高性能计算和机器学习,支持毒物动力学-毒物动力学建模,以理解混合效应

D. Mikec, V. Baudrot, S. Charles
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摘要

毒物动力学-毒物动力学(TKTD)模型越来越多地用于推断环境风险评估(ERA)中感兴趣的毒性指数,因为它们清楚地描述了许多机制,从生物体内化合物的动力学(毒理学动力学,TK)到个体水平上的相关损害和效应动力学(毒理学动力学,TD)[1]。TKTD模型的优势在于,考虑到实验过程中的所有时间点,可以考虑暴露和毒性的时间方面。此外,TKTD模型允许在未经测试的情况下,根据在现场测量或在风险评估情景中模拟的时变暴露概况进行预测。虽然生态环境保护可以采用一种一种化合物的方法,但在实践中,生态系统暴露于农业、工业和家庭来源的许多化学产品。使用TKTD模型来描述这种随时间变化的混合效应需要对相关产品的潜在相互作用做出先验假设。然后,基于将TKTD模型拟合到暴露于混合物下的观测数据,对这些假设进行检验和评估。这张海报说明了高性能计算[3]和机器学习[4]在没有导致鸡尾酒效应的化学相互作用的先验知识的情况下,如何对TKTD模型的推断有特别的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Performance Computing and Machine Learning in support of Toxicokinetic-Toxicodynamic Modelling for the understanding of Mixture Effects
Toxicokinetics-Toxicodynamics (TKTD) models are increasingly used for inference of toxicity indices of interest in Environmental Risk Assessment (ERA) thanks to their clear description of numerous mechanisms , from the kinetics of compounds inside organisms (Toxicokinetics, TK) to their related damages and effect dynamics at the individual level (Toxicodynamics, TD) [1]. TKTD models offer the advantage of accounting for temporal aspects of both exposure and toxicity, considering data points all along the time course of experiments. In addition, TKTD models allow predictions under untested situations from time-variable exposure profiles either measured in the field or simulated in risk assessment scenarios. Although ERA can follow a compound-by-compound approach , in practice, ecosystems are exposed to many chemical products , from agricultural, industrial and domestic sources. Using TKTD models to describe such mixture effects over time requires making assumptions a priori on potential interactions of involved products [2]. These assumptions are then tested and evaluated based on fitting TKTD models to observed data under exposure to mixtures. This poster illustrates how high performance computing [3] and machine learning [4] may be of particular help for the inference of TKTD models without a priori knowledge on emerging chemical interactions that leads to cocktail effects .
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