College of Geography and Environmental Sciences, Zhejiang Normal University, Yingbin Avenue 688, 321004, Jinhua, PR China.
College of Geography and Environmental Sciences, Zhejiang Normal University, Yingbin Avenue 688, 321004, Jinhua, PR China.
Chemosphere. 2018 Jan;190:463-470. doi: 10.1016/j.chemosphere.2017.10.028. Epub 2017 Oct 5.
Organic chemicals in the aquatic ecosystem may inhibit algae growth and subsequently lead to the decline of primary productivity. Growth inhibition tests are required for ecotoxicological assessments for regulatory purposes. In silico study is playing an important role in replacing or reducing animal tests and decreasing experimental expense due to its efficiency. In this work, a series of theoretical models was developed for predicting algal growth inhibition (log EC) after 72 h exposure to diverse chemicals. In total 348 organic compounds were classified into five modes of toxic action using the Verhaar Scheme. Each model was established by using molecular descriptors that characterize electronic and structural properties. The external validation and leave-one-out cross validation proved the statistical robustness of the derived models. Thus they can be used to predict log EC values of chemicals that lack authorized algal growth inhibition values (72 h). This work systematically studied algal growth inhibition according to toxic modes and the developed model suite covers all five toxic modes. The outcome of this research will promote toxic mechanism analysis and be made applicable to structural diversity.
水生生态系统中的有机化学物质可能会抑制藻类生长,从而导致初级生产力下降。出于监管目的,需要进行生态毒理学评估的生长抑制测试。由于其效率,计算毒理学在替代或减少动物测试和降低实验成本方面发挥着重要作用。在这项工作中,开发了一系列理论模型,用于预测暴露于不同化学物质 72 小时后藻类生长抑制(log EC)。总共将 348 种有机化合物使用 Verhaar 方案分类为五种毒性作用模式。每个模型都是通过使用描述分子电子和结构特性的分子描述符建立的。外部验证和留一法交叉验证证明了推导模型的统计稳健性。因此,它们可用于预测缺乏授权的藻类生长抑制值(72 小时)的化学物质的 log EC 值。这项工作根据毒性模式系统地研究了藻类生长抑制,所开发的模型套件涵盖了所有五种毒性模式。这项研究的结果将促进毒理机制分析,并适用于结构多样性。