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推进二元和三元混合物的分析和图形方法:二价金属离子在人肺细胞中的毒性相互作用。

Advancing analytical and graphical methods for binary and ternary mixtures: The toxic interactions of divalent metal ions in human lung cells.

作者信息

Liu James Y, Beard Jonathan M, Hussain Saber, Sayes Christie M

机构信息

Department of Environmental Science, Baylor University, Waco, TX 76798-7266, USA.

711th Human Performance Wing, Air Force Research Laboratory, Dayton, OH, USA.

出版信息

Heliyon. 2024 Nov 16;10(22):e40481. doi: 10.1016/j.heliyon.2024.e40481. eCollection 2024 Nov 30.

Abstract

Humans are exposed to various environmental chemicals, particles, and pathogens that can cause adverse health outcomes. These exposures are rarely homogenous but rather complex mixtures in which the components may interact, such as through synergism or antagonism. Toxicologists have conducted preliminary investigations into binary mixtures of two components, but little work has been done to understand mixtures of three or more components. We investigated mixtures of divalent metal ions, quantifying the toxic interactions in a human lung model. Eight metals were chosen: heavy metals cadmium, copper, lead, and tin, as well as transition metals iron, manganese, nickel, and zinc. Human alveolar epithelial cells (A549) were exposed to individual metals and sixteen binary and six ternary combinations. The dose-response was modeled using logistic regression in R to extract LC values. Among the individual metals, the highest and lowest toxicity were observed with copper at an LC of 102 μM and lead at an LC of 5639 μM, respectively. First and second-order interaction coefficients were obtained using machine learning-based linear regression in Python. The resulting second-degree polynomial model formed either a hyperbolic or elliptical conic section, and the positive quadrant was used to produce isobolograms and contour plots. The strongest synergism and antagonism were observed in cadmium-copper and iron-zinc, respectively. A three-way interaction term was added to produce full ternary isobologram surfaces, which, to our knowledge, are a significant first in the toxicology literature.

摘要

人类会接触到各种环境化学物质、颗粒和病原体,这些都可能导致不良健康后果。这些接触很少是单一的,而是复杂的混合物,其中各成分可能会相互作用,比如通过协同作用或拮抗作用。毒理学家已经对两种成分的二元混合物进行了初步研究,但对于三种或更多成分的混合物的研究却很少。我们研究了二价金属离子混合物,在人类肺部模型中对毒性相互作用进行了量化。我们选择了八种金属:重金属镉、铜、铅和锡,以及过渡金属铁、锰、镍和锌。将人类肺泡上皮细胞(A549)暴露于单一金属以及十六种二元组合和六种三元组合中。使用R语言中的逻辑回归对剂量反应进行建模以提取半数致死浓度(LC)值。在单一金属中,分别观察到铜的毒性最高,LC为102μM,铅的毒性最低,LC为5639μM。使用Python中基于机器学习的线性回归获得一阶和二阶相互作用系数。由此产生的二次多项式模型形成了双曲线或椭圆圆锥曲线,并且使用正象限来生成等效线图和等高线图。分别在镉 - 铜和铁 - 锌中观察到最强的协同作用和拮抗作用。添加了一个三向相互作用项以生成完整的三元等效线图表面,据我们所知,这在毒理学文献中尚属首次。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7705/11615481/daec74a3f6eb/gr1.jpg

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