
doi: 10.2144/02323rv01
pmid: 11911661
We present an overview of multiple sequence alignments to outline the practical consequences for the choices among different techniques and parameters. We begin with a discussion of the scoring methods for quantifying the quality of a multiple sequence alignment, followed by a discussion of the algorithms implemented within a variety of multiple sequence alignment programs. We also discuss additional alignment details such as gap penalty and distance metrics. The paper concludes with a discussion on how to improve alignment quality and the limitations of the techniques described in this paper
Evolution, Molecular, Models, Genetic, QH301-705.5, Biology (General), Sequence Alignment, Algorithms, Software
Evolution, Molecular, Models, Genetic, QH301-705.5, Biology (General), Sequence Alignment, Algorithms, Software
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