Scheufen Tieghi Ricardo, Moreira-Filho José Teófilo, Martin Holli-Joi, Wellnitz James, Otoch Miguel Canamary, Rath Marielle, Tropsha Alexander, Muratov Eugene N, Kleinstreuer Nicole
National Toxicology Program Interagency Center for Evaluation of Alternative Toxicological Methods (NICEATM), Division of Translational Toxicology, National Institute of Environmental Health Sciences, Research Triangle Park, Durham, NC 27711, USA.
UNC Eshelman School of Pharmacy, University of North Carolina, Chapel Hill, NC 27514, USA.
Toxics. 2024 Nov 7;12(11):803. doi: 10.3390/toxics12110803.
Skin sensitization is a significant concern for chemical safety assessments. Traditional animal assays often fail to predict human responses accurately, and ethical constraints limit the collection of human data, necessitating a need for reliable in silico models of skin sensitization prediction. This study introduces HuSSPred, an in silico tool based on the Human Predictive Patch Test (HPPT). HuSSPred aims to enhance the reliability of predicting human skin sensitization effects for chemical agents to support their regulatory assessment. We have curated an extensive HPPT database and performed chemical space analysis and grouping. Binary and multiclass QSAR models were developed with Bayesian hyperparameter optimization. Model performance was evaluated via five-fold cross-validation. We performed model validation with reference data from the Defined Approaches for Skin Sensitization (DASS) app. HuSSPred models demonstrated strong predictive performance with CCR ranging from 55 to 88%, sensitivity between 48 and 89%, and specificity between 37 and 92%. The positive predictive value (PPV) ranged from 84 to 97%, versus negative predictive value (NPV) from 22 to 65%, and coverage was between 75 and 93%. Our models exhibited comparable or improved performance compared to existing tools, and the external validation showed the high accuracy and sensitivity of the developed models. HuSSPred provides a reliable, open-access, and ethical alternative to traditional testing for skin sensitization. Its high accuracy and reasonable coverage make it a valuable resource for regulatory assessments, aligning with the 3Rs principles. The publicly accessible HuSSPred web tool offers a user-friendly interface for predicting skin sensitization based on chemical structure.
皮肤致敏是化学安全评估中的一个重要问题。传统的动物试验往往无法准确预测人类反应,且伦理限制也限制了人类数据的收集,因此需要可靠的皮肤致敏预测计算机模型。本研究介绍了HuSSPred,这是一种基于人类预测性斑贴试验(HPPT)的计算机工具。HuSSPred旨在提高对化学物质人类皮肤致敏效应预测的可靠性,以支持其监管评估。我们精心策划了一个广泛的HPPT数据库,并进行了化学空间分析和分组。利用贝叶斯超参数优化开发了二元和多类定量构效关系(QSAR)模型。通过五折交叉验证评估模型性能。我们使用来自皮肤致敏定义方法(DASS)应用程序的参考数据进行模型验证。HuSSPred模型表现出强大的预测性能,正确分类率(CCR)在55%至88%之间,灵敏度在48%至89%之间,特异性在37%至92%之间。阳性预测值(PPV)在84%至97%之间,阴性预测值(NPV)在22%至65%之间,覆盖率在75%至93%之间。与现有工具相比,我们的模型表现出相当或更好的性能,外部验证表明所开发模型具有很高的准确性和灵敏度。HuSSPred为传统的皮肤致敏测试提供了一种可靠、开放获取且符合伦理的替代方法。其高准确性和合理的覆盖率使其成为监管评估的宝贵资源,符合3R原则。公开可用的HuSSPred网络工具提供了一个用户友好的界面,可根据化学结构预测皮肤致敏情况。