Abstract
Realistic evolutionary fitness landscapes are notoriously difficult to construct. A recent cutting-edge model of virus assembly consists of a dodecahedral capsid with 12 corresponding packaging signals in three affinity bands. This whole genome/phenotype space consisting of 312 genomes has been explored via computationally expensive stochastic assembly models, giving a fitness landscape in terms of the assembly efficiency. Using latest machine-learning techniques by establishing a neural network, we show that the intensive computation can be short-circuited in a matter of minutes to astounding accuracy.
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CITATION STYLE
He, Y. H., & Dechant, P. P. (2021). Machine-learning a virus assembly fitness landscape. PLoS ONE, 16(5 May). https://doi.org/10.1371/journal.pone.0250227
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