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砷解毒的数学模型见解。

Mathematical model insights into arsenic detoxification.

作者信息

Lawley Sean D, Cinderella Molly, Hall Megan N, Gamble Mary V, Nijhout H Frederik, Reed Michael C

机构信息

Department of Mathematics, Duke University, 130 Science Drive, Durham, NC 27708, USA.

出版信息

Theor Biol Med Model. 2011 Aug 26;8:31. doi: 10.1186/1742-4682-8-31.

Abstract

BACKGROUND

Arsenic in drinking water, a major health hazard to millions of people in South and East Asia and in other parts of the world, is ingested primarily as trivalent inorganic arsenic (iAs), which then undergoes hepatic methylation to methylarsonic acid (MMAs) and a second methylation to dimethylarsinic acid (DMAs). Although MMAs and DMAs are also known to be toxic, DMAs is more easily excreted in the urine and therefore methylation has generally been considered a detoxification pathway. A collaborative modeling project between epidemiologists, biologists, and mathematicians has the purpose of explaining existing data on methylation in human studies in Bangladesh and also testing, by mathematical modeling, effects of nutritional supplements that could increase As methylation.

METHODS

We develop a whole body mathematical model of arsenic metabolism including arsenic absorption, storage, methylation, and excretion. The parameters for arsenic methylation in the liver were taken from the biochemical literature. The transport parameters between compartments are largely unknown, so we adjust them so that the model accurately predicts the urine excretion rates of time for the iAs, MMAs, and DMAs in single dose experiments on human subjects.

RESULTS

We test the model by showing that, with no changes in parameters, it predicts accurately the time courses of urinary excretion in mutiple dose experiments conducted on human subjects. Our main purpose is to use the model to study and interpret the data on the effects of folate supplementation on arsenic methylation and excretion in clinical trials in Bangladesh. Folate supplementation of folate-deficient individuals resulted in a 14% decrease in arsenicals in the blood. This is confirmed by the model and the model predicts that arsenicals in the liver will decrease by 19% and arsenicals in other body stores by 26% in these same individuals. In addition, the model predicts that arsenic methyltransferase has been upregulated by a factor of two in this population. Finally, we also show that a modification of the model gives excellent fits to the data on arsenic metabolism in human cultured hepatocytes.

CONCLUSIONS

The analysis of the Bangladesh data using the model suggests that folate supplementation may be more effective at reducing whole body arsenic than previously expected. There is almost no data on the upregulation of arsenic methyltransferase in populations chronically exposed to arsenic. Our model predicts upregulation by a factor of two in the Bangladesh population studied. This prediction should be verified since it could have important public health consequences both for treatment strategies and for setting appropriate limits on arsenic in drinking water. Our model has compartments for the binding of arsenicals to proteins inside of cells and we show that these comparments are necessary to obtain good fits to data. Protein-binding of arsenicals should be explored in future biochemical studies.

摘要

背景

饮用水中的砷对南亚、东亚及世界其他地区的数百万人构成重大健康危害,人们主要摄入三价无机砷(iAs),其在肝脏中会甲基化生成甲基砷酸(MMAs),并进一步甲基化生成二甲基砷酸(DMAs)。尽管已知MMAs和DMAs也具有毒性,但DMAs更易通过尿液排出,因此甲基化通常被视为一种解毒途径。一个由流行病学家、生物学家和数学家合作开展的建模项目旨在解释孟加拉国人体研究中关于甲基化的现有数据,并通过数学建模测试可能增加砷甲基化的营养补充剂的效果。

方法

我们构建了一个砷代谢的全身数学模型,包括砷的吸收、储存、甲基化和排泄。肝脏中砷甲基化的参数取自生化文献。各隔室之间的转运参数大多未知,因此我们对其进行调整,以使该模型能准确预测人体受试者单剂量实验中iAs、MMAs和DMAs随时间的尿液排泄率。

结果

我们通过证明在不改变参数的情况下,该模型能准确预测人体受试者多剂量实验中尿液排泄的时间进程来对模型进行测试。我们的主要目的是利用该模型研究和解释孟加拉国临床试验中叶酸补充对砷甲基化和排泄影响的数据。对叶酸缺乏个体补充叶酸导致血液中砷化物减少了14%。这一结果得到了模型的证实,并且模型预测在这些个体中,肝脏中的砷化物将减少19%,身体其他储存部位的砷化物将减少26%。此外,模型预测该人群中砷甲基转移酶上调了两倍。最后,我们还表明对模型进行修改后能很好地拟合人类培养肝细胞中砷代谢的数据。

结论

使用该模型对孟加拉国数据的分析表明,补充叶酸在降低全身砷含量方面可能比之前预期的更有效。关于长期接触砷的人群中砷甲基转移酶上调的相关数据几乎没有。我们的模型预测在研究的孟加拉国人群中上调了两倍。这一预测应得到验证,因为它可能对治疗策略以及设定饮用水中砷的适当限量都有重要的公共卫生影响。我们的模型有细胞内砷化物与蛋白质结合的隔室,并且我们表明这些隔室对于很好地拟合数据是必要的。砷化物与蛋白质的结合应在未来的生化研究中进行探索。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1cf2/3224592/2e07ddc0f79a/1742-4682-8-31-1.jpg

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