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Design of Anticancer Agents Utilizing Streptozocin for In Silico Optimization of Properties and Pattern Recognition Identification of Group Features

机译:利用链脲佐菌素进行抗病毒药物的计算机优化设计和组特征模式识别的抗癌药设计

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摘要

Streptozocin has been shown to be useful in the clinical treatment of malignant neuroendocrine tumors of the pancreas. The poor prognosis for patients having malignant tumors of pancreas suggests the investigation and development of new therapeutics. Nine analogs to streptozocin are determined by in silico physicochemical analysis and generation of structures by modeling from functional group isosteres. In these analogs is preserved the alkylating nitrosourea moiety, however, the covalently bonded substituent has significant hydrogen bonding sites and may include a ring structure. Analogs retain a broad range in lipophilicity, having a range of Log P from -2.798 (hydrophilic) to 3.001 (lipophilic). Standard deviation of molecular masses is only 12.6% of the group mean, so a small alteration in size occurs which is also reflected by only a 15.5% deviation in molecular volumes. Streptozocin and seven analogs show zero violations of the Rule of 5 which suggests favorable bioavailability. All compounds showed at least seven hydrogen bond acceptors with a strong positive correlation between hydrophilicity to the total number of hydrogen bond acceptors and donors. Analysis of similarity (ANOSIM) and discriminant analysis determined that streptozocin is highly similar to all nine analogs. However hierarchical cluster analysis and K-means cluster analysis were able to elucidate patterns of associations and differentiation among the ten compounds. This study demonstrates the efficacy of utilizing in silico optimization and pattern recognition to elucidate potential anticancer drugs.
机译:链脲佐菌素已被证明可用于胰腺恶性神经内分泌肿瘤的临床治疗。胰腺恶性肿瘤患者预后较差,提示了新疗法的研究和开发。链脲霉素的九种类似物通过计算机物理化学分析确定,并通过从功能基团等排体建模建模产生结构。在这些类似物中,保留了烷基化的亚硝基脲部分,但是,共价键合的取代基具有显着的氢键合位点并且可以包括环结构。类似物在亲脂性方面保持广泛的范围,Log P的范围从-2.798(亲水性)到3.001(亲脂性)。分子质量的标准偏差仅为组平均值的12.6%,因此会发生尺寸的小变化,这也仅由分子体积的15.5%的偏差反映出来。链霉素和七个类似物显示出对5规则的零违反,这表明有利的生物利用度。所有化合物均显示出至少七个氢键受体,亲水性与氢键受体和供体的总数之间具有很强的正相关性。相似性分析(ANOSIM)和判别分析确定链脲佐菌素与所有九种类似物高度相​​似。但是,层次聚类分析和K-均值聚类分析能够阐明这10种化合物之间的缔合和分化模式。这项研究证明了利用计算机优化和模式识别来阐明潜在的抗癌药物的功效。

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