kliebl.bsky.social
@kliebl.bsky.social
Finally, my paper on describing dsDNA's conformational behavior with normalizing flow models has been published in JCTC!

pubs.acs.org/doi/full/10....
Deciphering DNA’s Sequence-Dependent Structure and Deformability with Normalizing Flows
The sequence-dependent structure and deformability of double-stranded DNA play key roles in many cellular processes. Accurate description of DNA’s conformational behavior has thus been a long-standing problem. Previous approaches to this problem assume a specific functional form for the elastic energy in terms of the internal coordinates of the DNA double-helix. The conformational flexibility of DNA, however, is strongly impacted by several stereochemical effects that complicate the formulation of an accurate functional form. In this work, I propose an entirely new, AI-based method to decipher the sequence-dependent structure and deformability of double-stranded DNA. This method employs normalizing flows that capture multimodal and correlation effects between internal coordinates of the DNA double-helix excellently and hence allows one to accurately quantify deformation energies for any double-stranded DNA structure and sequence. Thus, this approach offers a wide range of future applications and can also be extended to model the conformational flexibility of other biomolecules with similar complexity.
pubs.acs.org
January 13, 2026 at 6:30 PM
Our new work "Membrane Remodeling by the Collective Action of Caveolin-1" is now online on biorxiv!
We developed a bottom-up coarse-grained model to show how caveolin complexes cooperatively bend the membrane and form large invaginations.
www.biorxiv.org/content/10.1...
Membrane Remodeling by the Collective Action of Caveolin-1
Caveolin-1 proteins scaffold 50-100nm large invaginations in the plasma membrane to mediate critical cellular processes. As revealed recently by cryo-electron microscopy, several caveolin-1 protomers ...
www.biorxiv.org
October 16, 2025 at 6:50 AM
Our new paper is out:

A Hybrid Bottom-Up and Data-Driven Machine Learning Approach for Accurate Coarse-Graining of Large Molecular Complexes | Journal of Chemical Theory and Computation pubs.acs.org/doi/10.1021/...
A Hybrid Bottom-Up and Data-Driven Machine Learning Approach for Accurate Coarse-Graining of Large Molecular Complexes
Bottom-up coarse-graining refers to the development of low-resolution simulation models that are thermodynamically consistent with certain distributions from fully atomistic simulations. Force-matchin...
pubs.acs.org
April 18, 2025 at 8:05 PM
I have developed a new AI model to describe the sequence-dependent structure and deformability of DNA. Check out previous post!
February 7, 2025 at 8:33 PM