致癌性危害评估的计算机方法:一种非遗传毒性小鼠致癌物普瑞巴林的案例研究

IF 3.6 Q2 TOXICOLOGY
Douglas A. Keller, Arianna Bassan, Alexander Amberg, Leigh Ann Burns Naas, Jon Chambers, Kevin Cross, Frances Hall, Gloria D. Jahnke, Amarjit Luniwal, Serena Manganelli, Jordi Mestres, Amy L. Mihalchik-Burhans, David Woolley, Raymond R. Tice
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引用次数: 0

摘要

计算机毒理学方案旨在支持基于计算的评估,使用确保结果可以生成、记录、交流、存档,然后以统一、一致和可重复的方式进行评估的原则。我们调查了计算机模型的可用性,利用致癌物的十个关键特征作为组织机制研究的框架来预测普瑞巴林的致癌潜力。普瑞巴林是一种单物种致癌物,仅通过非基因毒性机制在小鼠中产生一种肿瘤——血管肉瘤。这项工作的总体目标是以普瑞巴林为例,测试计算机模型预测非遗传毒性致癌性的能力。普瑞巴林的既定作用模式(MOA)由组织缺氧触发,导致内皮细胞氧化应激(KC5)、慢性炎症(KC6)和细胞增殖增加(KC10)。在这些KCs中,计算机模型仅适用于KC5的选定终点,限制了计算工具在预测普瑞巴林致癌性方面的有用性。KC1(亲电性)、KC2(遗传毒性)和KC8(受体介导效应),这些预测性的硅模型存在,但在这种作用模式中不起作用。对于KCs 1、2、5、6、7(免疫系统效应)、8和10(细胞增殖),总体评估的置信度被认为是中等至高的,这主要是由于高质量的实验数据。为了摆脱对动物数据的依赖,开发可靠的硅模型来预测氧化应激、慢性炎症、免疫抑制和细胞增殖,对于预测非遗传毒性化合物致癌性的能力至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In silico approaches in carcinogenicity hazard assessment: case study of pregabalin, a nongenotoxic mouse carcinogen
In silico toxicology protocols are meant to support computationally-based assessments using principles that ensure that results can be generated, recorded, communicated, archived, and then evaluated in a uniform, consistent, and reproducible manner. We investigated the availability of in silico models to predict the carcinogenic potential of pregabalin using the ten key characteristics of carcinogens as a framework for organizing mechanistic studies. Pregabalin is a single-species carcinogen producing only one type of tumor, hemangiosarcomas in mice via a nongenotoxic mechanism. The overall goal of this exercise is to test the ability of in silico models to predict nongenotoxic carcinogenicity with pregabalin as a case study. The established mode of action (MOA) of pregabalin is triggered by tissue hypoxia, leading to oxidative stress (KC5), chronic inflammation (KC6), and increased cell proliferation (KC10) of endothelial cells. Of these KCs, in silico models are available only for selected endpoints in KC5, limiting the usefulness of computational tools in prediction of pregabalin carcinogenicity. KC1 (electrophilicity), KC2 (genotoxicity), and KC8 (receptor-mediated effects), for which predictive in silico models exist, do not play a role in this mode of action. Confidence in the overall assessments is considered to be medium to high for KCs 1, 2, 5, 6, 7 (immune system effects), 8, and 10 (cell proliferation), largely due to the high-quality experimental data. In order to move away from dependence on animal data, development of reliable in silico models for prediction of oxidative stress, chronic inflammation, immunosuppression, and cell proliferation will be critical for the ability to predict nongenotoxic compound carcinogenicity.
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来源期刊
CiteScore
3.80
自引率
0.00%
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审稿时长
13 weeks
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