Congratulations to Yihong for his first conference presentation, just three months into his Ph.D. program! 🎉 Thank you CAGI7 @CAGInews and @NIH for sponsoring the travel fellowship and nurturing the next generation of scientific trainees. #CAGI#NIH#Genomics#VariantEffect#AI
Today CZI is announcing an unprecedented new scientific initiative to build the future of AI-powered biology. I am joining CZI to lead this initiative as Head of Science, and the EvolutionaryScale team is joining forces with Biohub.
This is the first large scale scientific effort to combine frontier AI and frontier biology.
I feel an incredible sense of optimism in this moment. There is a path to build predictive models of life that can fundamentally accelerate science, and unlock a new understanding of disease.
https://t.co/K2V0cpXKwx
We are #hiring for Postdoctoral Associate in AI4Science at Texas A&M University. Message me if you're interested in joining our team. We are attending Conference on Neural Information Processing Systems (NeurIPS 2024) if you would like to meet! #NeurIPS2024
Just published: "Current and future directions in network biology", a comprehensive review by leading experts in the field! Read it here: https://t.co/Ur9kUhy4OE #NetworkBiology#ISCB
.@bozdags, Byung-Jun Yoon, @structbioinf, & I led the section on Machine Learning on Networks w/ contributions from Ziynet Nesibe Kesimoglu & @haiyuanyu. Thanks to @marinkazitnik for tons of input.
It’s great to be back at MPI after almost five years, see many familiar faces again, and hearing great science progress in modeling of protein interactions! #MPI2023
70 years ago on the day of Apr. 25, a short but revolutionary paper was published. https://t.co/QGIbZJAgAA Let's keep in mind the historic contributions from Watson, Crick, Rosalind Franklin and others. Happy National DNA Day!
Finally, after ~6 years of work, this is published! https://t.co/6vt8CTli7j
Thanks to all my co-authors and the participants of the challenge for seeing this through.
@Stephen05485935
- Structure-informed Protein Language Models
Wuwei Tan - Multimodal learning of noncoding variant effects using genome sequence and chromatin structure https://t.co/cij2SbkavY
Look forward to attending #bps2023 in just a few days! My students will present their works on predicting the effects of protein and noncoding variants. We hope to connect with more experimental researchers on #ProteinDesign!
It's frustrating reading comp bio articles these days because many keep falling into the same pitfalls. Hard to know if the method actually works, or whether they messed up the evaluation. Here are some issues I've seen recently (w/o names):
11 ways ChatGPT saves me hours of work every day, and why you'll never outcompete those who use AI effectively.
A list for those who write code:
1 of 16
In two new papers we have found that the ESM2 language model generalizes beyond natural proteins, and enables programmable generation of complex and modular protein structures.
Great pleasure to introduce a new study on single sequence protein structure prediction https://t.co/nBe8nU06Mi and share my views https://t.co/G3pvCSwd4w ! @SpringerNature@NatComputSci
My take on the last year of Protein structure prediction up and including #CASP15 comments are welcome.
[2212.07702] Protein Structure Prediction until CASP15 https://t.co/CwxxOyF9fh
4. Embrace the model as part of the protocol. Most are using AF2 as a sampling tool now. One would think that scoring would be a coupled challenge. Yes and no.
It is interesting to see how the community of protein structure prediction has responded to AlphaFold2 (AF2) (2020-21) while participating in the next competition of #CASP15. The short answer is: "if you can't beat them, join them". But there is more.
3. Retrain/refine/customize the model. This was done by few groups for now and will be done by more in future. It needs clear rational / loss function, big and clean data, and BIG computing resources.