Hybrid model development through the integration of quantitative read-across (qRA) hypothesis with the QSAR framework: An alternative risk assessment of acute inhalation toxicity testing in rats.

Chemosphere Pub Date : 2025-02-01 Epub Date: 2024-12-19 DOI:10.1016/j.chemosphere.2024.143931
Sapna Kumari Pandey, Kunal Roy
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Abstract

Regulatory authorities frequently need information on a chemical's capacity to produce acute systemic toxicity in humans. Due to concerns about animal welfare, human relevance, and reproducibility, numerous international initiatives have centered on finding a substitute for using animals in acute systemic lethality testing. These substitutes include the more current in-silico and in vitro techniques. Meanwhile, Advances in artificial intelligence and computational resources have led to a rise in the speed and accuracy of machine learning algorithms. Therefore, new approach methodologies (NAMs) based on in-silico modeling are considered a suitable place to start, even though many non-animal testing approaches exist for evaluating the safety of chemicals. Eventually, in this investigation, we have developed a hybrid computational model for acute inhalational toxicity data. In this case study, two major in silico techniques, QSAR (quantitative structure-activity relationship) and qRA (quantitative read-across) predictions, were utilized in a hybrid manner to extract more insightful information about the compounds based on similarity as well as the physicochemical properties. The findings of this investigation demonstrate that the integrated method surpasses the traditional QSAR model in terms of statistical quality for inhalational toxicity data, with greater predictability and transferability, due to a much smaller number of descriptors used in the hybrid modeling process. This hybrid modeling technique is a promising alternative, which can be paired with other methods in an integrated manner for a more rational categorization and evaluation of inhaled chemicals as a substitute for animal testing for regulatory purposes in the future.

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通过整合定量解读(qRA)假说和QSAR框架的混合模型开发:大鼠急性吸入毒性试验的另一种风险评估。
监管当局经常需要关于某种化学品对人体产生急性全身毒性的能力的信息。由于对动物福利、人类相关性和可重复性的担忧,许多国际倡议都集中在寻找在急性系统性致死试验中使用动物的替代品。这些替代品包括更先进的硅内和体外技术。与此同时,人工智能和计算资源的进步导致了机器学习算法的速度和准确性的提高。因此,基于计算机模拟的新方法(NAMs)被认为是一个合适的起点,尽管存在许多非动物试验方法来评估化学品的安全性。最终,在这项研究中,我们开发了一种用于急性吸入性毒性数据的混合计算模型。在这个案例研究中,两种主要的硅技术,QSAR(定量结构-活性关系)和qRA(定量读通)预测,以混合的方式利用相似性和物理化学性质来提取有关化合物的更有洞察力的信息。本研究的结果表明,综合方法在吸入毒性数据的统计质量方面优于传统的QSAR模型,由于混合建模过程中使用的描述符数量少得多,因此具有更高的可预测性和可转移性。这种混合建模技术是一种很有前途的替代方法,它可以与其他方法相结合,以一种综合的方式对吸入的化学物质进行更合理的分类和评估,作为未来监管目的的动物试验的替代品。
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