CTSS:一种基于局部几何和生物特征的蛋白质结构定位方法

Tolga Can, Yuan-fang Wang
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引用次数: 78

摘要

本文提出了一种新的蛋白质结构相似性搜索方法,提高了现有方法的准确性、鲁棒性和效率。该方法基于三维空间曲线匹配的微分几何理论。我们生成的形状特征的蛋白质是不变的,局部的,稳健的,紧凑的,和生物意义。为了提高匹配精度,我们采用样条拟合对原始原子坐标数据进行平滑处理。为了提高匹配效率,我们采用了从粗到精的分级策略。我们使用一种高效的基于哈希的技术来筛选不太可能的候选对象,并仅对筛选过程中幸存的少数候选对象执行详细的成对比对。与其他基于散列的技术相反,我们的技术在构造散列键时使用特定领域的信息(而不仅仅是几何信息),因此更适合于生物学领域。此外,形状特征的不变性、局域性和紧凑性使我们能够利用众所周知的局部序列比对算法来对两个蛋白质结构进行比对。所提出的技术有效性的一个衡量标准是,我们能够发现新的、有意义的基序,这些基序是其他结构比对方法没有报道的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CTSS: a robust and efficient method for protein structure alignment based on local geometrical and biological features
We present a new method for conducting protein structure similarity searches, which improves on the accuracy, robustness, and efficiency of some existing techniques. Our method is grounded in the theory of differential geometry on 3D space curve matching. We generate shape signatures for proteins that are invariant, localized, robust, compact, and biologically meaningful. To improve matching accuracy, we smooth the noisy raw atomic coordinate data with spline fitting. To improve matching efficiency, we adopt a hierarchical coarse-to-fine strategy. We use an efficient hashing-based technique to screen out unlikely candidates and perform detailed pairwise alignments only for a small number of candidates that survive the screening process. Contrary to other hashing based techniques, our technique employs domain specific information (not just geometric information) in constructing the hash key, and hence, is more tuned to the domain of biology. Furthermore, the invariancy, localization, and compactness of the shape signatures allow us to utilize a well-known local sequence alignment algorithm for aligning two protein structures. One measure of the efficacy of the proposed technique is that we were able to discover new, meaningful motifs that were not reported by other structure alignment methods.
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