使用时频处理技术对多种蛋白质结构进行比对

L. Ravichandran, A. Papandreou-Suppappola, A. Spanias, Z. Lacroix
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引用次数: 4

摘要

我们提出了一种蛋白质结构比对方法,该方法利用时频信号处理的进展来提高远缘相关蛋白质之间的相似性测量精度。该方法采用波形非线性映射技术和时频(TF)空间的波形变换。具体来说,蛋白质氨基酸被映射到三维(3-D)线性调频(LFM)高斯啁啾,这些啁啾被翻译和旋转,以解释所有可能的蛋白质结构匹配。通过考虑所有可能的啁啾速率参数来改变蛋白质结构的方向性。此外,由于高斯型函数的线性可分性,可以识别多个蛋白质结构之间的局部和全局排列。我们的结果成功地证明了使用蛋白质结构从一个已知的数据库没有执行任何预处理。本文还介绍了一个基于web的学习模块Java-DSP,该模块可以利用信号处理方法实现生物信息学功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple protein structure alignment using time-frequency processing techniques
We propose a protein structure alignment method that exploits advances in time-frequency signal processing to increase the similarity measure accuracy between distantly-related proteins. The new method uses a waveform non-linear mapping technique and waveform transformations in time-frequency (TF) space. Specifically, protein amino acids are mapped to three-dimensional (3-D) linear frequency-modulated (LFM) Gaussian chirps that are translated and rotated to account for all possible protein structure matches. The protein structure directionality is changed by considering all possible chirp rate parameters. Furthermore, both local and global alignments can be identified between multiple protein structures due to the linear separability property of the Gaussian-type functions. Our results are successfully demonstrated using proteins structures from a known database without performing any pre-processing. The paper also introduces a web-based learning module Java-DSP that can be used to implement bioinformatics functions using signal processing methods.
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