Label-free quantification has become a common-practice in many mass spectrometry-based proteomics experiments. In recent years, we and others have shown that spectral clustering can considerably improve the analysis of (primarily large-scale) proteomics data sets. Here we show that spectral clustering can be used to infer additional peptide-spectrum matches and improve the quality of label-free quantitative proteomics data in data sets also containing only tens of MS runs. We analyzed four well-known public benchmark data sets that represent different experimental settings using spectral counting and peak intensity based label-free quantification. In both approaches, the additionally inferred peptide-spectrum matches through our spectra-cluster algorithm improved the detectability of low abundant proteins while increasing the accuracy of the derived quantitative data, without increasing the data sets' noise. Additionally, we developed a Proteome Discoverer node for our spectra-cluster algorithm which allows anyone to rebuild our proposed pipeline using the free version of Proteome Discoverer.
Spectral Clustering Improves Label-Free Quantification of Low-Abundant Proteins.
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作者:Griss Johannes, Stanek Florian, Hudecz Otto, Dürnberger Gerhard, Perez-Riverol Yasset, VizcaÃno Juan Antonio, Mechtler Karl
| 期刊: | Journal of Proteome Research | 影响因子: | 3.600 |
| 时间: | 2019 | 起止号: | 2019 Apr 5; 18(4):1477-1485 |
| doi: | 10.1021/acs.jproteome.8b00377 | ||
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