Suzuki Sho, Mizumachi Hideyuki, Miyazawa Masaaki
Safety Science Research, Kao Corporation, Tochigi, Japan.
J Appl Toxicol. 2025 Apr;45(4):620-635. doi: 10.1002/jat.4737. Epub 2024 Dec 2.
In recent years, nonanimal approaches for skin sensitization have been developed in response to political, regulatory, and ethical demands. The reconstructed human epidermis (RhE)-based testing strategy (RTS)v1-defined approach (DA) is used to categorize skin sensitization potency. However, the RTSv1 DA alone cannot be used to predict potency based on EC3 values [the estimated concentration that produces a stimulation index of 3 in the local lymph node assay (LLNA)], and underpredictions have been reported. Read-across (RAx) can complement DA data and improve prediction confidence. Although case studies combining new approach methodology/DA data with RAx have been reported, they focus on a single target chemical and lack a comprehensive and robust strategy with well-examined reliability. This study developed a strategy incorporating the RTSv1 DA into RAx (RTSv1-based RAx) to predict skin sensitization potency, applying it to 43 chemicals. The predictive performance of RTSv1-based RAx was evaluated by comparing its predicted potency category and EC3 outcomes with those of RTSv1 DA and the LLNA. RTSv1-based RAx accurately predicted the Globally Harmonized System of Classification (GHS) subcategorization for 38 chemicals and determined the predicted EC3 values for 17 sensitizers within a fourfold range of LLNA-derived EC3 values. This study demonstrates that RTSv1-based RAx offers robust predictivity for both GHS subcategorization and predicted EC3 values, making it useful for quantitative risk assessment.
近年来,为响应政治、监管和伦理要求,已开发出用于皮肤致敏的非动物方法。基于重组人表皮(RhE)的测试策略(RTS)v1定义方法(DA)用于对皮肤致敏潜力进行分类。然而,仅RTSv1 DA不能用于根据EC3值[在局部淋巴结试验(LLNA)中产生刺激指数为3的估计浓度]预测潜力,并且已有报道存在预测不足的情况。类推(RAx)可以补充DA数据并提高预测可信度。尽管已经报道了将新方法学/DA数据与RAx相结合的案例研究,但它们专注于单一目标化学品,缺乏经过充分检验可靠性的全面且稳健的策略。本研究开发了一种将RTSv1 DA纳入RAx(基于RTSv1的RAx)的策略来预测皮肤致敏潜力,并将其应用于43种化学品。通过将基于RTSv1的RAx预测的潜力类别和EC3结果与RTSv1 DA和LLNA的结果进行比较,评估了基于RTSv1的RAx的预测性能。基于RTSv1的RAx准确预测了38种化学品的全球协调分类系统(GHS)子分类,并在LLNA衍生的EC3值的四倍范围内确定了17种致敏剂的预测EC3值。本研究表明,基于RTSv1的RAx对GHS子分类和预测的EC3值均具有强大的预测能力,使其可用于定量风险评估。