Alpha helices are more evolutionarily robust to environmental perturbations than beta sheets: Bayesian learning and statistical mechanics to protein evolution
Tomoei Takahashi, George Chikenji, Kei Tokita, Yoshiyuki Kabashima
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引用次数: 0
Abstract
How typical elements that shape organisms, such as protein secondary
structures, have evolved, or how evolutionarily susceptible/resistant they are
to environmental changes, are significant issues in evolutionary biology,
structural biology, and biophysics. According to Darwinian evolution, natural
selection and genetic mutations are the primary drivers of biological
evolution. However, the concept of ``robustness of the phenotype to
environmental perturbations across successive generations,'' which seems
crucial from the perspective of natural selection, has not been formalized or
analyzed. In this study, through Bayesian learning and statistical mechanics we
formalize the stability of the free energy in the space of amino acid sequences
that can design particular protein structure against perturbations of the
chemical potential of water surrounding a protein as such robustness. This
evolutionary stability is defined as a decreasing function of a quantity
analogous to the susceptibility in the statistical mechanics of magnetic bodies
specific to the amino acid sequence of a protein. Consequently, in a
two-dimensional square lattice protein model composed of 36 residues, we found
that as we increase the stability of the free energy against perturbations in
environmental conditions, the structural space shows a steep step-like
reduction. Furthermore, lattice protein structures with higher stability
against perturbations in environmental conditions tend to have a higher
proportion of $\alpha$-helices and a lower proportion of $\beta$-sheets. The
latter result shows that protein structures rich in $\alpha$-helices are more
robust to environmental perturbations through successive generations than those
rich in $\beta$-sheets.