| Literature DB >> 35888766 |
Peter Liptak1, Eva Baranovicova2, Robert Rosolanka3, Katarina Simekova3, Anna Bobcakova4, Robert Vysehradsky4, Martin Duricek1, Zuzana Dankova2, Andrea Kapinova2, Dana Dvorska2, Erika Halasova2, Peter Banovcin1.
Abstract
Several relatively recently published studies have shown changes in plasma metabolites in various viral diseases such as Zika, Dengue, RSV or SARS-CoV-1. The aim of this study was to analyze the metabolome profile of patients during acute COVID-19 approximately one month after the acute infection and to compare these results with healthy (SARS-CoV-2-negative) controls. The metabolome analysis was performed by NMR spectroscopy from the peripheral blood of patients and controls. The blood samples were collected on 3 different occasions (at admission, during hospitalization and on control visit after discharge from the hospital). When comparing sample groups (based on the date of acquisition) to controls, there is an indicative shift in metabolomics features based on the time passed after the first sample was taken towards controls. Based on the random forest algorithm, there is a strong discriminatory predictive value between controls and different sample groups (AUC equals 1 for controls versus samples taken at admission, Mathew correlation coefficient equals 1). Significant metabolomic changes persist in patients more than a month after acute SARS-CoV-2 infection. The random forest algorithm shows very strong discrimination (almost ideal) when comparing metabolite levels of patients in two various stages of disease and during the recovery period compared to SARS-CoV-2-negative controls.Entities:
Keywords: COVID-19; NMR spectroscopy; SARS-CoV-2; metabolome; post-COVID
Year: 2022 PMID: 35888766 PMCID: PMC9321209 DOI: 10.3390/metabo12070641
Source DB: PubMed Journal: Metabolites ISSN: 2218-1989
Figure 1PCA (left) and PLS–DA (right) analysis of patients with COVID–19 disease at three various sampling times in patients and controls, the relative concentrations of metabolites in blood plasma were used as input variables.
Figure 2PCA (left) and PLS–DA (right) analysis of patients with COVID–19 disease at sampling time C in average 42 days after hospitalization in patients and controls, the relative concentrations of metabolites in blood plasma were used as input variables.
Statistical evaluation based on the Kruskal–Wallis test for multiple comparison and post hoc Dun’s tests for pairwise comparison, percentual change derived from medians, algorithms used relative concentrations of metabolites in blood plasma.
| Kruskal–Wallis | A-Controls | B-Controls | C-Controls | ||||
|---|---|---|---|---|---|---|---|
| % Change | % Change | % Change | |||||
| alanine | 0.0071 | 0.0031 | −15 | 0.85 | x | 0.71 | x |
| valine | 0.00082 | 0.00099 | 15 | 0.00051 | 16 | 0.012 | x |
| glucose | 0.00011 | 6.3 × 10−6 | 54 | 0.20 | 21 | 0.15 | 26 |
| leucine | 8.4 × 10−7 | 9.6 × 10−7 | 37 | 0.00077 | 15 | 0.63 | x |
| isoleucine | 2.6 × 10−7 | 2.6 × 10−8 | 32 | 0.00029 | 21 | 0.0016 | 17 |
| acetate | 0.0000092 | 0.00037 | −25 | 2.5 × 10−5 | −28 | 5.2 × 10−5 | −28 |
| pyruvate | 0.000020 | 4.4 × 10−6 | −28 | 0.0066 | −16 | 0.00049 | −26 |
| citrate | 6.4 × 10−10 | 0.041 | x | 0.00030 | −26 | 0.00078 | 21 |
| phenylalanine | 1.1 × 10−14 | 2.4 × 10−9 | 77 | 7.6 × 10−8 | 49 | 0.40 | x |
| tyrosine | 0.000051 | 0.042 | x | 6.1 × 10−6 | 22 | 0.52 | x |
| glutamine | 0.0089 | 0.024 | −15 | 0.24 | x | 0.17 | x |
| lipoproteins | 1.1 × 10−16 | 1.4 × 10−13 | −75 | 1.9 × 10−13 | −77 | 0.00014 | −54 |
| ketoleucine | 0.00036 | 3.0 × 10−5 | 29 | 0.37 | x | 0.060 | x |
| ketoisoleucine | 0.00025 | 6.5 × 10−5 | 37 | 0.059 | x | 0.0011 | 19 |
| ketovaline | 0.043 | 0.0057 | 20 | 0.11 | x | 0.090 | x |
| 3-hydroxy-butyrate | 1.6 × 10−12 | 9.3 × 10−14 | 261 | 8.4 × 10−6 | 34 | 0.0010 | 24 |
| creatine | 0.0028 | 0.82 | x | 0.00067 | 25 | 0.81 | x |
| creatinine | 0.0025 | 0.0040 | 39 | 0.052 | x | 0.00066 | 22 |
| histidine | 4.0 × 10−10 | 5.8 × 10−10 | −29 | 0.00026 | −15 | 2.8 × 10−7 | −26 |
| succinate | 0.0013 | 0.0083 | 28 | 0.023 | x | 0.00020 | 48 |
| proline | 3.3 × 10−8 | 8.6 × 10−9 | −30 | 0.00018 | −22 | 0.14 | x |
Result from RF discriminatory analyses of binary systems patients-controls, AUC values derived from ROC curve, MCC–Matthews correlation coefficient.
| System | Features | Oob Error (Based on Predicted Class Probabilities) | Average Accuracy Based on 100 Cross-Validations | AUC | MCC |
|---|---|---|---|---|---|
| A-control | 3 most important metabolites: histidine, proline, 3-hydroxybutyrate | 0 | 0.999 | 1 | 1 |
| 5 most important metabolites: histidine, proline, 3-hydroxyburtyrate, acetate, citrate | 0 | 0.999 | 1 | 1 | |
| all evaluated metabolites | 0 | 1 | 1 | 1 | |
| B-control | 3 most important metabolites: histidine, proline, 3-hydroxybutyrate | 5/62 | 0.884 | 0.966 | 0.839 |
| 5 most important metabolites: histidine, proline, 3-hydroxyburtyrate, pyruvate, citrate | 5/62 | 0.923 | 0.981 | 0.839 | |
| all evaluated metabolites | 2/62 | 0.948 | 0.992 | 0.936 | |
| C-control | 3 most important metabolites: histidine, glucose, pyruvate | 5/62 | 0.929 | 0.969 | 0.829 |
| 5 most important metabolites: histidine, glucose, pyruvate, phenylalanine, glutamine | 5/62 | 0.929 | 0.987 | 0.829 | |
| all evaluated metabolites | 3/62 | 0.932 | 0.991 | 0.895 |
Figure 3Relative concentrations of plasma metabolites in patients in three various sampling times and controls, values related to median of controls set to 1.
Figure 4ROC curves derived from random forest discriminatory analysis for binary systems: patients in various sampling times versus controls: A-First day of hospital admission, B-In average 7 days after hospital admission. C-In average 42 days after hospital admission, relative concentrations of plasma metabolites were used as input variables. All evaluated metabolites were used as input variables; more details in Table 2.
Characteristics of patients enrolled in the study.
| Median (IQR) | |
|---|---|
| Patients n = 25 | |
| Age [years] | 58 (21) |
| Sex: Female/Male | 7/18 |
| Weight [kg] | 82.6 (26) |
| Height [cm] | 171 (8) |
| BMI | 29 (9) |
| Chronic liver disease | 3 |
| Chronic kidney disease | 3 |
| Ischemic cardiac disease | 3 |
| Diabetes Mellitus | 3 |
| Thyroidal disease | 4 |
| Rheumatic disease | 0 |
| Other relevant | NA |
Standard biochemical and hematological results of patients at the sampling times, median (IQR).
| Samples A | Samples B | Samples C | ||
|---|---|---|---|---|
| Na | 133.32 (5.5) | 140 (6) | 139.4 (3.0) | <0.001 |
| K | 3.972 (0.6) | 4.2 (0.65) | 4.2 (0.45) | 0.017 |
| Cl | 99.48 (6.0) | 104 (6) | 104 (3.0) | <0.001 |
| Glucose | 8.068 (1.35) | 5.8 (3.05) | 5.6 (1.5) | 0.0021 |
| Cretinine | 83 (38.5) | 60 (22.5) one missing | 68 (32.5) | 0.32 |
| CRP | 116.5 (123.4) | 16.6 (31.45) one missing | 2.2 (4.55) | <0.001 |
| AST | 1.2604 (0.68) | 0.92 (1.13) eight missing | 0.508 (0.285) one missing | <0.001 |
| ALT | 1.0365 (0.715) one missing | 1.465 (1.325) nine missing | 0.575 (0.49) one missing | <0.01 |
| GMT | 1.6815 (1.715) five missing | 1.47 (2.48) three missing | 0.815 (1.08) one missing | 0.037 |
| Bilirubin | 10.7 (5.85) | 11.4 (6.65) eight missing | 9.6 (6.3) one missing | 0.41 |
| Leukocytes | 6.7 (3.05) | 7.7 (3.75) one missing | 8.2 (2.5) | 0.029 |
| Hemoglobine [g/l] | 142 (13) | 135.5 (18.5) one missing | 138 (13.5) | 0.16 |
| Platelets count | 190 (162.5) | 360.5 (215.5) one missing | 259 (133) | <0.01 |