Submitted:
05 February 2025
Posted:
05 February 2025
You are already at the latest version
Abstract

Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. GWAS Datasets of Brain IDPs
2.3. GWAS Datasets of PD and Its Manifestations and Severity
2.4. Selection of Instrument Variants and Harmonization of Single Nucleotide Polymorphisms
2.5. Bidirectional Two-Sample MR Analyses
2.6. Sensitivity Analysis
2.7. Observational Study Participants
2.8. Brain Magnetic Resonance Imaging Acquisition and Processing
2.9. Statistical Analysis
3. Results
3.1. Forward MR: The Putative Causal Effects of IDPs on PD
3.2. Forward MR: The Putative Causal Effects of IDPs on PD Severity and Symptoms
3.3. Forward MR: The Putative Causal Effects of PD and Its Severity and Symptoms on IDPs
3.4. Reverse MR
3.5. Sensitivity Analysis
3.6. Concordance Between Observational Study Results and MR Analysis Results
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ANOVAs | Analysis of variances |
| CC | Corpus callosum |
| FA | Fractional anisotropy |
| FDR | False discovery rate |
| GWAS | Genome-wide association studies |
| HCs | Healthy controls |
| IDPs | Imaging-derived phenotypes |
| iRBD | Idiopathic rapid-eye-movement sleep behaviour disorder |
| IVs | Instrumental variables |
| MR | Mendelian randomization |
| OR | Odds ratio |
| PD | Parkinson’s disease |
| ROC | Receiver operating characteristic curve |
| UPDRS | Unified Parkinson Disease Rating Scale |
| SN | Substantia nigra |
| UF | Uncinate fasciculus |
| VPL | Ventral posterolateral nucleus |
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| HC (n=81) |
iRBD (n=47) |
PD (n=85) |
p Value | |
|---|---|---|---|---|
| Age (y) | 62.77 ± 8.10 | 67.1 ± 5.68 | 67.87 ± 6.97 | <0.001 |
| Sex, n | 0.94 | |||
| Male | 40 (49%) | 23(49%) | 44 (52%) | |
| Female | 41 (51%) | 24(51%) | 41 (48%) | |
| Disease duration (m) | - | 50.65 ± 15.74 | 97.49 ± 36.24 | |
| H-Y stage | - | - | 1.97 ± 0.80 | |
| UPDRS I score | - | - | 9.02 ± 5.46 | |
| UPDRS II score | - | - | 11.84 ± 6.33 | |
| UPDRS III score | - | - | 33.13 ± 15.19 |
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