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首页> 外文期刊>Analytica chimica acta >Multi-target spectral moment: QSAR for antiviral drugs vs. different viral species
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Multi-target spectral moment: QSAR for antiviral drugs vs. different viral species

机译:多目标光谱矩:抗病毒药物与不同病毒种类的QSAR

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摘要

The antiviral QSAR models have an important limitation today. They predict the biological activity of drugs against only one viral species. This is determined by the fact that most of the current reported molecular descriptors encode only information about the molecular structure. As a result, predicting the probability with which a drug is active against different viral species with a single unifying model is a goal of major importance. In this work, we use Markov Chain theory to calculate new multi-target spectral moments to fit a QSAR model for drugs active against 40 viral species. The model is based oh 500 drugs (including active and non-active compounds) tested as antiviral agents in the recent literature; not all drugs were predicted against all viruses, but only those with experimental values. The database also contains 207 well-known compounds (not as recent as the previous ones) reported in the Merck Index with other activities that do not include antiviral action against any virus species. We used Linear Discriminant Analysis (LDA) to classify all these drugs into two classes as active or non-active against the different viral species tested, whose data we processed. The model correctly classifies 5129 out of 5594 non-active compounds (91.69%) and 412 out of 422 active compounds (97.63%). Overall training predictability was 92.34%. The validation of the model was carried out by means of external predicting series, the model classifying, thus, 2568 out of 2779 non-active compounds and 224 out of 229 active compounds. Overall training predictability was 92.82%. The present work reports the first attempts to calculate within a unified framework the probabilities of antiviral drugs against different virus species based on a spectral moment analysis.
机译:如今,抗病毒QSAR模型具有重要的局限性。他们预测药物仅针对一种病毒物种的生物活性。这是由以下事实决定的:当前报告的大多数分子描述符都只编码有关分子结构的信息。结果,预测具有单一统一模型的药物针对不同病毒物种的活性的可能性是非常重要的目标。在这项工作中,我们使用马尔可夫链理论来计算新的多目标光谱矩,以拟合针对40种病毒物种具有活性的药物的QSAR模型。该模型基于最近文献中作为抗病毒剂测试的500种药物(包括活性和非活性化合物);并非所有药物都可以针对所有病毒,而只有具有实验价值的药物才可以预测。该数据库还包含默克索引(Merck Index)中报告的207种众所周知的化合物(不及以前的化合物)以及其他不包括对任何病毒种类的抗病毒作用的活性。我们使用线性判别分析(LDA)将所有这些药物针对测试的不同病毒种类分为活性或非活性两类,我们对其数据进行了处理。该模型正确地对5594种非活性化合物中的5129种(91.69%)和422种活性化合物(97.63%)中的412进行了分类。总体培训可预测性为92.34%。该模型的验证是通过外部预测序列进行的,该模型对2779种非活性化合物中的2568种和229种活性化合物中的224种进行了分类。总体培训可预测性为92.82%。本工作报告了基于频谱矩分析在统一框架内计算抗病毒药物针对不同病毒种类的概率的首次尝试。

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