AbstractWe present a novel technique for improving a fundamental aspect of iterated dynamic programming procedures on sequences, such as progressive sequence alignment. Instead of relying on the unrealistic assumption that each iteration can be performed accurately without including information from other sequences, our technique employs the combinatorial data structure of weighted sequence graphs to represent an exponential number of optimal and suboptimal sequences. The usual dynamic programming algorithm on linear sequences can be generalized to weighted sequence graphs, and therefore allows to align sequence graphs instead of individual sequences in subsequent stages. Thus, locally suboptimal, but globally correct solutions can for the ...
Dress A. Iterative versus simultaneous multiple sequence alignment. In: Apostolico A, Hein J, eds. C...
Motivation: The local alignment problem for two sequences requires determining similar regions one f...
Given a set of N (N > 2) sequences, the Multiple Sequence Alignment (MSA) problem is to align these ...
We present a novel technique for improving a fundamental aspect of iterated dynamic programming proc...
We present a novel technique for improving a fundamental aspect of iterated dynamic programming proc...
We present a dynamic programming algorithm for computing a best global alignment of two sequences. T...
Sequence alignment is an important operation in com-putational biology. Both dynamic programming and...
In this article, we consider dynamic programming algorithms for solving two bicriteria formulations ...
Algorithms for generating alignments of biological sequences have inherent statistical limitations w...
Given two sequences S1, S2 and a constrained sequence C, the longest common subsequence of S1, S2 wi...
Multiple sequence alignment is an important problem in computational biology. We study the Maximum T...
We saw earlier that it is possible to compute optimal global alignments in linear space (it can also...
MOTIVATION: Sequence alignments obtained using affine gap penalties are not always biologically corr...
Summary: Dynamic programming (DP) is a general optimization strategy that is successfully used acros...
International audienceThe problem of comparing two sequences S and T to determine their similarity i...
Dress A. Iterative versus simultaneous multiple sequence alignment. In: Apostolico A, Hein J, eds. C...
Motivation: The local alignment problem for two sequences requires determining similar regions one f...
Given a set of N (N > 2) sequences, the Multiple Sequence Alignment (MSA) problem is to align these ...
We present a novel technique for improving a fundamental aspect of iterated dynamic programming proc...
We present a novel technique for improving a fundamental aspect of iterated dynamic programming proc...
We present a dynamic programming algorithm for computing a best global alignment of two sequences. T...
Sequence alignment is an important operation in com-putational biology. Both dynamic programming and...
In this article, we consider dynamic programming algorithms for solving two bicriteria formulations ...
Algorithms for generating alignments of biological sequences have inherent statistical limitations w...
Given two sequences S1, S2 and a constrained sequence C, the longest common subsequence of S1, S2 wi...
Multiple sequence alignment is an important problem in computational biology. We study the Maximum T...
We saw earlier that it is possible to compute optimal global alignments in linear space (it can also...
MOTIVATION: Sequence alignments obtained using affine gap penalties are not always biologically corr...
Summary: Dynamic programming (DP) is a general optimization strategy that is successfully used acros...
International audienceThe problem of comparing two sequences S and T to determine their similarity i...
Dress A. Iterative versus simultaneous multiple sequence alignment. In: Apostolico A, Hein J, eds. C...
Motivation: The local alignment problem for two sequences requires determining similar regions one f...
Given a set of N (N > 2) sequences, the Multiple Sequence Alignment (MSA) problem is to align these ...