| Literature DB >> 23522030 |
Jun Ji1, Jeffrey Ling, Helen Jiang, Qiaojun Wen, John C Whitin, Lu Tian, Harvey J Cohen, Xuefeng B Ling.
Abstract
BACKGROUND: Mass spectrometry (MS) has evolved to become the primary high throughput tool for proteomics based biomarker discovery. Until now, multiple challenges in protein MS data analysis remain: large-scale and complex data set management; MS peak identification, indexing; and high dimensional peak differential analysis with the concurrent statistical tests based false discovery rate (FDR). "Turnkey" solutions are needed for biomarker investigations to rapidly process MS data sets to identify statistically significant peaks for subsequent validation.Entities:
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Year: 2013 PMID: 23522030 PMCID: PMC3621609 DOI: 10.1186/1756-0500-6-109
Source DB: PubMed Journal: BMC Res Notes ISSN: 1756-0500
Figure 1Online MS data analysis solution. (A) Schematic diagram. (B) Data analysis pipeline diagram.
Figure 2MS analysis results. (A) Indexed peaks (red dots) extracted from all assayed samples by SSA algorithm. (B) Global false discovery analysis. The horizontal axis represents the p-value thresholds and the vertical axis shows the number of discoveries. The red, green and blue lines represent total discoveries, average and the 95 percentile of the false discoveries. (C) lFDR output. s.d.: MS peak signal standard deviation.