Department of Electronics and Information Engineering, Jeonbuk National University, Jeonju 54896, Republic of Korea.
Department of Information Technology, An Giang University, Long Xuyen 880000, Vietnam.
Int J Mol Sci. 2023 Jan 17;24(3):1815. doi: 10.3390/ijms24031815.
Drug distribution is an important process in pharmacokinetics because it has the potential to influence both the amount of medicine reaching the active sites and the effectiveness as well as safety of the drug. The main causes of 90% of drug failures in clinical development are lack of efficacy and uncontrolled toxicity. In recent years, several advances and promising developments in drug distribution property prediction have been achieved, especially in silico, which helped to drastically reduce the time and expense of screening undesired drug candidates. In this study, we provide comprehensive knowledge of drug distribution background, influencing factors, and artificial intelligence-based distribution property prediction models from 2019 to the present. Additionally, we gathered and analyzed public databases and datasets commonly utilized by the scientific community for distribution prediction. The distribution property prediction performance of five large ADMET prediction tools is mentioned as a benchmark for future research. On this basis, we also offer future challenges in drug distribution prediction and research directions. We hope that this review will provide researchers with helpful insight into distribution prediction, thus facilitating the development of innovative approaches for drug discovery.
药物分布是药代动力学中的一个重要过程,因为它有可能影响到达作用部位的药物数量以及药物的有效性和安全性。在临床开发中,导致 90%的药物失败的主要原因是缺乏疗效和无法控制的毒性。近年来,药物分布性质预测方面取得了一些进展和有前景的发展,特别是在计算机模拟方面,这极大地减少了筛选不理想药物候选物的时间和成本。在本研究中,我们提供了从 2019 年至今药物分布背景、影响因素和基于人工智能的分布性质预测模型的全面知识。此外,我们还收集和分析了科学界常用的公共数据库和数据集,用于分布预测。作为未来研究的基准,我们还提到了五个大型 ADMET 预测工具的分布性质预测性能。在此基础上,我们还提出了药物分布预测的未来挑战和研究方向。我们希望这篇综述能为研究人员提供有关分布预测的有用见解,从而为药物发现的创新方法的发展提供便利。