Department of Pharmacy, First Affiliated Hospital of Dalian Medical University, Dalian 116011, China.
Department of Pharmacy, Dalian Women and Children's Medical Group, Dalian 116024, China.
Molecules. 2023 Aug 8;28(16):5936. doi: 10.3390/molecules28165936.
With the advancement of computer technology, machine learning-based artificial intelligence technology has been increasingly integrated and applied in the fields of medicine, biology, and pharmacy, thereby facilitating their development. Transporters have important roles in influencing drug resistance, drug-drug interactions, and tissue-specific drug targeting. The investigation of drug transporter substrates and inhibitors is a crucial aspect of pharmaceutical development. However, long duration and high expenses pose significant challenges in the investigation of drug transporters. In this review, we discuss the present situation and challenges encountered in applying machine learning techniques to investigate drug transporters. The transporters involved include ABC transporters (P-gp, BCRP, MRPs, and BSEP) and SLC transporters (OAT, OATP, OCT, MATE1,2-K, and NET). The aim is to offer a point of reference for and assistance with the progression of drug transporter research, as well as the advancement of more efficient computer technology. Machine learning methods are valuable and attractive for helping with the study of drug transporter substrates and inhibitors, but continuous efforts are still needed to develop more accurate and reliable predictive models and to apply them in the screening process of drug development to improve efficiency and success rates.
随着计算机技术的进步,基于机器学习的人工智能技术已经越来越多地集成并应用于医学、生物学和药学领域,从而促进了这些领域的发展。转运体在影响药物耐药性、药物相互作用和组织特异性药物靶向方面发挥着重要作用。研究药物转运体的底物和抑制剂是药物开发的重要方面。然而,研究药物转运体的时间长、费用高,这是一个巨大的挑战。在这篇综述中,我们讨论了将机器学习技术应用于研究药物转运体所面临的现状和挑战。所涉及的转运体包括 ABC 转运体(P-gp、BCRP、MRPs 和 BSEP)和 SLC 转运体(OAT、OATP、OCT、MATE1/2-K 和 NET)。目的是为药物转运体研究的进展以及更高效的计算机技术的发展提供参考和帮助。机器学习方法在帮助研究药物转运体的底物和抑制剂方面具有价值和吸引力,但仍需要不断努力开发更准确、可靠的预测模型,并将其应用于药物开发的筛选过程中,以提高效率和成功率。