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A Hybrid Bayesian Network Framework for Risk Assessment of Arsenic Exposure and Adverse Reproductive Outcomes

机译:砷暴露和不利生殖结果的风险评估杂交贝叶斯网络框架

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摘要

Arsenic contamination of drinking water affects more than 137 million people and has been linked to several adverse health effects. The traditional toxicological approach, "dose-response" graphs, are limited in their ability to unveil the relationships between potential risk factors of arsenic exposure for adverse human health outcomes, which are critically important to understanding the risk at low exposure levels of arsenic. Therefore, to provide insight on the potential interactions of different variables of the arsenic exposure network, this study characterizes the risk factors by developing a hybrid Bayesian Belief Network (BBN) model for health risk assessment. The results show that the low inorganic arsenic concentration increases the risk of low birth weight even for low gestational age scenarios. While increasing the mother's age does not increase the low birthweight risk, it affects the distribution between other categories of baby weight. For low MMA% ( 4%) in the human body, increasing gestational age decreases the risk of having low birthweight. The proposed BBN model provides 82% sensitivity and 72% specificity in average for different states of birthweight.
机译:饮用水的砷污染影响了超过1.37亿人,并与几种不良健康影响有关。传统的毒理学方法,“剂量 - 反应”图是有限的,其能够揭示砷暴露的潜在危险因素与不良人体健康结果之间的关系,这对理解砷低暴露水平的风险至关重要。因此,为了提供对砷曝光网络不同变量的潜在相互作用的洞察,这项研究通过开发混合贝叶斯信仰网络(BBN)模型进行健康风险评估来表征风险因素。结果表明,对于低胎龄情景,低无机砷浓度即使对于低胎龄情况而言,甚至增加了低出生体重的风险。虽然提高母亲的年龄不会增加低出生体重风险,但它会影响其他类别的婴儿体重之间的分布。对于人体中低MMA%(<4%),增加的孕龄增长降低了出生体重低的风险。建议的BBN模型为不同州的出生态提供了82%的灵敏度和72%的特异性。

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