This handbook provides the first-ever inside view of today's integrated approach to rational drug design. Chemoinformatics experts from large pharmaceutical companies, as well as from chemoinformatics service providers and from academia demonstrate what can be achieved today by harnessing the power of computational methods for the drug discovery process.
With the user rather than the developer of chemoinformatics software in mind, this book describes the successful application of computational tools to real-life problems and presents solution strategies to commonly encountered problems. It shows how almost every step of the drug discovery pipeline can be optimized and accelerated by using chemoinformatics tools -- from the management of compound databases to targeted combinatorial synthesis, virtual screening and efficient hit-to-lead transition.
An invaluable resource for drug developers and medicinal chemists in academia and industry.
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Tudor I. Oprea is Professor of Biochemistry and Molecular Biology and Chief, Division of Biocomputing at the University of New Mexico School of Medicine, Albuquerque (USA). He was born in Timisoara (Romania) where he did all his studies including his Ph.D. thesis under the supervision of Francisc Schneider. He was a post-doctoral fellow at Washington University with Garland Marshall, and Los Alamos National Laboratory with Angel Garcia. He worked six years at AstraZeneca in Mölndal (Sweden), before moving to New Mexico as full Professor in 2002. He received the Hansch Award from the QSAR and Modeling Society in 2002. He is interested in chemoinformatics, virtual screening, QSAR, and lead and drug discovery.
Chemoinformatics experts from large pharmaceutical companies, as well as from chemoinformatics service providers and from academia demonstrate what can be achieved today by harnessing the power of computational methods for the drug discovery process. From the contents: * Chemoinformatics in Lead Discovery * Molecular Complexity and Screening Set Design * Algorithmic Engines in Virtual Screening * Pharmacophore-Based Virtual Screening * Enhancing Hit Quality and Diversity * Molecular Diversity in Lead Discovery * In Silico Lead Optimization * Using Databases and Libraries * Combinational Libraries Based on Privileged Substructures * Strategies for Directed Compound Acquisition * Predictive QSAR Models in Database Mining * Drug Discovery in Academia - a Case Study With the user rather than the developer of chemoinformatics software in mind, the successful application of computational tools for commonly encountered tasks is described in detail, and numerous real life examples are given. An invaluable resource for drug developers and medicinal chemists in academia and industry.
Chemoinformatics experts from large pharmaceutical companies, as well as from chemoinformatics service providers and from academia demonstrate what can be achieved today by harnessing the power of computational methods for the drug discovery process.
From the contents:
* Chemoinformatics in Lead Discovery
* Molecular Complexity and Screening Set Design
* Algorithmic Engines in Virtual Screening
* Pharmacophore-Based Virtual Screening
* Enhancing Hit Quality and Diversity
* Molecular Diversity in Lead Discovery
* In Silico Lead Optimization
* Using Databases and Libraries
* Combinational Libraries Based on Privileged Substructures
* Strategies for Directed Compound Acquisition
* Predictive QSAR Models in Database Mining
* Drug Discovery in Academia - a Case Study
With the user rather than the developer of chemoinformatics software in mind, the successful application of computational tools for commonly encountered tasks is described in detail, and numerous real life examples are given. An invaluable resource for drug developers and medicinal chemists in academia and industry.
Garland R. Marshall
1.1 Introduction
The first issue to be discussed is the definition of the topic. What is chemoinformatics and why should you care? There is no clear definition, although a consensus view appears to be emerging. "Chemoinformatics is the mixing of those information resources to transform data into information and information into knowledge for the intended purpose of making better decisions faster in the area of drug lead identification and organization" according to one view. Hann and Green suggest that chemoinformatics is simply a new name for an old problem, a viewpoint I share. There are sufficient reviews and even a book by Leach and Gillet with the topic as their focus that there is little doubt what is meant, despite the absence of a precise definition that is generally accepted.
One aspect of a new emphasis is the sheer magnitude of chemical information that must be processed. For example, Chemical Abstracts Service adds over three-quarters of a million new compounds to its database annually, for which large amounts of physical and chemical property data are available. Some groups generate hundreds of thousands to millions of compounds on a regular basis through combinatorial chemistry that are screened for biological activity. Even more compounds are generated and screened in silico in the search for a magic bullet for a given disease. Either one of the two processes for generating information about chemistry has its own limitations. Experimental approaches have practical limitations despite automation; each in vitro bioassay utilizes a finite amount of reagents including valuable cloned and expressed receptors. Computational chemistry has to establish relevant criteria by which to select compounds of interest for synthesis and testing. The accuracy of prediction of affinities with current methodology is just now approaching sufficient accuracy to be of utility.
Let me emphasize the magnitude of the problem with a simple example. I was once asked to estimate the number of compounds covered by a typical issued patent for a drug of commercial interest. The patent that I selected to analyze was for enalapril, a prominent prodrug ACE inhibitor with a well-established commercial market. Given the parameters as outlined in the patent covering enalapril, an estimation of the total number of compounds included in the generic claim for enalaprilat, the active ingredient, was made. The following is the reference formula as described by the patent and simplified with [R.sub.6] = OH, and [R.sub.2] and [R.sub.7] = H:
Thus, one can simply enumerate the members of each class of substituent and combine them combinatorially. The following details the manner in which the number of each substituent was determined with the help of Chris Ho (Marshall and Ho, unpublished).
Substituent R: R is described as a lower alkoxy. The patent states that substituents are "otherwise represented by any of the variables including straight and branched chain hydrocarbon radicals from one to six carbon atoms, for example, methyl, ethyl, isopentyl, hexyl or vinyl, allyl, butenyl and the like." DBMAKER was used to generate a database of compounds containing any combination of one to six carbon atoms, interspersed with occasional double and triple bonds, as well as all possible branching patterns. Constraints were employed to forbid the generation of chemically impossible constructs. Concord 3.01 was used to generate and validate the chemical integrity of all compounds. 290 unique substituents were generated as a minimal estimate. Substituent R3: This substituent is identical to substituent R, only that it is an alkyl instead of an alkoxy. Again, 290 unique substituents of six or fewer carbon atoms were generated.
Substituent R1: R1 is described as a substituted lower alkyl wherein the substituent is a phenyl group. The patent is vague with regard to where this phenyl group should reside. If the phenyl group always resides at the carbon farthest away from the main chain, then again, 290 different substituents will result. However, if the phenyl group can reside anywhere along the 1- to 6-member chain, then approximately 1000 substituents are chemically and sterically possible.
Substituents R4 & R5: These two substituents are described by the patent as being lower alkyl groups, which may be linked to form a cyclic 4- to 6-membered ring in this position. This produces two scenarios: if these groups remain unlinked, then, as before, 290 substituents are found at each position.
To determine the number of possible compounds when R4 and R5 are cyclized, a different approach was used. The patent states, "R4 and R5 when joined through the carbon and nitrogen atoms to which they are attached form a 4- to 6-membered ring". Preferred ring has the formula:
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
The patent is again vague in describing the generation of these cyclic systems. However, given that R4 and R5 are each 1-6 carbon alkyl groups with various branching patterns that are linked together, what results is a 4- to 6-membered ring system that may contain none, one or two side chains depending upon how R4 and R5 are connected. The overall requirement is that the total number of atoms comprising this ring system be less than or equal to 12.
To construct these ring systems, two databases were generated. The first database ("ring database") contained three compounds - a 4-, 5- and 6-membered ring as specified by the patent. The second database ("side-chain database") was constructed by cleaving each of the 290 alkyl compounds in half. One would assume that the first half of the alkyl chain would generate the ring, leaving the second half to dangle and form a side chain. A program DBCROSS (Ho, unpublished) was then used to join one compound from the ring database with up to two structures from the side-chain database at chemically appropriate substitution sites. Again, the overall requirement was that the number of atoms be less than or equal to 12. Approximately 4100 different cyclic systems were generated in this manner.
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII]
Summation (290)(1000)(290)(290)(290) = 7.07 x [10.sup.12] R4/R5 noncyclic (290)(1000)(290)(4100) = 3.44 x [10.sup.11] R4/R5 cyclized
Sum = 7.41 x ]10.sup.12] [right arrow] 3 chiral centers (carbons where [R.sub.1], [R.sub.3] and [R.sub.5] are attached to the backbone) in this molecule: X 8 = 5.93 [10.sup.13] or more than 59 trillion compounds included in the patent.
Note: If the phenyl group of substituent R1 is limited to the position farthest from the parent chain, then the number of compounds drops to 1.72 [10.sup.13] or more than 17 trillion compounds included in the patent.
Actually, the number of compounds included in the patent is severalfold larger as esters of enalaprilat such as enalapril were also included. Of the 100 trillion or so compounds included in the patent, how many could be predicted to lack druglike properties (molecular weight too large? logP too high?)? How many would be predicted to be inactive on the basis of the known structure-activity data available on angiotensin-converting enzyme (ACE)...
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