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首页> 外文期刊>Toxicology Letters: An International Journal Providing a Forum for Original and Pertinent Contributions in Toxicology Research >Grouping chemicals for health risk assessment: A text mining-based case study of polychlorinated biphenyls (PCBs)
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Grouping chemicals for health risk assessment: A text mining-based case study of polychlorinated biphenyls (PCBs)

机译:将化学品分组以进行健康风险评估:基于文本挖掘的多氯联苯(PCB)案例研究

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摘要

As many chemicals act as carcinogens, chemical health risk assessment is critically important. A notoriously time consuming process, risk assessment could be greatly supported by classifying chemicals with similar toxicological profiles so that they can be assessed in groups rather than individually. We have previously developed a text mining (TM)-based tool that can automatically identify the mode of action (MOA) of a carcinogen based on the scientific evidence in literature, and it can measure the MOA similarity between chemicals on the basis of their literature profiles (Korhonen et al., 2009, 2012). A new version of the tool (2.0) was recently released and here we apply this tool for the first time to investigate and identify meaningful groups of chemicals for risk assessment.
机译:由于许多化学物质是致癌物,因此化学健康风险评估至关重要。众所周知,这是一个非常耗时的过程,因此可以通过对具有相似毒理学特征的化学品进行分类来极大地支持风险评估,因此可以对它们进行分组评估,而不是单独进行评估。我们之前已经开发了基于文本挖掘(TM)的工具,该工具可以根据文献中的科学证据自动识别致癌物的作用方式(MOA),并且可以根据其文献来测量化学物质之间的MOA相似性档案(Korhonen等,2009,2012)。最近发布了该工具的新版本(2.0),在此我们首次将其应用到调查和识别有意义的化学品组中,以进行风险评估。

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