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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Etude bioinformatique de l’évolution de la régulation transcriptionnelle chez les bactéries/Bioinformatic study of the evolution of the transcriptional regulation in bacteria

Janky, Rekin's 17 December 2007 (has links)
L'objet de cette thèse de bioinformatique est de mieux comprendre l’ensemble des systèmes de régulation génique chez les bactéries. La disponibilité de centaines de génomes complets chez les bactéries ouvre la voie aux approches de génomique comparative et donc à l’étude de l’évolution des réseaux transcriptionnels bactériens. Dans un premier temps, nous avons implémenté et validé plusieurs méthodes de prédiction d’opérons sur base des génomes bactériens séquencés. Suite à cette étude, nous avons décidé d’utiliser un algorithme qui se base simplement sur un seuil sur la distance intergénique, à savoir la distance en paires de bases entre deux gènes adjacents. Notre évaluation sur base d’opérons annotés chez Escherichia coli et Bacillus subtilis nous permet de définir un seuil optimal de 55pb pour lequel nous obtenons respectivement 78 et 79% de précision. Deuxièmement, l’identification des motifs de régulation transcriptionnelle, tels les sites de liaison des facteurs de transcription, donne des indications de l’organisation de la régulation. Nous avons développé une méthode de recherche d’empreintes phylogénétiques qui consiste à découvrir des paires de mots espacés (dyades) statistiquement sur-représentées en amont de gènes orthologues bactériens. Notre méthode est particulièrement adaptée à la recherche de motifs chez les bactéries puisqu’elle profite d’une part des centaines de génomes bactériens séquencés et d’autre part les facteurs de transcription bactériens présentent des domaines Hélice-Tour-Hélice qui reconnaissent spécifiquement des dyades. Une évaluation systématique sur 368 gènes de E.coli a permis d’évaluer les performances de notre méthode et de tester l’influence de plus de 40 combinaisons de paramètres concernant le niveau taxonomique, l’inférence d’opérons, le filtrage des dyades spécifiques de E.coli, le choix des modèles de fond pour le calcul du score de significativité, et enfin un seuil sur ce score. L’analyse détaillée pour un cas d’étude, l’autorégulation du facteur de transcription LexA, a montré que notre approche permet d’étudier l’évolution des sites d’auto-régulation dans plusieurs branches taxonomiques des bactéries. Nous avons ensuite appliqué la détection d’empreintes phylogénétiques à chaque gène de E.coli, et utilisé les motifs détectés comme significatifs afin de prédire les gènes co-régulés. Au centre de cette dernière stratégie, est définie une matrice de scores de significativité pour chaque mot détecté par gène chez l’organisme de référence. Plusieurs métriques ont été définies pour la comparaison de paires de profils de scores de sorte que des paires de gènes ayant des motifs détectés significativement en commun peuvent être regroupées. Ainsi, l’ensemble des nos méthodes nous permet de reconstruire des réseaux de co-régulation uniquement à partir de séquences génomiques, et nous ouvre la voie à l’étude de l’organisation et de l’évolution de la régulation transcriptionnelle pour des génomes dont on ne connaît rien. The purpose of my thesis is to study the evolution of regulation within bacterial genomes by using a cross-genomic comparative approach. Nowadays, numerous genomes have been sequenced facilitating in silico analysis in order to detect groups of functionally related genes and to predict the mechanism of their relative regulation. In this project, we combined prediction of operons and regulons in order to reconstruct the transcriptional regulatory network for a bacterial genome. We have implemented three methods in order to predict operons from a bacterial genome and evaluated them on hundreds of annotated operons of Escherichia coli and Bacillus subtilis. It turns out that a simple distance-based threshold method gives good results with about 80% of accuracy. The principle of this method is to classify pairs of adjacent genes as “within operon” or “transcription unit border”, respectively, by using a threshold on their intergenic distance: two adjacent genes are predicted to be within an operon if their intergenic distance is smaller than 55bp. In the second part of my thesis, I evaluated the performances of a phylogenetic footprinting approach based on the detection of over-represented spaced motifs. This method is particularly suitable for (but not restricted to) Bacteria, since such motifs are typically bound by factors containing a Helix-Turn-Helix domain. We evaluated footprint discovery in 368 E.coli K12 genes with annotated sites, under 40 different combinations of parameters (taxonomical level, background model, organism-specific filtering, operon inference, significance threshold). Motifs are assessed both at the level of correctness and significance. The footprint discovery method proposed here shows excellent results with E. coli and can readily be extended to predict cis-acting regulatory signals and propose testable hypotheses in bacterial genomes for which nothing is known about regulation. Moreover, the predictive power of the strategy, and its capability to track the evolutionary divergence of cis-regulatory motifs was illustrated with the example of LexA auto-regulation, for which our predictions are remarkably consistent with the binding sites characterized in different taxonomical groups. A next challenge was to identify groups of co-regulated genes (regulons), by regrouping genes with similar motifs, in order to address the challenging domain of the evolution of transcriptional regulatory networks. We tested different metrics to detect putative pairs of co-regulated genes. The comparison between predicted and annotated co-regulation networks shows a high positive predictive value, since a good fraction of the predicted associations correspond to annotated co-regulations, and a low sensitivity, which may be due to the consequence of highly connected transcription factors (global regulator). A regulon-per-regulon analysis indeed shows that the sensitivity is very weak for these transcription factors, but can be quite good for specific transcription factors. The originality of this global strategy is to be able to infer a potential network from the sole analysis of genome sequences, and without any prior knowledge about the regulation in the considered organism.
2

Genomic data mining for the computational prediction of small non-coding RNA genes

Tran, Thao Thanh Thi 20 January 2009 (has links)
The objective of this research is to develop a novel computational prediction algorithm for non-coding RNA (ncRNA) genes using features computable for any genomic sequence without the need for comparative analysis. Existing comparative-based methods require the knowledge of closely related organisms in order to search for sequence and structural similarities. This approach imposes constraints on the type of ncRNAs, the organism, and the regions where the ncRNAs can be found. We have developed a novel approach for ncRNA gene prediction without the limitations of current comparative-based methods. Our work has established a ncRNA database required for subsequent feature and genomic analysis. Furthermore, we have identified significant features from folding-, structural-, and ensemble-based statistics for use in ncRNA prediction. We have also examined higher-order gene structures, namely operons, to discover potential insights into how ncRNAs are transcribed. Being able to automatically identify ncRNAs on a genome-wide scale is immensely powerful for incorporating it into a pipeline for large-scale genome annotation. This work will contribute to a more comprehensive annotation of ncRNA genes in microbial genomes to meet the demands of functional and regulatory genomic studies.
3

RNA-Seq and proteomics based analysis of regulatory RNA features and gene expression in Bacillus licheniformis

Wiegand, Sandra 25 September 2013 (has links)
No description available.
4

Etude bioinformatique de l'évolution de la régulation transcriptionnelle chez les bactéries / Bioinformatic study of the evolution of the transcriptional regulation in bacteria

Janky, Rekin's 17 December 2007 (has links)
L'objet de cette thèse de bioinformatique est de mieux comprendre l’ensemble des systèmes de régulation génique chez les bactéries. La disponibilité de centaines de génomes complets chez les bactéries ouvre la voie aux approches de génomique comparative et donc à l’étude de l’évolution des réseaux transcriptionnels bactériens. Dans un premier temps, nous avons implémenté et validé plusieurs méthodes de prédiction d’opérons sur base des génomes bactériens séquencés. Suite à cette étude, nous avons décidé d’utiliser un algorithme qui se base simplement sur un seuil sur la distance intergénique, à savoir la distance en paires de bases entre deux gènes adjacents. Notre évaluation sur base d’opérons annotés chez Escherichia coli et Bacillus subtilis nous permet de définir un seuil optimal de 55pb pour lequel nous obtenons respectivement 78 et 79% de précision. Deuxièmement, l’identification des motifs de régulation transcriptionnelle, tels les sites de liaison des facteurs de transcription, donne des indications de l’organisation de la régulation. Nous avons développé une méthode de recherche d’empreintes phylogénétiques qui consiste à découvrir des paires de mots espacés (dyades) statistiquement sur-représentées en amont de gènes orthologues bactériens. Notre méthode est particulièrement adaptée à la recherche de motifs chez les bactéries puisqu’elle profite d’une part des centaines de génomes bactériens séquencés et d’autre part les facteurs de transcription bactériens présentent des domaines Hélice-Tour-Hélice qui reconnaissent spécifiquement des dyades. Une évaluation systématique sur 368 gènes de E.coli a permis d’évaluer les performances de notre méthode et de tester l’influence de plus de 40 combinaisons de paramètres concernant le niveau taxonomique, l’inférence d’opérons, le filtrage des dyades spécifiques de E.coli, le choix des modèles de fond pour le calcul du score de significativité, et enfin un seuil sur ce score. L’analyse détaillée pour un cas d’étude, l’autorégulation du facteur de transcription LexA, a montré que notre approche permet d’étudier l’évolution des sites d’auto-régulation dans plusieurs branches taxonomiques des bactéries. Nous avons ensuite appliqué la détection d’empreintes phylogénétiques à chaque gène de E.coli, et utilisé les motifs détectés comme significatifs afin de prédire les gènes co-régulés. Au centre de cette dernière stratégie, est définie une matrice de scores de significativité pour chaque mot détecté par gène chez l’organisme de référence. Plusieurs métriques ont été définies pour la comparaison de paires de profils de scores de sorte que des paires de gènes ayant des motifs détectés significativement en commun peuvent être regroupées. Ainsi, l’ensemble des nos méthodes nous permet de reconstruire des réseaux de co-régulation uniquement à partir de séquences génomiques, et nous ouvre la voie à l’étude de l’organisation et de l’évolution de la régulation transcriptionnelle pour des génomes dont on ne connaît rien.<p><p>The purpose of my thesis is to study the evolution of regulation within bacterial genomes by using a cross-genomic comparative approach. Nowadays, numerous genomes have been sequenced facilitating in silico analysis in order to detect groups of functionally related genes and to predict the mechanism of their relative regulation. In this project, we combined prediction of operons and regulons in order to reconstruct the transcriptional regulatory network for a bacterial genome. We have implemented three methods in order to predict operons from a bacterial genome and evaluated them on hundreds of annotated operons of Escherichia coli and Bacillus subtilis. It turns out that a simple distance-based threshold method gives good results with about 80% of accuracy. The principle of this method is to classify pairs of adjacent genes as “within operon” or “transcription unit border”, respectively, by using a threshold on their intergenic distance: two adjacent genes are predicted to be within an operon if their intergenic distance is smaller than 55bp. In the second part of my thesis, I evaluated the performances of a phylogenetic footprinting approach based on the detection of over-represented spaced motifs. This method is particularly suitable for (but not restricted to) Bacteria, since such motifs are typically bound by factors containing a Helix-Turn-Helix domain. We evaluated footprint discovery in 368 E.coli K12 genes with annotated sites, under 40 different combinations of parameters (taxonomical level, background model, organism-specific filtering, operon inference, significance threshold). Motifs are assessed both at the level of correctness and significance. The footprint discovery method proposed here shows excellent results with E. coli and can readily be extended to predict cis-acting regulatory signals and propose testable hypotheses in bacterial genomes for which nothing is known about regulation. Moreover, the predictive power of the strategy, and its capability to track the evolutionary divergence of cis-regulatory motifs was illustrated with the example of LexA auto-regulation, for which our predictions are remarkably consistent with the binding sites characterized in different taxonomical groups. A next challenge was to identify groups of co-regulated genes (regulons), by regrouping genes with similar motifs, in order to address the challenging domain of the evolution of transcriptional regulatory networks. We tested different metrics to detect putative pairs of co-regulated genes. The comparison between predicted and annotated co-regulation networks shows a high positive predictive value, since a good fraction of the predicted associations correspond to annotated co-regulations, and a low sensitivity, which may be due to the consequence of highly connected transcription factors (global regulator). A regulon-per-regulon analysis indeed shows that the sensitivity is very weak for these transcription factors, but can be quite good for specific transcription factors. The originality of this global strategy is to be able to infer a potential network from the sole analysis of genome sequences, and without any prior knowledge about the regulation in the considered organism. / Doctorat en Sciences / info:eu-repo/semantics/nonPublished
5

OperomeDB: database of condition specific transcription in prokaryotic genomes and genomic insights of convergent transcription in bacterial genomes

Chetal, Kashish 27 October 2014 (has links)
Indiana University-Purdue University Indianapolis (IUPUI) / My thesis comprises of two individual projects: 1) we have developed a database for operon prediction using high-throughput sequencing datasets for bacterial genomes. 2) Genomics and mechanistic insights of convergent transcription in bacterial genomes. In the first project we developed a database for the prediction of operons for bacterial genomes using RNA-seq datasets, we predicted operons for bacterial genomes. RNA-seq datasets with different condition for each bacterial genome were taken into account and predicted operons using Rockhopper. We took RNA-seq datasets from NCBI with distinct experimental conditions for each bacterial genome into account and analyzed using tool for operon prediction. Currently our database contains 9 bacterial organisms for which we predicted operons. User interface is simple and easy to use, in terms of visualization, downloading and querying of data. In our database user can browse through reference genome, genes present in that genome and operons predicted from different RNA-seq datasets. Further in the second project, we studied the genomic and mechanistic insights of convergent transcription in bacterial genomes. We know that convergent gene pairs with overlapping head-to-head configuration are widely spread across both eukaryotic and prokaryotic genomes. They are believed to contribute to the regulation of genes at both transcriptional and post-transcriptional levels, although factors contributing to their abundance across genomes and mechanistic basis for their prevalence are poorly understood. In this study, we explore the role of various factors contributing to convergent overlapping transcription in bacterial genomes. Our analysis shows that the proportion of convergent overlapping gene pairs (COGPs) in a genome is affected due to endospore formation, bacterial habitat, oxygen requirement, GC content and the temperature range. In particular, we show that bacterial genomes thriving in specialized habitats, such as thermophiles, exhibit a high proportion of COGPs. Our results also conclude that the density distribution of COGPs across the genomes is high for shorter overlaps with increased conservation of distances for decreasing overlaps. Our study further reveals that COGPs frequently contain stop codon overlaps with the middle base position exhibiting mismatches between complementary strands. Further, for the functional analysis using cluster of orthologous groups (COGs) annotations suggested that cell motility, cell metabolism, storage and cell signaling are enriched among COGPs, suggesting their role in processes beyond regulation. Our analysis provides genomic insights into this unappreciated regulatory phenomenon, allowing a refined understanding of their contribution to bacterial phenotypes.

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