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Quantitative Genetics Tools for Mapping Trait Variation to Mechanisms, Therapeutics, and Interventions - Webinar Series

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Quantitative Genetics Tools for Mapping Trait Variation to Mechanisms, Therapeutics, and Interventions - Webinar Series

The NIDA Center of Excellence in Omics, Systems Genetics, and the Addictome has put together a webinar series, Quantitative Genetics Tools for Mapping Trait Variation to Mechanisms, Therapeutics, and Interventions. The goal of this series is to transverse the path from trait variance to QTL to gene.

Below is a list of webinars with additional material such as slides, notebooks, and answers to questions from the audience. Readers are encouraged to interact using the Issues section. Click here https://bit.ly/osga_YouTube to access our YouTube Channel with the recordings of the webinars

Date Speaker Topic Additional resources
2022-04-22 Alexander S. Hatoum and Arpana Agrawal Genome-wide Association Study Summary Statistics - Where to find them and how to use them Slides
2022-04-08 Molly Bogue Mouse Phenome Database: Resources and analysis tools for curated and integrated primary mouse phenotype and genotype data
2022-02-25 G. Allan Johnson HiDiver: A Suite of Methods to Merge Mgenetic Resonance Histology, Light Shee Microscopu, and Complete Brain Delineations other resources
2021-11-12 Gregory Farage and Saunak Sen Julia: a fast, friendly, and powerful language for data science Slides, notebooks and other resources
2021-10-22 Laura Saba Guide to evaluating the application of machine learning methods in genetics literature Slides
2021-10-08 Xusheng Wang and Rob Williams A Primer on Brain Proteomics and protein-QTL Analysis for Substance Use Disorders
2021-09-24 Karl Broman Organizing Data in Spreadsheets Slides
2021-09-10 Hao Chen A Rube Goldbergian Approach to Scheduling Rodent Behavior Experiments and Data Collection Slides
2021-08-26 Katerina Kechris Introduction to DNA Methylation Platforms and Data Analysis Slides
2021-06-11 Karl Broman Identifying Sample Mix-ups in eQTL Data Slides
2021-04-23 Hao Chen and Laura Saba Introduction to the Hybrid Rat Diversity Panel: A renewable rat panel for genetic studies of addiction-related traits Slides
2021-04-09 Katerina Kechris Introduction to Metabolomics Platforms and Data Analysis Slides
2021-03-26 Gregory Farage and Saunak Sen Landing on Jupyter: A guided tour of interactive notebooks Slides
2021-03-12 Gregory Farage and Saunak Sen Become a UseR: a brief tour in R Slides
2021-02-26 Abraham Palmer From GWAS to gene: what are the essential analyses and how do we bring them together using heterogeneous stock rats? Slides
2021-02-12 Laura Saba A beginner’s guide to bulk RNA-Seq analysis Slides
2020-11-20 Saunak Sen Sketching alternate realities: An introduction to causal inference in genetic studies Slides
2020-10-23 Elissa Chesler and Erich Baker Introduction to GeneWeaver: Integrating and analyzing heterogeneous functional genomics data Slides
2020-10-09 Saunak Sen Using Genetic and Non-Genetic Covariates in QTL Studies Slides
2020-09-25 Laura Saba Introduction to Weighted Gene Co-expression Analysis Slides
2020-09-11 Saunak Sen Sex as a biological covariate in genetic analysis Slides
2020-08-28 Laura Saba Identifying genes from QTL using RNA expression and the PhenoGen website Slides
2020-06-26 Rob Williams From candidate genes to causal variants: Strategies to identify (or not) genes and sequence variants in rodent populations Slides
2020-06-12 Laura Saba Introduction to Expression (e)QTL and Their Role in Connecting QTL to Genes and Molecular Networks Slides
2020-05-22 Rob Williams Mapping Addiction and Behavioral Traits and Getting at Causal Gene Variants with GeneNetwork Slides
2020-05-08 Saunak Sen Introduction to Quantitative Trait Loci (QTL) Analysis Q&A ~ Slides ~ Data analysis example

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Quantitative Genetics Tools for Mapping Trait Variation to Mechanisms, Therapeutics, and Interventions - Webinar Series


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Language:Jupyter Notebook 75.5%Language:HTML 23.9%Language:Julia 0.5%Language:R 0.1%Language:Scheme 0.0%Language:Python 0.0%