Thomas Hartung, Alexandra Maertens, Thomas Luechtefeld
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引用次数: 0
Abstract
The validation of new approach methods (NAMs) in toxicology faces significant challenges, including the integration of diverse data, selection of appropriate reference chemicals, and lengthy, resource-intensive consensus processes. This article proposes an artificial intelligence (AI)-based approach, termed e-validation, to optimize and accelerate the NAM validation process. E-vali-dation employs advanced machine learning and simulation techniques to systematically design validation studies, select informative reference chemicals, integrate existing data, and provide tailored training. The approach aims to shorten current decade-long validation timelines, using fewer resources while enhancing rigor. Key components include the smart selection of reference chemicals using clustering algorithms, simulation of validation studies, mechanistic validation powered by AI, and AI-enhanced training for NAM education and implementation. A centralized dashboard interface could integrate these components, streamlining workflows and providing real-time decision support. The potential impacts of e-validation are extensive, promising to accel-erate biomedical research, enhance chemical safety assessment, reduce animal testing, and drive regulatory and commercial innovation. While the integration of AI and machine learning offers sig-nificant advantages, challenges related to data quality, complexity of implementation, scalability, and ethical considerations must be addressed. Real-world validation and pilot studies are crucial to demonstrate the practical benefits and feasibility of e-validation. This transformative approach has the potential to revolutionize toxicological science and regulatory practices, ushering in a new era of predictive, personalized, and preventive health sciences.
毒理学中新方法(NAM)的验证面临着巨大的挑战,包括整合各种数据、选择合适的参比化学品以及冗长、资源密集型的共识过程。本文提出了一种基于人工智能(AI)的方法,称为电子验证(e-validation),以优化和加速新方法验证过程。电子验证采用先进的机器学习和模拟技术,系统地设计验证研究、选择信息参考化学品、整合现有数据并提供量身定制的培训。该方法旨在缩短目前长达十年的验证时间,在提高严谨性的同时使用更少的资源。其主要组成部分包括利用聚类算法智能选择参考化学品、模拟验证研究、人工智能驱动的机理验证,以及人工智能增强的 NAM 教育和实施培训。集中式仪表板界面可以整合这些组件,简化工作流程并提供实时决策支持。电子验证的潜在影响非常广泛,有望加速生物医学研究、加强化学品安全评估、减少动物试验,并推动监管和商业创新。虽然人工智能和机器学习的整合具有显著优势,但必须解决与数据质量、实施复杂性、可扩展性和伦理考虑有关的挑战。现实世界的验证和试点研究对于证明电子验证的实际效益和可行性至关重要。这种变革性方法有可能彻底改变毒理学和监管实践,开创预测性、个性化和预防性健康科学的新时代。
期刊介绍:
ALTEX publishes original articles, short communications, reviews, as well as news and comments and meeting reports. Manuscripts submitted to ALTEX are evaluated by two expert reviewers. The evaluation takes into account the scientific merit of a manuscript and its contribution to animal welfare and the 3R principle.