Title of article :
Simulated molecular evolution in a full combinatorial library Original Research Article
Author/Authors :
Katrin Illgen، نويسنده , , Thilo Enderle، نويسنده , , Clemens Broger، نويسنده , , Lutz Weber، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2000
Pages :
9
From page :
433
To page :
441
Abstract :
Abstract Background: The Darwinian concept of ‘survival of the fittest’ has inspired the development of evolutionary optimization methods to find molecules with desired properties in iterative feedback cycles of synthesis and testing. These methods have recently been applied to the computer-guided heuristic selection of molecules that bind with high affinity to a given biological target. We describe the optimization behavior and performance of genetic algorithms (GAs) that select molecules from a combinatorial library of potential thrombin inhibitors in ‘artificial molecular evolution’ experiments, on the basis of biological screening results. Results: A full combinatorial library of 15,360 members structurally biased towards the serine protease thrombin was synthesized, and all were tested for their ability to inhibit the protease activity of thrombin. Using the resulting large structure–activity landscape, we simulated the evolutionary selection of potent thrombin inhibitors from this library using GAs. Optimal parameter sets were found (encoding strategy, population size, mutation and cross-over rate) for this artificial molecular evolution. Conclusions: A GA-based evolutionary selection is a valuable combinatorial optimization strategy to discover compounds with desired properties without needing to synthesize and test all possible combinations (i.e. all molecules). GAs are especially powerful when dealing with very large combinatorial libraries for which synthesis and screening of all members is not possible and/or when only a small number of compounds compared with the library size can be synthesized or tested. The optimization gradient or ‘learning’ per individual increases when using smaller population sizes and decreases for higher mutation rates. Article Outline
Keywords :
* Genetic algorithm , * Evolutionary chemistry , * Thrombin inhibitors , * combinatorial chemistry , * Combinatorial optimization
Journal title :
Chemistry and Biology
Serial Year :
2000
Journal title :
Chemistry and Biology
Record number :
1158269
Link To Document :
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