探索蛋白质柔性子空间的可视化分析方法

S. Barlowe, Jing Yang, D. Jacobs, D. Livesay, J. Alsakran, Ye Zhao, Deeptak Verma, J. Mottonen
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引用次数: 3

摘要

了解是什么原因导致蛋白质改变形状,以及由此产生的形状如何影响功能,将加快更专注于药物和疗法的设计。形状变化通常是一系列局部社区的灵活性变化的结果,这些社区可能会或可能不会协同行动。计算模型已经开发,以预测柔性变化在不同的经验参数。在本文中,我们解决了科学家在分析计算模型输出时面临的一个重大挑战,即如何在不同参数集下识别、检查、比较和分组感兴趣的蛋白质邻域。这是一项困难的任务,因为对包含不同邻域的蛋白质亚基的比较通常太复杂,无法用简单的度量来表征,而且数量太多,无法手动分析。在这里,我们提出了一系列新的可视化分析方法来解决这个问题。用户场景说明了这些方法的实用性,领域专家的反馈也证实了它们的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A visual analytics approach to exploring protein flexibility subspaces
Understanding what causes proteins to change shape and how the resulting shape influences function will expedite the design of more narrowly focused drugs and therapies. Shape alterations are often the result of flexibility changes in a set of localized neighborhoods that may or may not act in concert. Computational models have been developed to predict flexibility changes under varying empirical parameters. In this paper, we tackle a significant challenge facing scientists when analyzing outputs of a computational model, namely how to identify, examine, compare, and group interesting neighborhoods of proteins under different parameter sets. This is a difficult task since comparisons over protein subunits that comprise diverse neighborhoods are often too complex to characterize with a simple metric and too numerous to analyze manually. Here, we present a series of novel visual analytics approaches toward addressing this task. User scenarios illustrate the utility of these approaches and feedback from domain experts confirms their effectiveness.
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