Aligning DNA and protein sequences is a core technique in molecular biology. Often, it is desirable to include partial prior
knowledge and conditions in an alignment. Going beyond prior work, we aim at the integration of such side constraints in free
combination into alignment algorithms. The most common and successful technique for efficient alignment algorithms is dynamic
programming (DP). However, a weakness of DP is that one cannot include additional constraints without specifically tailoring
a new DP algorithm. Here, we discuss a declarative approach that is based on constraint techniques and show how it can be
extended by formulating additional knowledge as constraints. We take special care to obtain the efficiency of DP for sequence
alignment. This is achieved by careful modeling and applying proper solving strategies. Finally, we apply our method to the
scanning for RNA motifs in large sequences. This case study demonstrates how the new approach can be used in real biological
problems. A prototypic implementation of the method is available at
http://www.bioinf.uni-freiburg.de/Software/CTE-Alignment.
Keywords Cluster tree elimination - Dynamic programming - Sequence alignment