用于解释电子密度图的模式识别系统。

T R Ioerger, T Holton, J A Christopher, J C Sacchettini
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引用次数: 0

摘要

x射线晶体学是测定蛋白质和其他大分子三维结构最广泛使用的方法。晶体学中最困难的步骤之一是解释电子密度图以建立最终模型。这通常是由晶体学家手工完成的,非常耗时且容易出错。在本文中,我们介绍了一种新的自动化系统,称为TEXTAL,用于使用模式识别来解释电子密度图。给定要建模的地图,TEXTAL将地图划分为小区域,然后在已经解决结构的蛋白质地图数据库中找到具有相似密度模式的区域。当找到匹配时,通过类比推断区域内原子的坐标。提高数据库查找效率的关键是提取代表每个区域模式的数字特征,并使用加权欧几里得距离度量来比较特征值。至关重要的是,这些特征是旋转不变的,因为具有相似密度模式的区域可以以任意方式定向。这种模式识别方法可以利用大型晶体数据库中积累的数据,通过实例有效地学习电子密度与分子结构之间的关系。
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TEXTAL: a pattern recognition system for interpreting electron density maps.

X-ray crystallography is the most widely used method for determining the three-dimensional structures of proteins and other macromolecules. One of the most difficult steps in crystallography is interpreting the electron density map to build the final model. This is often done manually by crystallographers and is very time-consuming and error-prone. In this paper, we introduce a new automated system called TEXTAL for interpreting electron density maps using pattern recognition. Given a map to be modeled, TEXTAL divides the map into small regions and then finds regions with a similar pattern of density in a database of maps for proteins whose structures have already been solved. When a match is found, the coordinates of atoms in the region are inferred by analogy. The key to making the database lookup efficient is to extract numeric features that represent the patterns in each region and to compare feature values using a weighted Euclidean distance metric. It is crucial that the features be rotation-invariant, since regions with similar patterns of density can be oriented in any arbitrary way. This pattern-recognition approach can take advantage of data accumulated in large crystallographic databases to effectively learn the association between electron density and molecular structure by example.

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