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首页> 外文期刊>Proceedings of the Royal Society. Mathematical, physical and engineering sciences >Ultrafast shape recognition for similarity search in molecular databases
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Ultrafast shape recognition for similarity search in molecular databases

机译:超快速形状识别,用于分子数据库中的相似性搜索

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Molecular databases are routinely screened for compounds that most closely resemble a molecule of known biological activity to provide,novel drug leads. It is widely believed that three-dimensional molecular shape is the most discriminating pattern for biological activity as it is directly related to the steep repulsive part of the interaction potential between the drug-like molecule and its macromolecular target. However, efficient comparison of molecular shape is currently a challenge. Here, we show that a new approach based on moments of distance distributions is able to recognize molecular shape at least three orders of magnitude faster than current methodologies. Such an ultrafast method permits the identification of similarly shaped compounds within the largest molecular databases. In addition, the problematic requirement of aligning molecules for comparison is circumvented, as the proposed distributions are independent of molecular orientation. Our methodology could be also adapted to tackle similar hard problems in other fields, such as designing content-based Internet search engines for three-dimensional geometrical objects or performing fast similarity comparisons between proteins. From a broader perspective, we anticipate that ultrafast pattern recognition will soon become not only useful, but also essential to address the data explosion currently experienced in most scientific disciplines.
机译:常规筛选分子数据库中最类似于​​已知生物学活性分子的化合物,以提供新颖的药物前导。普遍认为,三维分子形状是生物活性的最区分模式,因为它与类药物分子与其大分子靶标之间的相互作用势的陡峭排斥部分直接相关。但是,有效比较分子形状目前是一个挑战。在这里,我们证明了一种基于距离分布矩的新方法能够比当前方法更快地识别分子形状至少三个数量级。这种超快方法允许在最大的分子数据库中鉴定相似形状的化合物。另外,由于提出的分布与分子取向无关,因此避免了对齐分子以进行比较的问题。我们的方法还可以用于解决其他领域中的类似难题,例如为三维几何对象设计基于内容的Internet搜索引擎,或者在蛋白质之间进行快速相似性比较。从更广泛的角度来看,我们预计超快速模式识别不仅很快将变得有用,而且对于解决大多数科学领域当前遇到的数据爆炸也将是必不可少的。

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