Kunimoto Ryo, Bajorath Jürgen
Department of Life Science Informatics, B-IT, LIMES Program Unit Chemical Biology and Medicinal Chemistry, Rheinische Friedrich-Wilhelms-Universität, Dahlmannstr. 2, 53113, Bonn, Germany.
J Comput Aided Mol Des. 2017 Sep;31(9):779-788. doi: 10.1007/s10822-017-0061-2. Epub 2017 Sep 4.
Patents from medicinal chemistry represent a rich source of novel compounds and activity data that appear only infrequently in the scientific literature. Moreover, patent information provides a primary focal point for drug discovery. Accordingly, text mining and image extraction approaches have become hot topics in patent analysis and repositories of patent data are being established. In this work, we have generated network representations using alternative similarity measures to systematically compare molecules from patents with other bioactive compounds, visualize similarity relationships, explore the chemical neighbourhood of patent molecules, and identify closely related compounds with different activities. The design of network representations that combine patent molecules and other bioactive compounds and view patent information in the context of current bioactive chemical space aids in the analysis of patents and further extends the use of molecular networks to explore structure-activity relationships.
来自药物化学的专利代表了丰富的新型化合物和活性数据来源,这些在科学文献中很少出现。此外,专利信息为药物发现提供了一个主要焦点。因此,文本挖掘和图像提取方法已成为专利分析中的热门话题,并且正在建立专利数据存储库。在这项工作中,我们使用替代相似性度量生成网络表示,以系统地比较专利中的分子与其他生物活性化合物,可视化相似性关系,探索专利分子的化学邻域,并识别具有不同活性的密切相关化合物。将专利分子和其他生物活性化合物结合起来的网络表示设计,以及在当前生物活性化学空间背景下查看专利信息,有助于专利分析,并进一步扩展分子网络的用途以探索构效关系。