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Expanding the Toolbox: Hazard-Screening Methods and Tools for Identifying Safer Chemicals in Green Product Design

机译:扩展工具箱:危险筛选方法和工具,用于在绿色产品设计中识别更安全的化学品

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A key focus of green product design is to reduce the product's inherent chemical hazard. Various alternative assessment methodologies may be used to compare the hazard properties of possible candidate chemicals. However, only a small fraction of the chemicals currently in commercial use are adequately characterized in terms of toxicological effects. This limitation can hamper the study of safer chemical alternatives and increase the likelihood of regrettable substitutions. Approaches for addressing such data gaps include read-across, in silico programs and high throughput in chemico and in silico assays. Each of these show considerable promise although a consensus on how to use them for hazard evaluation of data poor chemicals is lacking. The limitations of such tools, which attempt to simplify complex biology into key predictive factors, is also often underestimated. To evaluate currently available approaches for addressing data gaps, we established three test sets of chemicals, each with structural similarity to a target chemical (target chemical 1: 4-phenylenediamine, target chemical 2: hydroxyethyl acrylate, target chemical 3: methylisothiazolone). We first compared results from the in silico programs Toxtree and Derek Nexus with animal test data obtained using standard assays. We then compared chemical similarity scores calculated by two computational tools Toxmatch and ChemMine. Lastly, we refined our test sets by applying a series of exclusion criteria, including in silico analysis and physicochemical data relevant for skin sensitization (e.g., molecular weight, water solubility, and vapor pressure). The in silico programs in combination exhibited a sensitivity of 92% and specificity of 88%. Toxmatch and ChemMine demonstrated good agreement in their similarity score rankings across the three test sets (TS1: W = 0.74, p = 0.014; TS2: W = 0.72, p = 0.067; TS3: W = 0.87, p = 0.095). Narrowing our chemical test sets using physical chemical properties and in silico evaluation improved the overall accuracy of our read-across approach compared with the initial unrefined test sets (TS1: 56% improved to 100%; TS2: 54% to 100%; TS3: 50% to 100%). Our findings support the development of robust read-across approaches incorporating available data-gap filling tools to help conduct screening level alternatives assessments and identify safer chemicals as part of green product design.
机译:绿色产品设计的关键焦点是降低产品固有的化学危害。可以使用各种替代评估方法来比较可能的候选化学品的危害性质。然而,在毒理学效应方面只表征目前商业用途的一小部分化学品。这种限制可以妨碍对更安全的化学替代品的研究,增加令人遗憾的替代品的可能性。解决此类数据间隙的方法包括读数,在Silico程序和Chemico中的高吞吐量和Silico测定中。虽然如何对如何使用它们对数据的危害评估缺乏造成的危险化学品,但这些都表现出相当大的承诺。这种工具的局限性地试图将复杂生物学简化为关键预测因子,也经常被低估。为了评估当前可用的解决数据差距的方法,我们建立了三种测试化学品,每个化学品,每个化学物质与目标化学品(靶制化学品1:4-苯二胺,靶制化学物质2:丙烯酸羟乙酯,甲基异噻唑酮)结构相似。我们首先使用使用标准测定获得的动物测试数据与硅毒素毒素和Derek Nexus的结果进行比较。然后,我们比较了由两种计算工具托管和培养物计算的化学相似度分数。最后,我们通过应用一系列排除标准来改善我们的测试集,包括用于对皮肤敏化的硅分析和物理化学数据(例如,分子量,水溶性和蒸气压)。组合中的Silico程序表现出92%和特异性的敏感性88%。 ToxMatch和Chemmine在三个测试集中的相似性分数排名中展示了良好的一致性(TS1:W = 0.74,P = 0.014; TS2:W = 0.72,P = 0.067; TS3:W = 0.87,P = 0.095)。使用物理化学性质和硅评估缩小化学测试组,与初始未精确的测试组(TS1:56%改善为100%; TS2:54%至100%; TS3:TS3: 50%至100%)。我们的调查结果支持开发强大的读取方法,其中包含可用的数据间隙填充工具,以帮助进行筛选级别的评估,并将更安全的化学品识别为绿色产品设计的一部分。

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