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基于整合网络的方法进行药物靶标预测和再定位。

Drug target prediction and repositioning using an integrated network-based approach.

机构信息

IP & Science, Thomson Reuters, Carlsbad, California, United States of America.

出版信息

PLoS One. 2013 Apr 4;8(4):e60618. doi: 10.1371/journal.pone.0060618. Print 2013.

Abstract

The discovery of novel drug targets is a significant challenge in drug development. Although the human genome comprises approximately 30,000 genes, proteins encoded by fewer than 400 are used as drug targets in the treatment of diseases. Therefore, novel drug targets are extremely valuable as the source for first in class drugs. On the other hand, many of the currently known drug targets are functionally pleiotropic and involved in multiple pathologies. Several of them are exploited for treating multiple diseases, which highlights the need for methods to reliably reposition drug targets to new indications. Network-based methods have been successfully applied to prioritize novel disease-associated genes. In recent years, several such algorithms have been developed, some focusing on local network properties only, and others taking the complete network topology into account. Common to all approaches is the understanding that novel disease-associated candidates are in close overall proximity to known disease genes. However, the relevance of these methods to the prediction of novel drug targets has not yet been assessed. Here, we present a network-based approach for the prediction of drug targets for a given disease. The method allows both repositioning drug targets known for other diseases to the given disease and the prediction of unexploited drug targets which are not used for treatment of any disease. Our approach takes as input a disease gene expression signature and a high-quality interaction network and outputs a prioritized list of drug targets. We demonstrate the high performance of our method and highlight the usefulness of the predictions in three case studies. We present novel drug targets for scleroderma and different types of cancer with their underlying biological processes. Furthermore, we demonstrate the ability of our method to identify non-suspected repositioning candidates using diabetes type 1 as an example.

摘要

发现新的药物靶点是药物开发中的一个重大挑战。尽管人类基因组大约包含 30000 个基因,但在治疗疾病时,只有不到 400 个基因编码的蛋白质被用作药物靶点。因此,新的药物靶点作为一类首创药物的来源是非常有价值的。另一方面,许多目前已知的药物靶点在功能上具有多效性,并且参与多种病理过程。其中一些靶点被用于治疗多种疾病,这突出了需要可靠地将药物靶点重新定位到新适应症的方法。基于网络的方法已成功应用于优先考虑新的与疾病相关的基因。近年来,已经开发出了几种这样的算法,有些仅关注局部网络特性,而另一些则考虑完整的网络拓扑结构。所有方法的共同点是,它们都认为新的与疾病相关的候选物与已知的疾病基因在整体上密切相关。然而,这些方法对预测新的药物靶点的相关性尚未得到评估。在这里,我们提出了一种基于网络的方法,用于预测给定疾病的药物靶点。该方法允许将已知用于其他疾病的药物靶点重新定位到给定疾病,并预测未被用于治疗任何疾病的未开发药物靶点。我们的方法将疾病基因表达谱和高质量的相互作用网络作为输入,并输出药物靶点的优先级列表。我们证明了我们的方法的高性能,并通过三个案例研究强调了预测的有用性。我们为硬皮病和不同类型的癌症提出了新的药物靶点及其潜在的生物学过程。此外,我们以 1 型糖尿病为例,展示了我们的方法识别非预期的重新定位候选物的能力。

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