Role of ADME characteristics in drug discovery and their in silico evaluation:: In silico screening of chemicals for their metabolic stability

被引:62
作者
Gombar, VK
Silver, IS
Zhao, ZY
机构
关键词
D O I
10.2174/1568026033452014
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
Drug discovery is a long. arduous process broadly grouped into disease target identification, target validation. high-throughput identification of "hits" and "leads", lead optimization, and pre-clinical and clinical evaluation. Each area is a vast discipline ill itself. However, all but the first two stages involve, to varying degrees, the characterization of absorption, distribution, metabolism, excretion, (ADME), and toxicity (T) of the molecules being pursued as potential drug candidates. Clinical failures of about 50% of the Investigational New Drug (IND) filings are attributed to their inadequate ADMET attributes. It is, therefore, no surprise that, in the current climate of social and regulatory pressure on healthcare costs, the pharmaceutical industry is searching for any means to minimize this attrition. Building mathematical models. called ill silico screens, to reliably predict ADMET attributes solely from molecular structure is at the heart of this effort in reducing costs as well as development cycle times. This article reviews the emerging field Of 117 silico evaluation of ADME characteristics. For different approaches that have been employed it) this area, a critique of the scope and limitations of their descriptors, statistical methods, and reliability are presented. For instance, are geometry-based descriptors absolutely essential or is lower-level structure quantification equally good? What advantages, if ally, do we have for methods like artificial neural networks over the cast squares optimization methods with rigorous statistical diagnostics? Is any in silico screen worth application, let alone interpretation, if it is not adequately validated? Once deemed acceptable.. what good is all in silico screen if it cannot be made available at the workbench of drug discovery teams distributed across the globe throughout multi-national pharmaceutical companies? These are not mere discussion points, rather this article embarks on the stepwise mechanics of developing a successful in silico screen. The process is exemplified by our efforts in developing one such screen for predicting metabolic stability of chemicals in a human S9 liver homogenate assay. A real-life use of this in silico screen in a variety of discovery projects at GlaxoSmithKline is presented, highlighting successes and limitations of such applications. Finally, we project some capabilities of in silico ADME tools for greater impact and contribution to successful, efficient drug discovery.
引用
收藏
页码:1205 / 1225
页数:21
相关论文
共 136 条
[1]   On the partition of ampholytes: Application to blood-brain distribution [J].
Abraham, MH ;
TakacsNovak, K ;
Mitchell, RC .
JOURNAL OF PHARMACEUTICAL SCIENCES, 1997, 86 (03) :310-315
[2]   HYDROGEN-BONDING .33. FACTORS THAT INFLUENCE THE DISTRIBUTION OF SOLUTES BETWEEN BLOOD AND BRAIN [J].
ABRAHAM, MH ;
CHADHA, HS ;
MITCHELL, RC .
JOURNAL OF PHARMACEUTICAL SCIENCES, 1994, 83 (09) :1257-1268
[3]  
Adams MJ., 1995, CHEMOMETRICS ANAL SP
[4]   A UNIFIED FRAMEWORK FOR USING NEURAL NETWORKS TO BUILD QSARS [J].
AJAY .
JOURNAL OF MEDICINAL CHEMISTRY, 1993, 36 (23) :3565-3571
[5]   Structure-toxicity relationships for selected halogenated aliphatic chemicals [J].
Akers, KS ;
Sinks, GD ;
Schultz, TW .
ENVIRONMENTAL TOXICOLOGY AND PHARMACOLOGY, 1999, 7 (01) :33-39
[6]   Predicting human oral bioavailability of a compound: Development of a novel quantitative structure-bioavailability relationship [J].
Andrews, CW ;
Bennett, L ;
Yu, LX .
PHARMACEUTICAL RESEARCH, 2000, 17 (06) :639-644
[7]   Caco-2 monolayers in experimental and theoretical predictions of drug transport [J].
Artursson, P ;
Palm, K ;
Luthman, K .
ADVANCED DRUG DELIVERY REVIEWS, 1996, 22 (1-2) :67-84
[8]  
Atkinson A. C., 1985, Plots, transformations, and regression: An introduction to graphical methods of diagnostic regression analysis, P282
[9]   The use of in vitro methods to predict in vivo pharmacokinetics and drug interactions [J].
Bachmann, KA ;
Ghosh, R .
CURRENT DRUG METABOLISM, 2001, 2 (03) :299-314
[10]   Predicting blood-brain transport of drugs: A computational approach [J].
Basak, SC ;
Gute, BD ;
Drewes, LR .
PHARMACEUTICAL RESEARCH, 1996, 13 (05) :775-778