation
url http://europepmc.org/articles/PMC4072512?pdf=render
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AT gabrieldelrio yeastmatingandimagebasedquantificationofspatialpatternformation
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