Frontiers in Neuroscience (Apr 2018)

Evaluation of Gene-Based Family-Based Methods to Detect Novel Genes Associated With Familial Late Onset Alzheimer Disease

  • Maria V. Fernández,
  • Maria V. Fernández,
  • John Budde,
  • John Budde,
  • Jorge L. Del-Aguila,
  • Jorge L. Del-Aguila,
  • Laura Ibañez,
  • Laura Ibañez,
  • Yuetiva Deming,
  • Yuetiva Deming,
  • Oscar Harari,
  • Oscar Harari,
  • Joanne Norton,
  • Joanne Norton,
  • John C. Morris,
  • John C. Morris,
  • Alison M. Goate,
  • NIA-LOAD family study group,
  • NCRAD,
  • Carlos Cruchaga,
  • Carlos Cruchaga

DOI
https://doi.org/10.3389/fnins.2018.00209
Journal volume & issue
Vol. 12

Abstract

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Gene-based tests to study the combined effect of rare variants on a particular phenotype have been widely developed for case-control studies, but their evolution and adaptation for family-based studies, especially studies of complex incomplete families, has been slower. In this study, we have performed a practical examination of all the latest gene-based methods available for family-based study designs using both simulated and real datasets. We examined the performance of several collapsing, variance-component, and transmission disequilibrium tests across eight different software packages and 22 models utilizing a cohort of 285 families (N = 1,235) with late-onset Alzheimer disease (LOAD). After a thorough examination of each of these tests, we propose a methodological approach to identify, with high confidence, genes associated with the tested phenotype and we provide recommendations to select the best software and model for family-based gene-based analyses. Additionally, in our dataset, we identified PTK2B, a GWAS candidate gene for sporadic AD, along with six novel genes (CHRD, CLCN2, HDLBP, CPAMD8, NLRP9, and MAS1L) as candidate genes for familial LOAD.

Keywords