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首页> 外文期刊>Journal of Advances in Medical and Pharmaceutical Sciences >Comparative Analysis of Antihistamines and Nonsteroidal Anti-inflammatory Drugs (NSAIDs): Properties, Structure and Prediction of New Potential Drugs
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Comparative Analysis of Antihistamines and Nonsteroidal Anti-inflammatory Drugs (NSAIDs): Properties, Structure and Prediction of New Potential Drugs

机译:抗组胺药和非甾体类抗炎药(NSAIDs)的比较分析:新潜在药物的性质,结构和预测

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Aims: To determine the molecular properties of common antihistamines and non-steroidal anti-inflammatory agents (NSAIDs). To identify interrelationships among these two groups of drugs utilizing pattern recognition methods and statistical analysis. Study Design: After determination of molecular properties, values thereof are examined using pattern recognition methods and other numerical analysis for underlying relationships and similarities. Place and Duration of Study: Durham Science Center, University of Nebraska, Omaha, Nebraska from September 2016 to January 2017. Methodology: Thirty compounds were identified as antihistamines and 27 compounds identified as NSAIDs. Properties such as Log P, molecular weight, polar surface area, etc. are determined. Molecular properties are compared applying methods such as K-means cluster analysis, nearest neighbor joining, box plots, and statistical analysis in order to determine trends and underlying relationships. Pattern recognition techniques allow elucidation of underlying similarities. Results: The molecular properties of all 57 drugs are tabulated for comparison and numerical analysis. Evaluation by Kruskal-Wallis test and one-way ANOVA indicated that antihistamines and NSAIDs’ values of Log P have equal medians and equal means. However, values of polar surface area (PSA) and number of rotatable bonds for these two groups do not have equal means and medians. Box plots indicated that Log P, PSA, and molecular weight values have significant overlap in range. Neighbor-joining method showed which drugs are most similar to each other. K-means cluster analysis also divided these 57 drugs into six groups of highest similarity. Principal coordinates analysis (PCoA) with 95% ellipses indicated all but four of the drugs fall within a 95% confidence region. Multiple regression analysis generated mathematical relationship for prediction of new drugs. Conclusion: These two groups of drugs show compelling similarities. PCoA showed all but four of 57 drugs come within a 95% confidence ellipsis. Neighbor joining and K-means cluster analysis showed drugs having similarities between the two groups.
机译:目的:确定常见抗组胺药和非甾体类抗炎药(NSAIDs)的分子特性。使用模式识别方法和统计分析来识别这两类药物之间的相互关系。研究设计:确定分子性质后,使用模式识别方法和其他数值分析方法检查其值,以了解潜在的关系和相似性。研究的地点和时间:2016年9月至2017年1月,内布拉斯加州奥马哈市内布拉斯加州大学达勒姆科学中心。方法:30种化合物被鉴定为抗组胺药,27种化合物被鉴定为NSAID。确定诸如Log P,分子量,极性表面积等性质。使用诸如K均值聚类分析,最近邻连接,箱形图和统计分析等方法比较分子特性,以确定趋势和基本关系。模式识别技术可以阐明潜在的相似性。结果:列出所有57种药物的分子特性,以进行比较和数值分析。通过Kruskal-Wallis检验和单向ANOVA进行的评估表明,Log P的抗组胺药和NSAID值具有相同的中位数和均值。但是,这两组的极性表面积(PSA)值和可旋转键数没有相等的均值和中值。箱形图表明Log P,PSA和分子量值在范围上有明显的重叠。邻居加入法表明哪些药物彼此最相似。 K-均值聚类分析还将这57种药物分为相似性最高的六组。椭圆度为95%的主坐标分析(PCoA)表明,除四种药物外,所有其他药物均位于95%的置信度范围内。多元回归分析产生了预测新药的数学关系。结论:这两类药物显示出令人信服的相似性。 PCoA显示,除57种药物中的4种外,其他所有药物的置信度均在95%以内。邻居加入和K-均值聚类分析显示两组药物具有相似性。

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