Department of Pharmacy, University of Pisa, 56126 Pisa, Italy.
Department of Life Sciences, University of Siena, 53100 Siena, Italy.
Int J Mol Sci. 2022 Feb 14;23(4):2105. doi: 10.3390/ijms23042105.
The use of in silico toxicity prediction methods plays an important role in the selection of lead compounds and in ADMET studies since in vitro and in vivo methods are often limited by ethics, time, budget and other resources. In this context, we present our new web tool VenomPred, a user-friendly platform for evaluating the potential mutagenic, hepatotoxic, carcinogenic and estrogenic effects of small molecules. VenomPred platform employs several in-house Machine Learning (ML) models developed with datasets derived from VEGA QSAR, a software that includes a comprehensive collection of different toxicity models and has been used as a reference for building and evaluating our ML models. The results showed that our models achieved equal or better performance than those obtained with the reference models included in VEGA QSAR. In order to improve the predictive performance of our platform, we adopted a consensus approach combining the results of different ML models, which was able to predict chemical toxicity better than the single models. This improved method was thus implemented in the VenomPred platform, a freely accessible webserver that takes the SMILES (Simplified Molecular-Input Line-Entry System) strings of the compounds as input and sends the prediction results providing a probability score about their potential toxicity.
在先导化合物的选择和 ADMET 研究中,计算机毒性预测方法的应用起着重要作用,因为体外和体内方法通常受到伦理、时间、预算和其他资源的限制。在这种情况下,我们提出了我们的新网络工具 VenomPred,这是一个用于评估小分子潜在致突变性、肝毒性、致癌性和雌激素效应的用户友好平台。VenomPred 平台采用了几个内部机器学习 (ML) 模型,这些模型是使用来自 VEGA QSAR 的数据集开发的,VEGA QSAR 是一个包含多种毒性模型的综合软件,已被用作构建和评估我们的 ML 模型的参考。结果表明,我们的模型在性能上与 VEGA QSAR 中包含的参考模型相当或更好。为了提高我们平台的预测性能,我们采用了一种结合不同 ML 模型结果的共识方法,该方法能够比单个模型更好地预测化学毒性。这种改进的方法随后在 VenomPred 平台中实现,该平台是一个免费访问的网络服务器,它接受化合物的 SMILES(简化分子输入行输入系统)字符串作为输入,并发送预测结果,提供关于其潜在毒性的概率评分。