Identification of metabolites reproducibly associated with Parkinson’s Disease via meta-analysis and computational modelling

Xi Luo, Yanjun Liu, Alexander Balck, Christine Klein, Ronan M.T. Fleming*

*Corresponding author for this work
16 Citations (Scopus)

Abstract

Many studies have reported metabolomic analysis of different bio-specimens from Parkinson’s disease (PD) patients. However, inconsistencies in reported metabolite concentration changes make it difficult to draw conclusions as to the role of metabolism in the occurrence or development of Parkinson’s disease. We reviewed the literature on metabolomic analysis of PD patients. From 74 studies that passed quality control metrics, 928 metabolites were identified with significant changes in PD patients, but only 190 were replicated with the same changes in more than one study. Of these metabolites, 60 exclusively increased, such as 3-methoxytyrosine and glycine, 54 exclusively decreased, such as pantothenic acid and caffeine, and 76 inconsistently changed in concentration in PD versus control subjects, such as ornithine and tyrosine. A genome-scale metabolic model of PD and corresponding metabolic map linking most of the replicated metabolites enabled a better understanding of the dysfunctional pathways of PD and the prediction of additional potential metabolic markers from pathways with consistent metabolite changes to target in future studies.

Original languageEnglish
Article number126
JournalNPJ Parkinson's disease
Volume10
Issue number1
ISSN2373-8057
DOIs
Publication statusPublished - 12.2024

Funding

FundersFunder number
European Commission
Staatssekretariat für Bildung, Forschung und Innovation23.00232
China Scholarship Council202006370070
HORIZON EUROPE Framework Programme101080997
United Kingdom Research and Innovation10083717, 10080153

    Research Areas and Centers

    • Research Area: Medical Genetics

    DFG Research Classification Scheme

    • 2.23-06 Molecular and Cellular Neurology and Neuropathology

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