Department of Chemistry, University of Iowa, Iowa City, Iowa 52242, United States.
Institute of Biogeochemistry and Pollutant Dynamics, ETH Zurich, 8092 Zurich, Switzerland.
Environ Sci Technol. 2021 Nov 2;55(21):14658-14666. doi: 10.1021/acs.est.1c04659. Epub 2021 Oct 12.
There is growing interest in the fate and effects of transformation products generated from emerging pollutant classes, and new tools that help predict the products most likely to form will aid in risk assessment. Here, using a family of structurally related steroids (enones, dienones, and trienones), we evaluate the use of density functional theory to help predict products from reaction with chlorine, a common chemical disinfectant. For steroidal dienones (e.g., dienogest) and trienones (e.g., 17β-trenbolone), computational data support that reactions proceed through spontaneous C4 chlorination to yield 4-chloro derivatives for trienones and, after further reaction, 9,10-epoxide structures for dienones. For testosterone, a simple steroidal enone, in silico predictions suggest that C4 chlorination is still most likely, but slow at environmentally relevant conditions. Predictions were then assessed through laboratory chlorination reactions (0.5-5 mg Cl/L) with product characterization via HRMS and NMR, which confirmed near exclusive 4-chloro and 9,10-epoxide products for most trienones and all dienones, respectively. Also consistent with computational expectations, testosterone was effectively unreactive at these same chlorine levels, although products consistent with in silico predictions were observed at higher concentrations (in excess of 500 mg Cl/L). Although slight deviations from in silico predictions were observed for steroids with electron-rich substituents (e.g., C17 allyl-substituted altrenogest), this work highlights the potential for computational approaches to improve our understanding of transformation products generated from emerging pollutant classes.
人们对新兴污染物类别的转化产物的命运和影响越来越感兴趣,并且有助于预测最有可能形成的产物的新工具将有助于风险评估。在这里,我们使用一组结构相关的类固醇(烯酮、二烯酮和三烯酮),评估使用密度泛函理论来帮助预测与氯反应的产物,氯是一种常见的化学消毒剂。对于甾体二烯酮(如地诺孕素)和三烯酮(如 17β-群勃龙),计算数据支持反应通过自发的 C4 氯化进行,生成三烯酮的 4-氯衍生物,并且对于二烯酮,进一步反应生成 9,10-环氧化物结构。对于睾酮,一种简单的甾体烯酮,计算预测表明 C4 氯化仍然最有可能,但在环境相关条件下反应速度较慢。然后通过实验室氯化反应(0.5-5 mg Cl/L)和 HRMS 和 NMR 进行产物表征来评估预测,这证实了大多数三烯酮和所有二烯酮分别主要为 4-氯和 9,10-环氧化物产物。与计算预期一致,睾酮在相同的氯水平下实际上是不可反应的,尽管在更高的浓度(超过 500 mg Cl/L)下观察到与计算预测一致的产物。尽管对于具有富电子取代基的类固醇(例如,C17 烯丙基取代的孕三烯酮)观察到与计算预测略有偏差,但这项工作强调了计算方法在提高对新兴污染物类别的转化产物的理解方面的潜力。