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Network-Based Inference Methods for Drug Repositioning

机译:用于药物重新定位的网络推理方法

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Mining potential drug-disease associations can speed up drug repositioning for pharmaceutical companies. Previous computational strategies focused on prior biological information for association inference. However, such information may not be comprehensively available and may contain errors. Different from previous research, two inference methods,ProbSandHeatS, were introduced in this paper to predict direct drug-disease associations based only on the basic network topology measure. Bipartite network topology was used to prioritize the potentially indicated diseases for a drug. Experimental results showed that both methods can receive reliable prediction performance and achieve AUC values of 0.9192 and 0.9079, respectively. Case studies on real drugs indicated that some of the strongly predicted associations were confirmed by results in the Comparative Toxicogenomics Database (CTD). Finally, a comprehensive prediction of drug-disease associations enables us to suggest many new drug indications for further studies.
机译:采矿潜在的毒性疾病协会可以加速制药公司的药物重新定位。以前的计算策略专注于结合推理的先前生物学信息。但是,此类信息可能无法全面可用,并且可能包含错误。与以前的研究不同,两种推断方法,Probsandheats在本文中介绍,仅基于基本网络拓扑措施预测直接毒性疾病关联。二分网络拓扑用于优先考虑药物的潜在指示的疾病。实验结果表明,两种方法都可以获得可靠的预测性能,并分别实现0.9192和0.9079的AUC值。关于真实药物的案例研究表明,通过对比较毒源组虫数据库(CTD)的结果证实了一些强烈预测的关联。最后,综合预测毒性疾病协会使我们能够为进一步研究表明许多新的药物适应症。

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