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Combinatorial codons: A computer program to approximate amino acid probabilities with biased nucleotide usage

Published online by Cambridge University Press:  01 March 1999

ETHAN WOLF
Affiliation:
Howard Hughes Medical Institute, Whitehead Institute, Department of Biology, MIT, Nine Cambridge Center, Cambridge, Massachusetts 02142
PETER S. KIM
Affiliation:
Howard Hughes Medical Institute, Whitehead Institute, Department of Biology, MIT, Nine Cambridge Center, Cambridge, Massachusetts 02142
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Abstract

Using techniques from optimization theory, we have developed a computer program that approximates a desired probability distribution for amino acids by imposing a probability distribution on the four nucleotides in each of the three codon positions. These base probabilities allow for the generation of biased codons for use in mutational studies and in the design of biologically encoded libraries. The dependencies between codons in the genetic code often makes the exact generation of the desired probability distribution for amino acids impossible. Compromises are often necessary. The program, therefore, not only solves for the “optimal” approximation to the desired distribution (where the definition of “optimal” is influenced by several types of parameters entered by the user), but also solves for a number of “sub-optimal” solutions that are classified into families of similar solutions. A representative of each family is presented to the program user, who can then choose the type of approximation that is best for the intended application. The Combinatorial Codons program is available for use over the web from http://www.wi.mit.edu/kim/computing.html.

Type
FOR THE RECORD
Copyright
© 1999 The Protein Society

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