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Global multi-omics and systems pharmacological strategy unravel the multi-targeted therapeutic potential of natural bioactive molecules against COVID-19: An in silico approach

机译:全球多OMICS和系统药理策略解开天然生物活性分子对Covid-19的多目标治疗潜力:硅方法

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Understanding the immunological behavior of COVID-19 cases at molecular level is essential for therapeutic development. In this study, multi-omics and systems pharmacology analyses were performed to unravel the multi-targeted mechanisms of novel bioactives to combat COVID-19. Immuno-transcriptomic dataset of healthy controls and COVID-19 cases was retrieved from ArrayExpress. Phytocompounds from ethnobotanical plants were collected from PubChem. Differentially expressed 98 immune genes associated with COVID-19 were derived through NetworkAnalyst 3.0. Among 259 plant derived compounds, 154 compounds were targeting 13 COVID-19 immune genes involved in diverse signaling pathways. In addition, pharmacological properties of these phytocompounds were compared with COVID-19 drugs prescribed by WHO, and 25 novel phytocompounds were found to be more efficient with higher bioactive scores. The current study unravels the virogenomic signatures which can serve as therapeutic targets and identified phytocompounds with anti-COVID-19 efficacy. However, further experimental validation is essential to bring out these molecules as commercial drug candidates.
机译:了解Covid-19患者在分子水平的免疫行为对于治疗发育至关重要。在该研究中,进行多族草和系统药理分析,以解开新的生物术语的多目标机制来打击Covid-19。从ArrryExpress中检索健康对照和Covid-19例的免疫转录组数据集。从Pubchem收集来自ethnobotanical植物的植物化合物。通过NetWorkaAnalyst 3.0来衍生差异表达与Covid-19相关的98个免疫基因。在259种植物衍生的化合物中,154种化合物靶向13种Covid-19涉及不同信号通路的免疫基因。此外,将这些植物化合物的药理性质与由世卫组织规定的Covid-19药物进行比较,并且发现25种新的植物化合物具有更高的生物活性分数更有效。目前的研究解除了致杂项象征,其可以用作治疗靶标的,并鉴定具有抗Covid-19疗效的植物化合物。然而,进一步的实验验证对于将这些分子作为商业毒品候选者提供了进一步的实验验证。

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