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cover of episode Audio long read: AI has dreamt up a blizzard of new proteins. Do any of them actually work?

Audio long read: AI has dreamt up a blizzard of new proteins. Do any of them actually work?

2024/11/29
logo of podcast Nature Podcast

Nature Podcast

AI Deep Dive AI Insights AI Chapters Transcript
People
A
Anthony Gitter
B
Burkhard Rost
B
Burkhard Rust
C
Clayton Kozanocki
E
Erika de Benedictis
J
Julian Englert
M
Michael Heintinger
N
Noelia Feruth Capope
Topics
Noelia Feruth Capope:蛋白质设计竞赛有助于推动该领域发展,加快验证和标准制定,但需要克服一些障碍,例如确定要解决的问题以及如何客观地选择优胜者。 Burkhard Rust:蛋白质设计竞赛如果执行不当,可能会对该领域造成损害。竞赛的评判标准过窄可能会适得其反。 Burkhard Rost:蛋白质设计竞赛可以像CASP一样推动蛋白质设计领域的发展,需要设计合理的竞赛机制来激励参与者。 Clayton Kozanocki:Bits to Binders竞赛吸引了来自全球各地的众多参赛团队,展现了竞赛的广泛影响力。 Julian Englert:Adaptive Bio公司的竞赛吸引了专业人士和非专业人士的参与,降低了进入门槛,使更多人能够参与蛋白质设计。 Erika de Benedictis:选择蛋白质设计竞赛的优胜者并不容易,需要考虑蛋白质设计的各种失败方式。 Anthony Gitter:参赛者应该公开他们的方法,以便其他人学习。蛋白质设计竞赛可以促进不同领域之间的合作,组织者应该努力创建一个社区。 Michael Heintinger:参加蛋白质设计竞赛的主要动机是节省时间,而不是奖金。 Martin Paceza and Lennart Nickel: 通过开源代码和预印本分享了他们的方法,推动了领域的开放合作。

Deep Dive

Key Insights

Why are AI-designed proteins being created faster than they can be tested?

AI tools like AlphaFold and protein language models have become more powerful and popular, leading to a surge in the generation of designer proteins. However, the pace of creation outstrips the ability to test these proteins in labs, causing confusion about their effectiveness.

What role do protein design competitions play in the field of protein engineering?

Protein design competitions aim to identify functional proteins from the vast number of designs generated by AI. They lower the barrier to entry for newcomers, accelerate validation and standards development, and foster a sense of community among researchers.

What challenges do protein design competitions face?

Key challenges include identifying relevant problems to tackle, selecting winners objectively, and ensuring that competitions do not narrow the field too much or discourage sharing of methods. Proper execution is crucial to avoid damaging the field.

How did the CASP competition influence the development of AI in protein structure prediction?

The CASP competition, launched in 1994, revolutionized protein structure prediction by challenging scientists to predict 3D shapes from amino acid sequences. It directly led to the creation of AlphaFold, which solved the problem of predicting simple protein structures.

What are some examples of recent protein design competitions?

Examples include the Protein Engineering Tournament by Align to Innovate, the Winter Protein Design Games by Liberum Bio and Rosetta Commons, and the Adaptive Bio competition, which focused on designing proteins to target EGFR in cancer.

Who participated in the protein design competitions, and what were the outcomes?

Participants ranged from professional protein engineers to hobbyists with no formal biology experience. Despite high participation, success rates were low, with only a small percentage of designs proving functional in lab tests.

What are the potential benefits of protein design competitions for the scientific community?

Competitions can accelerate the pace of validation, encourage collaboration, and bring together diverse fields like biochemistry and machine learning. They also provide opportunities for learning and community-building within the protein design field.

What was the outcome of the Adaptive Bio competition, and how did it impact participants?

Only 5 out of 147 tested designs successfully bound to the target molecule, reflecting the challenges of protein engineering. Despite the low success rate, participants gained valuable experience and connections, with some continuing to participate in future competitions.

Chapters
The use of AI in protein design has led to a surge in the creation of designer molecules. However, this rapid increase has outpaced the ability to test these proteins, leading to the development of protein design competitions to identify functional proteins. These competitions aim to accelerate validation, standards development, and community building within the field.
  • AI tools like AlphaFold and protein language models are used in protein design competitions.
  • Competitions help to identify functional proteins among many.
  • The competitions aim to quicken the pace of validation and standards development.

Shownotes Transcript

AI tools that help researchers design new proteins have resulted in a boom in designer molecules. However, these proteins are being churned out faster than they can be made and tested in labs.

To overcome this, multiple protein-design competitions have popped up, with the aim of sifting out the functional from the fantastical. But while contests have helped drive key scientific advances in the past, it's unclear how to identify which problems to tackle and how best to select winners objectively.

This is an audio version of our Feature: AI has dreamt up a blizzard of new proteins. Do any of them actually work?) Hosted on Acast. See acast.com/privacy) for more information.