Browsing by Subject "DNA motifs"

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  • Malmsten, Kim (Helsingin yliopisto, 2021)
    Genomic structural variants are large events that change the structure of the genome. These can cause changes in the functions of cells by breaking genes and genomic regulatory regions. Multiple factors are known to affect the formation of structural variants and previous studies have shown that often the sequence content in a genomic region plays a role in their formation. This study aims to characterize the sequence content around structural variant breakpoints from structural variants which have been detected from human tissue samples which have been whole genome sequenced with nanopore sequencing. The characterization was done by looking at the genomic repetitive elements found around the breakpoints, by analyzing the GC-content around the breakpoints, and by studying what kind of enriched DNA motifs were found in the sequences around the breakpoints and how these were located in these sequences. Multiple different repetitive elements were seen to occur near the breakpoint regions, and it was also observed that there were differences in what kind of repetitive elements were seen around different types of structural variants. Around the sequences of different kinds of structural variants there was also distinct differences in what kind of GC-content profiles the sequences had. In addition, various different enriched motifs were also found from the sequences and many of these showed distinct variation on how they were located around the breakpoints. These results support the previous findings showing that also here the sequence content does play a role in the formation of structural variants, but still all of the results here could not be directly explained by previous studies. In these results, it was seen that the GC-content was higher in sequences that have been affected by an event that causes structural variant formation. Also, many of the found DNA motifs were distinctly skewed around the breakpoint sequences, possibly hinting that the sequences containing these motifs would be prone to the formation of structural variants.
  • Scala, Giovanni; Federico, Antonio; Greco, Dario (2021)
    BackgroundThe investigation of molecular alterations associated with the conservation and variation of DNA methylation in eukaryotes is gaining interest in the biomedical research community. Among the different determinants of methylation stability, the DNA composition of the CpG surrounding regions has been shown to have a crucial role in the maintenance and establishment of methylation statuses. This aspect has been previously characterized in a quantitative manner by inspecting the nucleotidic composition in the region. Research in this field still lacks a qualitative perspective, linked to the identification of certain sequences (or DNA motifs) related to particular DNA methylation phenomena.ResultsHere we present a novel computational strategy based on short DNA motif discovery in order to characterize sequence patterns related to aberrant CpG methylation events. We provide our framework as a user-friendly, shiny-based application, CpGmotifs, to easily retrieve and characterize DNA patterns related to CpG methylation in the human genome. Our tool supports the functional interpretation of deregulated methylation events by predicting transcription factors binding sites (TFBS) encompassing the identified motifs.ConclusionsCpGmotifs is an open source software. Its source code is available on GitHub https://github.com/Greco-Lab/CpGmotifs and a ready-to-use docker image is provided on DockerHub at https://hub.docker.com/r/grecolab/cpgmotifs.
  • Scala, Giovanni; Federico, Antonio; Greco, Dario (BioMed Central, 2021)
    Abstract Background The investigation of molecular alterations associated with the conservation and variation of DNA methylation in eukaryotes is gaining interest in the biomedical research community. Among the different determinants of methylation stability, the DNA composition of the CpG surrounding regions has been shown to have a crucial role in the maintenance and establishment of methylation statuses. This aspect has been previously characterized in a quantitative manner by inspecting the nucleotidic composition in the region. Research in this field still lacks a qualitative perspective, linked to the identification of certain sequences (or DNA motifs) related to particular DNA methylation phenomena. Results Here we present a novel computational strategy based on short DNA motif discovery in order to characterize sequence patterns related to aberrant CpG methylation events. We provide our framework as a user-friendly, shiny-based application, CpGmotifs, to easily retrieve and characterize DNA patterns related to CpG methylation in the human genome. Our tool supports the functional interpretation of deregulated methylation events by predicting transcription factors binding sites (TFBS) encompassing the identified motifs. Conclusions CpGmotifs is an open source software. Its source code is available on GitHub https://github.com/Greco-Lab/CpGmotifs and a ready-to-use docker image is provided on DockerHub at https://hub.docker.com/r/grecolab/cpgmotifs .
  • Toivonen, Jarkko; Taipale, Jussi; Ukkonen, Esko (Schloss Dagstuhl - Leibniz-Zentrum für Informatik, 2017)
    Leibniz International Proceedings in Informatics (LIPIcs)