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Multi-aspect candidates for repositioning: Data fusion methods using heterogeneous information sources

机译:重新定位的多方面候选人:使用异构信息源的数据融合方法

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摘要

Drug repositioning, an innovative therapeutic application of an old drug, has received much attention as a particularly costeffective strategy in drug RandD. Recent work has indicated that repositioning can be promoted by utilizing a wide range of information sources, including medicinal chemical, target, mechanism, main and side-effect-related information, and also bibliometric and taxonomical fingerprints, signatures and knowledge bases. This article describes the adaptation of a conceptually novel, more efficient approach for the identification of new possible therapeutic applications of approved drugs and drug candidates, based on a kernel-based data fusion method. This strategy includes (1) the potentially multiple representation of information sources, (2) the automated weighting and statistically optimal combination of information sources, and (3) the automated weighting of parts of the query compounds. The performance was systematically evaluated by using Anatomical Therapeutic Chemical Classification System classes in a cross-validation framework. The results confirmed that kernel-based data fusion can integrate heterogeneous information sources significantly better than standard rank-based fusion can, and this method provides a unique solution for repositioning; it can also be utilized for de novo drug discovery. The advantages of kernel-based data fusion are illustrated with examples and open problems that are particularly relevant for pharmaceutical applications.
机译:药物重新定位是一种旧药物的创新治疗方法,作为药物研发中一种特别具有成本效益的策略而受到了广泛的关注。最近的工作表明,可以通过利用广泛的信息源来促进重新定位,这些信息源包括药物化学,靶标,机理,与主要和副作用有关的信息,以及文献计量和分类学的指纹,签名和知识库。本文介绍了一种基于概念的新颖,更有效的方法的改编,该方法用于基于核的数据融合方法来识别已批准的药物和候选药物的新的可能的治疗应用。此策略包括(1)信息源的潜在多重表示;(2)信息源的自动加权和统计上最优的组合;以及(3)查询复合词的各个部分的自动加权。通过在交叉验证框架中使用解剖学化学分类系统分类系统地评估了性能。结果证实,基于核的数据融合可以比基于等级的标准融合更好地集成异构信息源,并且该方法为重新定位提供了独特的解决方案。它也可以用于从头发现药物。通过示例和未解决的问题说明了基于内核的数据融合的优势,这些问题与制药应用特别相关。

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