Simple light isotope metabolic labeling (SLIM labeling) is an innovative method to quantify variations in the proteome based on an original in vivo labeling strategy. Heterotrophic cells grown in U-[(12)C] as the sole source of carbon synthesize U-[(12)C]-amino acids, which are incorporated into proteins, giving rise to U-[(12)C]-proteins. This results in a large increase in the intensity of the monoisotope ion of peptides and proteins, thus allowing higher identification scores and protein sequence coverage in mass spectrometry experiments. This method, initially developed for signal processing and quantification of the incorporation rate of (12)C into peptides, was based on a multistep process that was difficult to implement for many laboratories. To overcome these limitations, we developed a new theoretical background to analyze bottom-up proteomics data using SLIM-labeling (bSLIM) and established simple procedures based on open-source software, using dedicated OpenMS modules, and embedded R scripts to process the bSLIM experimental data. These new tools allow computation of both the (12)C abundance in peptides to follow the kinetics of protein labeling and the molar fraction of unlabeled and (12)C-labeled peptides in multiplexing experiments to determine the relative abundance of proteins extracted under different biological conditions. They also make it possible to consider incomplete (12)C labeling, such as that observed in cells with nutritional requirements for nonlabeled amino acids. These tools were validated on an experimental dataset produced using various yeast strains of Saccharomyces cerevisiae and growth conditions. The workflows are built on the implementation of appropriate calculation modules in a KNIME working environment. These new integrated tools provide a convenient framework for the wider use of the SLIM-labeling strategy.
Novel Insights into Quantitative Proteomics from an Innovative Bottom-Up Simple Light Isotope Metabolic (bSLIM) Labeling Data Processing Strategy.
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作者:Sénécaut Nicolas, Alves Gelio, Weisser Hendrik, Lignières Laurent, Terrier Samuel, Yang-Crosson Lilian, Poulain Pierre, Lelandais Gaëlle, Yu Yi-Kuo, Camadro Jean-Michel
| 期刊: | Journal of Proteome Research | 影响因子: | 3.600 |
| 时间: | 2021 | 起止号: | 2021 Mar 5; 20(3):1476-1487 |
| doi: | 10.1021/acs.jproteome.0c00478 | ||
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