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Dive into the research topics where Steffen Heyne is active.

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Featured researches published by Steffen Heyne.


Nucleic Acids Research | 2016

deepTools2: a next generation web server for deep-sequencing data analysis

Fidel Ramírez; Devon P. Ryan; Björn Grüning; Vivek Bhardwaj; Fabian Kilpert; Andreas S. Richter; Steffen Heyne; Friederike Dündar; Thomas Manke

We present an update to our Galaxy-based web server for processing and visualizing deeply sequenced data. Its core tool set, deepTools, allows users to perform complete bioinformatic workflows ranging from quality controls and normalizations of aligned reads to integrative analyses, including clustering and visualization approaches. Since we first described our deepTools Galaxy server in 2014, we have implemented new solutions for many requests from the community and our users. Here, we introduce significant enhancements and new tools to further improve data visualization and interpretation. deepTools continue to be open to all users and freely available as a web service at deeptools.ie-freiburg.mpg.de. The new deepTools2 suite can be easily deployed within any Galaxy framework via the toolshed repository, and we also provide source code for command line usage under Linux and Mac OS X. A public and documented API for access to deepTools functionality is also available.


Nucleic Acids Research | 2010

Freiburg RNA Tools: a web server integrating IntaRNA, ExpaRNA and LocARNA

Cameron Smith; Steffen Heyne; Andreas S. Richter; Sebastian Will; Rolf Backofen

The Freiburg RNA tools web server integrates three tools for the advanced analysis of RNA in a common web-based user interface. The tools IntaRNA, ExpaRNA and LocARNA support the prediction of RNA–RNA interaction, exact RNA matching and alignment of RNA, respectively. The Freiburg RNA tools web server and the software packages of the stand-alone tools are freely accessible at http://rna.informatik.uni-freiburg.de.


Cell | 2014

Paternal Diet Defines Offspring Chromatin State and Intergenerational Obesity

Anita Öst; Adelheid Lempradl; Eduard Casas; Melanie Weigert; Theodor Tiko; Merdin Deniz; Lorena Pantano; Ulrike Boenisch; Pavel M. Itskov; Marlon Stoeckius; Marius Ruf; Nikolaus Rajewsky; Gunter Reuter; Nicola Iovino; Carlos Ribeiro; Mattias Alenius; Steffen Heyne; Tanya Vavouri; J. Andrew Pospisilik

The global rise in obesity has revitalized a search for genetic and epigenetic factors underlying the disease. We present a Drosophila model of paternal-diet-induced intergenerational metabolic reprogramming (IGMR) and identify genes required for its encoding in offspring. Intriguingly, we find that as little as 2 days of dietary intervention in fathers elicits obesity in offspring. Paternal sugar acts as a physiological suppressor of variegation, desilencing chromatin-state-defined domains in both mature sperm and in offspring embryos. We identify requirements for H3K9/K27me3-dependent reprogramming of metabolic genes in two distinct germline and zygotic windows. Critically, we find evidence that a similar system may regulate obesity susceptibility and phenotype variation in mice and humans. The findings provide insight into the mechanisms underlying intergenerational metabolic reprogramming and carry profound implications for our understanding of phenotypic variation and evolution.


Cell | 2016

Trim28 Haploinsufficiency Triggers Bi-stable Epigenetic Obesity

Kevin Dalgaard; Kathrin Landgraf; Steffen Heyne; Adelheid Lempradl; John Longinotto; Klaus Gossens; Marius Ruf; Michael Orthofer; Ruslan Strogantsev; Madhan Selvaraj; Tess Tsai-Hsiu Lu; Eduard Casas; Raffaele Teperino; M. Azim Surani; Ilona Zvetkova; Debra Rimmington; Y.C. Loraine Tung; Brian Yee Hong Lam; Rachel Larder; Giles S. H. Yeo; Stephen O’Rahilly; Tanya Vavouri; Emma Whitelaw; Josef M. Penninger; Thomas Jenuwein; Ching-Lung Cheung; Anne C. Ferguson-Smith; Anthony P. Coll; Antje Körner; J. Andrew Pospisilik

Summary More than one-half billion people are obese, and despite progress in genetic research, much of the heritability of obesity remains enigmatic. Here, we identify a Trim28-dependent network capable of triggering obesity in a non-Mendelian, “on/off” manner. Trim28+/D9 mutant mice exhibit a bi-modal body-weight distribution, with isogenic animals randomly emerging as either normal or obese and few intermediates. We find that the obese-“on” state is characterized by reduced expression of an imprinted gene network including Nnat, Peg3, Cdkn1c, and Plagl1 and that independent targeting of these alleles recapitulates the stochastic bi-stable disease phenotype. Adipose tissue transcriptome analyses in children indicate that humans too cluster into distinct sub-populations, stratifying according to Trim28 expression, transcriptome organization, and obesity-associated imprinted gene dysregulation. These data provide evidence of discrete polyphenism in mouse and man and thus carry important implications for complex trait genetics, evolution, and medicine. Video Abstract


Bioinformatics | 2012

GraphClust: alignment-free structural clustering of local RNA secondary structures

Steffen Heyne; Fabrizio Costa; Dominic Rose; Rolf Backofen

Motivation: Clustering according to sequence–structure similarity has now become a generally accepted scheme for ncRNA annotation. Its application to complete genomic sequences as well as whole transcriptomes is therefore desirable but hindered by extremely high computational costs. Results: We present a novel linear-time, alignment-free method for comparing and clustering RNAs according to sequence and structure. The approach scales to datasets of hundreds of thousands of sequences. The quality of the retrieved clusters has been benchmarked against known ncRNA datasets and is comparable to state-of-the-art sequence–structure methods although achieving speedups of several orders of magnitude. A selection of applications aiming at the detection of novel structural ncRNAs are presented. Exemplarily, we predicted local structural elements specific to lincRNAs likely functionally associating involved transcripts to vital processes of the human nervous system. In total, we predicted 349 local structural RNA elements. Availability: The GraphClust pipeline is available on request. Contact: [email protected] Supplementary information: Supplementary data are available at Bioinformatics online.


Bioinformatics | 2009

Lightweight comparison of RNAs based on exact sequence–structure matches

Steffen Heyne; Sebastian Will; Michael Beckstette; Rolf Backofen

Motivation: Specific functions of ribonucleic acid (RNA) molecules are often associated with different motifs in the RNA structure. The key feature that forms such an RNA motif is the combination of sequence and structure properties. In this article, we introduce a new RNA sequence–structure comparison method which maintains exact matching substructures. Existing common substructures are treated as whole unit while variability is allowed between such structural motifs. Based on a fast detectable set of overlapping and crossing substructure matches for two nested RNA secondary structures, our method ExpaRNA (exact pattern of alignment of RNA) computes the longest collinear sequence of substructures common to two RNAs in O(H·nm) time and O(nm) space, where H ≪ n·m for real RNA structures. Applied to different RNAs, our method correctly identifies sequence–structure similarities between two RNAs. Results: We have compared ExpaRNA with two other alignment methods that work with given RNA structures, namely RNAforester and RNA_align. The results are in good agreement, but can be obtained in a fraction of running time, in particular for larger RNAs. We have also used ExpaRNA to speed up state-of-the-art Sankoff-style alignment tools like LocARNA, and observe a tradeoff between quality and speed. However, we get a speedup of 4.25 even in the highest quality setting, where the quality of the produced alignment is comparable to that of LocARNA alone. Availability: The presented algorithm is implemented in the program ExpaRNA, which is available from our website (http://www.bioinf.uni-freiburg.de/Software). Contact: {[email protected],[email protected]} Supplementary information: Supplementary data are available at Bioinformatics online.


Algorithms for Molecular Biology | 2013

LocARNAscan: Incorporating thermodynamic stability in sequence and structure-based RNA homology search

Sebastian Will; Michael Siebauer; Steffen Heyne; Jan Engelhardt; Peter F. Stadler; Kristin Reiche; Rolf Backofen

BackgroundThe search for distant homologs has become an import issue in genome annotation. A particular difficulty is posed by divergent homologs that have lost recognizable sequence similarity. This same problem also arises in the recognition of novel members of large classes of RNAs such as snoRNAs or microRNAs that consist of families unrelated by common descent. Current homology search tools for structured RNAs are either based entirely on sequence similarity (such as blast or hmmer) or combine sequence and secondary structure. The most prominent example of the latter class of tools is Infernal. Alternatives are descriptor-based methods. In most practical applications published to-date, however, the information contained in covariance models or manually prescribed search patterns is dominated by sequence information. Here we ask two related questions: (1) Is secondary structure alone informative for homology search and the detection of novel members of RNA classes? (2) To what extent is the thermodynamic propensity of the target sequence to fold into the correct secondary structure helpful for this task?ResultsSequence-structure alignment can be used as an alternative search strategy. In this scenario, the query consists of a base pairing probability matrix, which can be derived either from a single sequence or from a multiple alignment representing a set of known representatives. Sequence information can be optionally added to the query. The target sequence is pre-processed to obtain local base pairing probabilities. As a search engine we devised a semi-global scanning variant of LocARNA’s algorithm for sequence-structure alignment. The LocARNAscan tool is optimized for speed and low memory consumption. In benchmarking experiments on artificial data we observe that the inclusion of thermodynamic stability is helpful, albeit only in a regime of extremely low sequence information in the query. We observe, furthermore, that the sensitivity is bounded in particular by the limited accuracy of the predicted local structures of the target sequence.ConclusionsAlthough we demonstrate that a purely structure-based homology search is feasible in principle, it is unlikely to outperform tools such as Infernal in most application scenarios, where a substantial amount of sequence information is typically available. The LocARNAscan approach will profit, however, from high throughput methods to determine RNA secondary structure. In transcriptome-wide applications, such methods will provide accurate structure annotations on the target side.AvailabilitySource code of the free software LocARNAscan 1.0 and supplementary data are available athttp://www.bioinf.uni-leipzig.de/Software/LocARNAscan.


BMC Bioinformatics | 2014

ExpaRNA-P: simultaneous exact pattern matching and folding of RNAs

Christina Otto; Mathias Möhl; Steffen Heyne; Mika Amit; Gad M. Landau; Rolf Backofen; Sebastian Will

BackgroundIdentifying sequence-structure motifs common to two RNAs can speed up the comparison of structural RNAs substantially. The core algorithm of the existent approach ExpaRNA solves this problem for a priori known input structures. However, such structures are rarely known; moreover, predicting them computationally is no rescue, since single sequence structure prediction is highly unreliable.ResultsThe novel algorithm ExpaRNA-P computes exactly matching sequence-structure motifs in entire Boltzmann-distributed structure ensembles of two RNAs; thereby we match and fold RNAs simultaneously, analogous to the well-known “simultaneous alignment and folding” of RNAs. While this implies much higher flexibility compared to ExpaRNA, ExpaRNA-P has the same very low complexity (quadratic in time and space), which is enabled by its novel structure ensemble-based sparsification. Furthermore, we devise a generalized chaining algorithm to compute compatible subsets of ExpaRNA-P’s sequence-structure motifs. Resulting in the very fast RNA alignment approach ExpLoc-P, we utilize the best chain as anchor constraints for the sequence-structure alignment tool LocARNA. ExpLoc-P is benchmarked in several variants and versus state-of-the-art approaches. In particular, we formally introduce and evaluate strict and relaxed variants of the problem; the latter makes the approach sensitive to compensatory mutations. Across a benchmark set of typical non-coding RNAs, ExpLoc-P has similar accuracy to LocARNA but is four times faster (in both variants), while it achieves a speed-up over 30-fold for the longest benchmark sequences (≈400nt). Finally, different ExpLoc-P variants enable tailoring of the method to specific application scenarios. ExpaRNA-P and ExpLoc-P are distributed as part of the LocARNA package. The source code is freely available at http://www.bioinf.uni-freiburg.de/Software/ExpaRNA-P.ConclusionsExpaRNA-P’s novel ensemble-based sparsification reduces its complexity to quadratic time and space. Thereby, ExpaRNA-P significantly speeds up sequence-structure alignment while maintaining the alignment quality. Different ExpaRNA-P variants support a wide range of applications.


Cell Metabolism | 2018

The Polycomb-Dependent Epigenome Controls β Cell Dysfunction, Dedifferentiation, and Diabetes

Tess Tsai-Hsiu Lu; Steffen Heyne; Erez Dror; Eduard Casas; Laura Leonhardt; Thorina Boenke; Chih-Hsiang Yang; Sagar; Laura Arrigoni; Kevin Dalgaard; Raffaele Teperino; Lennart Enders; Madhan Selvaraj; Marius Ruf; Sunil Jayaramaiah Raja; Huafeng Xie; Ulrike Boenisch; Stuart H. Orkin; Francis C. Lynn; Brad G. Hoffman; Dominic Grün; Tanya Vavouri; Adelheid Lempradl; Andrew Pospisilik

Summary To date, it remains largely unclear to what extent chromatin machinery contributes to the susceptibility and progression of complex diseases. Here, we combine deep epigenome mapping with single-cell transcriptomics to mine for evidence of chromatin dysregulation in type 2 diabetes. We find two chromatin-state signatures that track β cell dysfunction in mice and humans: ectopic activation of bivalent Polycomb-silenced domains and loss of expression at an epigenomically unique class of lineage-defining genes. β cell-specific Polycomb (Eed/PRC2) loss of function in mice triggers diabetes-mimicking transcriptional signatures and highly penetrant, hyperglycemia-independent dedifferentiation, indicating that PRC2 dysregulation contributes to disease. The work provides novel resources for exploring β cell transcriptional regulation and identifies PRC2 as necessary for long-term maintenance of β cell identity. Importantly, the data suggest a two-hit (chromatin and hyperglycemia) model for loss of β cell identity in diabetes.


research in computational molecular biology | 2012

Exact pattern matching for RNA structure ensembles

Christina Schmiedl; Mathias Möhl; Steffen Heyne; Mika Amit; Gad M. Landau; Sebastian Will; Rolf Backofen

ExpaRNAs core algorithm computes, for two fixed RNA structures, a maximal non-overlapping set of maximal exact matchings. We introduce an algorithm ExpaRNA-P that solves the lifted problem of finding such sets of exact matchings in entire Boltzmann-distributed structure ensembles of two RNAs. Due to a novel kind of structural sparsification, the new algorithm maintains the time and space complexity of the algorithm for fixed input structures. Furthermore, we generalized the chaining algorithm of ExpaRNA in order to compute a compatible subset of ExpaRNA-Ps exact matchings. We show that ExpaRNA-P outperforms ExpaRNA in BRAliBase 2.1 benchmarks, where we pass the chained exact matchings as anchor constraints to the RNA alignment tool LocARNA. Compared to LocARNA, this novel approach shows similar accuracy but is six times faster.

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Tanya Vavouri

European Bioinformatics Institute

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