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Dive into the research topics where Andreas Bartschat is active.

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Featured researches published by Andreas Bartschat.


PLOS ONE | 2014

Fast Segmentation of Stained Nuclei in Terabyte-Scale, Time Resolved 3D Microscopy Image Stacks

Johannes Stegmaier; Jens C. Otte; Andrei Yu. Kobitski; Andreas Bartschat; Ariel Garcia; G. Ulrich Nienhaus; Uwe Strähle; Ralf Mikut

Automated analysis of multi-dimensional microscopy images has become an integral part of modern research in life science. Most available algorithms that provide sufficient segmentation quality, however, are infeasible for a large amount of data due to their high complexity. In this contribution we present a fast parallelized segmentation method that is especially suited for the extraction of stained nuclei from microscopy images, e.g., of developing zebrafish embryos. The idea is to transform the input image based on gradient and normal directions in the proximity of detected seed points such that it can be handled by straightforward global thresholding like Otsu’s method. We evaluate the quality of the obtained segmentation results on a set of real and simulated benchmark images in 2D and 3D and show the algorithm’s superior performance compared to other state-of-the-art algorithms. We achieve an up to ten-fold decrease in processing times, allowing us to process large data sets while still providing reasonable segmentation results.


Bioinformatics | 2015

XPIWIT—an XML pipeline wrapper for the Insight Toolkit

Andreas Bartschat; Eduard Hübner; Markus Reischl; Ralf Mikut; Johannes Stegmaier

UNLABELLED The Insight Toolkit offers plenty of features for multidimensional image analysis. Current implementations, however, often suffer either from a lack of flexibility due to hard-coded C++ pipelines for a certain task or by slow execution times, e.g. caused by inefficient implementations or multiple read/write operations for separate filter execution. We present an XML-based wrapper application for the Insight Toolkit that combines the performance of a pure C++ implementation with an easy-to-use graphical setup of dynamic image analysis pipelines. Created XML pipelines can be interpreted and executed by XPIWIT in console mode either locally or on large clusters. We successfully applied the software tool for the automated analysis of terabyte-scale, time-resolved 3D image data of zebrafish embryos. AVAILABILITY AND IMPLEMENTATION XPIWIT is implemented in C++ using the Insight Toolkit and the Qt SDK. It has been successfully compiled and tested under Windows and Unix-based systems. Software and documentation are distributed under Apache 2.0 license and are publicly available for download at https://bitbucket.org/jstegmaier/xpiwit/downloads/. CONTACT [email protected] SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


PLOS Computational Biology | 2018

EmbryoMiner: A new framework for interactive knowledge discovery in large-scale cell tracking data of developing embryos

Benjamin Schott; Manuel Traub; Cornelia Schlagenhauf; Masanari Takamiya; Thomas Antritter; Andreas Bartschat; Katharina Löffler; Denis Blessing; Jens C. Otte; Andrei Yu. Kobitski; G. Ulrich Nienhaus; Uwe Strähle; Ralf Mikut; Johannes Stegmaier

State-of-the-art light-sheet and confocal microscopes allow recording of entire embryos in 3D and over time (3D+t) for many hours. Fluorescently labeled structures can be segmented and tracked automatically in these terabyte-scale 3D+t images, resulting in thousands of cell migration trajectories that provide detailed insights to large-scale tissue reorganization at the cellular level. Here we present EmbryoMiner, a new interactive open-source framework suitable for in-depth analyses and comparisons of entire embryos, including an extensive set of trajectory features. Starting at the whole-embryo level, the framework can be used to iteratively focus on a region of interest within the embryo, to investigate and test specific trajectory-based hypotheses and to extract quantitative features from the isolated trajectories. Thus, the new framework provides a valuable new way to quantitatively compare corresponding anatomical regions in different embryos that were manually selected based on biological prior knowledge. As a proof of concept, we analyzed 3D+t light-sheet microscopy images of zebrafish embryos, showcasing potential user applications that can be performed using the new framework.


Scientific Reports | 2018

3D confocal laser-scanning microscopy for large-area imaging of the corneal subbasal nerve plexus

Stephan Allgeier; Andreas Bartschat; Sebastian Bohn; Sabine Peschel; Klaus-Martin Reichert; Karsten Sperlich; Marcus Walckling; Veit Hagenmeyer; Ralf Mikut; Oliver Stachs; Bernd Köhler

The capability of corneal confocal microscopy (CCM) to acquire high-resolution in vivo images of the densely innervated human cornea has gained considerable interest in using this non-invasive technique as an objective diagnostic tool for staging peripheral neuropathies. Morphological alterations of the corneal subbasal nerve plexus (SNP) assessed by CCM have been shown to correlate well with the progression of neuropathic diseases and even predict future-incident neuropathy. Since the field of view of single CCM images is insufficient for reliable characterisation of nerve morphology, several image mosaicking techniques have been developed to facilitate the assessment of the SNP in large-area visualisations. Due to the limited depth of field of confocal microscopy, these approaches are highly sensitive to small deviations of the focus plane from the SNP layer. Our contribution proposes a new automated solution, combining guided eye movements for rapid expansion of the acquired SNP area and axial focus plane oscillations to guarantee complete imaging of the SNP. We present results of a feasibility study using the proposed setup to evaluate different oscillation settings. By comparing different image selection approaches, we show that automatic tissue classification algorithms are essential to create high-quality mosaic images from the acquired 3D datasets.


Journal of Big Data | 2018

Concept and benchmark results for Big Data energy forecasting based on Apache Spark

Jorge Ángel González Ordiano; Andreas Bartschat; Nicole Ludwig; Eric Braun; Simon Waczowicz; Nicolas Renkamp; Nico Peter; Clemens Düpmeier; Ralf Mikut; Veit Hagenmeyer

The present article describes a concept for the creation and application of energy forecasting models in a distributed environment. Additionally, a benchmark comparing the time required for the training and application of data-driven forecasting models on a single computer and a computing cluster is presented. This comparison is based on a simulated dataset and both R and Apache Spark are used. Furthermore, the obtained results show certain points in which the utilization of distributed computing based on Spark may be advantageous.


Current Directions in Biomedical Engineering | 2017

ZebrafishMiner: an open source software for interactive evaluation of domain-specific fluorescence in zebrafish

Markus Reischl; Andreas Bartschat; Urban Liebel; Jochen Gehrig; Ference Müller; Ralf Mikut

Abstract High-throughput microscopy makes it possible to observe the morphology of zebrafish on large scale to quantify genetic, toxic or drug effects. The image acquisition is done by automated microscopy, images are evaluated automatically by image processing pipelines, tailored specifically to the requirements of the scientific question. The transfer of such algorithms to other projects, however, is complex due to missing guidelines and lack of mathematical or programming knowledge. In this work, we implement an image processing pipeline for automatic fluorescence quantification in user-defined domains of zebrafish embryos and larvae of different age. The pipeline is capable of detecting embryos and larvae in image stacks and quantifying domain activity. To make this protocol available to the community, we developed an open source software package called „ZebrafishMiner“ which guides the user through all steps of the processing pipeline and makes the algorithms available and easy to handle. We implemented all routines in an MATLAB-based graphical user interface (GUI) that gives the user control over all image processing parameters. The software is shipped with a manual of 30 pages and three tutorial datasets, which guide the user through the manual step by step. It can be downloaded at https://sourceforge.net/projects/scixminer/.


arXiv: Learning | 2017

The MATLAB Toolbox SciXMiner: User's Manual and Programmer's Guide.

Ralf Mikut; Andreas Bartschat; Wolfgang Doneit; Jorge Ángel González Ordiano; Benjamin Schott; Johannes Stegmaier; Simon Waczowicz; Markus Reischl


Forum Bildverarbeitung 2016. Hrsg.: M. Heizmann | 2016

Automatic corneal tissue classification using bag-of-visual-words approaches

Andreas Bartschat; Lorenzo Toso; Johannes Stegmaier; Arjan Kuijper; Ralf Mikut; Bernd Köhler; Stephan Allgeier


international symposium on biomedical imaging | 2018

Cell segmentation in 3D confocal images using supervoxel merge-forests with CNN-based hypothesis selection

Johannes Stegmaier; Thiago Vallin Spina; Alexandre X. Falcão; Andreas Bartschat; Ralf Mikut; Elliot M. Meyerowitz; Alexandre Cunha


arXiv: Neural and Evolutionary Computing | 2018

Transfer Learning with Human Corneal Tissues: An Analysis of Optimal Cut-Off Layer.

Nadezhda Prodanova; Johannes Stegmaier; Stephan Allgeier; Sebastian Bohn; Oliver Stachs; Bernd Köhler; Ralf Mikut; Andreas Bartschat

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Ralf Mikut

Karlsruhe Institute of Technology

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Johannes Stegmaier

Karlsruhe Institute of Technology

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Bernd Köhler

Karlsruhe Institute of Technology

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Stephan Allgeier

Karlsruhe Institute of Technology

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Klaus-Martin Reichert

Karlsruhe Institute of Technology

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Andrei Yu. Kobitski

Karlsruhe Institute of Technology

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