Jan Řezáč
@jrezac.bsky.social
📤 129
📥 61
📝 18
Computational chemist at
@iocbprague.bsky.social
The workshop "Quantum Chemistry for Drug Design: From Theory to Applications", which we organized at IOCB Prague, has just concluded. Leading academics and pharmaceutical industry practitioners came together to share their knowledge and insights. Thanks to everybody who made it happen!
8 months ago
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reposted by
Jan Řezáč
Adam Pecina
8 months ago
Day 3 opened with Kenneth Atz @Roche tackling the holy grail of
#CADD
: P-L binding
#affinity
prediction. By reframing limits of data & models, we can focus on the next solvable challenges - a sharp reminder of complexity & progress ahead.
#CECAM
@cecamevents.bsky.social
@iocbprague.bsky.social
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reposted by
Jan Řezáč
Adam Pecina
8 months ago
We opened Day 2 of our
#CECAM
flagship workshop in Prague with the CECAM director Andrea Cavalli, highlighting steered
#MD
, dynamical docking & the complexity of binding energetics, and the challenges ahead. 🚀
#CECAMinPrague
@iocbprague.bsky.social
@cecamevents.bsky.social
@iocbtech.bsky.social
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PM6-ML, our semiempirical quantum-mechanical
#CompChem
method with machine learning correction (see paper:
pubs.acs.org/doi/10.1021/...
), is now also available as an Atomic Simulation Environment (ASE) calculator.
github.com/Honza-R/PM6-...
10 months ago
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I added the g-xTB
#compchem
method, just introduced by
@grimmelab.bsky.social
, to our protein-ligand interaction energy benchmarking. With an average error of less than 5% in the PLA 15 dataset, it is the most accurate semiempirical QM method to date (when ML is not considered).
10 months ago
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1/2 Lying is not the same as hallucinating. I asked an LLM to write a script to fetch data from a public API. After a couple of iterations, during which I fixed the issues and the AI apologized, it started telling me that the code was correct, but that it was having trouble connecting to the API.
10 months ago
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reposted by
Jan Řezáč
Guilherme M. Arantes
10 months ago
🚀 Benchmark paper out! How well do DFT, semiempirical & ML methods model proton transfer? ✅ DFT performs well, except with N-groups ❌ Pure ML struggles (though ORB v3 shows big gains) 🔥 PM6-ML Δ-learning excels, even in QM/MM setups! Check it out:
pubs.acs.org/doi/10.1021/...
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Benchmark of Approximate Quantum Chemical and Machine Learning Potentials for Biochemical Proton Transfer Reactions
Proton transfer reactions are among the most common chemical transformations and are central to enzymatic catalysis and bioenergetic processes. Their mechanisms are often investigated using DFT or approximate quantum chemical methods, whose accuracy directly impacts the reliability of the simulations. Here, a comprehensive set of semiempirical molecular orbital and tight-binding DFT approaches, along with recently developed machine learning (ML) potentials, are benchmarked against high-level MP2 reference data for a curated set of proton transfer reactions representative of biochemical systems. Relative energies, geometries, and dipole moments are evaluated for isolated reactions. Microsolvated reactions are also simulated using a hybrid QM/MM partition. Traditional DFT methods offer high accuracy in general but show markedly larger deviations for proton transfers involving nitrogen-containing groups. Among approximate models, RM1, PM6, PM7, DFTB2-NH, DFTB3, and GFN2-xTB show reasonable accuracy across properties, though their performance varies by chemical group. The ML-corrected (Δ-learning) model PM6-ML improves accuracy for all properties and chemical groups and transfers well to QM/MM simulations. Conversely, standalone ML potentials perform poorly for most reactions. These results provide a basis for evaluating approximate methods and selecting potentials for proton transfer simulations in complex environments.
https://pubs.acs.org/doi/10.1021/acs.jctc.5c00690
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I'm at the WATOC
#CompChem
conference in Oslo. Machine learning is everywhere, but the hottest news so far is the new g-xTB method by
@grimmelab.bsky.social
. The results presented today are truly impressive. I'm already running first calculations on our biomolecular systems...
10 months ago
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Our main topic is applying
#compchem
to protein-ligand interactions in
#CADD
. We just published a related article about using our semiempirical
#QM
methodology to analyze protein-protein interactions of the insulin receptor.
pubs.acs.org/doi/full/10....
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Multiscale Computational Protocols for Accurate Residue Interactions at the Flexible Insulin–Receptor Interface
The quantitative characterization of residue contributions to protein–protein binding across extensive flexible interfaces poses a significant challenge for biophysical computations. It is attributabl...
https://pubs.acs.org/doi/full/10.1021/acs.jcim.5c00772
12 months ago
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PM6-ML, our latest method that aims for quantum-chemical accuracy in large biomolecular systems, has a third implementation. In addition to MOPAC-ML and Cuby4, PM6-ML is now available in pDynamo3, where it can be used for QM/MM calculations:
github.com/pdynamo/pDyn...
.
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GitHub - pdynamo/pDynamo3: The pDynamo molecular modeling and simulation program
The pDynamo molecular modeling and simulation program - pdynamo/pDynamo3
https://github.com/pdynamo/pDynamo3
12 months ago
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A humble
#compchem
contribution to a great experimental
#medchem
work ranging from novel synthesis protocol to in vivo models. We applied our SQM-based scoring to interpret the interaction of the novel inhibitors with the protein.
add a skeleton here at some point
12 months ago
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Our PM6-ML method, a semiempirical QM method with ML correction, works well for proton transfer reactions - despite not having been trained for that. The new implementation reported in the preprint allows its use in QM/MM biomolecular simulations.
add a skeleton here at some point
12 months ago
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reposted by
Jan Řezáč
Adam Pecina
about 1 year ago
🚀 Exciting news! We're organizing a
@cecamevents.bsky.social
Flagship Workshop on Quantum Chemistry in Drug Design in Prague, Sept 8–10, 2025! Join top experts from academia & industry. Few spots left for contributed talks! 📢 Apply now:
www.cecam.org/workshop-det...
#compchem
#cadd
#QM
#CECAM
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CECAM - Quantum Chemistry for Drug Design: From Theory to Applications
https://www.cecam.org/workshop-details/quantum-chemistry-for-drug-design-from-theory-to-applications-1446
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Our new preprint - discussing the advantages and disadvantages of single-structure protein-ligand scoring (including our SQM2.20) in comparison to a wide range of MD-based methods.
doi.org/10.26434/che...
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Comparative Analysis of Quantum-Mechanical and standard Single-Structure Protein-Ligand Scoring Functions with MD-Based Free Energy Calculations
Single-structure scoring functions have been considered inferior to expensive ensemble free energy methods in predicting protein-ligand affinities. We are revisiting this dogma with the recently devel...
https://doi.org/10.26434/chemrxiv-2025-38lf5
about 1 year ago
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A perspective on the importance (and the lack of) reliable benchmarks for structure-based computer-aided drug design methods - with a contribution of
@adampecina.bsky.social
from my group
add a skeleton here at some point
about 1 year ago
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Connecting
#skating
and
#science
- a photo of the ice we skated on Sunday (left) and the Mandelbrot set fractal (right)
over 1 year ago
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We're organizing a CECAM workshop in September. If you're interested in QM calculations for drug design, apply and join us in Prague:
www.cecam.org/workshop-det...
add a skeleton here at some point
over 1 year ago
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Our first paper of 2025: Δ-ML potential combining PM6 and a ML correction. Machine learning is doing wonders for correcting issues in PM6 that we could not fix any other way.
pubs.acs.org/doi/10.1021/...
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PM6-ML: The Synergy of Semiempirical Quantum Chemistry and Machine Learning Transformed into a Practical Computational Method
Machine learning (ML) methods offer a promising route to the construction of universal molecular potentials with high accuracy and low computational cost. It is becoming evident that integrating physi...
https://pubs.acs.org/doi/10.1021/acs.jctc.4c01330
over 1 year ago
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