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Development of simultaneous interaction prediction approach (SiPA) for the expansion of interaction network of traditional Chinese medicine

机译:同时交互预测方法(SIPA)扩大中药互动网络的发展

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Due to the lack of enough interaction data among compositions, targets and diseases, it is difficult to construct a complete network of Traditional Chinese Medicine (TCM) that comprehensively reflects active compositions and their synergistic network in terms of specific diseases. Therefore, mapping of the full spectrum of interaction between compounds and their targets is of central importance when we use network pharmacology approach to explore the therapeutic potential of the TCM. To address this challenge, we developed a large-scale simultaneous interaction prediction approach (SiPA) integrated one interaction network based simple inference model (SIM), focusing on ‘logical relevance’ between compounds, proteins or diseases, and another compound-target correlation space based interaction prediction model (CTCS-IPM) that was built on the basis of the canonical correlation analysis (CCA) to estimate the position of compounds (or targets) in compound-protein correlated space. Then SiPA was applied to discover reliable multiple interactions for interaction network expansion of a TCM, compound Salvia miltiorrhiza. By means of network analysis, potential active compounds and their related network synergy underlying cardiovascular diseases were evaluated between expanded and original interaction networks. Part of new interactions were validated with existing experimental evidence and molecular docking. As evaluated with known test dataset, the established combination approach was proved to make highly accurate prediction, showing a well prediction performance for the SIM and a high recall rate of 85.2% for the CTCS-IPM. Then 710 pairs of new compound-target interactions, 24 pairs of new compound-cardiovascular disease interactions and 294 pairs of new cardiovascular disease-protein interactions were predicted for compound Salvia miltiorrhiza. Results of network analysis suggested the network expansion could dramatically improve the completeness and effectiveness of the network. Validation results of literature and molecular docking manifested that inferred interactions had good reliability. We provided a practical and efficient way for large-scale inference of multiple interactions of TCM ingredients, which was not limited by the lack of negative samples, sample size and target 3D structures. SiPA could help researchers more accurately prioritize the effective compounds and more completely explore network synergy of TCM for treating specific diseases, indicating a potential way for effectively identifying candidate compound (or target) in drug discovery.
机译:由于组合物,靶向和疾病之间缺乏足够的相互作用数据,难以构建一种全面的中药(TCM)网络,以其在特定疾病方面全面地反映活性组合物及其协同网络。因此,当我们使用网络药理学方法探索中医的治疗潜力时,化合物与其目标之间的全部相互作用的映射具有核心重要性。为了解决这一挑战,我们开发了一个大规模的同步相互作用预测方法(SIPA)集成了一个基于网络的简单推理模型(SIM),聚焦了化合物,蛋白或疾病之间的“逻辑相关性”,以及另一种复合目标相关空间基于基于相互作用预测模型(CTCS-IPM),其基于规范相关分析(CCA)来估计化合物 - 蛋​​白质相关空间中化合物(或靶标)的位置。然后应用SIPA以发现TCM的互动网络扩展的可靠多次相互作用,复合丹参米尔蒂氏菌。通过网络分析,在扩展和原始相互作用网络之间评估潜在的活性化合物及其相关网络协同作用潜在的心血管疾病。通过现有的实验证据和分子对接验证了一部分新的相互作用。如已知的测试数据集评估,所确定的组合方法被证明是高精度的预测,显示SIM的井预测性能,并且CTCS-IPM的高召回率为85.2%。然后,710对新的复合靶相互作用,24对新的复合心血管疾病相互作用和294对新的心血管疾病 - 蛋白质相互作用,适用于复合丹参米尔蒂氏菌。网络分析结果表明,网络扩展可以大大提高网络的完整性和有效性。文献和分子对接的验证结果表现出推断互动具有良好的可靠性。我们提供了一种实用而有效的方法,用于大规模推理TCM成分的多种相互作用,这不受缺少阴性样品,样本量和目标3D结构的限制。 SIPA可以帮助研究人员更准确地优先考虑有效化合物,更完全探索TCM的网络协同作用,用于治疗特定疾病,表明有效地识别药物发现中候选化合物(或靶)的潜在方法。

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