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Designing libraries with CNS activity.

机译:设计具有CNS活动的库。

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摘要

Library design is an important and difficult task. In this paper we describe one possible solution to designing a CNS-active library. CNS-actives and -inactives were selected from the CMC and the MDDR databases based on whether they were described as having some kind of CNS activity in the databases. This classification scheme results in over 15 000 actives and over 50 000 inactives. Each molecule is described by 7 1D descriptors (molecular weight, number of donors, number of acceptors, etc.) and 166 2D descriptors (presence/absence of functional groups such as NH(2)). A neural network trained using Bayesian methods can correctly predict about 75% of the actives and 65% of the inactives using the 7 1D descriptors. The performance improves to a prediction accuracy on the active set of 83% and 79% on the inactives on adding the 2D descriptors. On a database with 275 compounds where the CNS activity is known (from the literature) for each compound, we achieve 92% and 71% accuracy on the actives and inactives, respectively. The models we construct can therefore be used as a "filter" to examine any set of proposed molecules in a chemical library. As an example of the utility of our method, we describe the generation of a small library of potentially CNS-active molecules that would be amenable to combinatorial chemistry. This was done by building and analyzing a large database of a million compounds constructed from frameworks and side chains frequently found in drug molecules.
机译:图书馆设计是一项重要而艰巨的任务。在本文中,我们描述了一种设计CNS活动库的可能解决方案。从CMC和MDDR数据库中选择CNS活性和非活性,基于它们在数据库中是否被描述为具有某种CNS活性。此分类方案导致超过15000个活动者和超过50000个不活动者。每个分子由7个1D描述符(分子量,供体数量,受体数量等)和166个2D描述符(存在/不存在官能团,例如NH(2))描述。使用贝叶斯方法训练的神经网络可以使用7个1D描述符正确预测约75%的活性物和65%的非活性物。在添加2D描述符时,该性能可将活动集的预测准确性提高到83%和79%。在包含275种化合物的数据库中,每种化合物的CNS活性已知(从文献中得知),我们分别对活性物和非活性物实现了92%和71%的准确度。因此,我们构建的模型可以用作“过滤器”,以检查化学文库中任何提议的分子集。作为我们方法实用性的一个例子,我们描述了一个潜在的中枢神经系统活性分子小文库的生成,该文库适合组合化学。这是通过建立和分析由药物分子中常见的框架和侧链构建的百万种化合物的大型数据库来完成的。

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