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Three- and four-class classification models for P-glycoprotein inhibitors using counter-propagation neural networks

机译:使用反向传播神经网络的P-糖蛋白抑制剂的三级和四级分类模型

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摘要

P-glycoprotein (P-gp) is an ATP binding cassette (ABC) transporter that helps to protect several certain human organs from xenobiotic exposure. This efflux pump is also responsible for multi-drug resistance (MDR), an issue of the chemotherapy approach in the fight against cancer. Therefore, the discovery of P-gp inhibitors is considered one of the most popular strategies to reverse MDR in tumour cells and to improve therapeutic efficacy of commonly used cytotoxic drugs. Until now, several generations of P-gp inhibitors have been developed but they have largely failed in preclinical and clinical studies due to lack of selectivity, poor solubility and severe pharmacokinetic interactions. In this study, three models (SION, SIO, SIN) to classify specific 'true' P-gp inhibitors as well as three other models (CPBN, CPB1, CPN) to distinguish between P-gp inhibitors, CYP 3A inhibitors and co-inhibitors of these proteins with rather high accuracy values for the test set and the external set were generated based on counter-propagation neural networks (CPG-NN). Such three and four-class classification models helped provide more information about the bioactivities of compounds not only on one target (P-gp), but also on a combination of multiple targets (P-gp, CYP 3A).
机译:P-糖蛋白(P-gp)是ATP结合盒(ABC)转运蛋白,可帮助保护某些人体器官免受异源生物暴露。这种外排泵还负责多重耐药性(MDR),这是抗癌化学疗法的一个问题。因此,发现P-gp抑制剂被认为是逆转肿瘤细胞中MDR并提高常用细胞毒性药物治疗功效的最流行策略之一。到目前为止,已经开发了几代P-gp抑制剂,但是由于缺乏选择性,不良的溶解性和严重的药代动力学相互作用,它们在临床前和临床研究中很大程度上失败了。在这项研究中,使用三种模型(SION,SIO,SIN)对特定的“真正的” P-gp抑制剂进行分类,以及使用其他三种模型(CPBN,CPB1,CPN)来区分P-gp抑制剂,CYP 3A抑制剂和co-p基于反向传播神经网络(CPG-NN),生成了这些蛋白质的抑制剂(对于测试集和外部集具有相当高的准确度值)。这样的三级和四级分类模型不仅提供了关于化合物的生物活性的更多信息,不仅对一个靶标(P-gp),而且对多个靶标的组合(P-gp,CYP 3A)也有帮助。

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