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Chemical similarity searches using latent semantic structural indexing (LaSSI) and comparison to TOPOSIM.

机译:使用潜在语义结构索引(LaSSI)进行化学相似性搜索,并与TOPOSIM进行比较。

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Similarity searches based on chemical descriptors have proven extremely useful in aiding large-scale drug screening. Here we present results of similarity searching using Latent Semantic Structure Indexing (LaSSI). LaSSI uses a singular value decomposition on chemical descriptors to project molecules into a k-dimensional descriptor space, where k is the number of retained singular values. The effect of the projection is that certain descriptors are emphasized over others and some descriptors may count as partially equivalent to others. We compare LaSSI searches to searches done with TOPOSIM, our standard in-house method, which uses the Dice similarity definition. Standard descriptor-based methods such as TOPOSIM count all descriptors equally and treat all descriptors as independent. For this work we use atom pairs and topological torsions as examples of chemical descriptors. Using objective criteria to determine how effective one similarity method is versus another in selecting active compounds from a large database, we find for a series of 16 drug-like probes that LaSSI is as good as or better than TOPOSIM in selecting active compounds from the MDDR database, if the user is allowed to treat k as an adjustable parameter. Typically, LaSSI selects very different sets of actives than does TOPOSIM, so it can find classes of actives that TOPOSIM would miss.
机译:事实证明,基于化学描述符的相似性搜索在帮助大规模药物筛选中非常有用。在这里,我们介绍使用潜在语义结构索引(LaSSI)进行相似性搜索的结果。 LaSSI使用化学描述符上的奇异值分解将分子投射到k维描述符空间中,其中k是保留的奇异值的数量。投影的效果是某些描述符比其他描述符更受重视,并且某些描述符可能被认为部分等同于其他描述符。我们将LaSSI搜索与使用标准内部方法TOPOSIM(使用Dice相似性定义)进行的搜索进行比较。基于标准描述符的方法(例如TOPOSIM)对所有描述符进行均等计数,并将所有描述符视为独立的。对于这项工作,我们使用原子对和拓扑扭转作为化学描述符的例子。使用客观标准来确定一种相似方法与另一种相似方法在从大型数据库中选择活性化合物方面的有效性,我们发现一系列16种药物样探针在从MDDR中选择活性化合物方面,LaSSI优于或优于TOPOSIM数据库,如果允许用户将k视为可调参数。通常,LaSSI选择的活动项集与TOPOSIM完全不同,因此它可以找到TOPOSIM会错过的活动项类别。

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