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EP 160: Artificial Intelligence, GWAS in Drug Discovery, and Career Insights with Dr. Eric Fauman, Executive Director and Head of Computational Biology in the Internal Medicine Research Unit at Pfizer

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コンテンツは Sano Genetics によって提供されます。エピソード、グラフィック、ポッドキャストの説明を含むすべてのポッドキャスト コンテンツは、Sano Genetics またはそのポッドキャスト プラットフォーム パートナーによって直接アップロードされ、提供されます。誰かがあなたの著作物をあなたの許可なく使用していると思われる場合は、ここで概説されているプロセスに従うことができますhttps://ja.player.fm/legal
0:00 Introduction

1:30 The power of social media: How Eric published 10 papers based on ideas that he discussed on Twitter

5:50 Explanation of The Table of Everything, an internal database at Pfizer that catalogs nearly 20,000 human genes and their associated diseases and traits

13:20 How Eric’s team works to correlate genome-wide association study (GWAS) results to real biological phenotypes and outcomes

18:10 Introduction to protein quantitative trait locus (PQTL), including its importance in biological and genetic data

25:10 Examining the evolving bottlenecks in drug development and the challenges of validating genetic targets

28:30 Navigating the gap between genetic hits and biological understanding, and how AI or functional studies could bridge this in target discovery

32:20 Linus Pauling's mentorship of Eric and how he might react to AlphaFold2’s breakthroughs in structural biology

35:15 Eric's take on using AI and how he's experimenting with it on trusted datasets

41:00 An introduction to Mendelian randomization, as well as its strengths and limitations

47:00 How Eric uses the TOP Model (Talent, Opportunity, and Passion) to guide this career choices and path

52:00 Diversity and collaboration in genetics research and implementation

55:00 Closing remarks

Resources mentioned throughout the episode:
Mendelian Randomization with Proxy Biomarkers
Explores proxy biomarkers as a method to assess in vivo activity of a protein target.

Trait Colocalization and Causal Genes
Demonstrates how traits with opposing effects on a genetic variant may suggest a causal gene sits between them

Metabolite Profiling in Human Knockouts

Community Workshop on Effector Gene Standards
Presentation: Watch on YouTube

TOP Model for Career Guidance

The Table of Everything

UK Biobank Protein QTL Study

Eric’s First GWAS Contribution

Every Gene Ever Annotated (EGEA)
Nine reasons not to use eQTLs to identify causal genes from GWAS:
Random Sequences Can Create Regulatory Elements
  • “~83% of random promoter sequences yielded measurable expression” - de Boer CG, Nat Biotechnol, 2020
  • “Recently evolved enhancers are formed predominantly by exaptation of ancestral DNA” - Villar D, Cell, 2015
  • “Extensive co-regulation of neighboring genes complicates the use of eQTLs in target gene prioritization” - Tambets R, et al., HGG Adv., 2024
Enhancer Variants and Buffering in Important Genes
  • “eQTLs at GWAS loci are more likely to point to genes with low enhancer redundancy not associated with disease” - Wang X, Goldstein DB, Am J Hum Genet., 2020
  • “GWAS and eQTL studies are systematically biased toward different types of variants” - Mostafavi H, et al., Nat Genet., 2023
  • “CNVs are buffered by post-transcriptional regulation in 23%-33% of proteins significantly enriched in protein complex members” - Gonçalves E, et al., Cell Systems, 2017
eQTL Data Limitations vs. Proximity Information
  • “cis-eQTL target genes are relatively poor indicators of ‘true positive’ causal genes” - Stacey D, et al., NAR., 2018
  • “When molecular QTL colocalization evidence was removed, we saw similar classification results” - Mountjoy E, et al., Nat Genet., 2021
  • “Key predictive features included coding or transcript-altering SNVs, distance to gene, and open chromatin-based metrics” - Forgetta V, et al., Hum Genet., 2022
  continue reading

189 つのエピソード

Artwork
iconシェア
 
Manage episode 448943474 series 2631947
コンテンツは Sano Genetics によって提供されます。エピソード、グラフィック、ポッドキャストの説明を含むすべてのポッドキャスト コンテンツは、Sano Genetics またはそのポッドキャスト プラットフォーム パートナーによって直接アップロードされ、提供されます。誰かがあなたの著作物をあなたの許可なく使用していると思われる場合は、ここで概説されているプロセスに従うことができますhttps://ja.player.fm/legal
0:00 Introduction

1:30 The power of social media: How Eric published 10 papers based on ideas that he discussed on Twitter

5:50 Explanation of The Table of Everything, an internal database at Pfizer that catalogs nearly 20,000 human genes and their associated diseases and traits

13:20 How Eric’s team works to correlate genome-wide association study (GWAS) results to real biological phenotypes and outcomes

18:10 Introduction to protein quantitative trait locus (PQTL), including its importance in biological and genetic data

25:10 Examining the evolving bottlenecks in drug development and the challenges of validating genetic targets

28:30 Navigating the gap between genetic hits and biological understanding, and how AI or functional studies could bridge this in target discovery

32:20 Linus Pauling's mentorship of Eric and how he might react to AlphaFold2’s breakthroughs in structural biology

35:15 Eric's take on using AI and how he's experimenting with it on trusted datasets

41:00 An introduction to Mendelian randomization, as well as its strengths and limitations

47:00 How Eric uses the TOP Model (Talent, Opportunity, and Passion) to guide this career choices and path

52:00 Diversity and collaboration in genetics research and implementation

55:00 Closing remarks

Resources mentioned throughout the episode:
Mendelian Randomization with Proxy Biomarkers
Explores proxy biomarkers as a method to assess in vivo activity of a protein target.

Trait Colocalization and Causal Genes
Demonstrates how traits with opposing effects on a genetic variant may suggest a causal gene sits between them

Metabolite Profiling in Human Knockouts

Community Workshop on Effector Gene Standards
Presentation: Watch on YouTube

TOP Model for Career Guidance

The Table of Everything

UK Biobank Protein QTL Study

Eric’s First GWAS Contribution

Every Gene Ever Annotated (EGEA)
Nine reasons not to use eQTLs to identify causal genes from GWAS:
Random Sequences Can Create Regulatory Elements
  • “~83% of random promoter sequences yielded measurable expression” - de Boer CG, Nat Biotechnol, 2020
  • “Recently evolved enhancers are formed predominantly by exaptation of ancestral DNA” - Villar D, Cell, 2015
  • “Extensive co-regulation of neighboring genes complicates the use of eQTLs in target gene prioritization” - Tambets R, et al., HGG Adv., 2024
Enhancer Variants and Buffering in Important Genes
  • “eQTLs at GWAS loci are more likely to point to genes with low enhancer redundancy not associated with disease” - Wang X, Goldstein DB, Am J Hum Genet., 2020
  • “GWAS and eQTL studies are systematically biased toward different types of variants” - Mostafavi H, et al., Nat Genet., 2023
  • “CNVs are buffered by post-transcriptional regulation in 23%-33% of proteins significantly enriched in protein complex members” - Gonçalves E, et al., Cell Systems, 2017
eQTL Data Limitations vs. Proximity Information
  • “cis-eQTL target genes are relatively poor indicators of ‘true positive’ causal genes” - Stacey D, et al., NAR., 2018
  • “When molecular QTL colocalization evidence was removed, we saw similar classification results” - Mountjoy E, et al., Nat Genet., 2021
  • “Key predictive features included coding or transcript-altering SNVs, distance to gene, and open chromatin-based metrics” - Forgetta V, et al., Hum Genet., 2022
  continue reading

189 つのエピソード

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