Photos of CIBCB 2016 are now available! Thank you to the organizers for a great event.
CIBCB 2016 Photos are now available
	  2016-10-24
	  Congratuations Manuel of your paper at
	  CIBCB 2016
	  2016-07-08
	  Congratulations to Manuel Belmadani for his accepted paper at CIBCB 2016 : Manuel Belmadani and Marcel Turcotte. MotifGP: Using multi-objective evolutionary computing for mining network expressions in DNA sequences. In IEEE International Conference on Computational Intelligence in Bioinformatics and Computational Biology (CIBCB 2016), Chiang Mai, Thailand, October, 5-7, 2016 2016 (Accepted).
»» The annual IEEE International Conference on Computational Intelligence in Bioinformatics and Computational Biology (CIBCB 2016)Congratuations Manuel on your first
	  place at the poster competition
	  2015-03-31
	  
	    Congratulations to Manuel Belmadani on obtaining the first
	    prize in the Computer Science section of the 8th Edition
	    of the Engineering and Computer Science Graduate Poster
	    Competition.
	    
	Mining DNA Network Expression with Evolutionary Multi-Objective Programming
Where a wall poster can be your ticket to a great career via Ottawa Business Journal
»» 8th Edition of the Engineering and Computer Science Graduate Poster CompetitionIsra's paper is now available online!
	  2014-11-04
	  
	    The discovery of common RNA secondary structure motifs
	    is an important problem in bioinformatics. The presence
	    of such motifs is usually associated with key biological
	    functions. However, the identification of structural
	    motifs is far from easy. Unlike motifs in sequences,
	    which have conserved bases, structural motifs have
	    common structure arrangements even if the underlying
	    sequences are different. Over the past few years,
	    hundreds of algorithms have been published for the
	    discovery of sequential motifs, while less work has been
	    done for the structural motifs case. Current structural
	    motif discovery algorithms are limited in terms of
	    accuracy and scalability. In this paper, we present an
	    incremental and scalable algorithm for discovering RNA
	    secondary structure motifs, namely IncMD. We consider
	    the structural motif discovery as a frequent pattern
	    mining problem and tackle it using a modified a priori
	    algorithm. IncMD uses data structures, trie-based linked
	    lists of prefixes (LLP), to accelerate the search and
	    retrieval of patterns, support counting, and candidate
	    generation. We modify the candidate generation step in
	    order to adapt it to the RNA secondary structure
	    representation. IncMD constructs the frequent patterns
	    incrementally from RNA secondary structure basic
	    elements, using nesting and joining operations. The
	    notion of a motif group is introduced in order to
	    simulate an alignment of motifs that only differ in the
	    number of unpaired bases. In addition, we use a cluster
	    beam approach to select motifs that will survive to the
	    next iterations of the search. Results indicate that
	    IncMD can perform better than some of the available
	    structural motif discovery algorithms in terms of
	    sensitivity (Sn), positive predictive value (PPV), and
	    specificity (Sp). The empirical results also show that
	    the algorithm is scalable and runs faster than all of
	    the compared algorithms.
	    
	    »» http://dx.doi.org/10.1142/S0219720014500279 (Open Access)
	  
	Welcome to Ottawa Wejdan!
	  2014-09-15
	  
	    We welcome a new group member, Wejdan Al-Kaldi!
	  
	Congratulation Isra on the acceptance
	  of your paper in Journal of Bioinformatics and Computational Biology
	  2014-09-05
	  
	    Isra Al-Turaiki, Ghada Badr, Marcel Turcotte, and Hassan
	    Mathkour. Incremental trie-based structural motif
	    discovery algorithm. Accepted for publication in Journal
	    of Bioinformatics and Computational Biology; Manuscript
	    number JBCB-553R1; 2014-09-05, September 2014.
	    
	  
	Congratulation Alex on the acceptance
	  of your paper in BMC Bioinformatics
	  2014-07-08
	  
	    "RiboFSM: Frequent Subgraph Mining for the Discovery of
	    RNA Structures and Interactions" by Alexander Gawronski
	    and Marcel Turcotte was accepted for publication in BMC
	    Bioinformatics.
	    
	  
	Keynote presentation at BioSM-KSU, Riyadh, Saudi Arabia, May 4, 2014
	  2014-05-04
	  
	    Presented Misha and Oksana's work at the first
	    Bioinformatics Scientific Meeting at King Saud
	    University (BioSM-KSU).
	    »» The slides are available at induce.eecs.uottawa.ca/BioSM-KSU2014.pdf.
	  
	Alexander Gawronski successfully
	  defended his MCS thesis (RiboFSM: Frequent Subgraph Mining for
	  the Discovery of RNA Structures and Interactions)!
	  2013-10-04 13:00
	  
	    Frequent subgraph mining is a  useful method for extracting meaningful
	    patterns from a set of graphs or a single large graph. Here, the graph
	    represents all possible RNA structures and interactions. Patterns that
	    are significantly more frequent in this  graph over a random graph are
	    extracted.  We hypothesize  that  these patterns  are  most likely  to
	    represent a biological mechanisms. The  graph representation used is a
	    directed    dual   graph,    extended    to   handle    intermolecular
	    interactions. The  graph is sampled  for subgraphs, which  are labeled
	    using a canonical labeling method  and counted. The resulting patterns
	    are  compared  to   those  created  from  a   randomized  dataset  and
	    scored. The algorithm  was applied to the mitochondrial  genome of the
	    kinetoplastid species Trypanosoma brucei.  This species has a
	    unique RNA editing  mechanism that has been well studied,  making it a
	    good model  organism to  test RiboFSM.  The most  significant patterns
	    contain two stem-loops, indicative of gRNA, and represent interactions
	    of these structures with target mRNA.
	  
	Congratulation Alex on the acceptance
	  of your paper at ISBRA 2013, Charlotte, North Carolina!
	  2013-04-21
	  
	    "Novel Framework for the Discovery of RNA Elements and
	    its Application to Euglenozoa" by Alexander Gawronski
	    and Marcel Turcotte was accepted for both short abstract
	    electronic distribution and oral presentation at 9th
	    International Symposium on Bioinformatics Research and
	    Applications.  
	    »» 9th International Symposium on Bioinformatics Research and Applications
	  
	Congratulation Isra on the acceptance
	  of your paper at ISBRA 2013, Charlotte, North Carolina!
	  2013-04-21
	  
	    "Incremental Structural Motif Discovery" by Isra
	    Al-Turaiki, Ghada Badr, Marcel Turcotte, and Hassan
	    Mathkour was accepted for a poster presentation at 9th
	    International Symposium on Bioinformatics Research and
	    Applications.
	    »» 9th International Symposium on Bioinformatics Research and Applications
	  
	Welcome Isra!
	  2012-10-01
	  
	    Isra Al-Turaiki is a Ph.D. student working under the
	    supervision
	    of Ghada
	    Badr. She is doing an internship with us from
	    October 1 2012 until February 12 2013.
	    
	  
	Congratulation Oksana on the acceptance
	  of your paper at CIBCB 2012, San Diego!
	  2012-02-17
	  
	    "Learning relationships between over-represented motifs
	    in a set of DNA sequences" by Oksana Korol and Marcel
	    Turcotte was accepted at CIBCB 2012 : IEEE Symposium on Computational Intelligence in Bioinformatics and Computational Biology.
	    »» IEEE Symposium on Computational Intelligence in Bioinformatics and Computational Biology
	  
	Congratulation Oksana on successfully
	  defending your thesis!
	  2011-09-20
	  
	    Oskana Korol successfully defended her thesis today! 
	    »» ModuleInducer: Automating the Extraction of Knowledge from Biological Sequences
	  
	Congratulation Misha on successfully
	  defending your thesis!
	  2010-12-21
	  
	    Misha Jiline successfully defended his thesis today! 
	    »» Annotation Concept Synthesis and Enrichment Analysis: a Logic-Based Approach to the Interpretation of High-Throughput Biological Experiments
	  
	 
	  