Multivariate GWAS of Alzheimer’s disease CSF biomarker profiles implies GRIN2D in synaptic functioning

  • Alexander Neumann (Scientific Creator)
  • Olena Ohlei (Scientific Creator)
  • Fahri Küçükali (Scientific Creator)
  • Isabelle J. Bos (Scientific Creator)
  • Jigyasha Timsina (Scientific Creator)
  • Stephanie Vos (Scientific Creator)
  • Dmitry Prokopenko (Scientific Creator)
  • Betty M. Tijms (Scientific Creator)
  • Ulf Andreasson (Scientific Creator)
  • Kaj Blennow (Scientific Creator)
  • Rik Vandenberghe (Scientific Creator)
  • Philip Scheltens (Scientific Creator)
  • Charlotte E. Teunissen (Scientific Creator)
  • Sebastiaan Engelborghs (Scientific Creator)
  • Giovanni B. Frisoni (Scientific Creator)
  • Oliver Blin (Scientific Creator)
  • Jill C. Richardson (Scientific Creator)
  • Regis Bordet (Scientific Creator)
  • Alberto Lleó (Scientific Creator)
  • Daniel Alcolea (Scientific Creator)
  • Julius Popp (Scientific Creator)
  • Thomas W. Marsh (Scientific Creator)
  • Priyanka Gorijala (Scientific Creator)
  • Christopher Clark (Scientific Creator)
  • Gwendoline Peyratout (Scientific Creator)
  • Pablo Martinez-Lage (Scientific Creator)
  • Mikel Tainta (Scientific Creator)
  • Richard J.B. Dobson (Scientific Creator)
  • Cristina Legido-Quigley (Scientific Creator)
  • Christine Van Broeckhoven (Scientific Creator)
  • Rudolph E. Tanzi (Scientific Creator)
  • Mara Ten Kate (Scientific Creator)
  • Christina M. Lill (Scientific Creator)
  • Frederik Barkhof (Scientific Creator)
  • Carlos Cruchaga (Scientific Creator)
  • Simon Lovestone (Scientific Creator)
  • Johannes Streffer (Scientific Creator)
  • Henrik Zetterberg (Scientific Creator)
  • Pieter Jelle Visser (Scientific Creator)
  • Kristel Sleegers (Scientific Creator)
  • Lars Bertram (Scientific Creator)

    Dataset

    Description

    Abstract Background Genome-wide association studies (GWAS) of Alzheimer’s disease (AD) have identified several risk loci, but many remain unknown. Cerebrospinal fluid (CSF) biomarkers may aid in gene discovery and we previously demonstrated that six CSF biomarkers (β-amyloid, total/phosphorylated tau, NfL, YKL-40, and neurogranin) cluster into five principal components (PC), each representing statistically independent biological processes. Here, we aimed to (1) identify common genetic variants associated with these CSF profiles, (2) assess the role of associated variants in AD pathophysiology, and (3) explore potential sex differences. Methods We performed GWAS for each of the five biomarker PCs in two multi-center studies (EMIF-AD and ADNI). In total, 973 participants (n = 205 controls, n = 546 mild cognitive impairment, n = 222 AD) were analyzed for 7,433,949 common SNPs and 19,511 protein-coding genes. Structural equation models tested whether biomarker PCs mediate genetic risk effects on AD, and stratified and interaction models probed for sex-specific effects. Results Five loci showed genome-wide significant association with CSF profiles, two were novel (rs145791381 [inflammation] and GRIN2D [synaptic functioning]) and three were previously described (APOE, TMEM106B, and CHI3L1). Follow-up analyses of the two novel signals in independent datasets only supported the GRIN2D locus, which contains several functionally interesting candidate genes. Mediation tests indicated that variants in APOE are associated with AD status via processes related to amyloid and tau pathology, while markers in TMEM106B and CHI3L1 are associated with AD only via neuronal injury/inflammation. Additionally, seven loci showed sex-specific associations with AD biomarkers. Conclusions These results suggest that pathway and sex-specific analyses can improve our understanding of AD genetics and may contribute to precision medicine.
    Date made available2024
    Publisherfigshare

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