| Literature DB >> 30190284 |
Jianqing She1,2, Manyun Guo1,2, Hongbing Li1,2, Junhui Liu1,2, Xiao Liang1,2, Peining Liu1,2, Bo Zhou3, Simin Liu1,2, Yangyang Deng1,2, Bowen Lou1,2, Chaofeng Sun1,2, Zuyi Yuan1,2, Yue Wu4,2.
Abstract
Background: Atrial fibrillation (AF) is the most common cardiac arrhythmia whose incidence is on the rise globally. However, the pathophysiologic mechanism of AF remains poorly understood and there has been a lack of circulatory markers to diagnose and predict prognosis of AF. In the present study, by measuring metabolic profile and analyzing plasma amino acid levels in AF patients, we sought to determine whether amino acid metabolism was correlated to the occurrence of AF.Entities:
Keywords: Atrial Fibrillation; Metabolism Network; Plasma Amino Acid Profile
Mesh:
Substances:
Year: 2018 PMID: 30190284 PMCID: PMC6365628 DOI: 10.1042/CS20180247
Source DB: PubMed Journal: Clin Sci (Lond) ISSN: 0143-5221 Impact factor: 6.124
Baseline characteristics of the patients in the cohort
| AF ( | Control ( | ||
|---|---|---|---|
| Age (y) | 62.15 ± 14.18 | 61.62 ± 7.99 | ns |
| Female | 8 | 11 | ns |
| Hear rate (bpm) | 80.76 ± 15.06 | 72.21 ± 10.76 | <0.05 |
| sBP (mmHg) | 120.00 ± 14.32 | 133.15 ± 19.79 | ns |
| dBP (mmHg) | 75.65 ± 10.25 | 75.47 ± 11.49 | ns |
| EF (%) | 60.25 ± 11.87 | 63.74 ± 9.33 | ns |
| AST (U/l) | 23.24 ± 5.52 | 30.40 ± 47.19 | ns |
| ALT (U/l) | 25.69 ± 13.00 | 25.54 ± 15.60 | ns |
| CRE (mg/dl) | 8.01 ± 2.62 | 7.27 ± 1.22 | <0.05 |
| UA (mmol/l) | 342.58 ± 90.87 | 282.97 ± 84.11 | ns |
| TC (mg/dl) | 142.33 ± 35.27 | 153.66 ± 37.57 | ns |
| TG (mg/dl) | 135.19 ± 105.14 | 161.47 ± 162.15 | ns |
| HDL-C (mg/dl) | 40.03 ± 9.77 | 42.45 ± 14.69 | ns |
| LDL-C (mmol/l) | 1.99 ± 0.80 | 2.22 ± 0.75 | ns |
| proBNP (ng/ml) | 2616.93 ± 7274.73 | 251.58 ± 553.39 | <0.05 |
| FT4 (mmol/l) | 16.73 ± 3.43 | 16.26 ± 2.68 | ns |
| FT3 (mmol/l) | 5.12 ± 1.04 | 5.03 ± 0.88 | ns |
| TSH (mmol/l) | 2.50 ± 2.28 | 1.92 ± 1.17 | ns |
| Current/ex smoker (%) | 23.53% | 44.12% | |
| Current/ex drinker (%) | 11.76% | 29.41% | |
| DM (%) | 17.39% | 29.73% | |
| Hypertension (%) | 47.06% | 67.65% | |
| CHF (%) | 5.88% | 0.00% | |
| MI (%) | 11.76% | 11.76% |
Abbreviations: BP, blood pressure; CHF, chronic heart failure; TC, total cholesterol; DM, diabetes mellitus; EF, ejection fraction; FT3, free triiodothyronine; FT4, free thyroxine; MI, myocardial infarction; TSH, thyroid stimulating hormone.
Figure 1Expression profile of amino acids in patients with AF as compared with control
(A) Heatmap of significantly altered plasma amino acids (P<0.05) in AF and control patients. The colors in the heatmap indicated the log-2-transformed values of each amino acids. (B) The general overview of plasma amino acids levels, when we select amino acid with fold change beyond 2 and P-value under 0.05. The y-axis represented log-10-transformed P-value for each amino acid, and the x-axis represented log-2-transformed fold change for each amino acid. Red dots stood for significantly altered amino acids with more than two times of the fold change. (C) Illustration of the significantly altered amino acids in control and AF group. Data were analyzed using the Student’s ttest. Mean ± s.e.m. *P< 0.05, **P< 0.01, and ***P<0.001.
Figure 2ROC analysis of different amino acids to identify AF
(A–K) ROC curve analysis for respective amino acids. Area under the ROC curve and P-value for each amino acid were shown in each figure.
Figure 3Relative level of amino acids in control, AF, paroxysmal AF, and persistent AF
(A) Heatmap of relative average amino acid in AF, paroxysmal AF, and persistent AF as compared with control patients. The colors in the heatmap indicated the relative amino acid levels in each group as compared with control. (B) 4-Hydroxypyrrolidine-2-carboxylic levels in control, total AF, paroxysmal AF, and persistent AF patients. Data were analyzed using one-way ANOVA. Mean ± s.e.m. *P< 0.05.
Figure 4Association of amino acids level and clinical factors
Correlations between age, blood pressure, heart function, lipid levels, renal function, coagulation function, and amino acid profile in AF patients. The colors in the heatmap stood for efficiency of the Pearson’s correlation. *P<0.05, **P<0.01, and ***P<0.001.
Figure 5Correlation analysis of plasma amino acids between AF and control
(A) Correlations between each amino acid in AF patients. (B) Correlations between each amino acid in control patients. The colors within each crossover represented the correlation efficiency between the respective amino acids. Blue color indicated decreased correlation and red color indicated enhanced correlation.
Figure 6Enrichment analysis of plasma amino acids based on pathway and disease
(A) Enrichment analysis of plasma amino acids based on pathway. The strongest association was found between AF and threonine and 2-oxobutanoate degradation pathway (P-value <0.001, FDR q<0.001) in the biological pathways. (B) Enrichment analysis of plasma amino acids based on disease. The strongest association was found between AF and early markers of myocardial injuries (P-value <0.001, FDR q<0.001).
List of plasma amino acids being tested.
Enrichment Analysis of metabolite sets associated with pathways.
Enrichment Analysis of metabolite sets associated with disease