Construction and evaluation of an open-source database for inhalation-based physiologically based kinetic modeling of selected categories for industrial chemicals.

IF 1.8 4区 医学 Q4 TOXICOLOGY
Shigechika Yamamoto, Kikuo Yoshida, Mariko Matsumoto, Takashi Yamada
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引用次数: 0

Abstract

A physiologically based kinetic (PBK) model is used for predicting chemical concentrations of toxicological concern in target tissues. Such models are important for understanding toxicokinetics. However, it is challenging to obtain chemical-specific empirical parameter values used for PBK modeling. Thus, developing methods predicting these values is necessary. Herein, we researched PBK models of inhalation exposure to industrial chemicals and developed a database of parameters of approximately 200 chemicals in humans and rodents. Next, the chemicals in the database were classified into three categories (I, IIA, and IIB) based on the intermolecular interactions for humans and rats. Quantitative relationships between blood/air and tissue/blood partition coefficients and physicochemical parameters were derived for the chemicals in each category. Regression analyses of blood/air and fat/blood partition coefficients against Henry's law constant and log D at pH 7.4 for chemicals in category IIA for humans, in which van der Waals and dipole-dipole interactions were involved, yielded 0.88 and 0.54 coefficients of determination, respectively. Moreover, these methods worked for other categories and species. The metabolic parameters maximal velocity (Vmax) and Michaelis-Menten constant (Km) of the chemicals that are primarily metabolized by cytochrome P450 were calculated for humans and rats. Multiple regression analyses of logs Vmax and Km against the occurrence frequency of molecular fragments showed good correlations, respectively. The aforementioned models predicted values close to the reported values for test chemicals within the applicability domains. Our approach could also be applied to other chemicals within the domains that are not included in the database.

基于吸入的基于生理动力学建模的工业化学品选定类别的开源数据库的构建和评估。
基于生理学的动力学(PBK)模型用于预测目标组织中毒性关注的化学浓度。这样的模型对于理解毒性动力学很重要。然而,获得用于PBK建模的化学特异性经验参数值是具有挑战性的。因此,开发预测这些值的方法是必要的。在此,我们研究了吸入暴露于工业化学品的PBK模型,并建立了大约200种化学品在人类和啮齿动物中的参数数据库。接下来,基于人和大鼠的分子间相互作用,将数据库中的化学物质分为三类(I, IIA和IIB)。导出了每一类化学物质的血/气和组织/血分配系数与理化参数之间的定量关系。回归分析血液/空气和脂肪/血液分配系数对亨利定律常数和logd在pH 7.4的IIA类化学物质,其中范德华和偶极子-偶极子相互作用涉及,分别产生0.88和0.54的决定系数。此外,这些方法也适用于其他种类和物种。计算了细胞色素P450主要代谢物质的代谢参数,最大速度(Vmax)和Michaelis-Menten常数(Km)。对数Vmax和Km分别与分子片段出现频率的多元回归分析显示出良好的相关性。上述模型的预测值接近于适用性领域内测试化学品的报告值。我们的方法也可以应用于数据库中未包括的领域内的其他化学品。
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来源期刊
CiteScore
3.20
自引率
5.00%
发文量
53
审稿时长
4-8 weeks
期刊介绍: The Journal of Toxicological Sciences (J. Toxicol. Sci.) is a scientific journal that publishes research about the mechanisms and significance of the toxicity of substances, such as drugs, food additives, food contaminants and environmental pollutants. Papers on the toxicities and effects of extracts and mixtures containing unidentified compounds cannot be accepted as a general rule.
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