1,270 research outputs found

    A Comprehensive Resource of Interacting Protein Regions for Refining Human Transcription Factor Networks

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    Large-scale data sets of protein-protein interactions (PPIs) are a valuable resource for mapping and analysis of the topological and dynamic features of interactome networks. The currently available large-scale PPI data sets only contain information on interaction partners. The data presented in this study also include the sequences involved in the interactions (i.e., the interacting regions, IRs) suggested to correspond to functional and structural domains. Here we present the first large-scale IR data set obtained using mRNA display for 50 human transcription factors (TFs), including 12 transcription-related proteins. The core data set (966 IRs; 943 PPIs) displays a verification rate of 70%. Analysis of the IR data set revealed the existence of IRs that interact with multiple partners. Furthermore, these IRs were preferentially associated with intrinsic disorder. This finding supports the hypothesis that intrinsically disordered regions play a major role in the dynamics and diversity of TF networks through their ability to structurally adapt to and bind with multiple partners. Accordingly, this domain-based interaction resource represents an important step in refining protein interactions and networks at the domain level and in associating network analysis with biological structure and function

    From condition-specific interactions towards the differential complexome of proteins

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    While capturing the transcriptomic state of a cell is a comparably simple effort with modern sequencing techniques, mapping protein interactomes and complexomes in a sample-speciïŹc manner is currently not feasible on a large scale. To understand crucial biological processes, however, knowledge on the physical interplay between proteins can be more interesting than just their mere expression. In this thesis, we present and demonstrate four software tools that unlock the cellular wiring in a condition-speciïŹc manner and promise a deeper understanding of what happens upon cell fate transitions. PPIXpress allows to exploit the abundance of existing expression data to generate speciïŹc interactomes, which can even consider alternative splicing events when protein isoforms can be related to the presence of causative protein domain interactions of an underlying model. As an addition to this work, we developed the convenient differential analysis tool PPICompare to determine rewiring events and their causes within the inferred interaction networks between grouped samples. Furthermore, we present a new implementation of the combinatorial protein complex prediction algorithm DACO that features a signiïŹcantly reduced runtime. This improvement facilitates an application of the method for a large number of samples and the resulting sample-speciïŹc complexes can ultimately be assessed quantitatively with our novel differential protein complex analysis tool CompleXChange.Das Transkriptom einer Zelle ist mit modernen Sequenzierungstechniken vergleichsweise einfach zu erfassen. Die Ermittlung von Proteininteraktionen und -komplexen wiederum ist in großem Maßstab derzeit nicht möglich. Um wichtige biologische Prozesse zu verstehen, kann das Zusammenspiel von Proteinen jedoch erheblich interessanter sein als deren reine Expression. In dieser Arbeit stellen wir vier Software-Tools vor, die es ermöglichen solche Interaktionen zustandsbezogen zu betrachten und damit ein tieferes VerstĂ€ndnis darĂŒber versprechen, was in der Zelle bei VerĂ€nderungen passiert. PPIXpress ermöglicht es vorhandene Expressionsdaten zu nutzen, um die aktiven Interaktionen in einem biologischen Kontext zu ermitteln. Wenn Proteinvarianten mit Interaktionen von ProteindomĂ€nen in Verbindung gebracht werden können, kann hierbei sogar alternatives Spleißen berĂŒcksichtigen werden. Als ErgĂ€nzung dazu haben wir das komfortable Differenzialanalyse-Tool PPICompare entwickelt, welches VerĂ€nderungen des Interaktoms und deren Ursachen zwischen gruppierten Proben bestimmen kann. DarĂŒber hinaus stellen wir eine neue Implementierung des Proteinkomplex-Vorhersagealgorithmus DACO vor, die eine deutlich reduzierte Laufzeit aufweist. Diese Verbesserung ermöglicht die Anwendung der Methode auf eine große Anzahl von Proben. Die damit bestimmten probenspeziïŹschen Komplexe können schließlich mit unserem neuartigen Differenzialanalyse-Tool CompleXChange quantitativ bewertet werden

    Current State-of-the-Art Bioinformatics Methods in Alzheimer's Disease Studies

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    Alzheimeri tĂ”bi on kĂ”ige levinum dementsuse vorm ning see esineb ĂŒlemaailmselt vanematel inimestel. Uuringud keskenduvad pĂ”hjuste ja ravi leidmisele. KĂ€sitletavad meetodid pĂ”hinevad geeniekspressiooni andmetel. Erinevalt avalduvad geenid eraldatakse ning kasutatakse edasistes analĂŒĂŒsides.KĂ€esolev bakalaureusetöö pakub ĂŒlevaadet Alzheimeri tĂ”ve uuringutes kasutatavatest bioinformaatilistest meetoditest. Tuleneval mitmekĂŒlgsete meetodite hulgal pĂ”hinev analĂŒĂŒs kirjeldab lĂ€henemisi lĂŒhidalt ning toob vĂ€lja nĂ€iteid valitud artiklite hulgast.This thesis provides an overview of the state-of-the-art methods currently used in studying Alzheimer's disease.\\The first section contains background information relevant to the better understanding of the subsequent analysis section. The section is divided into two, providing descriptions of main biological and bioinformatical ideas and methods.\\The second section contains the analysis of a selected subset of articles and provides a case study of a single chosen article. The analysis is split into parts relative to the studies conducted and compares the methods described.\\The resulting overview of the articles can be used a short introduction of the current state in research focused on the better understanding of the neurodegenerative disease
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