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Can Genetic Analysis of Putative Blood Alzheimer’s Disease Biomarkers Lead to Identification of Susceptibility Loci?

Author

Listed:
  • Robert C Barber
  • Nicole R Phillips
  • Jeffrey L Tilson
  • Ryan M Huebinger
  • Shantanu J Shewale
  • Jessica L Koenig
  • Jeffrey S Mitchel
  • Sid E O’Bryant
  • Stephen C Waring
  • Ramon Diaz-Arrastia
  • Scott Chasse
  • Kirk C Wilhelmsen
  • for the Alzheimer’s Disease Neuroimaging Initiative and the Texas Alzheimer’s Research and Care Consortium

Abstract

Although 24 Alzheimer’s disease (AD) risk loci have been reliably identified, a large portion of the predicted heritability for AD remains unexplained. It is expected that additional loci of small effect will be identified with an increased sample size. However, the cost of a significant increase in Case-Control sample size is prohibitive. The current study tests whether exploring the genetic basis of endophenotypes, in this case based on putative blood biomarkers for AD, can accelerate the identification of susceptibility loci using modest sample sizes. Each endophenotype was used as the outcome variable in an independent GWAS. Endophenotypes were based on circulating concentrations of proteins that contributed significantly to a published blood-based predictive algorithm for AD. Endophenotypes included Monocyte Chemoattractant Protein 1 (MCP1), Vascular Cell Adhesion Molecule 1 (VCAM1), Pancreatic Polypeptide (PP), Beta2 Microglobulin (B2M), Factor VII (F7), Adiponectin (ADN) and Tenascin C (TN-C). Across the seven endophenotypes, 47 SNPs were associated with outcome with a p-value ≤1x10-7. Each signal was further characterized with respect to known genetic loci associated with AD. Signals for several endophenotypes were observed in the vicinity of CR1, MS4A6A/MS4A4E, PICALM, CLU, and PTK2B. The strongest signal was observed in association with Factor VII levels and was located within the F7 gene. Additional signals were observed in MAP3K13, ZNF320, ATP9B and TREM1. Conditional regression analyses suggested that the SNPs contributed to variation in protein concentration independent of AD status. The identification of two putatively novel AD loci (in the Factor VII and ATP9B genes), which have not been located in previous studies despite massive sample sizes, highlights the benefits of an endophenotypic approach for resolving the genetic basis for complex diseases. The coincidence of several of the endophenotypic signals with known AD loci may point to novel genetic interactions and should be further investigated.

Suggested Citation

  • Robert C Barber & Nicole R Phillips & Jeffrey L Tilson & Ryan M Huebinger & Shantanu J Shewale & Jessica L Koenig & Jeffrey S Mitchel & Sid E O’Bryant & Stephen C Waring & Ramon Diaz-Arrastia & Scott , 2015. "Can Genetic Analysis of Putative Blood Alzheimer’s Disease Biomarkers Lead to Identification of Susceptibility Loci?," PLOS ONE, Public Library of Science, vol. 10(12), pages 1-19, December.
  • Handle: RePEc:plo:pone00:0142360
    DOI: 10.1371/journal.pone.0142360
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    Cited by:

    1. Rounak Dey & Wei Zhou & Tuomo Kiiskinen & Aki Havulinna & Amanda Elliott & Juha Karjalainen & Mitja Kurki & Ashley Qin & Seunggeun Lee & Aarno Palotie & Benjamin Neale & Mark Daly & Xihong Lin, 2022. "Efficient and accurate frailty model approach for genome-wide survival association analysis in large-scale biobanks," Nature Communications, Nature, vol. 13(1), pages 1-13, December.

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