Dipartimento di Farmacia - Scienze del Farmaco, Università degli Studi di Bari "Aldo Moro", Bari, Italy.
ALTEX. 2014;31(1):23-36. doi: 10.14573/altex.1305221. Epub 2013 Nov 13.
The REACH (Registration, Evaluation, Authorization and restriction of Chemicals) and BPR (Biocide Product Regulation) regulations strongly promote the use of non-animal testing techniques to evaluate chemical risk. This has renewed the interest towards alternative methods such as QSAR in the regulatory context. The assessment of Bioconcentration Factor (BCF) required by these regulations is expensive, in terms of costs, time, and laboratory animal sacrifices. Herein, we present QSAR models based on the ANTARES dataset, which is a large collection of known and verified experimental BCF data. Among the models developed, the best results were obtained from a nine-descriptor highly predictive model. This model was derived from a training set of 608 chemicals and challenged against a validation and blind set containing 152 and 76 chemicals. The model's robustness was further controlled through several validation strategies and the implementation of a multi-step approach for the applicability domain. Suitable safety margins were used to increase sensitivity. The easy interpretability of the model is ensured by the use of meaningful biokinetics descriptors. The satisfactory predictive power for external compounds suggests that the new models could represent a reliable alternative to the in vivo assay, helping the registrants to fulfill regulatory requirements in compliance with the ethical and economic necessity to reduce animal testing.
REACH(注册、评估、授权和限制化学品)和 BPR(生物杀灭剂产品法规)法规强烈提倡使用非动物测试技术来评估化学风险。这重新激发了人们对替代方法的兴趣,例如在监管环境中的定量构效关系(QSAR)。这些法规要求评估生物浓缩系数(BCF),这在成本、时间和实验室动物牺牲方面都很昂贵。在此,我们提出了基于 ANTARES 数据集的 QSAR 模型,该数据集是大量已知和验证的实验 BCF 数据的集合。在所开发的模型中,最好的结果来自于具有高预测能力的九个描述符模型。该模型源自包含 608 种化学品的训练集,并针对包含 152 种和 76 种化学品的验证集和盲数据集进行了挑战。该模型的稳健性还通过多种验证策略和应用领域的多步方法的实施进行了控制。合适的安全裕度用于提高灵敏度。通过使用有意义的生物动力学描述符来确保模型易于解释。对于外部化合物具有令人满意的预测能力表明,新模型可以作为体内测定的可靠替代方法,帮助注册人满足法规要求,同时遵守减少动物测试的伦理和经济必要性。