This lesson is in the early stages of development (Alpha version)

Gene Expression QTL Analysis

Expression quantitative trait loci (eQTL) analysis identifies loci that explain variation in transcript abundance.

Prerequisites

This lesson teaches expression QTL analysis using the qtl2 package in R. Learners should:

  1. have a basic knowledge of genetics
  2. have basic R programming skills
  3. be familiar with QTL mapping using the qtl2 package in R. This lesson in quantitative trait mapping will help.

Schedule

Setup Download files required for the lesson
00:00 1. Introduction What are expression quantitative trait loci (eQTL)?
How are eQTL used in genetic studies?
00:20 2. Genetic Drivers of Pancreatic Islet Function How I can learn more from an example eQTL study?
What is the hypothesis of an example eQTL study?
00:50 3. Load and explore the data What data are required for eqtl mapping?
01:35 4. Review Mapping Steps What are the steps involved in running QTL mapping in Diversity Outbred mice?
02:35 5. Mapping A Single Gene Expression Trait How do I map one gene expression trait?
03:35 6. Mapping Many Gene Expression Traits How do I map many genes?
04:35 7. Creating A Transcriptome Map How do I create and interpret a transcriptome map?
05:35 8. Transcriptome Map of cis and trans eQTL How do I create a full transcriptome map?
06:05 9. Maximum eQTL Peaks and Nearby Genes How do I display maximum eQTL peaks and nearby genes?
06:35 10. Interpreting qtl2 results How do I interpret qtl2 results?
06:47 11. Mediation Analysis What is mediation analysis?
How is mediation analysis used in genetics and genomics?
How do I explore causal relations with mediation analysis?
06:59 Finish

The actual schedule may vary slightly depending on the topics and exercises chosen by the instructor.