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Articles by Lukas Burger in JoVE
PAR-Klip - RNA Cilt Proteinler Transcriptome geniş Cilt Siteleri Belirlemek Amacıyla Bir Yöntem
Markus Hafner1, Markus Landthaler2, Lukas Burger3, Mohsen Khorshid3, Jean Hausser4, Philipp Berninger4, Andrea Rothballer1, Manuel Ascano1, Anna-Carina Jungkamp2, Mathias Munschauer2, Alexander Ulrich1, Greg S. Wardle1, Scott Dewell5, Mihaela Zavolan3, Thomas Tuschl1
1Howard Hughes Medical Institute, Laboratory of RNA Molecular Biology, Rockefeller University, 2Berlin Institute for Medical Systems Biology, Max-Delbrück-Center for Molecular Medicine, 3Biozentrum der Universität Basel and Swiss Institute of Bioinformatics (SIB), 4Biozentrum der Universität Basel and Swiss Institute of Bioinformatics (SIB), 5Genomics Resource Center, Rockefeller University
RNA transkript trans etkili RNA bağlayıcı proteinler (RBPs) çok sayıda aracılığı ile geniş posttranskripsiyonel düzenlemeye tabidir. Burada hassas ve transcriptome geniş bir ölçekte RBPs, RNA bağlayıcı siteleri tanımlamak için genellenememektedir bir yöntem mevcut.
Other articles by Lukas Burger on PubMed
Accurate Prediction of Protein-protein Interactions from Sequence Alignments Using a Bayesian Method
Molecular Systems Biology. 2008 | Pubmed ID: 18277381
Accurate and large-scale prediction of protein-protein interactions directly from amino-acid sequences is one of the great challenges in computational biology. Here we present a new Bayesian network method that predicts interaction partners using only multiple alignments of amino-acid sequences of interacting protein domains, without tunable parameters, and without the need for any training examples. We first apply the method to bacterial two-component systems and comprehensively reconstruct two-component signaling networks across all sequenced bacteria. Comparisons of our predictions with known interactions show that our method infers interaction partners genome-wide with high accuracy. To demonstrate the general applicability of our method we show that it also accurately predicts interaction partners in a recent dataset of polyketide synthases. Analysis of the predicted genome-wide two-component signaling networks shows that cognates (interacting kinase/regulator pairs, which lie adjacent on the genome) and orphans (which lie isolated) form two relatively independent components of the signaling network in each genome. In addition, while most genes are predicted to have only a small number of interaction partners, we find that 10% of orphans form a separate class of 'hub' nodes that distribute and integrate signals to and from up to tens of different interaction partners.
Disentangling Direct from Indirect Co-evolution of Residues in Protein Alignments
PLoS Computational Biology. Jan, 2010 | Pubmed ID: 20052271
Predicting protein structure from primary sequence is one of the ultimate challenges in computational biology. Given the large amount of available sequence data, the analysis of co-evolution, i.e., statistical dependency, between columns in multiple alignments of protein domain sequences remains one of the most promising avenues for predicting residues that are contacting in the structure. A key impediment to this approach is that strong statistical dependencies are also observed for many residue pairs that are distal in the structure. Using a comprehensive analysis of protein domains with available three-dimensional structures we show that co-evolving contacts very commonly form chains that percolate through the protein structure, inducing indirect statistical dependencies between many distal pairs of residues. We characterize the distributions of length and spatial distance traveled by these co-evolving contact chains and show that they explain a large fraction of observed statistical dependencies between structurally distal pairs. We adapt a recently developed Bayesian network model into a rigorous procedure for disentangling direct from indirect statistical dependencies, and we demonstrate that this method not only successfully accomplishes this task, but also allows contacts with weak statistical dependency to be detected. To illustrate how additional information can be incorporated into our method, we incorporate a phylogenetic correction, and we develop an informative prior that takes into account that the probability for a pair of residues to contact depends strongly on their primary-sequence distance and the amount of conservation that the corresponding columns in the multiple alignment exhibit. We show that our model including these extensions dramatically improves the accuracy of contact prediction from multiple sequence alignments.
Transcriptome-wide Identification of RNA-binding Protein and MicroRNA Target Sites by PAR-CLIP
Cell. Apr, 2010 | Pubmed ID: 20371350
RNA transcripts are subject to posttranscriptional gene regulation involving hundreds of RNA-binding proteins (RBPs) and microRNA-containing ribonucleoprotein complexes (miRNPs) expressed in a cell-type dependent fashion. We developed a cell-based crosslinking approach to determine at high resolution and transcriptome-wide the binding sites of cellular RBPs and miRNPs. The crosslinked sites are revealed by thymidine to cytidine transitions in the cDNAs prepared from immunopurified RNPs of 4-thiouridine-treated cells. We determined the binding sites and regulatory consequences for several intensely studied RBPs and miRNPs, including PUM2, QKI, IGF2BP1-3, AGO/EIF2C1-4 and TNRC6A-C. Our study revealed that these factors bind thousands of sites containing defined sequence motifs and have distinct preferences for exonic versus intronic or coding versus untranslated transcript regions. The precise mapping of binding sites across the transcriptome will be critical to the interpretation of the rapidly emerging data on genetic variation between individuals and how these variations contribute to complex genetic diseases.
A Quantitative Analysis of CLIP Methods for Identifying Binding Sites of RNA-binding Proteins
Nature Methods. Jul, 2011 | Pubmed ID: 21572407
Cross-linking and immunoprecipitation (CLIP) is increasingly used to map transcriptome-wide binding sites of RNA-binding proteins. We developed a method for CLIP data analysis, and applied it to compare CLIP with photoactivatable ribonucleoside-enhanced CLIP (PAR-CLIP) and to uncover how differences in cross-linking and ribonuclease digestion affect the identified sites. We found only small differences in accuracies of these methods in identifying binding sites of HuR, which binds low-complexity sequences, and Argonaute 2, which has a complex binding specificity. We found that cross-link-induced mutations led to single-nucleotide resolution for both PAR-CLIP and CLIP. Our results confirm the expectation from original CLIP publications that RNA-binding proteins do not protect their binding sites sufficiently under the denaturing conditions used during the CLIP procedure, and we show that extensive digestion with sequence-specific RNases strongly biases the recovered binding sites. This bias can be substantially reduced by milder nuclease digestion conditions.
DNA-binding Factors Shape the Mouse Methylome at Distal Regulatory Regions
Nature. Dec, 2011 | Pubmed ID: 22170606
Methylation of cytosines is an essential epigenetic modification in mammalian genomes, yet the rules that govern methylation patterns remain largely elusive. To gain insights into this process, we generated base-pair-resolution mouse methylomes in stem cells and neuronal progenitors. Advanced quantitative analysis identified low-methylated regions (LMRs) with an average methylation of 30%. These represent CpG-poor distal regulatory regions as evidenced by location, DNase I hypersensitivity, presence of enhancer chromatin marks and enhancer activity in reporter assays. LMRs are occupied by DNA-binding factors and their binding is necessary and sufficient to create LMRs. A comparison of neuronal and stem-cell methylomes confirms this dependency, as cell-type-specific LMRs are occupied by cell-type-specific transcription factors. This study provides methylome references for the mouse and shows that DNA-binding factors locally influence DNA methylation, enabling the identification of active regulatory regions.
