Dror Lab

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Dror Lab

Dror Lab

@DrorLab

The Dror Lab at Stanford. For all your computational needs: MD, ML, HPC... Applied to biochemistry, cell biology, drug discovery, and more!

Stanford, California Se unió Ekim 2019
17 Siguiendo1.4K Seguidores
Dror Lab
Dror Lab@DrorLab·
How accurately can one predict drug binding modes using AlphaFold models? New work from our lab reveals AF2's improved accuracy in capturing binding pocket structures, but the results of docking are not a slam dunk. 💥🧐 Check out the preprint: biorxiv.org/content/10.110…
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Dror Lab
Dror Lab@DrorLab·
Check out our latest paper exploring the effects of GPCR phosphorylation on arrestin signaling with great collaborators @MattMasureel, Kobilka lab, and @Michel_Bouvier!
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Dror Lab
Dror Lab@DrorLab·
We benchmark 3 prototypical architectures - 3D conv. networks, graph networks and equivariant networks - and compare them to 1D/2D baselines. We find that 3D info can strongly improve model performance, but it depends on the choice of architecture for a particular task. [4/4]
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Dror Lab
Dror Lab@DrorLab·
The corresponding code to load, filter, and split the ATOM3D datasets is maintained on @github: github.com/drorlab/atom3d. We hope this lowers the entry barrier for algorithm developers and promotes 3D atomic data as a “machine learning datatype” in its own right. [3/4]
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Dror Lab
Dror Lab@DrorLab·
Looking for new challenges for machine learning in structural biology? Check out our recent release: ATOM3D, a unified collection of diverse benchmark datasets for biological problems that deal with atom coordinates in 3D space. ⚛️⚛️⚛️ atom3d.ai [1/4]
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Dror Lab retuiteado
Raphael Townshend
Raphael Townshend@raphaeljlt·
Excited to present our latest work on geometric prediction: the class of prediction problems for (non-scalar) geometric tensors! We show the first real-world demonstration of geometric prediction without the need for scalar approximations. arxiv.org/abs/2006.14163 [1/n]
Raphael Townshend tweet media
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Dror Lab retuiteado
Mohammed AlQuraishi
Mohammed AlQuraishi@MoAlQuraishi·
Somehow this slipped my radar. Very cool looking work from the @DrorLab: Hierarchical, rotation-equivariant neural networks to predict the structure of protein complexes. arxiv.org/abs/2006.09275
Mohammed AlQuraishi tweet media
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Dror Lab
Dror Lab@DrorLab·
Such a method is readily applicable to other tasks involving learning on 3D structures of large atomic systems. (3/3)
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Dror Lab
Dror Lab@DrorLab·
Starting with just the element type of each atom, we learn features at different levels of structural coarseness and aggregate this information hierarchically. The rotation-equivariant network recognizes molecular motifs independent of their orientation. (2/3)
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Dror Lab
Dror Lab@DrorLab·
Excited to share our work on learning from the 3D structure of macromolecules! Our neural network architecture enables us to learn directly from all atoms in protein complexes containing tens of thousands of atoms: arxiv.org/abs/2006.09275 (1/3)
Dror Lab tweet media
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Dror Lab retuiteado
Google DeepMind
Google DeepMind@GoogleDeepMind·
We have 2 papers published in @nature today! 🎉 One describes AlphaFold, which uses deep neural networks to predict protein structures with high accuracy. AlphaFold made the most accurate predictions at the 2018 scientific community assessment CASP13. 1/4 deepmind.com/blog/article/A…
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