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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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.
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与β片相比,α螺旋对环境扰动的进化更为稳健:蛋白质进化的贝叶斯学习和统计力学
塑造生物体的典型元素(如蛋白质二级结构)是如何进化的,或者它们在进化过程中对环境变化的敏感性/抵抗力如何,这些都是进化生物学、结构生物学和生物物理学中的重要问题。根据达尔文进化论,自然选择和基因突变是生物进化的主要驱动力。然而,从自然选择的角度来看,"表型对连续几代环境扰动的稳健性 "这一概念似乎至关重要,但却没有得到正式的定义或分析。在本研究中,通过贝叶斯学习和统计力学,我们将氨基酸序列空间中自由能的稳定性正式化,这种稳定性可以设计特定的蛋白质结构,抵御蛋白质周围水的化学势的扰动。这种进化稳定性被定义为一个量的递减函数,这个量类似于蛋白质氨基酸序列特有的磁体统计力学中的易感性。因此,在由 36 个残基组成的二维方格蛋白质模型中,我们发现随着自由能对环境条件扰动稳定性的增加,结构空间呈现出陡峭的阶梯状缩小。此外,对环境条件扰动具有较高稳定性的晶格蛋白质结构往往具有较高的α-螺旋比例和较低的β-片状比例。后面的结果表明,富含α-螺旋的蛋白质结构比富含β-片层的蛋白质结构对环境扰动的适应能力更强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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