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A large-scale LC-MS dataset of murine liver proteome from time course of heavy water metabolic labeling.


ABSTRACT: Metabolic stable isotope labeling with heavy water followed by liquid chromatography coupled with mass spectrometry (LC-MS) is a powerful tool for in vivo protein turnover studies. Several algorithms and tools have been developed to determine the turnover rates of peptides and proteins from time-course stable isotope labeling experiments. The availability of benchmark mass spectrometry data is crucial to compare and validate the effectiveness of newly developed techniques and algorithms. In this work, we report a heavy water-labeled LC-MS dataset from the murine liver for protein turnover rate analysis. The dataset contains eighteen mass spectral data with their corresponding database search results from nine different labeling durations and quantification outputs from d2ome+ software. The dataset also contains eight mass spectral data from two-dimensional fractionation experiments on unlabeled samples.

SUBMITTER: Deberneh HM 

PROVIDER: S-EPMC10509199 | biostudies-literature | 2023 Sep

REPOSITORIES: biostudies-literature

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A large-scale LC-MS dataset of murine liver proteome from time course of heavy water metabolic labeling.

Deberneh Henock M HM   Abdelrahman Doaa R DR   Verma Sunil K SK   Linares Jennifer J JJ   Murton Andrew J AJ   Russell William K WK   Kuyumcu-Martinez Muge N MN   Miller Benjamin F BF   Sadygov Rovshan G RG  

Scientific data 20230919 1


Metabolic stable isotope labeling with heavy water followed by liquid chromatography coupled with mass spectrometry (LC-MS) is a powerful tool for in vivo protein turnover studies. Several algorithms and tools have been developed to determine the turnover rates of peptides and proteins from time-course stable isotope labeling experiments. The availability of benchmark mass spectrometry data is crucial to compare and validate the effectiveness of newly developed techniques and algorithms. In this  ...[more]

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