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Improving confidence in (Q)SAR predictions under Canada's Chemicals Management Plan - a chemical space approach

机译:根据加拿大《化学品管理计划》提高对(Q)SAR预测的信心-一种化学空间方法

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One of the key challenges of Canada's Chemicals Management Plan (CMP) is assessing chemicals with limitedo empirical hazard data for their risk to human health. In some instances, these chemicals have not been tested broadly for their toxicological potency; as such, limited information exists on their potential to induce human health effects following exposure. Although (quantitative) structure activity relationship ((Q)SAR) models are able to generate predictions to address data gaps for certain toxicological endpoints, the confidence in predictions also needs to be addressed. One way to address this issue is to apply a chemical space approach. This approach uses international toxicological databases, for example, those available in the Organisation for Economic Co-operation and Development (OECD) QSAR Toolbox. The approach,assesses a model's ability to predict the potential hazards of chemicals that have limited hazard data that require assessment under the CMP when compared to a larger, data-rich chemical space that is structurally similar to chemicals of interest. This evaluation of a model's predictive ability makes (Q)SAR analysis more transparent and increases confidence in the application of these predictions in a risk-assessment context. Using this approach, predictions for such chemicals obtained from four (Q)SAR models were successfully classified into high, medium and low confidence levels to better inform their use in decision-making.
机译:加拿大化学品管理计划(CMP)的主要挑战之一是评估具有有限/无经验危害数据的化学品对人体健康的危害。在某些情况下,这些化学物质的毒理学潜力尚未得到广泛测试。因此,关于其在暴露后可能对人体健康产生潜在影响的信息有限。尽管(定量)结构活性关系((Q)SAR)模型能够生成预测值以解决某些毒理学终点的数据缺口,但也需要解决预测中的置信度。解决此问题的一种方法是应用化学空间方法。这种方法使用国际毒理学数据库,例如,经济合作与发展组织(OECD)QSAR工具箱中提供的数据库。与较大的,数据丰富的化学空间(结构上与目标化学物质相似)相比,该方法评估模型具有预测危害数据有限,需要根据CMP进行评估的化学物质潜在危害的能力。对模型的预测能力的评估使(Q)SAR分析更加透明,并增加了在风险评估环境中应用这些预测的信心。使用这种方法,将从四个(Q)SAR模型获得的此类化学物质的预测成功地分为高,中和低置信度,以更好地指导其在决策中的使用。

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