基于SVM的蛋白质三级结构分类方法

G. Mirceva, D. Davcev
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引用次数: 0

摘要

蛋白质分子的三级结构是决定其化学性质和功能的主要因素。对蛋白质功能的了解对新药、更好的作物和合成生物化学物质的开发至关重要。随着技术的快速发展,确定的蛋白质结构数量每天都在增加,因此使用现有算法检索结构相似的蛋白质花费的时间太长。因此,提高蛋白质结构检索和分类方法的效率是生物信息学领域的一个重要研究课题。本文提出了两种基于支持向量机的蛋白质分类器。我们的分类器使用三维空间中蛋白质结构的构象信息。也就是说,我们的蛋白质体素和基于射线的蛋白质描述符用于表示蛋白质结构。SCOP 1.73数据库的一部分用于评估我们的分类器。结果表明,基于蛋白质射线描述符的分类准确率达到了98.7%,比其他准确率相当的算法要快得多。我们提供了一些实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM based approaches for classifying protein tertiary structures
The tertiary structure of a protein molecule is the main factor which can be used to determine its chemical properties as well as its function. The knowledge of the protein function is crucial in the development of new drugs, better crops and synthetic biochemicals. With the rapid development in technology, the number of determined protein structures increases every day, so retrieving structurally similar proteins using current algorithms takes too long. Therefore, improving the efficiency of the methods for protein structure retrieval and classification is an important research issue in bioinformatics community. In this paper, we present two SVM based protein classifiers. Our classifiers use the information about the conformation of protein structures in 3D space. Namely, our protein voxel and ray based protein descriptors are used for representing the protein structures. A part of the SCOP 1.73 database is used for evaluation of our classifiers. The results show that our approach achieves 98.7% classification accuracy by using the protein ray based descriptor, while it is much faster than other similar algorithms with comparable accuracy. We provide some experimental results.
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