首页> 外文期刊>Toxics >Exploration of Computational Approaches to Predict the Toxicity of Chemical Mixtures
【24h】

Exploration of Computational Approaches to Predict the Toxicity of Chemical Mixtures

机译:预测化学混合物毒性的计算方法的探索

获取原文
           

摘要

Industrial advances have led to generation of multi-component chemicals, materials and pharmaceuticals which are directly or indirectly affecting the environment. Although toxicity data are available for individual chemicals, generally there is no toxicity data of chemical mixtures. Most importantly, the nature of toxicity of these studied mixtures is completely different to the single components, which makes the toxicity evaluation of mixtures more critical and challenging. Interactions of individual chemicals in a mixture can result in multifaceted and considerable deviations in the apparent properties of its ingredients. It results in synergistic or antagonistic effects as opposed to the ideal case of additive behavior i.e., concentration addition (CA) and independent action (IA). The CA and IA are leading models for the assessment of joint activity supported by pharmacology literature. Animal models for toxicity testing are time- and money-consuming as well as unethical. Thus, computational approaches are already proven efficient alternatives for assessing the toxicity of chemicals by regulatory authorities followed by industries. In silico methods are capable of predicting toxicity, prioritizing chemicals, identifying risk and assessing, followed by managing, the risk. In many cases, the mechanism behind the toxicity from species to species can be understood by in silico methods. Until today most of the computational approaches have been employed for single chemical’s toxicity. Thus, only a handful of works in the literature and methods are available for a mixture’s toxicity prediction employing computational or in silico approaches. Therefore, the present review explains the importance of evaluation of a mixture’s toxicity, the role of computational approaches to assess the toxicity, followed by types of in silico methods. Additionally, successful application of in silico tools in a mixture’s toxicity predictions is explained in detail. Finally, future avenues towards the role and application of computational approaches in a mixture’s toxicity are discussed.
机译:工业的进步导致产生直接或间接影响环境的多组分化学药品,材料和药品。尽管有个别化学品的毒性数据,但通常没有化学混合物的毒性数据。最重要的是,这些研究混合物的毒性本质与单一组分完全不同,这使得混合物的毒性评估更加关键和更具挑战性。混合物中各个化学物质的相互作用可能导致其成分的表观特性发生多方面且相当大的偏差。与累加行为的理想情况相反,即协同作用或拮抗作用,即浓度增加(CA)和独立作用(IA)。 CA和IA是药理学文献支持的关节活动评估的领先模型。用于毒性测试的动物模型既费时又费钱,而且不道德。因此,计算方法已被证明是监管机构(随后是行业)评估化学品毒性的有效替代方法。计算机方法可以预测毒性,确定化学品的优先级,识别风险并评估和管理风险。在许多情况下,可以通过计算机方法理解物种之间的毒性背后的机理。直到今天,大多数计算方法仍被用于单一化学物质的毒性。因此,只有少数文献和方法可用于采用计算或计算机模拟方法预测混合物的毒性。因此,本综述解释了评估混合物毒性的重要性,计算机方法评估毒性的作用以及计算机模拟方法的类型。此外,还将详细说明在混合物的毒性预测中成功应用了计算机模拟工具。最后,讨论了计算方法在混合物毒性中的作用和应用的未来途径。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号