推进肝毒性评估:当前进展和未来方向。

IF 1.6 4区 医学 Q4 TOXICOLOGY
Toxicological Research Pub Date : 2025-04-24 eCollection Date: 2025-07-01 DOI:10.1007/s43188-025-00289-w
Yewon Kim, Hojin Kim, Yohan Kim
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引用次数: 0

摘要

在药物开发过程中,确保药物在靶细胞和器官中表现出有效的活性是至关重要的。然而,不管其有效性如何,如果一种药物在体内表现出毒性,就不能给病人服用。根据药代动力学,大多数药物在进入体内后被肝脏清除,只有剩余部分到达靶器官发挥治疗作用。因此,具有体内毒性的药物通常以肝毒性为初始症状。这凸显了药物开发中肝毒性评估的重要性。目前,肝毒性评估主要依赖于动物模型和原代人肝细胞。然而,在某些情况下,药物通过了这些评估,投放市场,后来又因为对患者的不可预见的毒性而被撤回。为了提高预测的准确性,新兴的肝毒性模型——包括先进的3D肝培养系统、基于人工智能的模型和改进的体外分析等计算机方法——正在获得极大的关注。这篇综述系统地比较了传统的二维模型、动物模型、器官芯片系统和计算模型,突出了它们的优势、局限性和预测可靠性。通过批判性地评估这些方法,我们提出了完善肝毒性评估策略的未来方向,重点是提高翻译相关性,减少对动物试验的依赖,并整合人工智能驱动的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing hepatotoxicity assessment: current advances and future directions.

During drug development, it is crucial to ensure that a drug exhibits effective activity in its target cells and organs. However, regardless of its effectiveness, a drug cannot be administered to patients if it exhibits toxicity in vivo. Based on pharmacokinetics, most drugs are cleared from the liver after entering the body, and only the remaining fraction reaches the target organ to exert therapeutic effects. Consequently, drugs with in vivo toxicity often manifest hepatotoxicity as an initial sign. This highlights the critical importance of hepatotoxicity assessment in drug development. Currently, hepatotoxicity assessments primarily rely on animal models and primary human hepatocytes. However, there are instances in which drugs pass these evaluations, are released to the market, and are later withdrawn because of unforeseen toxicity in patients. To enhance prediction accuracy, emerging hepatotoxicity models-including advanced 3D liver culture systems, in silico approaches such as AI-based models, and improved in vitro assays-are gaining significant attention. This review systematically compares conventional 2D models, animal models, organ-on-a-chip systems, and computational models, highlighting their advantages, limitations, and predictive reliability. By critically evaluating these methodologies, we propose future directions for refining hepatotoxicity assessment strategies, with an emphasis on enhancing translational relevance, reducing reliance on animal testing, and integrating AI-driven predictive models.

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来源期刊
CiteScore
4.20
自引率
4.30%
发文量
39
期刊介绍: Toxicological Research is the official journal of the Korean Society of Toxicology. The journal covers all areas of Toxicological Research of chemicals, drugs and environmental agents affecting human and animals, which in turn impact public health. The journal’s mission is to disseminate scientific and technical information on diverse areas of toxicological research. Contributions by toxicologists, molecular biologists, geneticists, biochemists, pharmacologists, clinical researchers and epidemiologists with a global view on public health through toxicological research are welcome. Emphasis will be given to articles providing an understanding of the toxicological mechanisms affecting animal, human and public health. In the case of research articles using natural extracts, detailed information with respect to the origin, extraction method, chemical profiles, and characterization of standard compounds to ensure the reproducible pharmacological activity should be provided.
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