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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >DETERMINING RELEVANT FEATURES TO RECOGNIZE ELECTRON DENSITY PATTERNS IN X-RAY PROTEIN CRYSTALLOGRAPHY
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DETERMINING RELEVANT FEATURES TO RECOGNIZE ELECTRON DENSITY PATTERNS IN X-RAY PROTEIN CRYSTALLOGRAPHY

机译:确定相关特征以识别X射线蛋白质晶体学中的电子密度模式

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High-throughput computational methods in X-ray protein crystallography are indispensable to meet the goals of structural genomics. In particular, automated interpretation of electron density maps, especially those at mediocre resolution, can significantly speed up the protein structure determination process. TEXTALTM is a software application that uses pattern recognition, case-based reasoning and nearest neighbor learning to produce reasonably refined molecular models, even with average quality data. In this work, we discuss a key issue to enable fast and accurate interpretation of typically noisy electron density data: what features should be used to characterize the density patterns, and how relevant are they? We discuss the challenges of constructing features in this domain, and describe SLIDER, an algorithm to determine the weights of these features. SLIDER searches a space of weights using ranking of matching patterns (relative to mismatching ones) as its evaluation function. Exhaustive search being intractable, SLIDER adopts a greedy approach that judiciously restricts the search space only to weight values that cause the ranking of good matches to change. We show that SLIDER contributes significantly in finding the similarity between density patterns, and discuss the sensitivity of feature relevance to the underlying similarity metric.
机译:X射线蛋白质晶体学中的高通量计算方法对于满足结构基因组学的目标是必不可少的。特别是,电子密度图的自动解释,尤其是中等分辨率的电子密度图,可以大大加快蛋白质结构确定过程。 TEXTALTM是一个软件应用程序,它使用模式识别,基于案例的推理和最近邻学习来生成合理完善的分子模型,甚至具有平均质量的数据。在这项工作中,我们讨论了一个关键问题,可以快速而准确地解释典型的噪声电子密度数据:应使用哪些特征来表征密度模式,它们之间的相关性如何?我们讨论了在此领域构建特征的挑战,并描述了SLIDER,一种确定这些特征权重的算法。 SLIDER使用匹配模式(相对于不匹配模式)的排名作为评估功能来搜索权重空间。穷举搜索非常棘手,SLIDER采用贪婪的方法,明智地将搜索空间限制为权重值,这些权重值会导致匹配结果的排名发生变化。我们表明,SLIDER在发现密度模式之间的相似性方面做出了巨大贡献,并讨论了特征相关性对基础相似性度量的敏感性。

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