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首页> 外文期刊>Journal of Biomolecular Structure and Dynamics >Exploration of good and bad structural fingerprints for inhibition of indoleamine-2,3-dioxygenase enzyme in cancer immunotherapy using Monte Carlo optimization and Bayesian classification QSAR modeling
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Exploration of good and bad structural fingerprints for inhibition of indoleamine-2,3-dioxygenase enzyme in cancer immunotherapy using Monte Carlo optimization and Bayesian classification QSAR modeling

机译:浅不良结构指纹,蒙特卡罗优化和贝叶斯分类QSAR建模癌症免疫疗法抑制indolamine-2,3-二氧化酶酶的抑制作用

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摘要

Indoleamine-2,3-dioxygenase 1 (IDO1) is an extrahepatic, heme-containing and tryptophan-catalyzing enzyme responsible for causing blockade of T-cell proliferation and differentiation by depleting tryptophan level in cancerous cells. Therefore, inhibition of IDO1 may be a useful strategy for immunotherapy against cancer. In this study, 448 structurally diverse IDO1 inhibitors with a wide range of activity has been taken into consideration for classification QSAR analysis through Monte Carlo Optimization by using different splits as well as different combinations of SMILES-based, graph-based and hybrid descriptors. The best model from Monte Carlo optimization was interpreted to find out the good and bad structural fingerprints for IDO1 and further justified by using Bayesian classification QSAR modeling. Among the three splits in Monte Carlo optimization, the statistics of the best model was obtained from Split 3: sensitivity = 0.87, specificity = 0.91, accuracy = 0.89 and MCC = 0.78. In Bayesian classification modeling, the ROC scores for training and test set were found to be 0.91 and 0.86, respectively. The combined modeling analysis revealed that the presence of aryl hydrazyl sulphonyl moiety, furazan ring, halogen substitution, nitro group and hetero atoms in aromatic system can be very useful in designing IDO1 inhibitors. All the good and bad structural fingerprints for IDO1 were identified and are justified by correlating these fragments to the inhibition of IDO1 enzyme. These structural fingerprints will guide the researchers in this field to design better inhibitors against IDO1 enzyme for cancer immunotherapy. Communicated by Ramaswamy H. Sarma
机译:吲哚胺-2,3-二氧基酶1(IDO1)是含有脱发,血红素和色氨酸催化酶,其负责导致癌细胞中的色氨酸水平导致T细胞增殖和分化。因此,IDO1的抑制可以是免疫疗法免疫癌症的有用策略。在本研究中,通过使用不同的分割以及基于微笑的基于图形和混合描述符的微笑和混合描述符的不同组合,考虑了448个具有广泛活动的结构各种IDO1抑制剂,以便通过Monte Carlo优化进行分类QSAR分析。 Monte Carlo优化的最佳模型被解释为找出IDO1的良好和坏的结构指纹,并通过使用贝叶斯分类QSAR建模进一步证明。在蒙特卡罗优化中的三个分裂中,最佳模型的统计数据从分裂3获得:灵敏度= 0.87,特异性= 0.91,精度= 0.89和MCC = 0.78。在贝叶斯分类建模中,发现培训和测试集的ROC分数分别为0.91和0.86。组合的建模分析显示芳族系统中芳基环,卤素取代,呋喃盐环,卤素取代,硝基和杂原子的存在在设计IDO1抑制剂方面非常有用。鉴定了IDO1的所有良好和坏的结构指纹,并通过将这些片段与IDO1酶的抑制相关来证明。这些结构指纹将指导该领域的研究人员设计对癌症免疫疗法的IDO1酶更好的抑制剂。由Ramaswamy H. Sarma沟通

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