Artículos de revistas
A Bioinformatics Approach for Detecting Repetitive Nested Motifs using Pattern Matching
Fecha
2016-10-30Registro en:
Romero, José Rodolfo; Carballido, Jessica Andrea; Garbus, Ingrid; Echenique, Carmen Viviana; Ponzoni, Ignacio; A Bioinformatics Approach for Detecting Repetitive Nested Motifs using Pattern Matching; Bioinformatics Inst; Evolutionary Bioinformatics; 12; 30-10-2016; 247-251
1176-9343
CONICET Digital
CONICET
Autor
Romero, José Rodolfo
Carballido, Jessica Andrea
Garbus, Ingrid
Echenique, Carmen Viviana
Ponzoni, Ignacio
Resumen
The identification of nested motifs in genomic sequences is a complex computational problem. The detection of these patterns is important to allow discovery of transposable element (TE) insertions, incomplete reverse transcripts, deletions, and/or mutations. Here, we designed a de novo strategy for detecting patterns that represent nested motifs based on exhaustive searches for pairs of motifs and combinatorial pattern analysis. These patterns can be grouped into three categories: motifs within other motifs, motifs flanked by other motifs, and motifs of large size. Our methodology, applied to genomic sequences from the plant species Aegilops tauschii and Oryza sativa, revealed that it is possible to find putative nested TEs by detecting these three types of patterns. The results were validated though BLAST alignments, which revealed the efficacy and usefulness of the new method, which we call Mamushka.