Selective phenome growth adapted \(N K\) model: a novel landscape to represent aptamer ligand binding (Q1674916)
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scientific article; zbMATH DE number 6798512
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Selective phenome growth adapted \(N K\) model: a novel landscape to represent aptamer ligand binding |
scientific article; zbMATH DE number 6798512 |
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Selective phenome growth adapted \(N K\) model: a novel landscape to represent aptamer ligand binding (English)
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26 October 2017
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Summary: Aptamers are single-stranded oligo-nucleotides selected by evolutionary approaches from massive libraries with significant potential for specific molecular recognition in diagnostics and therapeutics. A complete empirical characterisation of an aptamer selection experiment is not feasible due to the vast complexity of aptamer selection. Simulation of aptamer selection has been used to characterize and optimize the selection process; however, the absence of a good model for aptamer-target binding limits this field of study. Here, we generate theoretical fitness landscapes which appear to more accurately represent aptamer-target binding. The method used to generate these landscapes, selective phenome growth, is a new approach in which phenotypic contributors are added to a genotype/phenotype interaction map sequentially in such a way so as to increase the fitness of a selected fit sequence. In this way, a landscape is built around the selected fittest sequences. Comparison to empirical aptamer microarray data shows that our theoretical fitness landscapes more accurately represent aptamer ligand binding than other theoretical models. These improved fitness landscapes have potential for the computational analysis and optimization of other complex systems.
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oligo-nucleotides
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molecular diagnostics
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computational analysis and optimization
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complex systems
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0.6677443981170654
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0.6608280539512634
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0.6605333089828491
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