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Predicting new drug indications from network analysis

机译:从网络分析预测新的药物指示

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This work adapts centrality measures commonly used in social network analysis to identify drugs with better positions in drug-side effect network and drug-indication network for the purpose of drug repositioning. Our basic hypothesis is that drugs having similar phenotypic profiles such as side effects may also share similar therapeutic properties based on related mechanism of action and vice versa. The networks were constructed from Side Effect Resource (SIDER) 4.1 which contains 1430 unique drugs with side effects and 1437 unique drugs with indications. Within the giant components of these networks, drugs were ranked based on their centrality scores whereby 18 prominent drugs from the drug-side effect network and 15 prominent drugs from the drug-indication network were identified. Indications and side effects of prominent drugs were deduced from the profiles of their neighbors in the networks and compared to existing clinical studies while an optimum threshold of similarity among drugs was sought for. The threshold can then be utilized for predicting indications and side effects of all drugs. Similarities of drugs were measured by the extent to which they share phenotypic profiles and neighbors. To improve the likelihood of accurate predictions, only profiles such as side effects of common or very common frequencies were considered. In summary, our work is an attempt to offer an alternative approach to drug repositioning using centrality measures commonly used for analyzing social networks.
机译:这项工作适应了社会网络分析中常用的中心措施,以识别药物侧效应网络和药物指示网络中具有更好位置的药物,以便药物重新定位。我们的基本假设是具有相似表型谱的药物,如副作用,也可以基于相关的作用机制共享类似的治疗性质,反之亦然。网络由副作用资源(Sider)4.1构成,其中包含1430种独特的药物,副作用和1437种独特的药物,具有适应症。在这些网络的巨大组件中,药物基于其中心分评分,从而确定了来自药物侧效网络的18个突出的药物,并确定了来自药物指示网络的15个突出的药物。从网络中邻居的曲线推导出突出药物的指示和副作用,并与现有的临床研究相比,寻求药物中药物之间相似性的最佳阈值。然后可以使用阈值来预测所有药物的指示和副作用。药物的相似性通过它们共享表型谱和邻居的程度来衡量。为了提高准确预测的可能性,仅考虑了诸如共同或非常常见的频率的副作用的简档。总之,我们的工作是尝试使用常用于分析社交网络的中心措施来提供替代方法来进行药物重新定位。

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