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FangNet: Mining herb hidden knowledge from TCM clinical effective formulas using structure network algorithm

机译:Fangnet:使用结构网络算法从中医临床有效公式中采矿隐藏知识

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摘要

The use of herbs to treat various human diseases has been recorded for thousands of years. In Asia's current medical system, numerous herbal formulas have been repeatedly verified to confirm their effectiveness in different periods, which is a great resource for drug innovation and discovery. Through the mining of these clinical effective formulas by network pharmacology and bioinformatics analysis, important biologically active ingredients derived from these natural products might be discovered. As modern medicine requires a combination of multiple drugs for the treatment of complex diseases, previously clinical formulas are also combinations of various herbs according to the main causes and accompanying symptoms. However, the herbs that play a major role in the treatment of diseases are always unclear. Therefore, how to rank each herb's relative importance and determine the core herbs, is the first step to assisting herb selection for active ingredients discovery. To solve this problem, we built the platform FangNet, which ranks all herbs on their relative topological importance using the PageRank algorithm, based on the constructed symptom-herb network from a collection of clinical empirical prescriptions. Three types of herb hidden knowledge, including herb importance rank, herb-herb co-occurrence, and associations to symptoms, were provided in an interactive visualization. Moreover, FangNet has designed role-based permission for teams to store, analyze, and jointly interpret their clinical formulas, in an easy and secure collaboration environment, aiming at creating a central hub for massive symptom-herb connections. FangNet can be accessed at http://fangnet.org or http://fangnet.herb.ac.cn.
机译:使用草药治疗各种人类疾病已经记录了数千年。在亚洲目前的医疗系统中,许多草药公式一再核实,以确认其在不同时期的有效性,这是毒品创新和发现的巨大资源。通过通过网络药理学和生物信息学分析来通过挖掘这些临床有效的公式,可能发现来自这些天然产物的重要生物活性成分。由于现代医学需要多种药物组合用于治疗复杂疾病,因此先前的临床公式也是根据主要原因和伴随症状的各种草药的组合。然而,在治疗疾病中发挥重要作用的草药总是不清楚。因此,如何对每个草药进行对核心草药进行排名,是协助草本植物选择有效成分发现的第一步。为了解决这个问题,我们建立了平台fangnet,其使用Pagemom-Herb网络从一系列临床经验处方的构建症状 - 草本网络等待了所有草本的相对拓扑重要性。在交互式可视化中提供了三种文献隐藏知识,包括草本植物重视等级,草本植物共同发生和对症状的关联。此外,Fangnet在轻松安全的协作环境中设计了基于角色的基础,用于存储,分析和联合解释其临床公式,旨在为大规模症状 - 草本联系创建中心集线器。 Fangnet可以访问http://fangnet.org或http://fangnet.herb.ac.cn。

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