Literature DB >> 33654908

Probabilistic Models for Predicting Mutational Routes to New Adaptive Phenotypes.

Eric Libby1,2, Peter A Lind3.   

Abstract

Understanding the translation of genetic variation to phenotypic variation is a fundamental problem in genetics and evolutionary biology. The introduction of new genetic variation through mutation can lead to new adaptive phenotypes, but the complexity of the genotype-to-phenotype map makes it challenging to predict the phenotypic effects of mutation. Metabolic models, in conjunction with flux balance analysis, have been used to predict evolutionary optimality. These methods however rely on large scale models of metabolism, describe a limited set of phenotypes, and assume that selection for growth rate is the prime evolutionary driver. Here we describe a method for computing the relative likelihood that mutational change will translate into a phenotypic change between two molecular pathways. The interactions of molecular components in the pathways are modeled with ordinary differential equations. Unknown parameters are offset by probability distributions that describe the concentrations of molecular components, the reaction rates for different molecular processes, and the effects of mutations. Finally, the likelihood that mutations in a pathway will yield phenotypic change is estimated with stochastic simulations. One advantage of this method is that only basic knowledge of the interaction network underlying a phenotype is required. However, it can also incorporate available information about concentrations and reaction rates as well as mutational biases and mutational robustness of molecular components. The method estimates the relative probabilities that different pathways produce phenotypic change, which can be combined with fitness models to predict evolutionary outcomes.
Copyright © 2019 The Authors; exclusive licensee Bio-protocol LLC.

Entities:  

Keywords:  Adaptation; Evolution; Evolutionary forecasting; Genotype-to-phenotype map; Mathematical modeling; Mutation

Year:  2019        PMID: 33654908      PMCID: PMC7854003          DOI: 10.21769/BioProtoc.3407

Source DB:  PubMed          Journal:  Bio Protoc        ISSN: 2331-8325


  18 in total

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Authors:  Richard A Neher; Colin A Russell; Boris I Shraiman
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Review 3.  Modeling evolution using the probability of fixation: history and implications.

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6.  Variation in Mutational Robustness between Different Proteins and the Predictability of Fitness Effects.

Authors:  Peter A Lind; Lars Arvidsson; Otto G Berg; Dan I Andersson
Journal:  Mol Biol Evol       Date:  2017-02-01       Impact factor: 16.240

7.  Experimental evolution reveals hidden diversity in evolutionary pathways.

Authors:  Peter A Lind; Andrew D Farr; Paul B Rainey
Journal:  Elife       Date:  2015-03-25       Impact factor: 8.140

8.  Metabolic co-dependence gives rise to collective oscillations within biofilms.

Authors:  Jintao Liu; Arthur Prindle; Jacqueline Humphries; Marçal Gabalda-Sagarra; Munehiro Asally; Dong-yeon D Lee; San Ly; Jordi Garcia-Ojalvo; Gürol M Süel
Journal:  Nature       Date:  2015-07-22       Impact factor: 49.962

9.  Predicting mutational routes to new adaptive phenotypes.

Authors:  Peter A Lind; Eric Libby; Jenny Herzog; Paul B Rainey
Journal:  Elife       Date:  2019-01-08       Impact factor: 8.140

10.  SNAP: predict effect of non-synonymous polymorphisms on function.

Authors:  Yana Bromberg; Burkhard Rost
Journal:  Nucleic Acids Res       Date:  2007-05-25       Impact factor: 16.971

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