5 results on '"Bielow, Chris"'
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2. OpenMS: a flexible open-source software platform for mass spectrometry data analysis
- Author
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Röst, Hannes L, Sachsenberg, Timo, Aiche, Stephan, Bielow, Chris, Weisser, Hendrik, Aicheler, Fabian, Andreotti, Sandro, Ehrlich, Hans-Christian, Gutenbrunner, Petra, Kenar, Erhan, Liang, Xiao, Nahnsen, Sven, Nilse, Lars, Pfeuffer, Julianus, Rosenberger, George, Rurik, Marc, Schmitt, Uwe, Veit, Johannes, Walzer, Mathias, Wojnar, David, Wolski, Witold E, Schilling, Oliver, Choudhary, Jyoti S, Malmström, Lars, Aebersold, Ruedi, Reinert, Knut, and Kohlbacher, Oliver
- Abstract
High-resolution mass spectrometry (MS) has become an important tool in the life sciences, contributing to the diagnosis and understanding of human diseases, elucidating biomolecular structural information and characterizing cellular signaling networks. However, the rapid growth in the volume and complexity of MS data makes transparent, accurate and reproducible analysis difficult. We present OpenMS 2.0 (http://www.openms.de), a robust, open-source, cross-platform software specifically designed for the flexible and reproducible analysis of high-throughput MS data. The extensible OpenMS software implements common mass spectrometric data processing tasks through a well-defined application programming interface in C++ and Python and through standardized open data formats. OpenMS additionally provides a set of 185 tools and ready-made workflows for common mass spectrometric data processing tasks, which enable users to perform complex quantitative mass spectrometric analyses with ease.
- Published
- 2016
- Full Text
- View/download PDF
3. Proteomics Quality Control: Quality Control Software for MaxQuant Results
- Author
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Bielow, Chris, Mastrobuoni, Guido, and Kempa, Stefan
- Abstract
Mass spectrometry-based proteomics coupled to liquid chromatography has matured into an automatized, high-throughput technology, producing data on the scale of multiple gigabytes per instrument per day. Consequently, an automated quality control (QC) and quality analysis (QA) capable of detecting measurement bias, verifying consistency, and avoiding propagation of error is paramount for instrument operators and scientists in charge of downstream analysis. We have developed an R-based QC pipeline called Proteomics Quality Control (PTXQC) for bottom-up LC–MS data generated by the MaxQuant1 software pipeline. PTXQC creates a QC report containing a comprehensive and powerful set of QC metrics, augmented with automated scoring functions. The automated scores are collated to create an overview heatmap at the beginning of the report, giving valuable guidance also to nonspecialists. Our software supports a wide range of experimental designs, including stable isotope labeling by amino acids in cell culture (SILAC), tandem mass tags (TMT), and label-free data. Furthermore, we introduce new metrics to score MaxQuant’s Match-between-runs (MBR) functionality by which peptide identifications can be transferred across Raw files based on accurate retention time and m/z. Last but not least, PTXQC is easy to install and use and represents the first QC software capable of processing MaxQuant result tables. PTXQC is freely available at https://github.com/cbielow/PTXQC.
- Published
- 2016
- Full Text
- View/download PDF
4. Extensive identification and analysis of conserved small ORFs in animals
- Author
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Mackowiak, Sebastian, Zauber, Henrik, Bielow, Chris, Thiel, Denise, Kutz, Kamila, Calviello, Lorenzo, Mastrobuoni, Guido, Rajewsky, Nikolaus, Kempa, Stefan, Selbach, Matthias, and Obermayer, Benedikt
- Abstract
There is increasing evidence that transcripts or transcript regions annotated as non-coding can harbor functional short open reading frames (sORFs). Loss-of-function experiments have identified essential developmental or physiological roles for a few of the encoded peptides (micropeptides), but genome-wide experimental or computational identification of functional sORFs remains challenging. Here, we expand our previously developed method and present results of an integrated computational pipeline for the identification of conserved sORFs in human, mouse, zebrafish, fruit fly, and the nematode C. elegans. Isolating specific conservation signatures indicative of purifying selection on amino acid (rather than nucleotide) sequence, we identify about 2,000 novel small ORFs located in the untranslated regions of canonical mRNAs or on transcripts annotated as non-coding. Predicted sORFs show stronger conservation signatures than those identified in previous studies and are sometimes conserved over large evolutionary distances. The encoded peptides have little homology to known proteins and are enriched in disordered regions and short linear interaction motifs. Published ribosome profiling data indicate translation of more than 100 novel sORFs, and mass spectrometry data provide evidence for more than 70 novel candidates. Taken together, we identify hundreds of previously unknown conserved sORFs in major model organisms. Our computational analyses and integration with experimental data show that these sORFs are expressed, often translated, and sometimes widely conserved, in some cases even between vertebrates and invertebrates. We thus provide an integrated resource of putatively functional micropeptides for functional validation in vivo.
- Published
- 2015
- Full Text
- View/download PDF
5. Tools for Label-free Peptide Quantification*
- Author
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Nahnsen, Sven, Bielow, Chris, Reinert, Knut, and Kohlbacher, Oliver
- Abstract
The increasing scale and complexity of quantitative proteomics studies complicate subsequent analysis of the acquired data. Untargeted label-free quantification, based either on feature intensities or on spectral counting, is a method that scales particularly well with respect to the number of samples. It is thus an excellent alternative to labeling techniques. In order to profit from this scalability, however, data analysis has to cope with large amounts of data, process them automatically, and do a thorough statistical analysis in order to achieve reliable results. We review the state of the art with respect to computational tools for label-free quantification in untargeted proteomics. The two fundamental approaches are feature-based quantification, relying on the summed-up mass spectrometric intensity of peptides, and spectral counting, which relies on the number of MS/MS spectra acquired for a certain protein. We review the current algorithmic approaches underlying some widely used software packages and briefly discuss the statistical strategies for analyzing the data.
- Published
- 2013
- Full Text
- View/download PDF
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