Proteomic and Metabolomic Analyses of the Blood Samples of Highly Trained Athletes
Abstract
:1. Summary
2. Data Description
3. Methods
3.1. Ethics Statement
3.2. Subjects
- Sample information: the unique identifier of the study participant;
- Information about the anthropometric characteristics of the participant: the sex, age at the time of the examination, age at which their career began, and type of sport;
- Information about the clinical characteristics of the participant: allergies, infectious diseases, and sports injuries;
- Information about the training regime: main sports activities; the dynamics of sports results, number of training sessions per day during tapering and competition periods, number of rest days per week during tapering and competition periods, and training status self-assessment.
3.3. Preanalytical Stage of Analysis
3.4. HPLC-MS/MS Analysis
3.5. Data Analysis
4. User Comments
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Kind of Sport | Load Type | Intensity | Number of Athletes |
---|---|---|---|
Sailing | Strength Endurance | High | 11 |
Kayaking and Canoeing | 1 | ||
Freestyle Wrestling | Endurance | Above Average | 20 |
Sambo | Speed-strength | Moderate | 2 |
Figure Skating | Strength Endurance | 1 | |
Rowing | Technical | 16 | |
Beach Soccer | 4 | ||
Football | 3 | ||
Ski Race | 6 | ||
Biathlon | Endurance | Low | 7 |
Greco-Roman Wrestling | Technical | 20 | |
Athletics | 2 |
Intensity | Number of Proteins | Number of Proteins in the Group | |||
---|---|---|---|---|---|
Min | Max | Mean | SE | ||
Above Average | 61 | 122 | 84.4 | 4.2 | 232 |
High | 71 | 106 | 88.1 | 5.1 | 169 |
Low | 61 | 103 | 81.5 | 2.3 | 200 |
Moderate | 60 | 111 | 83.5 | 2.9 | 270 |
Intensity | Number of Athletes | %, Men | Age, Years | Allergy, % | Bad Habits, % |
---|---|---|---|---|---|
High | 12 | 83 | 33.2 ± 6.3 | 33 | – |
Moderate | 32 | 72 | 25.5 ± 2.8 | 13 | – |
Above Average | 20 | 100 | 29.2 ± 2.5 | – | – |
Low | 29 | 76 | 30.0 ± 3.7 | 7 | – |
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Malsagova, K.A.; Kopylov, A.T.; Pustovoyt, V.I.; Balakin, E.I.; Yurku, K.A.; Stepanov, A.A.; Kulikova, L.I.; Rudnev, V.R.; Kaysheva, A.L. Proteomic and Metabolomic Analyses of the Blood Samples of Highly Trained Athletes. Data 2024, 9, 15. https://doi.org/10.3390/data9010015
Malsagova KA, Kopylov AT, Pustovoyt VI, Balakin EI, Yurku KA, Stepanov AA, Kulikova LI, Rudnev VR, Kaysheva AL. Proteomic and Metabolomic Analyses of the Blood Samples of Highly Trained Athletes. Data. 2024; 9(1):15. https://doi.org/10.3390/data9010015
Chicago/Turabian StyleMalsagova, Kristina A., Arthur T. Kopylov, Vasiliy I. Pustovoyt, Evgenii I. Balakin, Ksenia A. Yurku, Alexander A. Stepanov, Liudmila I. Kulikova, Vladimir R. Rudnev, and Anna L. Kaysheva. 2024. "Proteomic and Metabolomic Analyses of the Blood Samples of Highly Trained Athletes" Data 9, no. 1: 15. https://doi.org/10.3390/data9010015
APA StyleMalsagova, K. A., Kopylov, A. T., Pustovoyt, V. I., Balakin, E. I., Yurku, K. A., Stepanov, A. A., Kulikova, L. I., Rudnev, V. R., & Kaysheva, A. L. (2024). Proteomic and Metabolomic Analyses of the Blood Samples of Highly Trained Athletes. Data, 9(1), 15. https://doi.org/10.3390/data9010015