Andrea Pasquadibisceglie
@andpdb.bsky.social
180 followers
870 following
12 posts
Staff scientist @tigem.bsky.social | Computational structural biologist
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Reposted by Andrea Pasquadibisceglie
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di Bernardo Lab
@diegodibi.bsky.social
· Sep 10
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Sammy Chan
@sammyhschan.bsky.social
· Apr 11
Structures of protein folding intermediates on the ribosome
The ribosome biases the conformations sampled by nascent polypeptide chains along folding pathways towards biologically active states. A hallmark of the co-translational folding (coTF) of many protein...
www.biorxiv.org
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
🔬 From Sweden to Italy: @andpdb.bsky.social is bringing his expertise in Computational Structural Biology back home!
After working at #KTH (Stockholm), he’s now a Staff Scientist at TIGEM, using AI and physics-based models to design hyperactive enzymes that improve gene therapy for rare diseases.
After working at #KTH (Stockholm), he’s now a Staff Scientist at TIGEM, using AI and physics-based models to design hyperactive enzymes that improve gene therapy for rare diseases.
Reposted by Andrea Pasquadibisceglie
Jorge Bravo Abad
@bravo-abad.bsky.social
· Mar 21
Unsupervised Learning of Progress Coordinates during Weighted Ensemble Simulations: Application to NTL9 Protein Folding
A major challenge for many rare-event sampling strategies is the identification of progress coordinates that capture the slowest relevant motions. Machine-learning methods that can identify progress coordinates in an unsupervised manner have therefore been of great interest to the simulation community. Here, we developed a general method for identifying progress coordinates “on-the-fly” during weighted ensemble (WE) rare-event sampling via deep learning (DL) of outliers among sampled conformations. Our method identifies outliers in a latent space model of the system’s sampled conformations that is periodically trained using a convolutional variational autoencoder. As a proof of principle, we applied our DL-enhanced WE method to simulate the NTL9 protein folding process. To enable rapid tests, our simulations propagated discrete-state synthetic molecular dynamics trajectories using a generative, fine-grained Markov state model. Results revealed that our on-the-fly DL of outliers enhanced the efficiency of WE by >3-fold in estimating the folding rate constant. Our efforts are a significant step forward in the unsupervised learning of slow coordinates during rare event sampling.
pubs.acs.org
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie
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Frank Noe
@franknoe.bsky.social
· Feb 19
Reposted by Andrea Pasquadibisceglie
Reposted by Andrea Pasquadibisceglie