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PROTEIN FOLDING TRAJECTORY ANALYSIS USING PATTERNED CLUSTERS

机译:使用图案簇的蛋白质折叠轨迹分析

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Understanding how protein folds into a functional and structural configuration is arguably one of the most important and challenging problems in computational biology. Currently, the protein folding mechanism is often characterized by calculating thefree energy landscape versus the reaction coordinates such as the fraction of native contacts, the radius of gyration, the principal components and so on. In this paper, we present a combinatorial algorithmic approach towards understanding the global state changes of the configurations. The approach is based on cluster computation, each cluster being defined by a pattern of a combination of various reaction coordinates. We present an algorithm of time complexity O((N + nm) log n) where TV is the size ofthe output and n x m is the size of the input. To date, this is the best time complexity for the problem. We next demonstrate that this approach extracts crucial information about protein folding intermediate states and mechanism. (1) The method recovers states previously obtained by visually analyzing free energy contour maps. (2) It also succeeds in extracting meaningful patterns and structures that had been overlooked in previous works, which provide a better understanding of the folding mechanism (of a beta-hairpin protein). These new patterns also interconnect various states in existing free energy contour maps versus different reaction coordinates. (3) The approach does not require the free energy values, yet it offers analysis comparable and sometimes better than the methods that use free energy landscapes, thus validating the choice of reaction coordinates.
机译:了解蛋白质如何折叠成功能和结构配置可以说是计算生物学中最重要和挑战性问题之一。目前,蛋白质折叠机构通常通过计算紫外能量横向与反应坐标,例如天然触点的级分,环状半径,主成分等来表征。在本文中,我们提出了一种了解了了解配置的全局状态变化的组合算法方法。该方法基于集群计算,每个集群由各种反应坐标组合的模式定义。我们介绍了一种时间复杂度O((n + nm)log n),其中电视是输出的大小,n x m是输入的大小。迄今为止,这是问题的最佳时间复杂性。接下来,我们证明这种方法提取有关蛋白质折叠中间状态和机制的重要信息。 (1)该方法通过可视分析自由能量等高图来恢复先前获得的状态。 (2)它还成功地提取了在先前作品中被忽视的有意义的图案和结构,这提供了更好地理解折叠机制(β发夹蛋白)。这些新图案还互连现有的自由能量轮廓图中的各种状态与不同的反应坐标。 (3)该方法不需要自由能值,但它提供了分析比较,有时比使用自由能景观的方法更好,从而验证反应坐标的选择。

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