| Literature DB >> 34113087 |
Soo Han Kim1, Hee-Sung Ahn2, Jin-Soo Park2, Jeonghun Yeom3, Jiyoung Yu2, Kyunggon Kim2,3,4,5,6, Yeon-Mok Oh7.
Abstract
PURPOSE: The identification of blood biomarkers to diagnose acute exacerbation of chronic obstructive pulmonary disease (AECOPD) will have clinical utility. Here, we used a proteomics-based approach to identify biomarkers capable of identifying AECOPD. PATIENTS AND METHODS: This prospective, single-center pilot study enrolled 12 patients who came to Asan Medical Center (South Korea) via the outpatient clinic or emergency department with symptoms of AECOPD and were follow-up in the outpatient clinic during convalescence between 2015 and 2017. Paired blood samples collected from each patient during the treatment naïve AECOPD and convalescence stages were analyzed. A sequential window acquisition of all theoretical fragmentation spectra-mass spectrometry (SWATH-MS)-based proteome analysis was performed and a subset of the data were verified by ELISA.Entities:
Keywords: COPD; ELISA; SWATH; biomarker; mass spectrometry; plasma
Mesh:
Substances:
Year: 2021 PMID: 34113087 PMCID: PMC8183188 DOI: 10.2147/COPD.S308305
Source DB: PubMed Journal: Int J Chron Obstruct Pulmon Dis ISSN: 1176-9106
Figure 1Flow chart of the study.
Clinical Characteristics of the 12 COPD Patients in the State of Exacerbation
| Patient Number | Age | Gender | BMI | Smoking Status | FEV1 (%) | FVC (%) | FEV1/FVC (%) |
|---|---|---|---|---|---|---|---|
| 1 | 71 | Male | 29.23 | Former | 63 | 71 | 58 |
| 2 | 71 | Male | 23.80 | Current | 47 | 73 | 44 |
| 3 | 64 | Male | 26.18 | Former | 49 | 99 | 37 |
| 4 | 84 | Male | 24.10 | Former | 47 | 80 | 36 |
| 5 | 68 | Male | 22.39 | Never | 42 | 94 | 32 |
| 6 | 66 | Male | 22.41 | Current | 68 | 112 | 44 |
| 7 | 76 | Male | 21.39 | Current | 67 | 98 | 46 |
| 8 | 75 | Male | 29.37 | Former | 26 | 54 | 32 |
| 9 | 69 | Male | 24.70 | Former | 34 | 82 | 29 |
| 10 | 64 | Male | 23.02 | Former | 64 | 72 | 66 |
| 11 | 58 | Male | 21.51 | Former | 40 | 86 | 36 |
| 12 | 65 | Male | 32.72 | Former | 59 | 81 | 51 |
Abbreviations: BMI, body mass index; FEV1, forced expiratory volume in one second; FVC, forced vital capacity.
Figure 2Proteomic analysis of the plasma samples using SWATH-MS. (A) Boxplots of normalized plasma protein abundances in the 12 pairs of COPD patient samples. (B) Reproducibility of the SWATH-MS measurements. The graph shows the CVs of the peak areas detected in triplicate analyses of each sample.
Figure 3Principal component analysis of protein abundances in plasma samples collected from the 12 patients in the AECOPD or convalescence state.
Figure 4Volcano plot and functional annotation of proteomic data from paired COPD plasma samples (N = 12). (A) A volcano plot showing the log2 fold-change in the abundance of each protein between the AECOPD and convalescence samples on the x-axis, and the FDR-corrected p-value (q-value) on the y-axis. Red circles show the 14 plasma proteins that were present at significantly higher levels in AECOPD samples than in convalescence samples. Blue circles show the 15 plasma proteins that were present at significantly higher levels in convalescence samples than in AECOPD samples. Gray circles represent plasma proteins that were not differentially expressed between the two groups. (B) A gene ontology (GO) analysis of the proteins that were differentially expressed between the two COPD states (FDR < 0.0001). The GO terms represent the link between a protein and a particular biological process, molecular function, or cellular component.
The 29 Proteins That Were Differentially Expressed Between AECOPD and Convalescence Samples
| Index | Protein Name | Up-Regulated in | Log2 Fold-Change (Convalescence/AECOPD) | |
|---|---|---|---|---|
| 1 | CRP | AECOPD | −3.29 | 2.62E-02 |
| 2 | SAA1 | −2.31 | 1.98E-04 | |
| 3 | FGA | −1.20 | 8.81E-03 | |
| 4 | DCD | −1.06 | 4.04E-02 | |
| 5 | LBP | −0.83 | 1.85E-03 | |
| 6 | C1QA | −0.72 | 1.19E-03 | |
| 7 | ORM2 | −0.63 | 1.40E-04 | |
| 8 | KNG1 | −0.61 | 8.81E-03 | |
| 9 | C9 | −0.57 | 1.97E-04 | |
| 10 | APOC1 | −0.56 | 1.98E-04 | |
| 11 | PROZ | −0.54 | 1.43E-02 | |
| 12 | ORM1 | −0.49 | 1.85E-03 | |
| 13 | SERPINA3 | −0.45 | 4.60E-03 | |
| 14 | CFI | −0.40 | 1.85E-03 | |
| 15 | APOA4 | Convalescence | 1.21 | 2.88E-03 |
| 16 | IGHE | 0.79 | 3.52E-02 | |
| 17 | APOC2 | 0.77 | 1.32E-04 | |
| 18 | HDAC4 | 0.73 | 1.42E-02 | |
| 19 | ITIH2 | 0.61 | 5.75E-05 | |
| 20 | MASP1 | 0.58 | 7.65E-03 | |
| 21 | F12 | 0.56 | 1.02E-03 | |
| 22 | SERPINA5 | 0.48 | 1.67E-03 | |
| 23 | ACTB | 0.47 | 9.61E-03 | |
| 24 | TF | 0.47 | 1.32E-04 | |
| 25 | APOL1 | 0.47 | 1.40E-04 | |
| 26 | RBP4 | 0.45 | 2.27E-02 | |
| 27 | ADSS2 | 0.42 | 4.38E-02 | |
| 28 | APOA2 | 0.40 | 8.33E-04 | |
| 29 | AFM | 0.40 | 1.20E-03 |
Figure 5Boxplots of the plasma concentrations of SERPINA3 (A), ORM2 (B), and LBP (C) determined using ELISAs.