Metabolomics

Dataset Information

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Omics data integration allows the identification of an idiopathic Parkinson’s disease signature


ABSTRACT: The vast majority of Parkinson’s disease cases are idiopathic. Unclear ethiology and multifactorial nature complicate the comprehension of disease pathogenesis. Identification of early transcriptomic and metabolic alterations consistent across different idiopathic Parkinson’s disease (IPD) patients might reveal the potential basis of increased dopaminergic neuron vulnerability and primary disease mechanisms. In this study, we combine systems biology and data integration approaches to identify differences in transcriptomic and metabolic signatures between IPD patient and healthy individual-derived midbrain neural precursor cells. Characterisation of gene expression and metabolic modelling reveals pyruvate, several amino acids and lipid metabolism as the most dysregulated metabolic pathways in IPD neural precursors. Furthermore, we show that IPD neural precursors endure mitochondrial metabolism impairment and a reduced total NAD pool. Accordingly, we show that treatment with NAD precursors increases ATP yield hence demonstrating a potential to rescue early IPD-associated metabolic changes.

INSTRUMENT(S): Gas Chromatography MS - positive

PROVIDER: MTBLS7740 | MetaboLights | 2026-03-16

REPOSITORIES: MetaboLights

Dataset's files

Source:
Action DRS
AZ3_SCANTMS_hNESC_12p19_1.cdf Other
AZ3_SCANTMS_hNESC_13p19_1.cdf Other
AZ3_SCANTMS_hNESC_28p20_1.cdf Other
AZ3_SCANTMS_hNESC_39p14_1.cdf Other
AZ3_SCANTMS_hNESC_48p14_1.cdf Other
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The vast majority of Parkinson's disease cases are idiopathic. Unclear etiology and multifactorial nature complicate the comprehension of disease pathogenesis. Identification of early transcriptomic and metabolic alterations consistent across different idiopathic Parkinson's disease (IPD) patients might reveal the potential basis of increased dopaminergic neuron vulnerability and primary disease mechanisms. In this study, we combine systems biology and data integration approaches to identify dif  ...[more]

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