Literature DB >> 26328949

In silico ADME/T modelling for rational drug design.

Yulan Wang1, Jing Xing1, Yuan Xu1, Nannan Zhou2, Jianlong Peng1, Zhaoping Xiong3, Xian Liu1, Xiaomin Luo1, Cheng Luo1, Kaixian Chen1, Mingyue Zheng1, Hualiang Jiang1.   

Abstract

In recent decades, in silico absorption, distribution, metabolism, excretion (ADME), and toxicity (T) modelling as a tool for rational drug design has received considerable attention from pharmaceutical scientists, and various ADME/T-related prediction models have been reported. The high-throughput and low-cost nature of these models permits a more streamlined drug development process in which the identification of hits or their structural optimization can be guided based on a parallel investigation of bioavailability and safety, along with activity. However, the effectiveness of these tools is highly dependent on their capacity to cope with needs at different stages, e.g. their use in candidate selection has been limited due to their lack of the required predictability. For some events or endpoints involving more complex mechanisms, the current in silico approaches still need further improvement. In this review, we will briefly introduce the development of in silico models for some physicochemical parameters, ADME properties and toxicity evaluation, with an emphasis on the modelling approaches thereof, their application in drug discovery, and the potential merits or deficiencies of these models. Finally, the outlook for future ADME/T modelling based on big data analysis and systems sciences will be discussed.

Entities:  

Keywords:  ADME/T; Drug Design; Pharmacokinetics; Predictive Toxicology; QSAR

Mesh:

Substances:

Year:  2015        PMID: 26328949     DOI: 10.1017/S0033583515000190

Source DB:  PubMed          Journal:  Q Rev Biophys        ISSN: 0033-5835            Impact factor:   5.318


  39 in total

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