Computational modelling of plasticity-led evolution

被引:4
作者
Ng, Eden Tian Hwa [1 ]
Kinjo, Akira R. [1 ]
机构
[1] Univ Brunei Darussalam, Fac Sci, Dept Math, Jalan Tungku Link, BE-1410 Gadong, Brunei
关键词
Evo-devo; Gene regulatory networks; Genetic accommodation; Phenotypic plasticity; Adaptive plastic response; Artificial recurrent neural networks; ADAPTIVE PHENOTYPIC PLASTICITY; GENETIC ASSIMILATION; CAPACITANCE; ADAPTATION; ROBUSTNESS; EXPRESSION; SELECTION; ORIGINS;
D O I
10.1007/s12551-022-01018-5
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Plasticity-led evolution is a form of evolution where a change in the environment induces novel traits via phenotypic plasticity, after which the novel traits are genetically accommodated over generations under the novel environment. This mode of evolution is expected to resolve the problem of gradualism (i.e., evolution by the slow accumulation of mutations that induce phenotypic variation) implied by the Modern Evolutionary Synthesis, in the face of a large environmental change. While experimental works are essential for validating that plasticity-led evolution indeed happened, we need computational models to gain insight into its underlying mechanisms and make qualitative predictions. Such computational models should include the developmental process and gene-environment interactions in addition to genetics and natural selection. We point out that gene regulatory network models can incorporate all the above notions. In this review, we highlight results from computational modelling of gene regulatory networks that consolidate the criteria of plasticity-led evolution. Since gene regulatory networks are mathematically equivalent to artificial recurrent neural networks, we also discuss their analogies and discrepancies, which may help further understand the mechanisms underlying plasticity-led evolution.
引用
收藏
页码:1359 / 1367
页数:9
相关论文
共 56 条
[1]  
[Anonymous], 1998, Evolutionary genetics
[2]   Evolutionary capacitance as a general feature of complex gene networks [J].
Bergman, A ;
Siegal, ML .
NATURE, 2003, 424 (6948) :549-552
[3]  
Bishop C., 2006, Pattern Recognition and Machine Learning
[4]  
Broom M, 2013, Game-theoretical models in biology, V1st, DOI [10.1201/b14069, DOI 10.1201/B14069]
[5]   Using phenotypic plasticity to understand the structure and evolution of the genotype-phenotype map [J].
Chevin, Luis-Miguel ;
Leung, Christelle ;
Le Rouzic, Arnaud ;
Uller, Tobias .
GENETICA, 2022, 150 (3-4) :209-221
[6]   WHEN DO ADAPTIVE PLASTICITY AND GENETIC EVOLUTION PREVENT EXTINCTION OF A DENSITY-REGULATED POPULATION? [J].
Chevin, Luis-Miguel ;
Lande, Russell .
EVOLUTION, 2010, 64 (04) :1143-1150
[7]   The variant call format and VCFtools [J].
Danecek, Petr ;
Auton, Adam ;
Abecasis, Goncalo ;
Albers, Cornelis A. ;
Banks, Eric ;
DePristo, Mark A. ;
Handsaker, Robert E. ;
Lunter, Gerton ;
Marth, Gabor T. ;
Sherry, Stephen T. ;
McVean, Gilean ;
Durbin, Richard .
BIOINFORMATICS, 2011, 27 (15) :2156-2158
[8]   PHENOTYPIC PLASTICITY FACILITATES MUTATIONAL VARIANCE, GENETIC VARIANCE, AND EVOLVABILITY ALONG THE MAJOR AXIS OF ENVIRONMENTAL VARIATION [J].
Draghi, Jeremy A. ;
Whitlock, Michael C. .
EVOLUTION, 2012, 66 (09) :2891-2902
[9]   Genetic assimilation: a review of its potential proximate causes and evolutionary consequences [J].
Ehrenreich, Ian M. ;
Pfennig, David W. .
ANNALS OF BOTANY, 2016, 117 (05) :769-779
[10]   Alternative reproductive tactics and male-dimorphism in the horned beetle Onthophagus acuminatus (Coleoptera:Scarabaeidae) [J].
Emlen, DJ .
BEHAVIORAL ECOLOGY AND SOCIOBIOLOGY, 1997, 41 (05) :335-341