4.6 Article

Predictive Modeling of Alzheimer's and Parkinson's Disease Using Metabolomic and Lipidomic Profiles from Cerebrospinal Fluid

Journal

METABOLITES
Volume 12, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/metabo12040277

Keywords

predictive modeling; biomarker; cerebrospinal fluid; cross-sectional study; neurodegenerative disease

Funding

  1. National Institutes of Health [P50 AG05136, S10 OD021562, R03 CA211160, R01 AG057330, P50 NS062684, R01 NS119897]
  2. Veterans Affairs Puget Sound Healthcare System [I01 CX001702]
  3. Veterans Affairs Northwest Mental Illness Research, Education, and Clinical Center [IK2 BX003244]

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Metabolomics has been utilized to analyze human cerebrospinal fluid samples and found strong separation between PD and AD patients and healthy controls in the metabolome. Key metabolites associated with PD and AD classification were identified, along with metabolic pathways linked to these neurodegenerative diseases.
In recent years, metabolomics has been used as a powerful tool to better understand the physiology of neurodegenerative diseases and identify potential biomarkers for progression. We used targeted and untargeted aqueous, and lipidomic profiles of the metabolome from human cerebrospinal fluid to build multivariate predictive models distinguishing patients with Alzheimer's disease (AD), Parkinson's disease (PD), and healthy age-matched controls. We emphasize several statistical challenges associated with metabolomic studies where the number of measured metabolites far exceeds sample size. We found strong separation in the metabolome between PD and controls, as well as between PD and AD, with weaker separation between AD and controls. Consistent with existing literature, we found alanine, kynurenine, tryptophan, and serine to be associated with PD classification against controls, while alanine, creatine, and long chain ceramides were associated with AD classification against controls. We conducted a univariate pathway analysis of untargeted and targeted metabolite profiles and find that vitamin E and urea cycle metabolism pathways are associated with PD, while the aspartate/asparagine and c21-steroid hormone biosynthesis pathways are associated with AD. We also found that the amount of metabolite missingness varied by phenotype, highlighting the importance of examining missing data in future metabolomic studies.

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