基于种群的进化搜索方法在蛋白质结构预测中的多重最小问题

IF 2.222 Q3 Biochemistry, Genetics and Molecular Biology
Sameh Saleh, Brian Olson, Amarda Shehu
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引用次数: 23

摘要

从氨基酸序列中阐明蛋白质分子的天然结构,这个问题被称为从头结构预测,是计算结构生物学中长期存在的挑战。由于蛋白质构象空间的高维性和相关能量表面的坚固性,在硅中出现困难。多重极小值问题是用当前能量函数探测能量曲面时一个特别棘手的问题。与真正的能量面相比,这些表面是弱漏斗状的,并且富含由非本地结构填充的相对较深的极小区。由于这个原因,许多算法都试图通过低能量(诱饵)构象的集合来包容和获得低能区域的广泛视野。这个集合的构象多样性是增加原生结构被捕获可能性的关键。我们提出了一种进化搜索方法来解决新结构预测中诱饵采样的多重极小问题。提出了两种基于种群的进化搜索算法,它们遵循将构象视为进化种群中的个体的基本方法。粗粒化和分子片段置换可以有效地从亲本获得蛋白质样的子代构象。势能既用于偏向双亲的选择,也用于决定双亲和子女中的哪一部分将在进化的种群中保留下来。在考虑保留之前,通过将构象映射到其最近的局部最小值,直接测量采样最小值对诱饵集合的影响。由此产生的模因算法不仅进化出一群构象,而且进化出一群局部最小值。结果表明,这两种算法在接近已知天然结构的构象采样方面都是有效的。额外的最小化被证明是增强采样能力和获得不同诱饵构象集合的关键,避免过早收敛到构象空间的次优区域,并接近与最先进的诱饵采样方法相当的天然结构。当使用两个具有代表性的最先进的粗粒度能量函数时,结果显示出鲁棒性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A population-based evolutionary search approach to the multiple minima problem in de novo protein structure prediction

A population-based evolutionary search approach to the multiple minima problem in de novo protein structure prediction

Elucidating the native structure of a protein molecule from its sequence of amino acids, a problem known as de novo structure prediction, is a long standing challenge in computational structural biology. Difficulties in silico arise due to the high dimensionality of the protein conformational space and the ruggedness of the associated energy surface. The issue of multiple minima is a particularly troublesome hallmark of energy surfaces probed with current energy functions. In contrast to the true energy surface, these surfaces are weakly-funneled and rich in comparably deep minima populated by non-native structures. For this reason, many algorithms seek to be inclusive and obtain a broad view of the low-energy regions through an ensemble of low-energy (decoy) conformations. Conformational diversity in this ensemble is key to increasing the likelihood that the native structure has been captured.

We propose an evolutionary search approach to address the multiple-minima problem in decoy sampling for de novo structure prediction. Two population-based evolutionary search algorithms are presented that follow the basic approach of treating conformations as individuals in an evolving population. Coarse graining and molecular fragment replacement are used to efficiently obtain protein-like child conformations from parents. Potential energy is used both to bias parent selection and determine which subset of parents and children will be retained in the evolving population. The effect on the decoy ensemble of sampling minima directly is measured by additionally mapping a conformation to its nearest local minimum before considering it for retainment. The resulting memetic algorithm thus evolves not just a population of conformations but a population of local minima.

Results show that both algorithms are effective in terms of sampling conformations in proximity of the known native structure. The additional minimization is shown to be key to enhancing sampling capability and obtaining a diverse ensemble of decoy conformations, circumventing premature convergence to sub-optimal regions in the conformational space, and approaching the native structure with proximity that is comparable to state-of-the-art decoy sampling methods. The results are shown to be robust and valid when using two representative state-of-the-art coarse-grained energy functions.

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来源期刊
BMC Structural Biology
BMC Structural Biology 生物-生物物理
CiteScore
3.60
自引率
0.00%
发文量
0
期刊介绍: BMC Structural Biology is an open access, peer-reviewed journal that considers articles on investigations into the structure of biological macromolecules, including solving structures, structural and functional analyses, and computational modeling.
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