122 research outputs found

    mzMatch-ISO: an R tool for the annotation and relative quantification of isotope-labelled mass spectrometry data

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    <p>Motivation: Stable isotope-labelling experiments have recently gained increasing popularity in metabolomics studies, providing unique insights into the dynamics of metabolic fluxes, beyond the steady-state information gathered by routine mass spectrometry. However, most liquid chromatography–mass spectrometry data analysis software lacks features that enable automated annotation and relative quantification of labelled metabolite peaks. Here, we describe mzMatch–ISO, a new extension to the metabolomics analysis pipeline mzMatch.R.</p> <p>Results: Targeted and untargeted isotope profiling using mzMatch–ISO provides a convenient visual summary of the quality and quantity of labelling for every metabolite through four types of diagnostic plots that show (i) the chromatograms of the isotope peaks of each compound in each sample group; (ii) the ratio of mono-isotopic and labelled peaks indicating the fraction of labelling; (iii) the average peak area of mono-isotopic and labelled peaks in each sample group; and (iv) the trend in the relative amount of labelling in a predetermined isotopomer. To aid further statistical analyses, the values used for generating these plots are also provided as a tab-delimited file. We demonstrate the power and versatility of mzMatch–ISO by analysing a 13C-labelled metabolome dataset from trypanosomal parasites.</p&gt

    mzMatch-ISO: an R tool for the annotation and relative quantification of isotope-labelled mass spectrometry data

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    <p>Motivation: Stable isotope-labelling experiments have recently gained increasing popularity in metabolomics studies, providing unique insights into the dynamics of metabolic fluxes, beyond the steady-state information gathered by routine mass spectrometry. However, most liquid chromatography–mass spectrometry data analysis software lacks features that enable automated annotation and relative quantification of labelled metabolite peaks. Here, we describe mzMatch–ISO, a new extension to the metabolomics analysis pipeline mzMatch.R.</p> <p>Results: Targeted and untargeted isotope profiling using mzMatch–ISO provides a convenient visual summary of the quality and quantity of labelling for every metabolite through four types of diagnostic plots that show (i) the chromatograms of the isotope peaks of each compound in each sample group; (ii) the ratio of mono-isotopic and labelled peaks indicating the fraction of labelling; (iii) the average peak area of mono-isotopic and labelled peaks in each sample group; and (iv) the trend in the relative amount of labelling in a predetermined isotopomer. To aid further statistical analyses, the values used for generating these plots are also provided as a tab-delimited file. We demonstrate the power and versatility of mzMatch–ISO by analysing a 13C-labelled metabolome dataset from trypanosomal parasites.</p&gt

    MetAssign: probabilistic annotation of metabolites from LC–MS data using a Bayesian clustering approach

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    Motivation: The use of liquid chromatography coupled to mass spectrometry (LC–MS) has enabled the high-throughput profiling of the metabolite composition of biological samples. However, the large amount of data obtained can be difficult to analyse and often requires computational processing to understand which metabolites are present in a sample. This paper looks at the dual problem of annotating peaks in a sample with a metabolite, together with putatively annotating whether a metabolite is present in the sample. The starting point of the approach is a Bayesian clustering of peaks into groups, each corresponding to putative adducts and isotopes of a single metabolite.<p></p> Results: The Bayesian modelling introduced here combines information from the mass-to-charge ratio, retention time and intensity of each peak, together with a model of the inter-peak dependency structure, to increase the accuracy of peak annotation. The results inherently contain a quantitative estimate of confidence in the peak annotations and allow an accurate trade off between precision and recall. Extensive validation experiments using authentic chemical standards show that this system is able to produce more accurate putative identifications than other state-of-the-art systems, while at the same time giving a probabilistic measure of confidence in the annotations.<p></p> Availability: The software has been implemented as part of the mzMatch metabolomics analysis pipeline, which is available for download at http://mzmatch.sourceforge.net/

    Detektion von endokrinen Disruptoren mittels Fluoreszenzkorrelationsspektroskopie

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    In den letzten Jahren hat das Auftreten sogenannter endokriner Disruptoren zunehmend Besorgnis erregt. Es handelt sich hierbei um Substanzen, die das endokrine System stören und somit eine erhebliche Gefahr für Mensch und Tier darstellen. Diese Substanzen sind im menschlichen Alltag allgegenwärtig und finden sich beispielsweise in Kosmetika, Reinigungsmitteln und Kunststoffen, aber auch in Pestiziden und industriellen Chemikalien. Ihnen ist nur die biologische Aktivität, das heißt ihre hormonelle Wirkung gemein, nicht aber ihre chemische Identität. Häufig ist der Östrogenrezeptor Zielscheibe endokriner Disruption. Dieser Rezeptor gehört zur großen Familie der Steroidrezeptoren und wird normalerweise durch das Hormon Östrogen (17b-Estradiol) kontrolliert. Er ist involviert in die Morphogenese reproduktiver Organe und den Erhalt der Fortpflanzungsfähigkeit. Als nuklearer Rezeptor aktiviert er Transkriptionsfaktoren und steuert damit direkt die Genexpression und Synthese der beteiligten Proteine. Eine Störung dieser Aktivität durch endokrine Disruption kann sich in Form verschiedenster physischer Merkmale wie etwa mangelnder Geschlechtsdifferenzierung, dem Verlust der Fortpflanzungs-fähigkeit sowie Karzinomen der Fortpflanzungsorgane äußern. Die Störung hat damit nicht nur Konsequenzen für einzelne Individuen, sondern kann auch ganze Populationen betreffen, etwa durch die Herabsetzung der Fortpflanzungsrate. Schnelle und empfindliche biologische Testverfahren zur Erfassung endokriner Disruptoren sind daher unbedingt erforderlich. Um sinnvolle gesetzliche Richtlinien erstellen zu können, müssen Substanzen eindeutig als endokrine Disruptoren klassifiziert werden und ihre minimal gefährdende Konzentration bestimmt werden. Besonderer Wert muß dabei auf die tatsächliche Relevanz der Tests für östrogene Aktivität gelegt werden

    Metabolomics methods for the synthetic biology of secondary metabolism

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    Many microbial secondary metabolites are of high biotechnological value for medicine, agriculture, and the food industry. Bacterial genome mining has revealed numerous novel secondary metabolite biosynthetic gene clusters, which encode the potential to synthesize a large diversity of compounds that have never been observed before. The stimulation or “awakening” of this cryptic microbial secondary metabolism has naturally attracted the attention of synthetic microbiologists, who exploit recent advances in DNA sequencing and synthesis to achieve unprecedented control over metabolic pathways. One of the indispensable tools in the synthetic biology toolbox is metabolomics, the global quantification of small biomolecules. This review illustrates the pivotal role of metabolomics for the synthetic microbiology of secondary metabolism, including its crucial role in novel compound discovery in microbes, the examination of side products of engineered metabolic pathways, as well as the identification of major bottlenecks for the overproduction of compounds of interest, especially in combination with metabolic modeling. We conclude by highlighting remaining challenges and recent technological advances that will drive metabolomics towards fulfilling its potential as a cornerstone technology of synthetic microbiology

    mzMLb: A Future-Proof Raw Mass Spectrometry Data Format Based on Standards-Compliant mzML and Optimized for Speed and Storage Requirements

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    With ever-increasing amounts of data produced by mass spectrometry (MS) proteomics and metabolomics, and the sheer volume of samples now analyzed, the need for a common open format possessing both file size efficiency and faster read/write speeds has become paramount to drive the next generation of data analysis pipelines. The Proteomics Standards Initiative (PSI) has established a clear and precise extensible markup language (XML) representation for data interchange, mzML, receiving substantial uptake; nevertheless, storage and file access efficiency has not been the main focus. We propose an HDF5 file format "mzMLb" that is optimized for both read/write speed and storage of the raw mass spectrometry data. We provide an extensive validation of the write speed, random read speed, and storage size, demonstrating a flexible format that with or without compression is faster than all existing approaches in virtually all cases, while with compression is comparable in size to proprietary vendor file formats. Since our approach uniquely preserves the XML encoding of the metadata, the format implicitly supports future versions of mzML and is straightforward to implement: mzMLb's design adheres to both HDF5 and NetCDF4 standard implementations, which allows it to be easily utilized by third parties due to their widespread programming language support. A reference implementation within the established ProteoWizard toolkit is provided
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