Recorded webinar

Scope and vision of AlphaFold

AlphaFold is an AI system developed by DeepMind that predicts protein 3D structure from its amino-acid sequence. It’s been a year since the AlphaFold software and ‘AlphaFold Protein Structure Database’ were made publicly available for users to explore and investigate their protein of interest.

We are running a webinar series to mark this occasion by highlighting the impact of AlphaFold on training and research in life sciences

This is the first webinar of the series where the speaker will describe and discuss the scope and vision of AlphaFold. 

Speakers:

Kathryn Tunyasuvunakool - Machine learning models have the potential to become core tools in biology, as recent progress in protein structure prediction illustrates. In this webinar I gave an overview of AlphaFold: how the system works, how to obtain protein structure predictions, and how to analyse them. I then reviewed some ways in which the system has been built upon, and discussed how to evaluate AlphaFold for a new application.

Randy Read - ​​Few areas of structural biology have been untouched by the recent dramatic increases in the power and accuracy of computational modelling of protein structure. These changes have been wrought by the current version of AlphaFold, with RoseTTAFold not far behind. Experimental structural biology is still needed to resolve ambiguities in the predicted structures and to verify the details, but the availability of high-quality models is removing many of the bottlenecks in the experiments. Even without an experimental structure, the new models are sufficient to generate interesting hypotheses that can be tested experimentally, such as assessing how variants associated with genetic disease actually cause disease. Limitations in the models could potentially be addressed by adding explicit physics and chemistry to the pattern recognition used in the current algorithms, and by actively exploiting even limited experimental observations.

Sergey Ovchinnikov - I discussed the impact of AlphaFold on structural bioinformatics by highlighting a few large scale efforts and structure-search tools developed to characterise the AlphaFold models.

Who is this course for?

This webinar is suitable for anyone interested in proteins, structural biology or applications of AI in life sciences.

Outcomes

By the end of the webinar you will be able to:

  • Explore applications of AlphaFold
  • Discuss current strength and limitations of AlphaFold in structural biology
  • Identify impact of structure prediction on structural, computational biology research

DOI_disc_logo DOI: 10.6019/TOL.AlphaFoldScope-w.2022.00001.1

EBI Resources

title
Duration: 01:29:35
14 June 2022
Online
Free
Contact
Ajay Mishra

Organisers
  • Sameer Velankar
    EMBL-EBI
  • Marta Lloret Llinares
    EMBL-EBI
  • Ajay Mishra
    EMBL-EBI

Speakers
  • Kathryn Tunyasuvunakool
    DeepMind
  • Randy J Read
    University of Cambridge
  • Sergey Ovchinnikov
    Harvard University

In association with:


Creative Commons

All materials are free cultural works licensed under a Creative Commons Attribution 4.0 International (CC BY 4.0) license, except where further licensing details are provided.


Share this event with: