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Application of data fusion in human health risk assessment for hydrocarbon mixtures on contaminated sites

机译:数据融合在污染场地碳氢化合物人类健康风险评估中的应用

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The exposure and toxicological data used in human health risk assessment are obtained from diverse and heterogeneous sources. Complex mixtures found on contaminated sites can pose a significant challenge to effectively assess the toxicity potential of the combined chemical exposure and to manage the associated risks. A data fusion framework has been proposed to integrate data from disparate sources to estimate potential risk for various public health issues. To demonstrate the effectiveness of the proposed data fusion framework, an illustrative example for a hydrocarbon mixture is presented.The Joint Directors of Laboratories Data Fusion architecture was selected as the data fusion architecture and Dempster-Shafer Theory (DST) was chosen as the technique for data fusion. For neurotoxicity response analysis, neurotoxic metabolites toxicological data were fused with predictive toxicological data and then probability-boxes (p-boxes) were developed to represent the toxicity of each compound. The neurotoxic response was given a rating of "low", "medium" or "high". These responses were then weighted by the percent composition in the illustrative Fl hydrocarbon mixture. The resulting p-boxes were fused according to DST's mixture rule of combination. The fused p-boxes were fused again with toxicity data for n-hexane.The case study for Fl hydrocarbons illustrates how data fusion can help in the assessment of the health effects for complex mixtures with limited available data.
机译:人类健康风险评估中使用的暴露和毒理学数据来自各种不同来源。在受污染场所发现的复杂混合物可能对有效评估组合化学暴露的潜在毒性和管理相关风险构成重大挑战。已经提出了一个数据融合框架来整合来自不同来源的数据,以估计各种公共卫生问题的潜在风险。为了证明所提出的数据融合框架的有效性,给出了一个碳氢化合物混合物的说明性例子。选择了实验室联合主任的数据融合架构作为数据融合架构,并选择了Dempster-Shafer理论(DST)作为技术。数据融合。对于神经毒性反应分析,将神经毒性代谢物的毒理学数据与预测性毒理学数据融合在一起,然后开发出概率盒(p-box)来代表每种化合物的毒性。神经毒性反应的等级为“低”,“中”或“高”。然后通过说明性的F1烃混合物中的百分比组成对这些响应进行加权。根据DST的混合混合规则,将生成的p-box融合。再次将融合的p-box与正己烷的毒性数据融合。F1碳氢化合物的案例研究说明了数据融合如何在可用数据有限的情况下帮助评估复杂混合物的健康影响。

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