| Literature DB >> 22644111 |
Ning Qing Liu1, René B H Braakman, Christoph Stingl, Theo M Luider, John W M Martens, John A Foekens, Arzu Umar.
Abstract
Mass spectrometry (MS)-based label-free proteomics offers an unbiased approach to screen biomarkers related to disease progression and therapy-resistance of breast cancer on the global scale. However, multi-step sample preparation can introduce large variation in generated data, while inappropriate statistical methods will lead to false positive hits. All these issues have hampered the identification of reliable protein markers. A workflow, which integrates reproducible and robust sample preparation and data handling methods, is highly desirable in clinical proteomics investigations. Here we describe a label-free tissue proteomics pipeline, which encompasses laser capture microdissection (LCM) followed by nanoscale liquid chromatography and high resolution MS. This pipeline routinely identifies on average ∼10,000 peptides corresponding to ∼1,800 proteins from sub-microgram amounts of protein extracted from ∼4,000 LCM breast cancer epithelial cells. Highly reproducible abundance data were generated from different technical and biological replicates. As a proof-of-principle, comparative proteome analysis was performed on estrogen receptor α positive or negative (ER+/-) samples, and commonly known differentially expressed proteins related to ER expression in breast cancer were identified. Therefore, we show that our tissue proteomics pipeline is robust and applicable for the identification of breast cancer specific protein markers.Entities:
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Year: 2012 PMID: 22644111 PMCID: PMC3428526 DOI: 10.1007/s10911-012-9252-6
Source DB: PubMed Journal: J Mammary Gland Biol Neoplasia ISSN: 1083-3021 Impact factor: 2.673
Figure 1Flowchart summarizes the principle of label-free tissue proteomics pipeline. This technical platform is divided into two stages. The first stage generates nLC-MS/MS raw data from tumor tissues, and the second part proposes a general data processing procedure used in MS-based label-free proteomics biomarker discovery study
Average numbers of identified peptides and protein groups
| Category | WTL-CTRL samples | LCM-CTRL samples | Experimental samples |
|---|---|---|---|
| Total peptides | 10,792 ± 275a (2.6 %)b | 10,539 ± 742 (7.0 %) | 10,374 ± 491 (4.7 %) |
| Razor peptides | 488 ± 10 (2.0 %) | 534 ± 29 (5.4 %) | 483 ± 17 (3.5 %) |
| Unique peptides | 9,664 ± 254 (2.6 %) | 9,263 ± 684 (7.4 %) | 9,217 ± 472 (5.1 %) |
| Protein groups | 1,869 ± 40 (2.1 %) | 1,776 ± 98 (5.5 %) | 1,869 ± 60 (3.2 %) |
aMean ± Standard deviation (x ± s);
bPercentages in brackets represent coefficient of variations of numbers of peptide and protein identification.
Figure 2Application of label-free tissue proteomics pipeline to control and experimental breast cancer samples. a Pearson correlation of peptide and protein abundance between WTL-CTRLs and LCM-CTRLs; b A Venn diagram reveals shared and unique identified protein groups in WTL-CTRLs (green circle) and LCM-CTRLs (red circle)
Figure 3Four breast cancer related proteins and their expression in ER+ and ER− breast cancer samples
Figure 4Differentially expressed proteins were discovered by different statistical analyses. a Hierarchical clustering separates ER+ and ER− samples using 435 (left panel) and 165 (right panel) differentially expressed proteins found by ME-ANOVA and refined using t-test; b Hierarchical clustering of 63 differentially expressed proteins between ER+ and ER− samples which were discovered using Fisher’s exact test with t-test refinement, as well as expression of 4 differentially expressed proteins out of these 63 proteins