The Hamner-UNC Institute for Drug Safety Sciences, The Hamner Institutes, Research Triangle Park, NC, 27709, USA.
Biopharm Drug Dispos. 2014 Jan;35(1):33-49. doi: 10.1002/bdd.1878. Epub 2013 Nov 25.
The drug development industry faces multiple challenges in the realization of safe effective drugs. Computational modeling approaches can be used to support these efforts. One approach, mechanistic modeling, is new to the realm of drug safety. It holds the promise of not only predicting toxicity for novel compounds, but also illuminating the mechanistic underpinnings of toxicity. To increase the scientific community's familiarity with mechanistic modeling in drug safety, this article seeks to provide perspective on the type of data used, how they are used and where they are lacking. Examples are derived from the development of DILIsym(®) software, a mechanistic model of drug-induced liver injury (DILI). DILIsym(®) simulates the mechanistic interactions and events from compound administration through the progression of liver injury and regeneration. Modeling mitochondrial toxicity illustrates the type and use of in vitro data to represent biological interactions, as well as insights on key differences between in vitro and in vivo conditions. Modeling bile acid toxicity illustrates a case in which the over-arching mechanism is well accepted, but many mechanistic details are lacking. Modeling was used to identify measurements predicted to strongly impact toxicity. Finally, modeling innate immune responses illustrates the importance of time-series data, particularly in the presence of positive and negative feedback loops, as well as the need for data from different animal species for better translation. These concepts are germane to most mechanistic models, although the details will vary. The use of mechanistic models is expected to improve the rational design of new drugs.
药物研发行业在实现安全有效的药物方面面临诸多挑战。计算建模方法可用于支持这些努力。一种方法是机制建模,它是药物安全领域的新方法。它不仅有望预测新型化合物的毒性,还能阐明毒性的机制基础。为了提高科学界对药物安全中机制建模的熟悉程度,本文旨在提供有关用于此类建模的各类数据、如何使用这些数据以及数据的不足之处。本文将从 DILIsym(®)软件的开发中获取示例,该软件是一种药物性肝损伤(DILI)的机制模型。DILIsym(®)通过模拟化合物给药、肝损伤和再生的进展来模拟药物诱导的肝损伤的机制相互作用和事件。对线粒体毒性的建模说明了如何使用和缺少体外数据来代表生物学相互作用,以及阐明了体外和体内条件之间的关键差异。对胆汁酸毒性的建模说明了一种情况,即总体机制已被广泛接受,但许多机制细节尚不清楚。建模用于识别被预测对毒性有重大影响的测量指标。最后,对先天免疫反应的建模说明了时间序列数据的重要性,特别是在存在正反馈和负反馈回路的情况下,以及为了更好地转化,需要来自不同动物物种的数据。虽然具体细节会有所不同,但这些概念与大多数机制模型都相关。预计使用机制模型将改善新药的合理设计。