Submitted:
13 May 2025
Posted:
14 May 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Participants
2.2. Study Assessments
2.3. Assessments of Genetic Variants in PD Patients with or Without MetS
2.4. Statistical Analysis
3. Results
3.1. Baseline Demographic and Clinical Characteristics
| PD+MetS (n=34) | PD-MetS (n=389) | p-value | |
|---|---|---|---|
| Patients’ characteristics | |||
| Male sex | 32 (94%) | 246 (63%) | <0.01 |
| Age | 64.9±9.4 | 61.4±9.7 | 0.04 |
| PD family history | 8 (24%) | 126 (32%) | 0.38 |
| Hoehn and Yahr score | |||
| I | 8 (24%) | 177 (46%) | 0.01 |
| II | 26 (76%) | 212 (54%) | |
| MDS-UPDRS Total score | 30.7±9.6 | 26.5±11.2 | 0.03 |
| MetS components | |||
| Body mass Index | 29 (85%) | 241 (62%) | <0.01 |
| Hyperglycemia | 17 (50%) | 5 (1%) | <0.01 |
| Low HDL-C | 13 (38%) | 23 (6%) | <0.01 |
| Hypertriglyceridemia | 19 (56%) | 11 (3%) | <0.01 |
| Hypertension | 28 (83%) | 255 (66%) | 0.02 |
3.2. Longitudinal MDS-UPDRS Scores and Subscales
3.3. Genetic Association Analysis
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Year | Part I | Part II | Part III | Part IV | ||||
|---|---|---|---|---|---|---|---|---|
| PD-MetS | PD+MetS | PD-MetS | PD+MetS | PD-MetS | PD+MetS | PD-MetS | PD+MetS | |
| 0 | 1.2±1.6 | 1.1±1.2 | 5.8±4.1 | 7.1±4.7** | 20.7±9.0 | 23.6±7.2** | - | - |
| 1 | 1.5±1.8 | 1.8±1.7 | 7.2±5.0 | 9.4±4.5* | 24.2±10.4 | 28.4±10.0* | 0.2±0.9 | 0.5±1.3 |
| 2 | 1.9±2.3 | 1.9±2.0 | 7.8±5.3 | 9.4±5.2 | 26.4±11.2 | 34.8±10.7** | 0.5±1.4 | 0.6±1.7 |
| 3 | 1.9±2.3 | 2.3±1.9 | 8.7±5.7 | 10.4±5.5 | 27.7±12.1 | 35.6±9.9** | 0.7±1.7 | 1.1±2.1 |
| 4 | 2.2±2.5 | 2.5±3.6 | 9.7±6.7 | 11.8±5.5 | 30.4±12.8 | 35.2±9.7* | 1.4±2.5 | 1.4±2.0 |
| 5 | 2.3±3.0 | 2.3±2.0 | 9.9±6.8 | 11.7±5.9 | 29.9±13.6 | 35.7±9.5* | 2.0±2.8 | 1.8±2.0 |
| Number of risk alleles for each SNP | Overall | No MetS | MetS | Chi-sq | Additive model | Dominant model | Recessive model | Full model |
| (N=409) | (N=376) | (N=33) | p-value | OR (95% CI) | OR (95% CI) | OR (95% CI) | OR (95% CI) | |
| p-value (AIC) | p-value (AIC) | p-value (AIC) | p-value | |||||
| GBA_N370S_rs76763715 | ||||||||
| 0 | 401 (98.0%) | 370 (98.4%) | 31 (93.9%) | 0.003 | 4.22 (0.99, 16.19) | 3.98 (0.57, 18.12) | - | 2.91 (0.61, 12.70) |
| 1 | 7 (1.7%) | 6 (1.6%) | 1 (3.0%) | 0.03 (229.6) | 0.10 (231.25) | 0.141 | ||
| 2 | 1 (0.2%) | 0 (0%) | 1 (3.0%) | SELECTED | ||||
| NUCKS1_rs823118 | ||||||||
| 0 | 135 (33.0%) | 128 (34.0%) | 7 (21.2%) | 0.011 | 0.98 (0.59, 1.62) | 1.92 (0.85, 4.90) | 0.26 (0.04, 0.88) | 0.21 (0.03, 0.77) |
| 1 | 197 (48.2%) | 173 (46.0%) | 24 (72.7%) | 0.93 (233.29) | 0.14 (203.97) | 0.05 (228.57) | 0.043 | |
| 2 | 77 (18.8%) | 75 (19.9%) | 2 (6.1%) | SELECTED | ||||
| CTSB_rs1293298 | ||||||||
| 0 | 237 (57.9%) | 211 (56.1%) | 26 (78.8%) | 0.027 | 0.62 (0.38, 1.01) | 0.34 (0.13, 0.77) | - | 0.35 (0.13, 0.84) |
| 1 | 143 (35.0%) | 136 (36.2%) | 7 (21.2%) | 0.06 (229.75) | 0.01 (226.49) | 0.025 | ||
| 2 | 29 (7.1%) | 29 (7.7%) | 0 (0%) | SELECTED | ||||
| ZNF646.KAT8.BCKDK_rs14235 | ||||||||
| 0 | 147 (35.9%) | 134 (35.6%) | 13 (39.4%) | 0.023 | 1.29 (0.77, 2.14) | 0.85 (0.41, 1.81) | 2.59 (1.12, 5.62) | 3.06 (1.24, 7.29) |
| 1 | 198 (48.4%) | 188 (50.0%) | 10 (30.3%) | 0.33 (232.46) | 0.67 (233.21) | 0.02 (228.48) | 0.012 | |
| 2 | 64 (15.6%) | 54 (14.4%) | 10 (30.3%) | SELECTED | ||||
| COMT_rs4633 | ||||||||
| 0 | 116 (28.4%) | 104 (27.7%) | 12 (36.4%) | 0.105 | 0.62 (0.38, 1.01) | 0.67 (0.32, 1.45) | 0.33 (0.10, 0.87) | 0.40 (0.11, 1.10) |
| 1 | 179 (43.8%) | 162 (43.1%) | 17 (51.5%) | 0.06 (229.75) | 0.29 (232.22) | 0.04 (228.25) | 0.107 | |
| 2 | 114 (27.9%) | 110 (29.3%) | 4 (12.1%) | SELECTED |
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