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LIMITATIONS ON THE RELIABILITY OF IN VITRO PREDICTIVE TOXICITY MODELS TO PREDICT PULMONARY TOXICITY IN RODENTS

机译:体外预测毒性模型在预测啮齿类动物肺毒性中的可靠性限制

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Given the rapidly proliferating varieties of nanomaterials and ongoing concerns that these novel materials may pose emerging occupational and environmental risks, combined with the possibility that each variety might pose a different unique risk due to the unique combination of material properties, researchers and regulators have been searching for methods to identify hazards and prioritize materials for further testing. While several screening tests and toxic risk models have been proposed, most have relied on cellular-level in vitro data. This foundation enables answers to be developed quickly for any material, but it is yet unclear how this information may translate to more realistic exposure scenarios in people or other more complex animals. A quantitative evaluation of these models or at least the inputs variables to these models in the context of rodent or human health outcomes is necessary before their classifications may be believed for the purposes of risk prioritization. This paper presents the results of a machine learning enabled meta-analysis of animal studies attempting to use significant descriptors from in vitro nanomaterial risk models to predict the relative toxicity of nanomaterials following pulmonary exposures in rodents. A series of highly non-linear random forest models (each made up of an ensemble of 1,000 regression tree models) were created to assess the maximum possible information value of the in vitro risk models and related methods of describing nanomaterial variants and their toxicity in rat and mouse experiments. The variety of chemical descriptors or quantitative chemical property measurements such as bond strength, surface charge, and dissolution potential, while important in describing observed differences with in vitro experiments, proved to provide little indication of the relative magnitude of inflammation in rodents (explained variance amounted to less than 32%). Important factors in predicting rodent pulmonary inflammation such as primary particle size and chemical type demonstrate that there are critical differences between these two toxicity assays that cannot be captured by a series of in vitro tests alone. Predictive models relying primarily on these descriptors alone explained more than 62% of the variance of the short term in vivo toxicity results. This means that existing proposed nanomaterial toxicity screening methods are inadequate as they currently stand, and either the community must be content with the slower and more expensive animal testing to evaluate nanomaterial risks, or further conceptual development of improved alternative in vitro screening methodologies is necessary before manufacturers and regulators can rely on them to promote safer use of nanotechnology.
机译:鉴于纳米材料种类的迅速增加以及人们对这些新型材料可能构成新兴的职业和环境风险的担忧,再加上每种材料由于材料特性的独特组合而可能带来不同的独特风险的可能性,研究人员和监管机构一直在寻找确定危害并确定材料优先级以进行进一步测试的方法。虽然已经提出了几种筛选测试和毒性风险模型,但大多数都依赖于细胞水平的体外数据。这种基础使得可以快速开发出针对任何材料的答案,但目前尚不清楚该信息如何将其转化为人类或其他更复杂的动物的更真实的暴露场景。必须先对这些模型进行定量评估,或者至少要在啮齿动物或人类健康结果的背景下对这些模型的输入变量进行评估,然后才能对它们进行分类,以进行风险优先排序。本文介绍了对动物研究进行机器学习的荟萃分析的结果,该研究试图使用体外纳米材料风险模型中的重要描述符来预测啮齿动物中肺暴露后纳米材料的相对毒性。创建了一系列高度非线性的随机森林模型(每个模型由1000个回归树模型组成),以评估体外风险模型的最大可能信息价值以及描述纳米材料变体及其在大鼠中的毒性的相关方法和鼠标实验。各种化学描述符或定量化学性质测量值,例如结合强度,表面电荷和溶解潜能,尽管在描述与体外实验中观察到的差异方面很重要,但事实证明不足以显示出啮齿类动物的相对炎症程度(解释的差异量至少于32%)。预测啮齿类动物肺部炎症的重要因素,例如主要颗粒大小和化学类型,表明这两种毒性试验之间存在关键差异,仅通过一系列体外试验无法捕获这些差异。主要依靠这些描述符的预测模型解释了短期体内毒性结果差异的62%以上。这意味着现有的拟议的纳米材料毒性筛选方法目前还不足够,或者社区必须满足于以较慢且更昂贵的动物测试来评估纳米材料的风险,或者必须在进一步概念上开发改进的替代体外筛选方法制造商和监管机构可以依靠它们来促进纳米技术的更安全使用。

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