Toxicoinformatics group, Department of predictive toxicology, Korea institute of toxicology, Daejeon 34114, Republic of Korea.
Bio-system Research Group, Department of Predictive Toxicology, Korea Institute of Toxicology, Daejeon, 34114, Republic of Korea.
Chemosphere. 2021 Aug;277:130330. doi: 10.1016/j.chemosphere.2021.130330. Epub 2021 Mar 18.
Biocidal products are broadly used in homes and industries. However, the safety of biocidal active substances (BASs) is not yet fully understood. In particular, the neurotoxic action of BASs needs to be studied as diverse epidemiological studies have reported associations between exposure to BASs and neural diseases. In this study, we developed in silico models to predict the blood-brain barrier (BBB) permeation of organic and inorganic BASs. Due to a lack of BBB data for BASs, the chemical space of BASs and BBB dataset were compared in order to select BBB data that were structurally similar to BASs. In silico models to predict log-scaled BBB penetration were developed using support vector regression for organic BASs and multiple linear regression for inorganic BASs. The model for organic BASs was developed with 231 compounds (training set: 153 and test set: 78) and achieved good prediction accuracy on an external test set (R = 0.64), and the model outperformed the model for pharmaceuticals. The model for inorganic BASs was developed with 11 compounds (R = 0.51). Applicability domain (AD) analysis of the models clarified molecular structures reliably predicted by the models. Therefore, the models developed in this study can be used for predicting BBB permeable BASs in human. These models were developed according to the Quantitative Structure-Activity Relationship validation principles proposed by the Organization for Economic Cooperation and Development.
杀菌产品在家庭和工业中被广泛使用。然而,杀菌活性物质(BASs)的安全性尚未完全了解。特别是需要研究 BASs 的神经毒性作用,因为各种流行病学研究报告了接触 BASs 与神经疾病之间的关联。在这项研究中,我们开发了计算模型来预测有机和无机 BASs 的血脑屏障(BBB)渗透。由于缺乏 BASs 的 BBB 数据,因此比较了 BASs 的化学空间和 BBB 数据集,以选择与 BASs 结构相似的 BBB 数据。使用支持向量回归为有机 BASs 和多元线性回归为无机 BASs 开发了预测对数 BBB 穿透的计算模型。有机 BASs 的模型使用 231 种化合物进行开发(训练集:153 种,测试集:78 种),并在外部测试集上实现了良好的预测准确性(R=0.64),该模型优于药物模型。无机 BASs 的模型使用 11 种化合物进行开发(R=0.51)。模型的适用性域(AD)分析澄清了模型可靠预测的分子结构。因此,本研究中开发的模型可用于预测人类中 BBB 可渗透的 BASs。这些模型是根据经济合作与发展组织提出的定量构效关系验证原则开发的。