Hendrik Treutler
Leibniz Association
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Publication
Featured researches published by Hendrik Treutler.
BMC Systems Biology | 2012
Hendrik Rohn; Astrid Junker; Anja Hartmann; Eva Grafahrend-Belau; Hendrik Treutler; Matthias Klapperstück; Tobias Czauderna; Christian Klukas; Falk Schreiber
BackgroundExperimental datasets are becoming larger and increasingly complex, spanning different data domains, thereby expanding the requirements for respective tool support for their analysis. Networks provide a basis for the integration, analysis and visualization of multi-omics experimental datasets.ResultsHere we present Vanted (version 2), a framework for systems biology applications, which comprises a comprehensive set of seven main tasks. These range from network reconstruction, data visualization, integration of various data types, network simulation to data exploration combined with a manifold support of systems biology standards for visualization and data exchange. The offered set of functionalities is instantiated by combining several tasks in order to enable users to view and explore a comprehensive dataset from different perspectives. We describe the system as well as an exemplary workflow.ConclusionsVanted is a stand-alone framework which supports scientists during the data analysis and interpretation phase. It is available as a Java open source tool from http://www.vanted.org
BMC Bioinformatics | 2015
Martin Nettling; Hendrik Treutler; Jan Grau; Jens Keilwagen; Stefan Posch; Ivo Grosse
BackgroundFor three decades, sequence logos are the de facto standard for the visualization of sequence motifs in biology and bioinformatics. Reasons for this success story are their simplicity and clarity. The number of inferred and published motifs grows with the number of data sets and motif extraction algorithms. Hence, it becomes more and more important to perceive differences between motifs. However, motif differences are hard to detect from individual sequence logos in case of multiple motifs for one transcription factor, highly similar binding motifs of different transcription factors, or multiple motifs for one protein domain.ResultsHere, we present DiffLogo, a freely available, extensible, and user-friendly R package for visualizing motif differences. DiffLogo is capable of showing differences between DNA motifs as well as protein motifs in a pair-wise manner resulting in publication-ready figures. In case of more than two motifs, DiffLogo is capable of visualizing pair-wise differences in a tabular form. Here, the motifs are ordered by similarity, and the difference logos are colored for clarity. We demonstrate the benefit of DiffLogo on CTCF motifs from different human cell lines, on E-box motifs of three basic helix-loop-helix transcription factors as examples for comparison of DNA motifs, and on F-box domains from three different families as example for comparison of protein motifs.ConclusionsDiffLogo provides an intuitive visualization of motif differences. It enables the illustration and investigation of differences between highly similar motifs such as binding patterns of transcription factors for different cell types, treatments, and algorithmic approaches.
BMC Bioinformatics | 2017
Martin Nettling; Hendrik Treutler; Jesús Cerquides; Ivo Grosse
BackgroundTranscriptional gene regulation is a fundamental process in nature, and the experimental and computational investigation of DNA binding motifs and their binding sites is a prerequisite for elucidating this process. Approaches for de-novo motif discovery can be subdivided in phylogenetic footprinting that takes into account phylogenetic dependencies in aligned sequences of more than one species and non-phylogenetic approaches based on sequences from only one species that typically take into account intra-motif dependencies. It has been shown that modeling (i) phylogenetic dependencies as well as (ii) intra-motif dependencies separately improves de-novo motif discovery, but there is no approach capable of modeling both (i) and (ii) simultaneously.ResultsHere, we present an approach for de-novo motif discovery that combines phylogenetic footprinting with motif models capable of taking into account intra-motif dependencies. We study the degree of intra-motif dependencies inferred by this approach from ChIP-seq data of 35 transcription factors. We find that significant intra-motif dependencies of orders 1 and 2 are present in all 35 datasets and that intra-motif dependencies of order 2 are typically stronger than those of order 1. We also find that the presented approach improves the classification performance of phylogenetic footprinting in all 35 datasets and that incorporating intra-motif dependencies of order 2 yields a higher classification performance than incorporating such dependencies of only order 1.ConclusionCombining phylogenetic footprinting with motif models incorporating intra-motif dependencies leads to an improved performance in the classification of transcription factor binding sites. This may advance our understanding of transcriptional gene regulation and its evolution.
Metabolites | 2016
Hendrik Treutler; Steffen Neumann
Mass spectrometry is a key analytical platform for metabolomics. The precise quantification and identification of small molecules is a prerequisite for elucidating the metabolism and the detection, validation, and evaluation of isotope clusters in LC-MS data is important for this task. Here, we present an approach for the improved detection of isotope clusters using chemical prior knowledge and the validation of detected isotope clusters depending on the substance mass using database statistics. We find remarkable improvements regarding the number of detected isotope clusters and are able to predict the correct molecular formula in the top three ranks in 92% of the cases. We make our methodology freely available as part of the Bioconductor packages xcms version 1.50.0 and CAMERA version 1.30.0.
Journal of Biotechnology | 2017
René Meier; Christoph Ruttkies; Hendrik Treutler; Steffen Neumann
Metabolomics is the modern term for the field of small molecule research in biology and biochemistry. Currently, metabolomics is undergoing a transition where the classic analytical chemistry is combined with modern cheminformatics and bioinformatics methods, paving the way for large-scale data analysis. We give some background on past developments, highlight current state-of-the-art approaches, and give a perspective on future requirements.
International Journal of Molecular Sciences | 2018
Kristian Peters; Anja Worrich; Alexander Weinhold; Oliver Alka; Gerd Ulrich Balcke; Claudia Birkemeyer; Helge Bruelheide; Onno W. Calf; Sophie Dietz; Kai Dührkop; Emmanuel Gaquerel; Uwe Heinig; Marlen Kücklich; Mirka Macel; Caroline Müller; Yvonne Poeschl; Georg Pohnert; Christian Ristok; Víctor M. Rodríguez; Christoph Ruttkies; Meredith C. Schuman; Rabea Schweiger; Nir Shahaf; Christoph Steinbeck; María Estrella Tortosa; Hendrik Treutler; Nico Ueberschaar; Pablo Velasco; Brigitte M. Weiß; Anja Widdig
The relatively new research discipline of Eco-Metabolomics is the application of metabolomics techniques to ecology with the aim to characterise biochemical interactions of organisms across different spatial and temporal scales. Metabolomics is an untargeted biochemical approach to measure many thousands of metabolites in different species, including plants and animals. Changes in metabolite concentrations can provide mechanistic evidence for biochemical processes that are relevant at ecological scales. These include physiological, phenotypic and morphological responses of plants and communities to environmental changes and also interactions with other organisms. Traditionally, research in biochemistry and ecology comes from two different directions and is performed at distinct spatiotemporal scales. Biochemical studies most often focus on intrinsic processes in individuals at physiological and cellular scales. Generally, they take a bottom-up approach scaling up cellular processes from spatiotemporally fine to coarser scales. Ecological studies usually focus on extrinsic processes acting upon organisms at population and community scales and typically study top-down and bottom-up processes in combination. Eco-Metabolomics is a transdisciplinary research discipline that links biochemistry and ecology and connects the distinct spatiotemporal scales. In this review, we focus on approaches to study chemical and biochemical interactions of plants at various ecological levels, mainly plant–organismal interactions, and discuss related examples from other domains. We present recent developments and highlight advancements in Eco-Metabolomics over the last decade from various angles. We further address the five key challenges: (1) complex experimental designs and large variation of metabolite profiles; (2) feature extraction; (3) metabolite identification; (4) statistical analyses; and (5) bioinformatics software tools and workflows. The presented solutions to these challenges will advance connecting the distinct spatiotemporal scales and bridging biochemistry and ecology.
Bioinformatics | 2017
Martin Nettling; Hendrik Treutler; Jesús Cerquides; Ivo Grosse
Motivation: The computational investigation of DNA binding motifs from binding sites is one of the classic tasks in bioinformatics and a prerequisite for understanding gene regulation as a whole. Due to the development of sequencing technologies and the increasing number of available genomes, approaches based on phylogenetic footprinting become increasingly attractive. Phylogenetic footprinting requires phylogenetic trees with attached substitution probabilities for quantifying the evolution of binding sites, but these trees and substitution probabilities are typically not known and cannot be estimated easily. Results: Here, we investigate the influence of phylogenetic trees with different substitution probabilities on the classification performance of phylogenetic footprinting using synthetic and real data. For synthetic data we find that the classification performance is highest when the substitution probability used for phylogenetic footprinting is similar to that used for data generation. For real data, however, we typically find that the classification performance of phylogenetic footprinting surprisingly increases with increasing substitution probabilities and is often highest for unrealistically high substitution probabilities close to one. This finding suggests that choosing realistic model assumptions might not always yield optimal predictions in general and that choosing unrealistically high substitution probabilities close to one might actually improve the classification performance of phylogenetic footprinting. Availability and Implementation: The proposed PF is implemented in JAVA and can be downloaded from https://github.com/mgledi/PhyFoo Contact: [email protected]‐halle.de Supplementary information: Supplementary data are available at Bioinformatics online.
BMC Genomics | 2016
Martin Nettling; Hendrik Treutler; Jesús Cerquides; Ivo Grosse
BackgroundTranscriptional gene regulation is a fundamental process in nature, and the experimental and computational investigation of DNA binding motifs and their binding sites is a prerequisite for elucidating this process. ChIP-seq has become the major technology to uncover genomic regions containing those binding sites, but motifs predicted by traditional computational approaches using these data are distorted by a ubiquitous binding-affinity bias. Here, we present an approach for detecting and correcting this bias using inter-species information.ResultsWe find that the binding-affinity bias caused by the ChIP-seq experiment in the reference species is stronger than the indirect binding-affinity bias in orthologous regions from phylogenetically related species. We use this difference to develop a phylogenetic footprinting model that is capable of detecting and correcting the binding-affinity bias. We find that this model improves motif prediction and that the corrected motifs are typically softer than those predicted by traditional approaches.ConclusionsThese findings indicate that motifs published in databases and in the literature are artificially sharpened compared to the native motifs. These findings also indicate that our current understanding of transcriptional gene regulation might be blurred, but that it is possible to advance this understanding by taking into account inter-species information available today and even more in the future.
Biotechnology Journal | 2015
Susann Mönchgesang; Christoph Ruttkies; Hendrik Treutler; Marcus Heisters
The Plant Science Student Conference is highly interdisciplinary with the common denominator green biotechnology and has a long tradition of bringing together young scientists in the green biotechnology region of Halle-Jena-Leipzig. Among others, two Leibniz institutes, the Helmholtz Center for Environmental Research and institutes of nearby universities have joined their forces to create a plant-based bioeconomy (ScienceCampus Halle) and investigate biodiversity (iDiv). To connect eager graduate students, the PSSC is an annual student conference alternating in location between the Leibniz Institute of Plant Biochemistry (IPB) in Halle (Saale) and the Leibniz Institute of Plant Genetics and Crop Plant Research (IPK) in Gatersleben. This year, more than 70 graduate students participated in the 11th PSSC at the IPB from 2nd–5th June 2015. Headed by the PhD speakers of the IPB, a team of 15 students catered for the scientific, social, and financial issues as well as the PR for the conference. According to organizer Hendrik Treutler, “the PSSC gathers the bright minds of tomorrow‘s plant biotechnology” and is thus a perfect chance to build networks. After a warm welcome by Prof. Dierk Scheel, the conference was kicked off on Tuesday afternoon. Altogether 23 students presented their work in short talks in various sessions about bioinformatics, metabolomics, genetics, signaling, development, and plant defense. Furthermore, 34 posters were discussed in two poster sessions.
Analytical Chemistry | 2016
Hendrik Treutler; Hiroshi Tsugawa; Andrea Porzel; Karin Gorzolka; Alain Tissier; Steffen Neumann; Gerd Ulrich Balcke