Institute of Environmental Medicine, Karolinska Institutet Stockholm, Sweden ; Computer Laboratory, University of Cambridge Cambridge, UK.
Computer Laboratory, University of Cambridge Cambridge, UK.
Front Pharmacol. 2014 Jun 23;5:145. doi: 10.3389/fphar.2014.00145. eCollection 2014.
Toxicity caused by chemical mixtures has emerged as a significant challenge for toxicologists and risk assessors. Information on individual chemicals' modes of action is an important part of the hazard identification step. In this study, an automatic text mining-based tool was employed as a method to identify the carcinogenic modes of action of pesticides frequently found in fruit on the Swedish market. The current available scientific literature on the 26 most common pesticides found in apples and oranges was evaluated. The literature was classified according to a taxonomy that specifies the main type of scientific evidence used for determining carcinogenic properties of chemicals. The publication profiles of many pesticides were similar, containing evidence for both genotoxic and non-genotoxic modes of action, including effects such as oxidative stress, chromosomal changes and cell proliferation. We also found that 18 of the 26 pesticides studied here had previously caused tumors in at least one animal species, findings which support the mode of action data. This study shows how a text-mining tool could be used to identify carcinogenic modes of action for a group of chemicals in large quantities of text. This strategy could support the risk assessment process of chemical mixtures.
化学混合物引起的毒性已成为毒理学家和风险评估师面临的重大挑战。了解单个化学物质的作用模式是危害识别步骤的重要组成部分。在这项研究中,我们使用了一种基于自动文本挖掘的工具,作为一种识别瑞典市场上常见水果中农药致癌作用模式的方法。评估了当前关于苹果和橙子中 26 种最常见农药的可用科学文献。文献根据分类法进行了分类,该分类法指定了用于确定化学物质致癌特性的主要类型的科学证据。许多农药的出版情况相似,包含遗传毒性和非遗传毒性作用模式的证据,包括氧化应激、染色体变化和细胞增殖等影响。我们还发现,在研究的 26 种农药中有 18 种曾在至少一种动物物种中引起肿瘤,这一发现支持了作用模式数据。这项研究展示了如何使用文本挖掘工具在大量文本中识别一组化学物质的致癌作用模式。这种策略可以支持化学混合物的风险评估过程。