Nearest neighbor classification in 3D protein databases.

M Ankerst, G Kastenmüller, H P Kriegel, T Seidl
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Abstract

In molecular databases, structural classification is a basic task that can be successfully approached by nearest neighbor methods. The underlying similarity models consider spatial properties such as shape and extension as well as thematic attributes. We introduce 3D shape histograms as an intuitive and powerful approach to model similarity for solid objects such as molecules. Errors of measurement, sampling, and numerical rounding may result in small displacements of atomic coordinates. These effects may be handled by using quadratic form distance functions. An efficient processing of similarity queries based on quadratic forms is supported by a filter-refinement architecture. Experiments on our 3D protein database demonstrate the high classification accuracy of more than 90% and the good performance of the technique.

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三维蛋白质数据库的最近邻分类。
在分子数据库中,结构分类是一项基本任务,可以通过最近邻方法成功实现。潜在的相似性模型考虑空间属性,如形状和扩展以及主题属性。我们引入3D形状直方图作为一种直观而强大的方法来模拟固体物体(如分子)的相似性。测量误差、抽样误差和数值舍入误差可能导致原子坐标的小位移。这些影响可以通过使用二次形式的距离函数来处理。基于二次型的相似性查询的高效处理由过滤器-细化体系结构支持。在三维蛋白质数据库上进行的实验表明,该方法的分类准确率高达90%以上,具有良好的性能。
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