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Dive into the research topics where Benjamin Lutz is active.

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Featured researches published by Benjamin Lutz.


Nucleic Acids Research | 2015

Direct-Coupling Analysis of nucleotide coevolution facilitates RNA secondary and tertiary structure prediction

Eleonora De Leonardis; Benjamin Lutz; Sebastian Ratz; Simona Cocco; Rémi Monasson; Alexander Schug; Martin Weigt

Despite the biological importance of non-coding RNA, their structural characterization remains challenging. Making use of the rapidly growing sequence databases, we analyze nucleotide coevolution across homologous sequences via Direct-Coupling Analysis to detect nucleotide-nucleotide contacts. For a representative set of riboswitches, we show that the results of Direct-Coupling Analysis in combination with a generalized Nussinov algorithm systematically improve the results of RNA secondary structure prediction beyond traditional covariance approaches based on mutual information. Even more importantly, we show that the results of Direct-Coupling Analysis are enriched in tertiary structure contacts. By integrating these predictions into molecular modeling tools, systematically improved tertiary structure predictions can be obtained, as compared to using secondary structure information alone.


Bioinformatics | 2013

eSBMTools 1.0: enhanced native structure-based modeling tools

Benjamin Lutz; Claude Sinner; Geertje Heuermann; Abhinav Verma; Alexander Schug

MOTIVATION Molecular dynamics simulations provide detailed insights into the structure and function of biomolecular systems. Thus, they complement experimental measurements by giving access to experimentally inaccessible regimes. Among the different molecular dynamics techniques, native structure-based models (SBMs) are based on energy landscape theory and the principle of minimal frustration. Typically used in protein and RNA folding simulations, they coarse-grain the biomolecular system and/or simplify the Hamiltonian resulting in modest computational requirements while achieving high agreement with experimental data. eSBMTools streamlines running and evaluating SBM in a comprehensive package and offers high flexibility in adding experimental- or bioinformatics-derived restraints. RESULTS We present a software package that allows setting up, modifying and evaluating SBM for both RNA and proteins. The implemented workflows include predicting protein complexes based on bioinformatics-derived inter-protein contact information, a standardized setup of protein folding simulations based on the common PDB format, calculating reaction coordinates and evaluating the simulation by free-energy calculations with weighted histogram analysis method or by phi-values. The modules interface with the molecular dynamics simulation program GROMACS. The package is open source and written in architecture-independent Python2. AVAILABILITY http://sourceforge.net/projects/esbmtools/. CONTACT [email protected]. SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


Journal of Chemical Physics | 2015

Revealing the global map of protein folding space by large-scale simulations.

Claude Sinner; Benjamin Lutz; Abhinav Verma; Alexander Schug

The full characterization of protein folding is a remarkable long-standing challenge both for experiment and simulation. Working towards a complete understanding of this process, one needs to cover the full diversity of existing folds and identify the general principles driving the process. Here, we want to understand and quantify the diversity in folding routes for a large and representative set of protein topologies covering the full range from all alpha helical topologies towards beta barrels guided by the key question: Does the majority of the observed routes contribute to the folding process or only a particular route? We identified a set of two-state folders among non-homologous proteins with a sequence length of 40-120 residues. For each of these proteins, we ran native-structure based simulations both with homogeneous and heterogeneous contact potentials. For each protein, we simulated dozens of folding transitions in continuous uninterrupted simulations and constructed a large database of kinetic parameters. We investigate folding routes by tracking the formation of tertiary structure interfaces and discuss whether a single specific route exists for a topology or if all routes are equiprobable. These results permit us to characterize the complete folding space for small proteins in terms of folding barrier ΔG(‡), number of routes, and the route specificity RT.


IWSG '14 Proceedings of the 2014 6th International Workshop on Science Gateways | 2014

Integration of eSBMTools into the MoSGrid Portal Using the gUSE Technology

S. Bozic; Jens Krüger; Claude Sinner; Benjamin Lutz; Alexander Schug; Ivan Kondov

Native structure based models are a broadly used technique in bio molecular simulation allowing understanding of complex processes in the living cell involving bio macromolecules. Based on energy landscape theory and the principle of minimal frustration, these models find wide application in simulating complex biological processes as diverse as protein or RNA folding and assembly, conformational transitions associated with allostery, to structure prediction. To allow rapid adoption by scientists, especially experimentalists, having no background in programming or high performance computing, we here provide an effective user interface to existing applications running on distributed computing resources. Based on the gateway technologies WS-PGRADE and gUSE, we developed a web-based community application service for native structure based modeling by integrating a powerful user interface to an existing UNICORE grid application based on the eSBMTools package. The eSBM port let has been integrated into the MoSGrid portal and is immediately accessible for the bioinformatics, biophysics and structural biology communities.


BMC Bioinformatics | 2014

Native structure-based modeling and simulation of biomolecular systems per mouse click

Benjamin Lutz; Claude Sinner; S. Bozic; Ivan Kondov; Alexander Schug

BackgroundMolecular dynamics (MD) simulations provide valuable insight into biomolecular systems at the atomic level. Notwithstanding the ever-increasing power of high performance computers current MD simulations face several challenges: the fastest atomic movements require time steps of a few femtoseconds which are small compared to biomolecular relevant timescales of milliseconds or even seconds for large conformational motions. At the same time, scalability to a large number of cores is limited mostly due to long-range interactions. An appealing alternative to atomic-level simulations is coarse-graining the resolution of the system or reducing the complexity of the Hamiltonian to improve sampling while decreasing computational costs. Native structure-based models, also called Gō-type models, are based on energy landscape theory and the principle of minimal frustration. They have been tremendously successful in explaining fundamental questions of, e.g., protein folding, RNA folding or protein function. At the same time, they are computationally sufficiently inexpensive to run complex simulations on smaller computing systems or even commodity hardware. Still, their setup and evaluation is quite complex even though sophisticated software packages support their realization.ResultsHere, we establish an efficient infrastructure for native structure-based models to support the community and enable high-throughput simulations on remote computing resources via GridBeans and UNICORE middleware. This infrastructure organizes the setup of such simulations resulting in increased comparability of simulation results. At the same time, complete workflows for advanced simulation protocols can be established and managed on remote resources by a graphical interface which increases reusability of protocols and additionally lowers the entry barrier into such simulations for, e.g., experimental scientists who want to compare their results against simulations. We demonstrate the power of this approach by illustrating it for protein folding simulations for a range of proteins.ConclusionsWe present software enhancing the entire workflow for native structure-based simulations including exception-handling and evaluations. Extending the capability and improving the accessibility of existing simulation packages the software goes beyond the state of the art in the domain of biomolecular simulations. Thus we expect that it will stimulate more individuals from the community to employ more confidently modeling in their research.


Israel Journal of Chemistry | 2014

Simulating Biomolecular Folding and Function by Native‐Structure‐Based/Go‐Type Models

Claude Sinner; Benjamin Lutz; Shalini John; Ines Reinartz; Abhinav Verma; Alexander Schug


Biophysical Journal | 2015

Protein and RNA Structure Prediction by Integration of Co-Evolutionary Information into Molecular Simulation

Eleonora De Leonardis; Benjamin Lutz; Simona Cocco; Rémi Monasson; Hendrik Szurmant; Martin Weigt; Alexander Schug


Biophysical Journal | 2013

Analyzing Protein Folding by High-throughput Simulations

Claude Sinner; Benjamin Lutz; Abhinav Verma; Alexander Schug


Biophysical Journal | 2016

RNA Secondary and Tertiary Structure Prediction by Tracing Nucleotide Co-Evolution with Direct Coupling Analysis

Eleonora De Leonardis; Benjamin Lutz; Sebastian Ratz; Cocco Simona; Rémi Monasson; Martin Weigt; Alexander Schug


Biophysical Journal | 2014

Effects of Energetic Heterogeneity on Protein Folding Dynamics Across Many Non-Homologous Proteins

Claude Sinner; Benjamin Lutz; Abhinav Verma; Alexander Schug

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Alexander Schug

Karlsruhe Institute of Technology

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Claude Sinner

Karlsruhe Institute of Technology

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Abhinav Verma

Karlsruhe Institute of Technology

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Eleonora De Leonardis

Centre national de la recherche scientifique

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Rémi Monasson

École Normale Supérieure

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Ivan Kondov

Karlsruhe Institute of Technology

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S. Bozic

Karlsruhe Institute of Technology

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Sebastian Ratz

Karlsruhe Institute of Technology

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Simona Cocco

École Normale Supérieure

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