Longitudinal NMR-Based Metabolomics Study Reveals How Hospitalized COVID-19 Patients Recover: Evidence of Dyslipidemia and Energy Metabolism Dysregulation
Abstract
:1. Introduction
2. Results
3. Discussion
3.1. Dysregulations in Amino Acid Metabolism
3.2. Dyslipidemia in COVID-19
3.3. Glycoprotein Level Alterations
3.4. Energy Metabolism Disturbances
4. Materials and Methods
4.1. Study Design
4.2. Sample Preparation and Instrumental Analysis
4.3. Statistical Analysis
4.4. Linear Regression for Time Series Data Analysis in COVID-19 Patients
4.5. Univariate Analysis for Two-Group Comparisons
4.6. Pathway Analysis
4.7. Biochemical Analysis and Metabolite Correlations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable, Mean (SD) or n (%) | COVID-19 Patients | Population Controls | |
---|---|---|---|
Male/Female (n, %) | 17 (41.46%)/24 (58.54%) | 17 (41.46%)/24 (58.54%) | |
Age, average ± SD (years ± SD) | 56.63 ± 13.16 | 53.10 ± 11.41 | |
BMI, average (kg/m2 ± SD) | 34.40 ± 22.95 | 27.08 ± 4.60 | |
Time in hospital (days ± SD) | 9.18 ± 3.25 | - | |
Smoker/non-smoker (n, %) | 3 (7.32%)/38 (92.68%) | 3 (7.32%)/38 (92.68%) | |
Comorbidities * | |||
Number of patients with comorbidities (yes/no) | 30 (73.17%)/11 (26.83%) | 23 (56.10%)/18 (43.90%) | |
Hypertension (n, %) | 17 (41.46%) | 9 (21.95%) | |
Type 2 Diabetes Mellitus (n, %) | 3 (7.32%) | 3 (7.32%) | |
Other cardiovascular disease (n, %) | 10 (24.39%) | 13 (31.71%) | |
Oncological (n, %) | 2 (4.88%) | 3 (7.32%) | |
Clinical measurements ** | |||
Average | Acute COVID-19 | Recovery phase (1 month) | Recovery phase (3–4 months) |
Leukocytes (μL, SD) | 5.71 (2.15) | 6.19 (1.37) | 5.67 (1.67) |
Hemoglobin (g/dL, SD) | 13.24 (1.45) | 13.85 (1.28) | 14.32 (1.43) |
Hematocrit (%, SD) | 39.91 (4.07) | 41.47 (3.08) | 41.26 (8.05) |
Platelets (μL, SD) | 173.13 (99.07) | 267.10 (49.20) | 238.17 (59.95) |
Neutrophils (μL, SD) | 2.41 (1.49) | 3.21 (1.01) | 3.00 (1.15) |
Lymphocytes(μL, SD) | 0.58 (0.54) | 2.02 (0.66) | 1.97 (0.66) |
Monocytes (μL, SD) | 0.24 (0.22) | 0.59 (0.22) | 0.50 (0.15) |
Eosinophils (μL, SD) | 0.03 (0.05) | 3.03 (1.70) | 3.05 (1.62) |
ALT (U/l, SD) | 23.82 (18.49) | 39.23 (28.53) | 30.95 (17.54) |
AST (U/l, SD) | 28.75 (13.74) | 28.45 (13.68) | 26.75 (12.91) |
GGT (U/l, SD) | 78.33 (99.33) | 44.43 (43.10) | 28.31 (30.13) |
Bilirubin (μmol/L, SD) | 6.64 (3.22) | 13.30 (5.31) | 11.26 (4.60) |
LDH (U/L, SD) | 295.00 (168.87) | 215.70 (38.10) | 189.67 (71.51) |
Creatinine (μmol/L, SD) | 72.45 (19.87) | 68.65 (11.53) | 70.57 (18.49) |
CRP (mg/L, SD) | 35.05 (42.05) | 3.69 (2.80) | 3.39 (4.28) |
D-dimer (mg/mL, SD) | 0.60 (0.12) | 0.48 (0.31) | 0.25 (0.15) |
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Ansone, L.; Rovite, V.; Brīvība, M.; Jagare, L.; Pelcmane, L.; Borisova, D.; Thews, A.; Leiminger, R.; Kloviņš, J. Longitudinal NMR-Based Metabolomics Study Reveals How Hospitalized COVID-19 Patients Recover: Evidence of Dyslipidemia and Energy Metabolism Dysregulation. Int. J. Mol. Sci. 2024, 25, 1523. https://doi.org/10.3390/ijms25031523
Ansone L, Rovite V, Brīvība M, Jagare L, Pelcmane L, Borisova D, Thews A, Leiminger R, Kloviņš J. Longitudinal NMR-Based Metabolomics Study Reveals How Hospitalized COVID-19 Patients Recover: Evidence of Dyslipidemia and Energy Metabolism Dysregulation. International Journal of Molecular Sciences. 2024; 25(3):1523. https://doi.org/10.3390/ijms25031523
Chicago/Turabian StyleAnsone, Laura, Vita Rovite, Monta Brīvība, Lauma Jagare, Līva Pelcmane, Daniella Borisova, Anne Thews, Roland Leiminger, and Jānis Kloviņš. 2024. "Longitudinal NMR-Based Metabolomics Study Reveals How Hospitalized COVID-19 Patients Recover: Evidence of Dyslipidemia and Energy Metabolism Dysregulation" International Journal of Molecular Sciences 25, no. 3: 1523. https://doi.org/10.3390/ijms25031523
APA StyleAnsone, L., Rovite, V., Brīvība, M., Jagare, L., Pelcmane, L., Borisova, D., Thews, A., Leiminger, R., & Kloviņš, J. (2024). Longitudinal NMR-Based Metabolomics Study Reveals How Hospitalized COVID-19 Patients Recover: Evidence of Dyslipidemia and Energy Metabolism Dysregulation. International Journal of Molecular Sciences, 25(3), 1523. https://doi.org/10.3390/ijms25031523