| Literature DB >> 29075496 |
Christine Y Yeh1,2,3, Ravali Adusumilli2, Majlinda Kullolli2, Parag Mallick2,4, Esther M John4,5, Sharon J Pitteri2,4.
Abstract
BACKGROUND: Quantitative proteomics allows for the discovery and functional investigation of blood-based pre-diagnostic biomarkers for early cancer detection. However, a major limitation of proteomic investigations in biomarker studies remains the biological and technical variability in the analysis of complex clinical samples. Moreover, unlike 'omics analogues such as genomics and transcriptomics, proteomics has yet to achieve reproducibility and long-term stability on a unified technological platform. Few studies have thoroughly investigated protein variability in pre-diagnostic samples of cancer patients across multiple platforms.Entities:
Keywords: Blood plasma; Breast cancer; Immunoassay; Mass spectrometry; Protein
Year: 2017 PMID: 29075496 PMCID: PMC5645980 DOI: 10.1186/s40364-017-0110-y
Source DB: PubMed Journal: Biomark Res ISSN: 2050-7771
Fig. 1Overview and Summary of Study. a Study design and workflow. b Number of distinct proteins measured across the three platforms; LC-MS/MS, Myriad-RBM, and Olink
Fig. 2Depth of analyses and measurement frequency across platforms. Histogram (top) of frequency that a protein is quantified in n number of samples, and dynamic range plot (bottom) of mean concentrations measured for each unique protein quantified in platforms (a) LC-MS/MS, (b) Myriad-RBM, (c) Olink
Fig. 3Assay-to-Assay Comparison for Antibody-Based Technologies. a Myriad-RBM estimates higher absolute protein concentration in comparison to Olink platform. b Protein levels are concordant for most proteins measured in both antibody-based platforms
Fig. 4Technical Variation. a Relative error of case/control ratios across all peptides per proteins average at 10% (dashed line) in LC-MS/MS platform. b Relative error independent to protein abundance in Olink analysis determined by adjusted R2 value from linear regression. c Relative error across all proteins measured in the Olink analysis averages at 20% (dashed line)
Fig. 5Biological versus Technical Variation. a Biological variance is generally higher than Technical Variance in the Olink Assay. b Variance decomposition shows that most variance can be explained by biological variability across the samples. c Each protein measured has its own ratio of biological variance vs. technical variance
Fig. 6Case and Control Differences. a Unpaired and paired t-tests reveal few case/control ratios that are significant in the targeted proteomics assays. b Volcano plots reveal protein analytes that characterize difference between case and controls (blue points) from shotgun LC-MS/MS measurements