Learning Objectives

  • Understand methods to assign function of GWAS
  • Explain what a TWAS do
  • Explain what colocalization methods do
  • List pros and cons of GWAS and colocalization
  • Understand the principle and assumptions of Mendelian Randomization

Material for the lecture

Find the slides here

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Citation

For attribution, please cite this work as

Haky Im (2022). Lecture 12: Integrating GWAS with QTL analysis. HGEN 471 Class Notes. /post/2022/02/21/lecture-12-integrating-gwas-with-qtl-analysis/

BibTeX citation

@misc{
  title = "Lecture 12: Integrating GWAS with QTL analysis",
  author = "Haky Im",
  year = "2022",
  journal = "HGEN 471 Class Notes",
  note = "/post/2022/02/21/lecture-12-integrating-gwas-with-qtl-analysis/"
}