51 research outputs found

    Putatively asexual chrysophytes have meiotic genes: evidence from transcriptomic data

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    Chrysophytes are a large group of heterotrophic, phototrophic, or even mixotrophic protists that are abundant in aquatic as well as terrestrial environments. Although much is known about chrysophyte biology and ecology, it is unknown if they are sexual or not. Here we use available transcriptomes of 18 isolates of 15 putatively asexual species to inventory the presence of genes used in meiosis. Since we were able to detect a set of nine meiosis-specific and 29 meiosis-related genes shared by the chrysophytes, we conclude that they are secretively sexual and therefore should be investigated further using genome sequencing to uncover any missed genes from the transcriptomes

    Tardigrade workbench: comparing stress-related proteins, sequence-similar and functional protein clusters as well as RNA elements in tardigrades

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    <p>Abstract</p> <p>Background</p> <p>Tardigrades represent an animal phylum with extraordinary resistance to environmental stress.</p> <p>Results</p> <p>To gain insights into their stress-specific adaptation potential, major clusters of related and similar proteins are identified, as well as specific functional clusters delineated comparing all tardigrades and individual species (<it>Milnesium tardigradum</it>, <it>Hypsibius dujardini</it>, <it>Echiniscus testudo</it>, <it>Tulinus stephaniae</it>, <it>Richtersius coronifer</it>) and functional elements in tardigrade mRNAs are analysed. We find that 39.3% of the total sequences clustered in 58 clusters of more than 20 proteins. Among these are ten tardigrade specific as well as a number of stress-specific protein clusters. Tardigrade-specific functional adaptations include strong protein, DNA- and redox protection, maintenance and protein recycling. Specific regulatory elements regulate tardigrade mRNA stability such as lox P DICE elements whereas 14 other RNA elements of higher eukaryotes are not found. Further features of tardigrade specific adaption are rapidly identified by sequence and/or pattern search on the web-tool tardigrade analyzer <url>http://waterbear.bioapps.biozentrum.uni-wuerzburg.de</url>. The work-bench offers nucleotide pattern analysis for promotor and regulatory element detection (tardigrade specific; nrdb) as well as rapid COG search for function assignments including species-specific repositories of all analysed data.</p> <p>Conclusion</p> <p>Different protein clusters and regulatory elements implicated in tardigrade stress adaptations are analysed including unpublished tardigrade sequences.</p

    Transcriptome Analysis in Tardigrade Species Reveals Specific Molecular Pathways for Stress Adaptations

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    Tardigrades have unique stress-adaptations that allow them to survive extremes of cold, heat, radiation and vacuum. To study this, encoded protein clusters and pathways from an ongoing transcriptome study on the tardigrade Milnesium tardigradum were analyzed using bioinformatics tools and compared to expressed sequence tags (ESTs) from Hypsibius dujardini, revealing major pathways involved in resistance against extreme environmental conditions. ESTs are available on the Tardigrade Workbench along with software and databank updates. Our analysis reveals that RNA stability motifs for M. tardigradum are different from typical motifs known from higher animals. M. tardigradum and H. dujardini protein clusters and conserved domains imply metabolic storage pathways for glycogen, glycolipids and specific secondary metabolism as well as stress response pathways (including heat shock proteins, bmh2, and specific repair pathways). Redox-, DNA-, stress- and protein protection pathways complement specific repair capabilities to achieve the strong robustness of M. tardigradum. These pathways are partly conserved in other animals and their manipulation could boost stress adaptation even in human cells. However, the unique combination of resistance and repair pathways make tardigrades and M. tardigradum in particular so highly stress resistant

    An integer linear programming approach for finding deregulated subgraphs in regulatory networks

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    Deregulation of cell signaling pathways plays a crucial role in the development of tumors. The identification of such pathways requires effective analysis tools that facilitate the interpretation of expression differences. Here, we present a novel and highly efficient method for identifying deregulated subnetworks in a regulatory network. Given a score for each node that measures the degree of deregulation of the corresponding gene or protein, the algorithm computes the heaviest connected subnetwork of a specified size reachable from a designated root node. This root node can be interpreted as a molecular key player responsible for the observed deregulation. To demonstrate the potential of our approach, we analyzed three gene expression data sets. In one scenario, we compared expression profiles of non-malignant primary mammary epithelial cells derived from BRCA1 mutation carriers and of epithelial cells without BRCA1 mutation. Our results suggest that oxidative stress plays an important role in epithelial cells of BRCA1 mutation carriers and that the activation of stress proteins may result in avoidance of apoptosis leading to an increased overall survival of cells with genetic alterations. In summary, our approach opens new avenues for the elucidation of pathogenic mechanisms and for the detection of molecular key players

    Integrierte funktionelle Analyse biologischer Netzwerke

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    In recent years high-throughput experiments provided a vast amount of data from all areas of molecular biology, including genomics, transcriptomics, proteomics and metabolomics. Its analysis using bioinformatics methods has developed accordingly, towards a systematic approach to understand how genes and their resulting proteins give rise to biological form and function. They interact with each other and with other molecules in highly complex structures, which are explored in network biology. The in-depth knowledge of genes and proteins obtained from high-throughput experiments can be complemented by the architecture of molecular networks to gain a deeper understanding of biological processes. This thesis provides methods and statistical analyses for the integration of molecular data into biological networks and the identification of functional modules, as well as its application to distinct biological data. The integrated network approach is implemented as a software package, termed BioNet, for the statistical language R. The package includes the statistics for the integration of transcriptomic and functional data with biological networks, the scoring of nodes and edges of these networks as well as methods for subnetwork search and visualisation. The exact algorithm is extensively tested in a simulation study and outperforms existing heuristic methods for the calculation of this NP-hard problem in accuracy and robustness. The variability of the resulting solutions is assessed on perturbed data, mimicking random or biased factors that obscure the biological signal, generated for the integrated data and the network. An optimal, robust module can be calculated using a consensus approach, based on a resampling method. It summarizes optimally an ensemble of solutions in a robust consensus module with the estimated variability indicated by confidence values for the nodes and edges. The approach is subsequently applied to two gene expression data sets. The first application analyses gene expression data for acute lymphoblastic leukaemia (ALL) and differences between the subgroups with and without an oncogenic BCR/ABL gene fusion. In a second application gene expression and survival data from diffuse large B-cell lymphomas are examined. The identified modules include and extend already existing gene lists and signatures by further significant genes and their interactions. The most important novelty is that these genes are determined and visualised in the context of their interactions as a functional module and not as a list of independent and unrelated transcripts. In a third application the integrative network approach is used to trace changes in tardigrade metabolism to identify pathways responsible for their extreme resistance to environmental changes and endurance in an inactive tun state. For the first time a metabolic network approach is proposed to detect shifts in metabolic pathways, integrating transcriptome and metabolite data. Concluding, the presented integrated network approach is an adequate technique to unite high-throughput experimental data for single molecules and their intermolecular dependencies. It is flexible to apply on diverse data, ranging from gene expression changes over metabolite abundances to protein modifications in a combination with a suitable molecular network. The exact algorithm is accurate and robust in comparison to heuristic approaches and delivers an optimal, robust solution in form of a consensus module with confidence values. By the integration of diverse sources of information and a simultaneous inspection of a molecular event from different points of view, new and exhaustive insights into biological processes can be acquired.In den letzten Jahren haben Hochdurchsatz-Experimente gewaltige Mengen an molekularbiologischen Daten geliefert, angefangen mit dem ersten sequenzierten Genom von Haemophilus influenzae im Jahr 1995 und dem menschlichen Genom im Jahr 2001. Mittlerweile umfassen die resultierenden Daten neben der Genomik die Bereiche der Transkriptomik, Proteomik und Metabolomik. Die Analyse der Daten mithilfe von bioinformatischen Methoden hat sich entsprechend mit verändert und weiterentwickelt. Durch neuartige, systembiologische Ansätze versucht man zu verstehen, wie Gene und die aus ihnen resultierenden Proteine, biologische Formen und Funktionen entstehen lassen. Dabei interagieren sie miteinander und mit anderen Molekülen in hoch komplexen Strukturen, welche durch neue Ansätze der Netzwerkbiologie untersucht werden. Das tiefgreifende Wissen über einzelne Moleküle, verfügbar durch Hochdurchsatz-Technologien, kann komplementiert werden durch die Architektur und dynamischen Interaktionen molekularer Netzwerke und somit ein umfassenderes Verständnis biologischer Prozesse ermöglichen. Die vorliegende Dissertation stellt Methoden und statistische Analysen zur Integration molekularer Daten in biologische Netzwerke, Identifikation robuster, funktionaler Subnetzwerke sowie die Anwendung auf verschiedenste biologische Daten vor. Der integrative Netzwerkansatz wurde als ein Softwarepaket, BioNet, in der statistischen Programmiersprache R implementiert. Das Paket beinhaltet statistische Verfahren zur Integration transkriptomischer und funktionaler Daten, die Gewichtung von Knoten und Kanten in biologischen Netzwerken sowie Methoden zur Suche signifikanter Bereiche, Module, und deren Visualisierung. Der exakte Algorithmus wird ausführlich in einer Simulationsstudie getestet und übertrifft heuristische Methoden zur Lösung dieses NP-vollständigen Problems in Genauigkeit und Robustheit. Die Variabilität der resultierenden Lösungen wird bestimmt anhand von gestörten integrierten Daten und gestörten Netzwerken, welche zufällige und verzerrende Einflüsse darstellen, die die Daten verrauschen. Ein optimales, robustes Modul kann durch einen Konsensusansatz bestimmt werden. Basierend auf einer wiederholten Stichprobennahme der integrierten Daten, wird ein Ensemble von Lösungen erstellt, aus welchem sich das robuste und optimale Konsensusmodul berechnen lässt. Zusätzlich erlaubt dieser Ansatz eine Schätzung der Variabilität des Konsensusmoduls und die Berechnung von Konfidenzwerte für Knoten und Kanten. Der Ansatz wird anschließend auf zwei Genexpressionsdatensätze angewandt. Die erste Anwendung untersucht Genexpressionsdaten für akute lymphoblastische Leukämie (ALL) und analysiert Unterschiede in Subgruppen mit und ohne BRC/ABL Genfusion. Die zweite Anwendung wertet Genexpressions- und Lebenszeitdaten für diffuse großzellige B-Zell Lymphome (DLBCL) aus, beruhend auf molekularen Unterschieden zwischen zwei DLBCL Subtypen mit unterschiedlicher Malignität. In einer dritten Anwendung wird der integrierte Netzwerkansatz benutzt, um Veränderungen im Metabolismus von Tardigraden aufzuspüren und Signalwege zu identifizieren, welche für die extreme Anpassungsfähigkeit an wechselnde Umweltbedingungen und Überdauerung in einem inaktiven Tönnchenstadium verantwortlich sind. Zum ersten Mal wird dafür ein metabolischer Netzwerkansatz vorgeschlagen, der metabolische Veränderungen durch die Integration von metabolischen und transkriptomischen Daten bestimmt. Abschließend ist zu bemerken, dass die präsentierte integrierte Netzwerkanalyse eine adäquate Technik ist, um experimentelle Daten aus Hochdurchsatz-Methoden, die spezialisiert auf eine Molekülart sind, mit ihren intermolekularen Wechselwirkungen und Abhängigkeiten in Verbindung zu bringen. Sie ist flexibel in der Anwendung auf verschiedenste Daten, von der Analyse von Genexpressionsveränderungen, über Metabolitvorkommen bis zu Proteinmodifikationen, in Kombination mit einem geeigneten molekularen Netzwerk. Der exakte Algorithmus ist akkurat und robust in Vergleich zu heuristischen Methoden und liefert eine optimale, robuste Lösung in Form eines Konsensusmoduls mit zugewiesenen Konfidenzwerten. Durch die Integration verschiedenster Informationsquellen und gleichzeitige Betrachtung eines biologischen Ereignisses von diversen Blickwinkeln aus, können neue und vollständigere Erkenntnisse physiologischer Prozesse gewonnen werden

    Functional Modules in Protein-Protein Interaction Networks

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