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Cerebrospinal fluid metabolomics identifies 19 brain-related phenotype associations

Daniel J. Panyard, Kyeong Mo Kim, Burcu F. Darst, Yuetiva Deming, Xiaoyuan Zhong, Yuchang Wu, Hyunseung Kang, Cynthia M. Carlsson, Sterling C. Johnson, Sanjay Asthana, Corinne D. Engelman, Qiongshi Lu

2021Communications Biology176 citationsDOIOpen Access PDF

Abstract

The study of metabolomics and disease has enabled the discovery of new risk factors, diagnostic markers, and drug targets. For neurological and psychiatric phenotypes, the cerebrospinal fluid (CSF) is of particular importance. However, the CSF metabolome is difficult to study on a large scale due to the relative complexity of the procedure needed to collect the fluid. Here, we present a metabolome-wide association study (MWAS), which uses genetic and metabolomic data to impute metabolites into large samples with genome-wide association summary statistics. We conduct a metabolome-wide, genome-wide association analysis with 338 CSF metabolites, identifying 16 genotype-metabolite associations (metabolite quantitative trait loci, or mQTLs). We then build prediction models for all available CSF metabolites and test for associations with 27 neurological and psychiatric phenotypes, identifying 19 significant CSF metabolite-phenotype associations. Our results demonstrate the feasibility of MWAS to study omic data in scarce sample types.

Topics & Concepts

MetabolomeMetabolomicsMetaboliteBiologyPhenotypeGenetic associationGenome-wide association studyComputational biologyCerebrospinal fluidQuantitative trait locusGeneticsBioinformaticsDiseaseGenotypeSingle-nucleotide polymorphismGeneMedicineNeurosciencePathologyEndocrinologyMetabolomics and Mass Spectrometry StudiesGenetic Associations and EpidemiologyBioinformatics and Genomic Networks
Cerebrospinal fluid metabolomics identifies 19 brain-related phenotype associations | Litcius