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首页> 外文期刊>Molecules >Modeling Chemical Interaction Profiles: I. Spectral Data-Activity Relationship and Structure-Activity Relationship Models for Inhibitors and Non-inhibitors of Cytochrome P450 CYP3A4 and CYP2D6 Isozymes
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Modeling Chemical Interaction Profiles: I. Spectral Data-Activity Relationship and Structure-Activity Relationship Models for Inhibitors and Non-inhibitors of Cytochrome P450 CYP3A4 and CYP2D6 Isozymes

机译:化学相互作用谱的建模:I.细胞色素P450 CYP3A4和CYP2D6同工酶的抑制剂和非抑制剂的光谱数据-活性关系和结构-活性关系模型

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An interagency collaboration was established to model chemical interactions that may cause adverse health effects when an exposure to a mixture of chemicals occurs. Many of these chemicals—drugs, pesticides, and environmental pollutants—interact at the level of metabolic biotransformations mediated by cytochrome P450 (CYP) enzymes. In the present work, spectral data-activity relationship (SDAR) and structure-activity relationship (SAR) approaches were used to develop machine-learning classifiers of inhibitors and non-inhibitors of the CYP3A4 and CYP2D6 isozymes. The models were built upon 602 reference pharmaceutical compounds whose interactions have been deduced from clinical data, and 100 additional chemicals that were used to evaluate model performance in an external validation (EV) test. SDAR is an innovative modeling approach that relies on discriminant analysis applied to binned nuclear magnetic resonance (NMR) spectral descriptors. In the present work, both 1D 13C and 1D 15N-NMR spectra were used together in a novel implementation of the SDAR technique. It was found that increasing the binning size of 1D 13C-NMR and 15N-NMR spectra caused an increase in the tenfold cross-validation (CV) performance in terms of both the rate of correct classification and sensitivity. The results of SDAR modeling were verified using SAR. For SAR modeling, a decision forest approach involving from 6 to 17 Mold2 descriptors in a tree was used. Average rates of correct classification of SDAR and SAR models in a hundred CV tests were 60% and 61% for CYP3A4, and 62% and 70% for CYP2D6, respectively. The rates of correct classification of SDAR and SAR models in the EV test were 73% and 86% for CYP3A4, and 76% and 90% for CYP2D6, respectively. Thus, both SDAR and SAR methods demonstrated a comparable performance in modeling a large set of structurally diverse data. Based on unique NMR structural descriptors, the new SDAR modeling method complements the existing SAR techniques, providing an independent estimator that can increase confidence in a structure-activity assessment. When modeling was applied to hazardous environmental chemicals, it was found that up to 20% of them may be substrates and up to 10% of them may be inhibitors of the CYP3A4 and CYP2D6 isoforms. The developed models provide a rare opportunity for the environmental health branch of the public health service to extrapolate to hazardous chemicals directly from human clinical data. Therefore, the pharmacological and environmental health branches are both expected to benefit from these reported models.
机译:建立了机构间合作来模拟化学相互作用,当发生化学混合物暴露时,化学相互作用可能对健康造成不利影响。这些化学物质(药物,农药和环境污染物)中的许多在细胞色素P450(CYP)酶介导的代谢生物转化水平上相互作用。在目前的工作中,使用光谱数据-活性关系(SDAR)和结构-活性关系(SAR)方法来开发CYP3A4和CYP2D6同工酶抑制剂和非抑制剂的机器学习分类器。这些模型是基于602种参考药物化合物(已从临床数据推断出它们的相互作用)和100种其他化学药品(用于在外部验证(EV)测试中评估模型性能)建立的。 SDAR是一种创新的建模方法,它依赖于应用于binned核磁共振(NMR)频谱描述符的判别分析。在目前的工作中,一维 13 C和一维 15 N-NMR光谱在SDAR技术的新颖实现中一起使用。发现增加1D 13 C-NMR和 15 N-NMR谱的装箱尺寸会导致交叉验证(CV)性能提高十倍。正确的分类率和敏感性。使用SAR验证了SDAR建模的结果。对于SAR建模,使用了决策树方法,该方法在树中包含6至17个Mold 2 描述符。在100次CV测试中,对SDAR和SAR模型进行正确分类的平均比率分别为CYP3A4为60%和61%,而CYP2D6为62%和70%。在EV测试中,对SDAR和SAR模型的正确分类率分别是:CYP3A4为73%和86%,CYP2D6为76%和90%。因此,SDAR和SAR方法在对大量结构多样的数据进行建模时都表现出可比的性能。基于独特的NMR结构描述符,新的SDAR建模方法补充了现有的SAR技术,提供了独立的估计器,可以增加对结构活性评估的信心。当将模型应用于危险环境化学品时,发现最多有20%可能是底物,最多10%是CYP3A4和CYP2D6异构体的抑制剂。所开发的模型为公共卫生服务部门的环境卫生部门提供了难得的机会,可以直接从人类临床数据中推断出危险化学品。因此,药理和环境卫生部门都有望从这些报道的模型中受益。

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    《Molecules》 |2012年第3期|共24页
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