4.8 Article

Massively expedited genome-wide heritability analysis (MEGHA)

Publisher

NATL ACAD SCIENCES
DOI: 10.1073/pnas.1415603112

Keywords

heritability; genome-wide complex trait analysis; imaging genetics; endophenotype; phenomics

Funding

  1. National Institute of Biomedical Imaging and Bioengineering (NIBIB), National Institutes of Health (NIH)
  2. Center for Brain Science Neuroinformatics Research Group
  3. Athinoula A. Martinos Center for Biomedical Imaging
  4. Center for Human Genetic Research
  5. Stanley Center for Psychiatric Research
  6. NIH [R01 EB015611-01, U54 MH091657-03, K99MH101367, K01MH099232, R01 NS083534, R01 NS070963]
  7. NIH NIBIB [1K25EB013649-01, K24MH094614, R01 MH101486]
  8. Wellcome Trust Grants [100309/Z/12/Z, 098369/Z/12/Z]
  9. BrightFocus Grant [AHAF-A2012333]
  10. Wellcome Trust [100309/Z/12/Z] Funding Source: Wellcome Trust

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The discovery and prioritization of heritable phenotypes is a computational challenge in a variety of settings, including ne genetics and analyses of the vast phenotypic repositories in electronic health record systems and population-based biobanks. Classical estimates of heritability require twin or pedigree data, which can be costly and difficult to acquire. Genome-wide complex trait analysis is an alternative tool to compute heritability estimates from unrelated individuals, using genome-wide data that are increasingly ubiquitous, but is computationally demanding and becomes difficult to apply in evaluating very large numbers of phenotypes. Here we present a fast and accurate statistical method for high-dimensional heritability analysis using genome-wide SNP data from unrelated individuals, termed massively expedited genome-wide heritability analysis (MEGHA) and accompanying nonparametric sampling techniques that enable flexible inferences for arbitrary statistics of interest. MEGHA produces estimates and significance measures of heritability with several orders of magnitude less computational time than existing methods, making heritability-based prioritization of millions of phenotypes based on data from unrelated individuals tractable for the first time to our knowledge. As a demonstration of application, we conducted heritability analyses on global and local morphometric measurements derived from brain structural MRI scans, using genome-wide SNP data from 1,320 unrelated young healthy adults of non-Hispanic European ancestry. We also computed surface maps of heritability for cortical thickness measures and empirically localized cortical regions where thickness measures were significantly heritable. Our analyses demonstrate the unique capability of MEGHA for large-scale heritability-based screening and high-dimensional heritability profile construction.

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