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分子表面与静电等势面的精确平行体积比较。

Precise parallel volumetric comparison of molecular surfaces and electrostatic isopotentials.

作者信息

Georgiev Georgi D, Dodd Kevin F, Chen Brian Y

机构信息

Department of Computer Science and Engineering, Lehigh University, 113 Research Drive, Bethlehem, PA USA.

出版信息

Algorithms Mol Biol. 2020 May 25;15:11. doi: 10.1186/s13015-020-00168-z. eCollection 2020.

Abstract

Geometric comparisons of binding sites and their electrostatic properties can identify subtle variations that select different binding partners and subtle similarities that accommodate similar partners. Because subtle features are central for explaining how proteins achieve specificity, algorithmic efficiency and geometric precision are central to algorithmic design. To address these concerns, this paper presents pClay, the first algorithm to perform parallel and arbitrarily precise comparisons of molecular surfaces and electrostatic isopotentials as geometric solids. pClay was presented at the 2019 Workshop on Algorithms in Bioinformatics (WABI 2019) and is described in expanded detail here, especially with regard to the comparison of electrostatic isopotentials. Earlier methods have generally used parallelism to enhance computational throughput, pClay is the first algorithm to use parallelism to make arbitrarily high precision comparisons practical. It is also the first method to demonstrate that high precision comparisons of geometric solids can yield more precise structural inferences than algorithms that use existing standards of precision. One advantage of added precision is that statistical models can be trained with more accurate data. Using structural data from an existing method, a model of steric variations between binding cavities can overlook 53% of authentic steric influences on specificity, whereas a model trained with data from pClay overlooks none. Our results also demonstrate the parallel performance of pClay on both workstation CPUs and a 61-core Xeon Phi. While slower on one core, additional processor cores rapidly outpaced single core performance and existing methods. Based on these results, it is clear that pClay has applications in the automatic explanation of binding mechanisms and in the rational design of protein binding preferences.

摘要

结合位点的几何比较及其静电性质能够识别出选择不同结合伴侣的细微差异以及容纳相似伴侣的细微相似之处。由于细微特征对于解释蛋白质如何实现特异性至关重要,因此算法效率和几何精度是算法设计的核心。为了解决这些问题,本文提出了pClay,这是第一种将分子表面和静电等势面作为几何实体进行并行且任意精确比较的算法。pClay在2019年生物信息学算法研讨会(WABI 2019)上首次展示,本文将对其进行更详细的描述,特别是关于静电等势面的比较。早期的方法通常利用并行性来提高计算吞吐量,而pClay是第一种利用并行性使任意高精度比较变得切实可行的算法。它也是第一种证明几何实体的高精度比较能够比使用现有精度标准的算法产生更精确结构推断的方法。提高精度的一个优势在于可以使用更准确的数据来训练统计模型。使用现有方法的结构数据,结合腔之间空间变化的模型可能会忽略53%对特异性有实际影响的空间因素,而使用pClay数据训练的模型则不会忽略任何因素。我们的结果还展示了pClay在工作站CPU和61核至强融核处理器上的并行性能。虽然在单核上速度较慢,但额外的处理器核心能迅速超越单核性能和现有方法。基于这些结果,很明显pClay在结合机制的自动解释以及蛋白质结合偏好的合理设计方面具有应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fb9e/7247173/74c0682bab41/13015_2020_168_Fig1_HTML.jpg

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