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Dive into the research topics where Roland Bruderer is active.

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Featured researches published by Roland Bruderer.


Molecular & Cellular Proteomics | 2015

Extending the Limits of Quantitative Proteome Profiling with Data-Independent Acquisition and Application to Acetaminophen-Treated Three-Dimensional Liver Microtissues

Roland Bruderer; Oliver M. Bernhardt; Tejas Gandhi; Saša M. Miladinović; Lin-Yang Cheng; Simon Messner; Tobias Ehrenberger; Vito Zanotelli; Yulia Butscheid; Claudia Escher; Olga Vitek; Oliver Rinner; Lukas Reiter

The data-independent acquisition (DIA) approach has recently been introduced as a novel mass spectrometric method that promises to combine the high content aspect of shotgun proteomics with the reproducibility and precision of selected reaction monitoring. Here, we evaluate, whether SWATH-MS type DIA effectively translates into a better protein profiling as compared with the established shotgun proteomics. We implemented a novel DIA method on the widely used Orbitrap platform and used retention-time-normalized (iRT) spectral libraries for targeted data extraction using Spectronaut. We call this combination hyper reaction monitoring (HRM). Using a controlled sample set, we show that HRM outperformed shotgun proteomics both in the number of consistently identified peptides across multiple measurements and quantification of differentially abundant proteins. The reproducibility of HRM in peptide detection was above 98%, resulting in quasi complete data sets compared with 49% of shotgun proteomics. Utilizing HRM, we profiled acetaminophen (APAP)1-treated three-dimensional human liver microtissues. An early onset of relevant proteome changes was revealed at subtoxic doses of APAP. Further, we detected and quantified for the first time human NAPQI-protein adducts that might be relevant for the toxicity of APAP. The adducts were identified on four mitochondrial oxidative stress related proteins (GATM, PARK7, PRDX6, and VDAC2) and two other proteins (ANXA2 and FTCD). Our findings imply that DIA should be the preferred method for quantitative protein profiling.


Proteomics | 2016

High-precision iRT prediction in the targeted analysis of data-independent acquisition and its impact on identification and quantitation

Roland Bruderer; Oliver M. Bernhardt; Tejas Gandhi; Lukas Reiter

Targeted analysis of data‐independent acquisition (DIA) data is a powerful mass spectrometric approach for comprehensive, reproducible and precise proteome quantitation. It requires a spectral library, which contains for all considered peptide precursor ions empirically determined fragment ion intensities and their predicted retention time (RT). RTs, however, are not comparable on an absolute scale, especially if heterogeneous measurements are combined. Here, we present a method for high‐precision prediction of RT, which significantly improves the quality of targeted DIA analysis compared to in silico RT prediction and the state of the art indexed retention time (iRT) normalization approach. We describe a high‐precision normalized RT algorithm, which is implemented in the Spectronaut software. We, furthermore, investigate the influence of nine different experimental factors, such as chromatographic mobile and stationary phase, on iRT precision. In summary, we show that using targeted analysis of DIA data with high‐precision iRT significantly increases sensitivity and data quality. The iRT values are generally transferable across a wide range of experimental conditions. Best results, however, are achieved if library generation and analytical measurements are performed on the same system.


Molecular & Cellular Proteomics | 2017

Optimization of Experimental Parameters in Data-Independent Mass Spectrometry Significantly Increases Depth and Reproducibility of Results

Roland Bruderer; Oliver M. Bernhardt; Tejas Gandhi; Yue Xuan; Julia Sondermann; Manuela Schmidt; David Gomez-Varela; Lukas Reiter

Comprehensive, reproducible and precise analysis of large sample cohorts is one of the key objectives of quantitative proteomics. Here, we present an implementation of data-independent acquisition using its parallel acquisition nature that surpasses the limitation of serial MS2 acquisition of data-dependent acquisition on a quadrupole ultra-high field Orbitrap mass spectrometer. In deep single shot data-independent acquisition, we identified and quantified 6,383 proteins in human cell lines using 2-or-more peptides/protein and over 7100 proteins when including the 717 proteins that were identified on the basis of a single peptide sequence. 7739 proteins were identified in mouse tissues using 2-or-more peptides/protein and 8121 when including the 382 proteins that were identified based on a single peptide sequence. Missing values for proteins were within 0.3 to 2.1% and median coefficients of variation of 4.7 to 6.2% among technical triplicates. In very complex mixtures, we could quantify 10,780 proteins and 12,192 proteins when including the 1412 proteins that were identified based on a single peptide sequence. Using this optimized DIA, we investigated large-protein networks before and after the critical period for whisker experience-induced synaptic strength in the murine somatosensory cortex 1-barrel field. This work shows that parallel mass spectrometry enables proteome profiling for discovery with high coverage, reproducibility, precision and scalability.


Proteomics | 2017

New targeted approaches for the quantification of data-independent acquisition mass spectrometry

Roland Bruderer; Julia Sondermann; Chih Chiang Tsou; Alonso Barrantes-Freer; Christine Stadelmann; Alexey I. Nesvizhskii; Manuela Schmidt; Lukas Reiter; David Gomez-Varela

The use of data‐independent acquisition (DIA) approaches for the reproducible and precise quantification of complex protein samples has increased in the last years. The protein information arising from DIA analysis is stored in digital protein maps (DIA maps) that can be interrogated in a targeted way by using ad hoc or publically available peptide spectral libraries generated on the same sample species as for the generation of the DIA maps. The restricted availability of certain difficult‐to‐obtain human tissues (i.e., brain) together with the caveats of using spectral libraries generated under variable experimental conditions limits the potential of DIA. Therefore, DIA workflows would benefit from high‐quality and extended spectral libraries that could be generated without the need of using valuable samples for library production. We describe here two new targeted approaches, using either classical data‐dependent acquisition repositories (not specifically built for DIA) or ad hoc mouse spectral libraries, which enable the profiling of human brain DIA data set. The comparison of our results to both the most extended publically available human spectral library and to a state‐of‐the‐art untargeted method supports the use of these new strategies to improve future DIA profiling efforts.


Scientific Reports | 2018

Cost-effective generation of precise label-free quantitative proteomes in high-throughput by microLC and data-independent acquisition

Jakob Vowinckel; Aleksej Zelezniak; Roland Bruderer; Michael Mülleder; Lukas Reiter; Markus Ralser

Quantitative proteomics is key for basic research, but needs improvements to satisfy an increasing demand for large sample series in diagnostics, academia and industry. A switch from nanoflowrate to microflowrate chromatography can improve throughput and reduce costs. However, concerns about undersampling and coverage have so far hampered its broad application. We used a QTOF mass spectrometer of the penultimate generation (TripleTOF5600), converted a nanoLC system into a microflow platform, and adapted a SWATH regime for large sample series by implementing retention time- and batch correction strategies. From 3 µg to 5 µg of unfractionated tryptic digests that are obtained from proteomics-typical amounts of starting material, microLC-SWATH-MS quantifies up to 4000 human or 1750 yeast proteins in an hour or less. In the acquisition of 750 yeast proteomes, retention times varied between 2% and 5%, and quantified the typical peptide with 5–8% signal variation in replicates, and below 20% in samples acquired over a five-months period. Providing precise quantities without being dependent on the latest hardware, our study demonstrates that the combination of microflow chromatography and data-independent acquisition strategies has the potential to overcome current bottlenecks in academia and industry, enabling the cost-effective generation of precise quantitative proteomes in large scale.


Molecular & Cellular Proteomics | 2017

WITHDRAWN: Heralds of parallel MS: Data-independent acquisition surpassing sequential identification of data dependent acquisition in proteomics

Roland Bruderer; Oliver M. Bernhardt; Tejas Gandhi; Yue Xuan; Julia Sondermann; Manuela Schmidt; David Gomez-Varela; Lukas Reiter

This article has been withdrawn by the authors. This article did not comply with the editorial guidelines of MCP. Specifically, single peptide based protein identifications of 9-19% were included in the analysis and discussed in the results and conclusions. We wish to withdraw this article and resubmit a clarified, corrected manuscript for review.


bioRxiv | 2016

Precise label-free quantitative proteomes in high-throughput by microLC and data-independent SWATH acquisition

Jakob Vowinckel; Aleksej Zelezniak; Artur Kibler; Roland Bruderer; Michael Muelleder; Lukas Reiter; Markus Ralser

While quantitative proteomics is a key technology in biological research, the routine industry and diagnostics application is so far still limited by a moderate throughput, data consistency and robustness. In part, the restrictions emerge in the proteomics dependency on nanolitre/minute flow rate chromatography that enables a high sensitivity, but is difficult to handle on large sample series, and on the stochastic nature in data-dependent acquisition strategies. We here establish and benchmark a label-free, quantitative proteomics platform that uses microlitre/minute flow rate chromatography in combination with data-independent SWATH acquisition. Being able to largely compensate for the loss of sensitivity by exploiting the analytical capacities of microflow chromatography, we show that microLC-SWATH-MS is able to precisely quantify up to 4000 proteins in an hour or less, enables the consistent processing of sample series in high-throughput, and gains quantification precisions comparable to targeted proteomic assays. MicroLC-SWATH-MS can hence routinely process hundreds to thousands of samples to systematically create precise, label free quantitative proteomes.


F1000Research | 2014

Multiplexed protein MRM assay panel for high throughput toxicological assessment in rat liver samples

Reto Ossola; Jasmin van den Heuvel; Claudia Escher; Roland Bruderer; Saša M. Miladinović; Lukas Reiter; Oliver Rinner; Yulia Butscheid

Introduction Early prediction of drug toxicity remains challenging in pre-clinical toxicological studies. Especially on the protein level there is a lack of methods enabling discovery and validation of predictive biomarker signatures in animal or cell-based models exposed to toxic insults. Multiple reaction monitoring (MRM), a massspectrometric approach, enables monitoring of up to 100 proteins in a single measurement with high specificity and accuracy if optimal assays are available.


Journal of Structural Biology | 2006

Characterization of a new AAA+ protein from archaea.

Heike Summer; Roland Bruderer; Eilika Weber-Ban


Molecular & Cellular Proteomics | 2017

A Tale of Two - Data Independent Acquisition applied to maximize proteome coverage and throughput

Roland Bruderer; Oliver M. Bernhardt; Tejas Gandhi; Jan Muntel; Sebastian Müller; Polina Mironova; Ondine Walter; Jérôme Carayol; Jörg Hager; Armand Valsesia; Loïc Dayon; Arne Astrup; Wim H. M. Saris; Florian Marty; Lukas Reiter

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Yue Xuan

Thermo Fisher Scientific

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Tobias Ehrenberger

Massachusetts Institute of Technology

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