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首页> 外文期刊>PLoS One >A new advanced in silico drug discovery method for novel coronavirus (SARS-CoV-2) with tensor decomposition-based unsupervised feature extraction
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A new advanced in silico drug discovery method for novel coronavirus (SARS-CoV-2) with tensor decomposition-based unsupervised feature extraction

机译:基于张量分解的无预测特征提取的新型冠状病毒(SARS-COV-2)的三种硅药物发现方法进行了新的先进

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Background: COVID-19 is a critical pandemic that has affected human communities worldwide, and there is an urgent need to develop effective drugs. Although there are a large number of candidate drug compounds that may be useful for treating COVID-19, the evaluation of these drugs is time-consuming and costly. Thus, screening to identify potentially effective drugs prior to experimental validation is necessary. Method: In this study, we applied the recently proposed method tensor decomposition (TD)-based unsupervised feature extraction (FE) to gene expression profiles of multiple lung cancer cell lines infected with severe acute respiratory syndrome coronavirus 2. We identified drug candidate compounds that significantly altered the expression of the 163 genes selected by TD-based unsupervised FE. Results: Numerous drugs were successfully screened, including many known antiviral drug compounds such as C646, chelerythrine chloride, canertinib, BX-795, sorafenib, sorafenib, QL-X-138, radicicol, A-443654, CGP-60474, alvocidib, mitoxantrone, QL-XII-47, geldanamycin, fluticasone, atorvastatin, quercetin, motexafin gadolinium, trovafloxacin, doxycycline, meloxicam, gentamicin, and dibromochloromethane. The screen also identified ivermectin, which was first identified as an anti-parasite drug and recently the drug was included in clinical trials for SARS-CoV-2. Conclusions: The drugs screened using our strategy may be effective candidates for treating patients with COVID-19.
机译:背景:Covid-19是在全球范围内影响人类社区的关键大流行,迫切需要开发有效的药物。虽然存在大量候选药物化合物,其可用于治疗Covid-19,但这些药物的评估是耗时和昂贵的。因此,在实验验证之前筛选识别潜在有效的药物是必要的。方法:在本研究中,我们应用了最近提出的方法张量分解(TD),基于感染严重急性呼吸综合征冠状病毒2.的多种肺癌细胞系的基因表达(Fe)的无监督的特征提取(Fe)。我们鉴定了药物候选化合物显着改变了由TD基础的无预测Fe选择的163基因的表达。结果:成功筛选了许多药物,包括许多已知的抗病毒药物如C646,氯化氢氯,甘露酮,BX-795,索拉非尼,索拉非尼,QL-X-138,radicicol,A-443654,CGP-60474,Alvocidib,Mitoxantrone ,QL-XII-47,Geldanamycin,氟替卡松,阿托伐他汀,槲皮素,morexafin钆,Trovafloxacin,糖尿环素,美洛昔康,庆大霉素和二溴甲烷。该筛查还确定了Ivermectin,首先被鉴定为抗寄生虫药物,最近该药被纳入SARS-COV-2的临床试验中。结论:使用我们的策略筛选的药物可能是治疗Covid-19患者的有效候选者。

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