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Multiscale backbone based network comparison algorithm for effective herbal interaction analysis

机译:基于多尺度骨干网的有效草药交互分析网络比较算法

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Network modeling and analysis have been developed as one of the promising approaches for exploring the regularities behind the phenomena of complex organization and interactions in many significant fields. Traditional Chinese medicine (TCM) is a kind of holistic medical science, usually in whose clinical setting herb prescriptions consisting of several distinct herbs were used for individualized patients to get the maximum effectiveness. Detecting the significant herb interactions with effectiveness for some specific disease conditions is an important issue for both TCM clinical treatment and novel drug development. By modeling herb prescriptions as herb interaction network, in this paper, we propose a network comparison method based on multiscale backbone algorithm (msbNC) to discover the herbal interactions from one herb network that differ significantly with respect to a referenced herb network according to a null model. This method could easily be used to find the significant effective herbal interactions while incorporating appropriate outcome variables to construct coupled herb networks (one network is constructed from herb prescriptions with good outcome, while another one is from herb prescriptions with bad outcome). Using two herb prescription data sets from the outpatient cases of highly-experienced TCM physicians for insomnia treatment, we applied msbNC method to detect significant herbal interactions in the herb prescriptions of two TCM physicians and two distinct outcomes. The results showed that msbNC could distinguish clinically meaningful herbal interactions from these data sets. Therefore, the proposed method: msbNC coupled with network modeling could be used as a promising approach for effective herb interactions discovery from large-scale clinical data.
机译:网络建模和分析已被开发为探索在许多重要领域中复杂组织和相互作用现象背后规律性的有前途的方法之一。中医(TCM)是一门整体医学,通常在临床中将由几种不同草药组成的草药处方用于个性化患者,以发挥最大功效。对于某些特定疾病条件,检测有效的重要草药相互作用是中医药临床治疗和新药开发的重要问题。通过将草药处方建模为草药相互作用网络,本文提出了一种基于多尺度主干算法(msbNC)的网络比较方法,以从一个草药网络中发现与参考草药网络相比存在显着差异的草药相互作用(根据无效值)模型。这种方法可以很容易地用于发现重要的有效草药相互作用,同时结合适当的结果变量以构建耦合的草药网络(一个网络是由效果良好的草药处方构建的,而另一个则是由效果不佳的草药处方构建的)。使用来自经验丰富的中医门诊失眠治疗的两个草药处方数据集,我们应用msbNC方法检测两位中医的草药处方中的重要草药相互作用以及两个不同的结局。结果表明,msbNC可以从这些数据集中区分出临床上有意义的草药相互作用。因此,提出的方法:将msbNC与网络建模相结合,可以用作从大规模临床数据中发现有效药草相互作用的一种有前途的方法。

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