推理分子的相似性和性质。

Rahul Singh
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摘要

确定分子间的相似性是生物学和药物发现中的一个基本问题。由于相似的分子往往具有相似的生物学特性,因此分子相似性的概念在分子结构空间的探索、分子数据库的查询检索以及结构-活性建模中发挥着重要作用。这个问题与分子表示问题有关。目前,具有高描述能力的方法,如基于3D表面的表示是可用的。然而,大多数技术倾向于关注基于二维图的分子相似性,因为更复杂的表示会带来推理的复杂性。本文解决了当使用复杂的基于表面的表示来描述分子时确定相似性的问题。它提出了一种内在的球形表示,系统地将分子表面上的点映射到标准坐标系(球体)上的点。分子几何、分子场和由于场超定位而产生的效应可以被捕获为球体表面的分布。采用一种新的直方图-交集公式,通过计算相应性质分布的相似度来获得分子相似度。该方法对噪声具有鲁棒性,避免了分子位优化,可以结合构象变化,并有助于高效地确定相似性。检索性能,在复杂生物特性结构-活性建模中的应用,以及与现有研究和商业方法的比较证明了该方法的有效性和有效性。
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Reasoning about molecular similarity and properties.

Ascertaining the similarity amongst molecules is a fundamental problem in biology and drug discovery. Since similar molecules tend to have similar biological properties, the notion of molecular similarity plays an important role in exploration of molecular structural space, query-retrieval in molecular databases, and in structure-activity modeling. This problem is related to the issue of molecular representation. Currently, approaches with high descriptive power like 3D surface-based representations are available. However, most techniques tend to focus on 2D graph-based molecular similarity due to the complexity that accompanies reasoning with more elaborate representations. This paper addresses the problem of determining similarity when molecules are described using complex surface-based representations. It proposes an intrinsic, spherical representation that systematically maps points on a molecular surface to points on a standard coordinate system (a sphere). Molecular geometry, molecular fields, and effects due to field super-positioning can then be captured as distributions on the surface of the sphere. Molecular similarity is obtained by computing the similarity of the corresponding property distributions using a novel formulation of histogram-intersection. This method is robust to noise, obviates molecular pose-optimization, can incorporate conformational variations, and facilitates highly efficient determination of similarity. Retrieval performance, applications in structure-activity modeling of complex biological properties, and comparisons with existing research and commercial methods demonstrate the validity and effectiveness of the approach.

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