在多个蛋白质折叠轨迹上增强的偏序曲线比较。

Hong Sun, H. Ferhatosmanoğlu, M. Ota, Yusu Wang
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引用次数: 3

摘要

了解蛋白质如何折叠对于我们探索生命在分子水平上如何运作至关重要。目前的计算能力使研究人员能够产生大量的折叠模拟数据。因此,迫切需要能够解释和识别新的折叠特征。在本文中,我们将每个折叠轨迹建模为一个多维曲线。然后,我们开发了一种有效的多曲线比较(MCC)算法,称为增强偏序(EPO)算法,从一组不同的折叠轨迹中提取特征,包括成功和不成功的模拟运行。我们的EPO算法通过比较来自折叠轨迹的高维曲线解决了几个新的挑战。将我们的算法应用于微型蛋白色氨酸笼的详细案例研究(24)表明,我们的算法可以在相当低的水平上检测相似性,并提取具有生物学意义的折叠事件。
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Enhanced partial order curve comparison over multiple protein folding trajectories.
Understanding how proteins fold is essential to our quest in discovering how life works at the molecular level. Current computation power enables researchers to produce a huge amount of folding simulation data. Hence there is a pressing need to be able to interpret and identify novel folding features from them. In this paper, we model each folding trajectory as a multi-dimensional curve. We then develop an effective multiple curve comparison (MCC) algorithm, called the enhanced partial order (EPO) algorithm, to extract features from a set of diverse folding trajectories, including both successful and unsuccessful simulation runs. Our EPO algorithm addresses several new challenges presented by comparing high dimensional curves coming from folding trajectories. A detailed case study of applying our algorithm to a miniprotein Trp-cage(24) demonstrates that our algorithm can detect similarities at rather low level, and extract biologically meaningful folding events.
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