| Literature DB >> 31910213 |
Jeremy M Chacón1, Allison K Shaw1, William R Harcombe1.
Abstract
The rate at which a species responds to natural selection is a central predictor of the species' ability to adapt to environmental change. It is well-known that spatially-structured environments slow the rate of adaptation due to increased intra-genotype competition. Here, we show that this effect magnifies over time as a species becomes better adapted and grows faster. Using a reaction-diffusion model, we demonstrate that growth rates are inextricably coupled with effective spatial scales, such that higher growth rates cause more localized competition. This has two effects: selection requires more generations for beneficial mutations to fix, and spatially-caused genetic drift increases. Together, these effects diminish the value of additional growth rate mutations in structured environments.Entities:
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Year: 2020 PMID: 31910213 PMCID: PMC6946136 DOI: 10.1371/journal.pcbi.1007585
Source DB: PubMed Journal: PLoS Comput Biol ISSN: 1553-734X Impact factor: 4.475
Fig 1In populations with higher basal growth rates, more generations are required for faster-growing mutants to invade in a spatially-structured environment.
A) Schematic for the simulation experiment using resource-explicit models with Monod growth. Within a transfer, cells grew until resources were consumed. Then, cells were deterministically diluted and transferred to fresh environment (with random locations in spatial simulations). This continued until mutant invasion. B) Time series of invasion of faster-growing mutants in simulations, plotted as the mutant frequency versus transfer number. The black line is the time series for all well-mixed simulations (they perfectly overlap regardless of ancestor growth rate). The other colors are for spatially-structured simulations with different ancestor growth rates. Error bars are standard error over twenty replicates. The faster-growing mutant always had a 10% growth rate advantage over its ancestor competitors. The dashed horizontal line indicates the cutoff frequency that was used to determine the number of transfers required for invasion. C) The number of transfers the mutant required to reach a frequency of 0.9, plotted versus ancestor growth rate. Colors correspond to the same simulations in B.
Fig 2Competition localization increases with growth rate or the distances between colonies, and decreases with the resource diffusion constant.
A) Two simulation “maps” with the same founder cell geometry but different growth rates. Circle size is proportional to final biomass of colonies begun with a single founder cell in a spatial environment after resources have been exhausted. The lines designate the Voronoi polygons. The text above each simulation diagram shows ζ on top. On the bottom we show the growth rate (μ1) back-calculated from the scaled model’s ζ when the resource diffusion constant is similar to that of glucose in agar and the simulation area is 2.5cm X 2.5cm. B) A plot of relative biomass (biomass of a focal colony divided by the summed biomass of all colonies) versus relative polygon area (polygon area of a focal colony divided by the total simulation area) for the two simulations shown in A. Each point represents a different colony. The lines are linear least-squares fits, and the slope of each line is our measurement of competition localization. C) Competition localization versus ζ for two different founder densities. Each point is the mean competition localization for a given growth rate and founder density. Vertical error bars are standard deviation of 10 replicates each with different founder locations. Horizontal error bars are standard deviation of ζ due to different mean nearest-neighbor distances across maps (, see Materials and Methods).
Fig 3Increasing competition localization increases genetic drift.
A) Experimental design for the simulations. B) The variation in frequency of the physiologically-identical genotypes, as a function of ζ. The points are means, averaged across replicates, of the standard deviation of the final genotype frequency. These means were normalized by dividing by the maximum standard deviation. The error bars are standard error. The horizontal error bars are standard error of the mean of ζ, due to different founder locations causing different (see Materials and Methods).
Fig 4Selection decreases when growth rates are higher in a spatially-structured environment.
A) Simulation design with a faster growing mutant (green) in the midst of evenly spaced ancestors. In these simulations, ζ increased only by increasing the natural length scale, which is equivalent to increasing growth rate (μ1). B) The absolute increase in frequency of the mutant genotype as a function of ζ.
Description of model variables and parameters.
| cells | Amount of cells of bacterial genotype i | 49, distributed randomly on lattice | |
| resources | Amount of resources | 100 per lattice box | |
| cm2/h | Diffusion constant of the bacterial cells | 1.8e-5cm2/h (= 5e-9 cm2/s) | |
| 1/h | Maximum per-capita growth rate of bacterial genotype i | Multiple, from 0.01–0.4 | |
| resources | Amount of resources in local environment at which point the bacterial cells’ per-capita growth rate is half its maximum per-capita growth rate | 1 | |
| cm2/h | Diffusion constant of the resource | 1.8e-2cm2/h (= 5e-6 cm2/s) | |
| Resources / cells | Yield coefficient; the amount of resources required for growth of one cell | 1 | |
| Loosely, the amount of resources. More accurately, a dimensionless local resource abundance that when > 1 confers bacterial growth that is faster than half-maximum. | 100 per lattice box | ||
| The amount of bacterial cells. | 49, distributed randomly on lattice | ||
| Relative diffusion constant of bacteria versus resource | 0.001 | ||
| In invasion assays, there were two genotypes, | 1/1.1 |