Title: Department of Plant Systems Biology
1Department of Plant Systems Biology
- Research at the Bioinformatics Computational
Biology research groups
2Department of Plant Systems Biology
- Headed by Prof. Dirk Inzé
- 203 people (179 research staff,
- 24 technical/administrative staff)
- 6 Research Divisions
- Biology (146)
- Molecular Genetics Division (87)
- Functional Genomics Division (19)
- Plant-Microbe Division (19)
- Genome Dynamics and Gene Regulation Division (19)
- (Bio)Informatics (33)
- Bioinformatics and Evolutionary Genomics Division
(24) - Computational Biology Division (9)
32 Computational research groups
- Bioinformatics and Evolutionary Genomics (BEG)
- Mainly deal with sequence data
- Comparative Genomics (Yves Van de Peer)
- Gene prediction Annotation (Pierre Rouzé)
- Computational Biology Division (CBD)
- Explore biological systems (networks)
- Headed by Martin Kuiper
4Group Leaders
Prof. Yves Van de Peer
Dr. Martin Kuiper
Dr. Pierre Rouzé
5Research activities
Ancient large-scale gene duplications
Transcription factors
Annotation of genomes
Machine Learning
Bacterial comparative genomics
Gene Prediction Genome
Annotation
Comparative Genomics
Non coding RNAs
Gene network modelling
Functional divergence of duplicated genes
Promoters and regulatory elements
Heterosis
6Ancient large-scale gene duplications
Klaas Vandepoele
Cedric Simillion
- Investigate major events during evolutionary past
of genomes - Large scale gene duplications
- Genome duplications
- Research
- Algorithms to detect colinear regions
- Compare intra and inter species
- Arabidopsis 3 whole genome duplications
- Comparisons between Arabidopsis and Rice
- Duplications in vertebrate genomes
7Large-scale duplications
recent duplication
colinearity
8Ancient large-scale gene duplications
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9Functional divergence of duplicated genes
Tine Casneuf
Jeroen Raes
- Duplications stimulate biological novelties
- Investigate what happens to duplicated genes
- Study of models for gene evolution
- Genes are not individual entities, but members of
gene families - Research
- Up to 65 of the genes in Arabidopsis belong to a
gene family - Divergence at the regulatory/expression level
- Divergence at the coding level.
10Functional divergence of duplicated genes
11Bacterial comparative genomics
Dirk Gevers
- Investigation of multiple bacterial genomes
- Genomes evolve over time, changing in subtle or
radical ways, constantly adapting to the
surrounding environment - Genomes can evolve gradually through vertical
transmission of mutations, gene duplications,
deletions, and rearrangements - Alternatively, they can evolve more suddenly and
sporadically via horizontal transfer of genetic
information between different microbial species - Research
- Assess the contribution of gene duplications to
genome evolution in prokaryotes
12Bacterial comparative genomics
- Functional Landscape of the Paranome (FLOP)
- Linking functional information to the paranome
information - Allows us to determine whether paralog retention
is biased towards specific functional classes for
each of the bacterial strains
13Transcription factors
Stefanie De Bodt
- Towards a better understanding of the link
between evolution and development (evo-devo) - Transcription factors play a major role in the
regulation of gene expression - Study the evolutionary and functional divergence
of genes belonging to large transcription factor
gene families - Research
- Structural and phylogenetic analyses of the
MADS-box gene family - Comprehensive view on the regulatory role of
MADS-box genes in plant development - Phylogenetic footprinting
14Transcription factors
15Genome Annotation
Stephane Rombauts
Lieven Sterck
Steven Robbens
- Structural annotation of genes/genomes
- Locate genes in genomes
- Find the exact gene structures
- Investigation of particular gene families
- Research
- Development of an automatic annotation platform
that can be applied to different genomes - Genomes Arabidopsis, Poplar, Medicago,
Ostrecoccus tauri
16Genome Annotation platform
SplicePredictor
Intrinsic approaches
NetGene2
Netstart
Predicted Genes (structural annotation)
Extrinsic approaches
cDNA EST
SP PIR
RepBase
17Dataset construction for Poplar
EuGene framework
Poplar RepBase
Poplar cDNA EST
Arabidopsis proteins
Extrinsic approaches
Final prediction of EuGene
EuGene
Intrinsic approaches
Splicing WAM
Start const
Start prediction
18Annotation of core cell cycle genes in
Ostreococcus tauri
The CDK gene family
19Machine Learning(applied to genome annotation)
Sven Degroeve
Yvan Saeys
- Computational techniques to identify structural
elements - Supervised classification methods
- Support Vector Machines
- Feature selection for knowledge extraction
- Research
- New splice site prediction models
- New feature selection techniques for gene
prediction - Leads to more accurate gene models
20Splice Machine
21Feature selection for acceptor prediction
22Promoter prediction
Kobe Florquin
- Computational identification of promoter regions
- Signal elements
- Structural features
- Still many false positives
- Research
- Develop new tools and approaches for the
automatic delineation of promoters - Motif detection
- Detecting cis-regulatory elements
- Phylogenetic footprinting
23Promoter prediction
24Non coding RNAs
Jan Wuyts
Eric Bonnet
- Many RNA molecules are not protein coding but
instead function through their RNA form - Known a long time transfer RNAs (tRNA),
ribosomal RNAs (rRNA) - Only recently discovered small interfering RNAs
(siRNA), micro RNAs (miRNA), - Regulate gene expression at the
post-transcriptional level - Research
- Developing different computational tools and
techniques to detect and characterize non-coding
RNAs in Arabidopsis and other plant genomes
25Non coding RNAs MIRfinder
26Comparison between plant species
27Genetic networks
Steven Maere
Steven Vercruysse
- Integrate functional genomics data of all types
in a global network that reflects the regulatory
wiring and modularity of an organism - Micro-array data from perturbation experiments
- Leaf development
- Research
- Novel methods, based on combinatorial statistics
and graph theory - Unsupervised classification techniques (k-core
clustering, Kohonen maps)
28Genetic networks
Experiments
Gene profiles
Comb. p-value lt 0.01
k-core clustering
GO labeling visualization
29Genetic networks
Hierarchical clustering
Many other algorithms
- Regulatory interactions
30Heterosis
Jeroen Meeus
Elena Tsiporkova
- Modeling of hybrid vigour
- Improved performance of F1 hybrids with respect
to the parents - Dominance Model
- Over-dominance Model
- Epistatic Model
- biometrics versus soft-computing approach
- Research
- Additive versus dominance effects
- Estimation of the molecular phenotype of the
hybrid
31Heterosis Biometrics Approach
10 parents
45 hybrids
Molecular Phenotypes
25000 genes
25000 genes
biomass leaf size
biomass leaf size
Morphological Phenotypes
45 hybrids
10 parents
32Heterosis Soft-Computing Approach
10 parents
45 hybrids
Molecular Phenotypes
25000 genes
25000 genes
biomass leaf size
biomass leaf size
Morphological Phenotypes
45 hybrids
10 parents
33- Databases
- European ribosomal RNA database
http//www.psb.ugent.be/rRNA/ - European Plant Promoter database (PlantCARE)
- http//oberon.fvms.ugent.be8080/
- PlantCARE/index.html
- European Federated Plant Database Network
(Planet) http//mips.gsf.de/proj/planet/about.htm
l
- Software
- Tree construction TreeCon
- Tools ForCon, SPADS, ZT, AFLPinSilico
- Large-scale duplications Adhore, i-Adhore,
ASaturA - Website
- http//bioinformatics.psb.ugent.be
Francis Dierick databases, webmaster, support
Gert Sclep CATMA and CAGE databases
34Part-time Phd students
Guy Baele Modelling the covarion hypothesis
Dirk Vandycke Extrinsic gene prediction
approaches
Secretary
Ann Bostyn
35Thanks to