1,099 results on '"De Fabritiis, P"'
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2. Machine Learning Potentials: A Roadmap Toward Next-Generation Biomolecular Simulations
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De Fabritiis, Gianni
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Physics - Chemical Physics ,Computer Science - Machine Learning - Abstract
Machine learning potentials offer a revolutionary, unifying framework for molecular simulations across scales, from quantum chemistry to coarse-grained models. Here, I explore their potential to dramatically improve accuracy and scalability in simulating complex molecular systems. I discuss key challenges that must be addressed to fully realize their transformative potential in chemical biology and related fields., Comment: 14 pages
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- 2024
3. mdCATH: A Large-Scale MD Dataset for Data-Driven Computational Biophysics
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Mirarchi, Antonio, Giorgino, Toni, and De Fabritiis, Gianni
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Quantitative Biology - Biomolecules - Abstract
Recent advancements in protein structure determination are revolutionizing our understanding of proteins. Still, a significant gap remains in the availability of comprehensive datasets that focus on the dynamics of proteins, which are crucial for understanding protein function, folding, and interactions. To address this critical gap, we introduce mdCATH, a dataset generated through an extensive set of all-atom molecular dynamics simulations of a diverse and representative collection of protein domains. This dataset comprises all-atom systems for 5,398 domains, modeled with a state-of-the-art classical force field, and simulated in five replicates each at five temperatures from 320 K to 413 K. The mdCATH dataset records coordinates and forces every 1 ns, for over 62 ms of accumulated simulation time, effectively capturing the dynamics of the various classes of domains and providing a unique resource for proteome-wide statistical analyses of protein unfolding thermodynamics and kinetics. We outline the dataset structure and showcase its potential through four easily reproducible case studies, highlighting its capabilities in advancing protein science.
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- 2024
4. On Machine Learning Approaches for Protein-Ligand Binding Affinity Prediction
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Schapin, Nikolai, Navarro, Carles, Bou, Albert, and De Fabritiis, Gianni
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Quantitative Biology - Biomolecules ,Computer Science - Machine Learning ,Quantitative Biology - Quantitative Methods ,J.3 - Abstract
Binding affinity optimization is crucial in early-stage drug discovery. While numerous machine learning methods exist for predicting ligand potency, their comparative efficacy remains unclear. This study evaluates the performance of classical tree-based models and advanced neural networks in protein-ligand binding affinity prediction. Our comprehensive benchmarking encompasses 2D models utilizing ligand-only RDKit embeddings and Large Language Model (LLM) ligand representations, as well as 3D neural networks incorporating bound protein-ligand conformations. We assess these models across multiple standard datasets, examining various predictive scenarios including classification, ranking, regression, and active learning. Results indicate that simpler models can surpass more complex ones in specific tasks, while 3D models leveraging structural information become increasingly competitive with larger training datasets containing compounds with labelled affinity data against multiple targets. Pre-trained 3D models, by incorporating protein pocket environments, demonstrate significant advantages in data-scarce scenarios for specific binding pockets. Additionally, LLM pretraining on 2D ligand data enhances complex model performance, providing versatile embeddings that outperform traditional RDKit features in computational efficiency. Finally, we show that combining 2D and 3D model strengths improves active learning outcomes beyond current state-of-the-art approaches. These findings offer valuable insights for optimizing machine learning strategies in drug discovery pipelines., Comment: 20 pages, 14 figures, 1 table
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- 2024
5. PlayMolecule pKAce: Small Molecule Protonation through Equivariant Neural Networks
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Schapin, Nikolai, Majewski, Maciej, Torrens-Fontanals, Mariona, and De Fabritiis, Gianni
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Quantitative Biology - Quantitative Methods ,Computer Science - Machine Learning ,J.3 - Abstract
Small molecule protonation is an important part of the preparation of small molecules for many types of computational chemistry protocols. For this, a correct estimation of the pKa values of the protonation sites of molecules is required. In this work, we present pKAce, a new web application for the prediction of micro-pKa values of the molecules' protonation sites. We adapt the state-of-the-art, equivariant, TensorNet model originally developed for quantum mechanics energy and force predictions to the prediction of micro-pKa values. We show that an adapted version of this model can achieve state-of-the-art performance comparable with established models while trained on just a fraction of their training data., Comment: 9 pages, 3 figures, 1 table
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- 2024
6. Numerical approach to the Bell-Clauser-Horne-Shimony-Holt inequality in quantum field theory
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De Fabritiis, Philipe, Guimaraes, Marcelo S., Roditi, Itzhak, and Sorella, Silvio P.
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High Energy Physics - Theory ,Quantum Physics - Abstract
The Bell-CHSH (Clauser-Horne-Shimony-Holt) inequality in the vacuum state of a relativistic scalar quantum field is analyzed. Using Weyl operators built with smeared fields localized in the Rindler wedges, the Bell-CHSH inequality is expressed in terms of the Lorentz invariant inner products of test functions. A numerical framework for these inner products is devised. Causality is also explicitly checked by a numerical evaluation of the Pauli-Jordan function. Violations of the Bell-CHSH inequality are reported for different values of the particle mass parameter., Comment: 6 pages, revised version. Accepted for publication in PRD
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- 2024
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7. BricksRL: A Platform for Democratizing Robotics and Reinforcement Learning Research and Education with LEGO
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Dittert, Sebastian, Moens, Vincent, and De Fabritiis, Gianni
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Computer Science - Robotics ,Computer Science - Machine Learning - Abstract
We present BricksRL, a platform designed to democratize access to robotics for reinforcement learning research and education. BricksRL facilitates the creation, design, and training of custom LEGO robots in the real world by interfacing them with the TorchRL library for reinforcement learning agents. The integration of TorchRL with the LEGO hubs, via Bluetooth bidirectional communication, enables state-of-the-art reinforcement learning training on GPUs for a wide variety of LEGO builds. This offers a flexible and cost-efficient approach for scaling and also provides a robust infrastructure for robot-environment-algorithm communication. We present various experiments across tasks and robot configurations, providing built plans and training results. Furthermore, we demonstrate that inexpensive LEGO robots can be trained end-to-end in the real world to achieve simple tasks, with training times typically under 120 minutes on a normal laptop. Moreover, we show how users can extend the capabilities, exemplified by the successful integration of non-LEGO sensors. By enhancing accessibility to both robotics and reinforcement learning, BricksRL establishes a strong foundation for democratized robotic learning in research and educational settings.
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- 2024
8. ACEGEN: Reinforcement learning of generative chemical agents for drug discovery
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Bou, Albert, Thomas, Morgan, Dittert, Sebastian, Ramírez, Carles Navarro, Majewski, Maciej, Wang, Ye, Patel, Shivam, Tresadern, Gary, Ahmad, Mazen, Moens, Vincent, Sherman, Woody, Sciabola, Simone, and De Fabritiis, Gianni
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Quantitative Biology - Biomolecules - Abstract
In recent years, reinforcement learning (RL) has emerged as a valuable tool in drug design, offering the potential to propose and optimize molecules with desired properties. However, striking a balance between capabilities, flexibility, reliability, and efficiency remains challenging due to the complexity of advanced RL algorithms and the significant reliance on specialized code. In this work, we introduce ACEGEN, a comprehensive and streamlined toolkit tailored for generative drug design, built using TorchRL, a modern RL library that offers thoroughly tested reusable components. We validate ACEGEN by benchmarking against other published generative modeling algorithms and show comparable or improved performance. We also show examples of ACEGEN applied in multiple drug discovery case studies. ACEGEN is accessible at \url{https://github.com/acellera/acegen-open} and available for use under the MIT license.
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- 2024
9. Four-gluon vertex from the Curci-Ferrari model at one-loop order
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Barrios, Nahuel, De Fabritiis, Philipe, and Peláez, Marcela
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High Energy Physics - Theory ,High Energy Physics - Lattice ,High Energy Physics - Phenomenology - Abstract
We compute the four-gluon vertex from the Curci-Ferrari model at one-loop order for a collinear configuration. Our results display a good agreement with the first lattice data for this vertex, released very recently (arXiv:2401.12008). A noteworthy novelty of our work is that we can provide analytical expressions for the four-gluon vertex in collinear configurations, together with a renormalization scheme that allows us to perform reliable perturbative computations even in the infrared regime. We observe an infrared suppression in the form factor associated with the tree-level four-gluon tensor with a possible zero-crossing in the deep infrared which demands new lattice investigations to be confirmed. Moreover, we report an infrared divergence in the completely symmetric tensor form factor due to the ghost-loop contributions. These results come as predictions since previous two-point correlations fix all the available parameters of the model, up to an overall constant factor., Comment: 9 pages, 2 figures, 1 appendix. Accepted for publication in PRD
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- 2024
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10. On the Inclusion of Charge and Spin States in Cartesian Tensor Neural Network Potentials
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Simeon, Guillem, Mirarchi, Antonio, Pelaez, Raul P., Galvelis, Raimondas, and De Fabritiis, Gianni
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Computer Science - Machine Learning ,Physics - Chemical Physics ,Physics - Computational Physics - Abstract
In this letter, we present an extension to TensorNet, a state-of-the-art equivariant Cartesian tensor neural network potential, allowing it to handle charged molecules and spin states without architectural changes or increased costs. By incorporating these attributes, we address input degeneracy issues, enhancing the model's predictive accuracy across diverse chemical systems. This advancement significantly broadens TensorNet's applicability, maintaining its efficiency and accuracy.
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- 2024
11. TorchMD-Net 2.0: Fast Neural Network Potentials for Molecular Simulations
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Pelaez, Raul P., Simeon, Guillem, Galvelis, Raimondas, Mirarchi, Antonio, Eastman, Peter, Doerr, Stefan, Thölke, Philipp, Markland, Thomas E., and De Fabritiis, Gianni
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Computer Science - Machine Learning ,Physics - Biological Physics ,Physics - Chemical Physics ,Physics - Computational Physics - Abstract
Achieving a balance between computational speed, prediction accuracy, and universal applicability in molecular simulations has been a persistent challenge. This paper presents substantial advancements in the TorchMD-Net software, a pivotal step forward in the shift from conventional force fields to neural network-based potentials. The evolution of TorchMD-Net into a more comprehensive and versatile framework is highlighted, incorporating cutting-edge architectures such as TensorNet. This transformation is achieved through a modular design approach, encouraging customized applications within the scientific community. The most notable enhancement is a significant improvement in computational efficiency, achieving a very remarkable acceleration in the computation of energy and forces for TensorNet models, with performance gains ranging from 2-fold to 10-fold over previous iterations. Other enhancements include highly optimized neighbor search algorithms that support periodic boundary conditions and the smooth integration with existing molecular dynamics frameworks. Additionally, the updated version introduces the capability to integrate physical priors, further enriching its application spectrum and utility in research. The software is available at https://github.com/torchmd/torchmd-net., Comment: Version accepted in Journal of Chemical Theory and Computation
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- 2024
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12. Enhancing Protein-Ligand Binding Affinity Predictions using Neural Network Potentials
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Zariquiey, Francesc Sabanes, Galvelis, Raimondas, Gallicchio, Emilio, Chodera, John D., Markland, Thomas E., and de Fabritiis, Gianni
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Physics - Chemical Physics ,Quantitative Biology - Quantitative Methods - Abstract
This letter gives results on improving protein-ligand binding affinity predictions based on molecular dynamics simulations using machine learning potentials with a hybrid neural network potential and molecular mechanics methodology (NNP/MM). We compute relative binding free energies (RBFE) with the Alchemical Transfer Method (ATM) and validate its performance against established benchmarks and find significant enhancements compared to conventional MM force fields like GAFF2.
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- 2024
13. PlayMolecule Viewer: a toolkit for the visualization of molecules and other data
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Torrens-Fontanals, Mariona, Tourlas, Panagiotis, Doerr, Stefan, and De Fabritiis, Gianni
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Quantitative Biology - Biomolecules - Abstract
PlayMolecule Viewer is a web-based data visualization toolkit designed to streamline the exploration of data resulting from structural bioinformatics or computer-aided drug design efforts. By harnessing state-of-the-art web technologies such as WebAssembly, PlayMolecule Viewer integrates powerful Python libraries directly within the browser environment, which enhances its capabilities of managing multiple types of molecular data. With its intuitive interface, it allows users to easily upload, visualize, select, and manipulate molecular structures and associated data. The toolkit supports a wide range of common structural file formats and offers a variety of molecular representations to cater to different visualization needs. PlayMolecule Viewer is freely accessible at open.playmolecule.org, ensuring accessibility and availability to the scientific community and beyond., Comment: 10 pages, 4 figures, submitted to the Journal of Chemical Information and Modeling
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- 2023
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14. Using Weyl operators to study Mermin's inequalities in Quantum Field Theory
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De Fabritiis, Philipe, Guedes, Fillipe M., Guimaraes, Marcelo S., Roditi, Itzhak, and Sorella, Silvio P.
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High Energy Physics - Theory ,Quantum Physics - Abstract
Mermin's inequalities are investigated in a Quantum Field Theory framework by using von Neumann algebras built with Weyl operators. We devise a general construction based on the Tomita-Takesaki modular theory and use it to compute the vacuum expectation value of the Mermin operator, analyzing the parameter space and explicitly exhibiting a violation of Mermin's inequalities. Therefore, relying on the power of modular operators, we are able to demonstrate that Mermin's inequalities are violated when examined within the vacuum state of a scalar field theory., Comment: 8 pages, 1 figure, revised version. Accepted for publication in PRD
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- 2023
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15. Navigating protein landscapes with a machine-learned transferable coarse-grained model
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Charron, Nicholas E., Musil, Felix, Guljas, Andrea, Chen, Yaoyi, Bonneau, Klara, Pasos-Trejo, Aldo S., Venturin, Jacopo, Gusew, Daria, Zaporozhets, Iryna, Krämer, Andreas, Templeton, Clark, Kelkar, Atharva, Durumeric, Aleksander E. P., Olsson, Simon, Pérez, Adrià, Majewski, Maciej, Husic, Brooke E., Patel, Ankit, De Fabritiis, Gianni, Noé, Frank, and Clementi, Cecilia
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Quantitative Biology - Biomolecules ,Physics - Biological Physics ,Physics - Chemical Physics ,Statistics - Machine Learning - Abstract
The most popular and universally predictive protein simulation models employ all-atom molecular dynamics (MD), but they come at extreme computational cost. The development of a universal, computationally efficient coarse-grained (CG) model with similar prediction performance has been a long-standing challenge. By combining recent deep learning methods with a large and diverse training set of all-atom protein simulations, we here develop a bottom-up CG force field with chemical transferability, which can be used for extrapolative molecular dynamics on new sequences not used during model parametrization. We demonstrate that the model successfully predicts folded structures, intermediates, metastable folded and unfolded basins, and the fluctuations of intrinsically disordered proteins while it is several orders of magnitude faster than an all-atom model. This showcases the feasibility of a universal and computationally efficient machine-learned CG model for proteins.
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- 2023
16. OpenMM 8: Molecular Dynamics Simulation with Machine Learning Potentials
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Eastman, Peter, Galvelis, Raimondas, Peláez, Raúl P., Abreu, Charlles R. A., Farr, Stephen E., Gallicchio, Emilio, Gorenko, Anton, Henry, Michael M., Hu, Frank, Huang, Jing, Krämer, Andreas, Michel, Julien, Mitchell, Joshua A., Pande, Vijay S., Rodrigues, João PGLM, Rodriguez-Guerra, Jaime, Simmonett, Andrew C., Swails, Jason, Zhang, Ivy, Chodera, John D., De Fabritiis, Gianni, and Markland, Thomas E.
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Physics - Chemical Physics ,Computer Science - Machine Learning ,J.2 ,J.3 - Abstract
Machine learning plays an important and growing role in molecular simulation. The newest version of the OpenMM molecular dynamics toolkit introduces new features to support the use of machine learning potentials. Arbitrary PyTorch models can be added to a simulation and used to compute forces and energy. A higher-level interface allows users to easily model their molecules of interest with general purpose, pretrained potential functions. A collection of optimized CUDA kernels and custom PyTorch operations greatly improves the speed of simulations. We demonstrate these features on simulations of cyclin-dependent kinase 8 (CDK8) and the green fluorescent protein (GFP) chromophore in water. Taken together, these features make it practical to use machine learning to improve the accuracy of simulations at only a modest increase in cost., Comment: 15 pages, 4 figures
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- 2023
17. A High-Throughput Steered Molecular Dynamics Study on the Free Energy Profile of Ion Permeation through Gramicidin A
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Giorgino, Toni and De Fabritiis, Gianni
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Physics - Chemical Physics ,Quantitative Biology - Biomolecules - Abstract
Steered molecular dynamics (SMD) simulations for the calculation of free energies are well suited for high-throughput molecular simulations on a distributed infrastructure due to the simplicity of the setup and parallel granularity of the runs. However, so far, the computational cost limited the estimation of the free energy typically over just a few pullings, thus impeding the evaluation of statistical uncertainties involved. In this work, we performed two thousand pulls for the permeation of a potassium ion in the gramicidin A pore by all-atom molecular dynamics in order to assess the bidirectional SMD protocol with a proper amount of sampling. The estimated free energy profile still shows a statistical error of several kcal/mol, while the work distributions are estimated to be non-Gaussian at pulling speeds of 10 {\AA}/ns. We discuss the methodology and the confidence intervals in relation to increasing amounts of computed trajectories and how different permeation pathways for the potassium ion, knock-on and sideways, affect the sampling and the free energy estimation., Comment: This document is the Accepted Manuscript version of a Published Work that appeared in final form in J. Chem. Theory Comput., copyright 2011 after peer review and technical editing by the publisher. To access the final edited and published work see doi:10.1021/ct100707s
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- 2023
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18. Weyl operators, Tomita-Takesaki theory, and Bell-Clauser-Horne-Shimony-Holt inequality violations
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De Fabritiis, P., Guedes, F. M., Guimaraes, M. S., Peruzzo, G., Roditi, I., and Sorella, S. P.
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High Energy Physics - Theory ,Quantum Physics - Abstract
The violation of the Bell-CHSH inequality in the vacuum state of a relativistic free real scalar field is established by means of the Tomita-Takesaki construction and of the direct computation of the correlation functions of Weyl operators., Comment: 10 pages, 2 figures, revised version. Accepted for publication in PRD
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- 2023
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19. Maintenance Therapy Post-Hematopoietic Stem Cell Transplantation in Acute Myeloid Leukemia
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Martina Canichella, Matteo Molica, Carla Mazzone, and Paolo de Fabritiis
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acute myeloid leukemia (AML) ,hematopoietic stem cell transplantation (HSCT) ,maintenance therapy post-HSCT in AML ,targeted drugs ,cellular therapy ,hypometylating agents ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
High-risk acute myeloid leukemia has been associated with a poor outcome. Hematopoietic stem cell transplantation (HSCT) represents the only curative option for eligible patients. Relapse after HSCT is a dramatic event with poor chances of survival. With the aim of reducing the rate of post-HSCT relapse, maintenance treatment has been investigated in this setting. Results from clinical trials suggest an advantage in the use of a maintenance strategy; however, standardized guidelines are not yet available due to the lack of prospective clinical trials. In this review, we have reported the most important strategies adopted as post-HSCT maintenance, highlighting their efficacy, but the current research also opens questions.
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- 2024
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20. Machine Learning Small Molecule Properties in Drug Discovery
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Schapin, Nikolai, Majewski, Maciej, Varela, Alejandro, Arroniz, Carlos, and De Fabritiis, Gianni
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Quantitative Biology - Biomolecules ,Computer Science - Machine Learning ,Quantitative Biology - Quantitative Methods - Abstract
Machine learning (ML) is a promising approach for predicting small molecule properties in drug discovery. Here, we provide a comprehensive overview of various ML methods introduced for this purpose in recent years. We review a wide range of properties, including binding affinities, solubility, and ADMET (Absorption, Distribution, Metabolism, Excretion, and Toxicity). We discuss existing popular datasets and molecular descriptors and embeddings, such as chemical fingerprints and graph-based neural networks. We highlight also challenges of predicting and optimizing multiple properties during hit-to-lead and lead optimization stages of drug discovery and explore briefly possible multi-objective optimization techniques that can be used to balance diverse properties while optimizing lead candidates. Finally, techniques to provide an understanding of model predictions, especially for critical decision-making in drug discovery are assessed. Overall, this review provides insights into the landscape of ML models for small molecule property predictions in drug discovery. So far, there are multiple diverse approaches, but their performances are often comparable. Neural networks, while more flexible, do not always outperform simpler models. This shows that the availability of high-quality training data remains crucial for training accurate models and there is a need for standardized benchmarks, additional performance metrics, and best practices to enable richer comparisons between the different techniques and models that can shed a better light on the differences between the many techniques., Comment: 46 pages, 1 figure
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- 2023
21. Maximal violation of the Bell-Clauser-Horne-Shimony-Holt inequality via bumpified Haar wavelets
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Dudal, David, De Fabritiis, Philipe, Guimaraes, Marcelo S., Roditi, Itzhak, and Sorella, Silvio P.
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High Energy Physics - Theory ,Quantum Physics - Abstract
We devise a general setup to investigate the violation of the Bell-CHSH inequality in the vacuum state in the context of Quantum Field Theory. We test the method with massless spinor fields in $(1+1)$-dimensional Minkowski space-time. Alice's and Bob's test functions are explicitly constructed, first by employing Haar wavelets which are then bumpified into proper test functions via a smoothening procedure relying on the Planck-taper window function. Relativistic causality is implemented by requiring the support of Alice's and Bob's test functions to be located in the left and right Rindler wedges, respectively. Violations of the Bell-CHSH inequality as close as desired to Tsirelson's bound are reported. We briefly comment on the extra portal, compared to earlier works, this opens to scrutinize Bell-CHSH inequalities with generic, interacting Quantum Field Theories., Comment: 7 pages, 2 figures. Published in PRD
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- 2023
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22. Top-down machine learning of coarse-grained protein force-fields
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Navarro, Carles, Majewski, Maciej, and de Fabritiis, Gianni
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Quantitative Biology - Biomolecules ,Computer Science - Machine Learning - Abstract
Developing accurate and efficient coarse-grained representations of proteins is crucial for understanding their folding, function, and interactions over extended timescales. Our methodology involves simulating proteins with molecular dynamics and utilizing the resulting trajectories to train a neural network potential through differentiable trajectory reweighting. Remarkably, this method requires only the native conformation of proteins, eliminating the need for labeled data derived from extensive simulations or memory-intensive end-to-end differentiable simulations. Once trained, the model can be employed to run parallel molecular dynamics simulations and sample folding events for proteins both within and beyond the training distribution, showcasing its extrapolation capabilities. By applying Markov State Models, native-like conformations of the simulated proteins can be predicted from the coarse-grained simulations. Owing to its theoretical transferability and ability to use solely experimental static structures as training data, we anticipate that this approach will prove advantageous for developing new protein force fields and further advancing the study of protein dynamics, folding, and interactions.
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- 2023
23. Probing Mermin's inequalities violations through pseudospin operators
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De Fabritiis, Philipe, Roditi, Itzhak, and Sorella, Silvio P.
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Quantum Physics - Abstract
The violation of Mermin's inequalities is analyzed by making use of two different Bell setups built with pseudospin operators. Employing entangled states defined by means of squeezed and coherent states, the expectation value of Mermin's polynomials $M_n$ is evaluated for $n=3$ and $n=4$. In each case, we analyze the correlator $\langle M_n \rangle$ and identify the set of parameters leading to the violation of Mermin's inequalities and to the saturation of the bound predicted by Quantum Mechanics., Comment: 10 pages, 16 figures
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- 2023
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24. TensorNet: Cartesian Tensor Representations for Efficient Learning of Molecular Potentials
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Simeon, Guillem and de Fabritiis, Gianni
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Computer Science - Machine Learning ,Physics - Chemical Physics ,Physics - Computational Physics - Abstract
The development of efficient machine learning models for molecular systems representation is becoming crucial in scientific research. We introduce TensorNet, an innovative O(3)-equivariant message-passing neural network architecture that leverages Cartesian tensor representations. By using Cartesian tensor atomic embeddings, feature mixing is simplified through matrix product operations. Furthermore, the cost-effective decomposition of these tensors into rotation group irreducible representations allows for the separate processing of scalars, vectors, and tensors when necessary. Compared to higher-rank spherical tensor models, TensorNet demonstrates state-of-the-art performance with significantly fewer parameters. For small molecule potential energies, this can be achieved even with a single interaction layer. As a result of all these properties, the model's computational cost is substantially decreased. Moreover, the accurate prediction of vector and tensor molecular quantities on top of potential energies and forces is possible. In summary, TensorNet's framework opens up a new space for the design of state-of-the-art equivariant models., Comment: NeurIPS 2023, camera-ready version
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- 2023
25. TorchRL: A data-driven decision-making library for PyTorch
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Bou, Albert, Bettini, Matteo, Dittert, Sebastian, Kumar, Vikash, Sodhani, Shagun, Yang, Xiaomeng, De Fabritiis, Gianni, and Moens, Vincent
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence - Abstract
Striking a balance between integration and modularity is crucial for a machine learning library to be versatile and user-friendly, especially in handling decision and control tasks that involve large development teams and complex, real-world data, and environments. To address this issue, we propose TorchRL, a generalistic control library for PyTorch that provides well-integrated, yet standalone components. With a versatile and robust primitive design, TorchRL facilitates streamlined algorithm development across the many branches of Reinforcement Learning (RL) and control. We introduce a new PyTorch primitive, TensorDict, as a flexible data carrier that empowers the integration of the library's components while preserving their modularity. Hence replay buffers, datasets, distributed data collectors, environments, transforms and objectives can be effortlessly used in isolation or combined. We provide a detailed description of the building blocks, supporting code examples and an extensive overview of the library across domains and tasks. Finally, we show comparative benchmarks to demonstrate its computational efficiency. TorchRL fosters long-term support and is publicly available on GitHub for greater reproducibility and collaboration within the research community. The code is opensourced on https://github.com/pytorch/rl.
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- 2023
26. PromptSMILES: prompting for scaffold decoration and fragment linking in chemical language models
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Thomas, Morgan, Ahmad, Mazen, Tresadern, Gary, and de Fabritiis, Gianni
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- 2024
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27. Chronic myeloid leukemia diagnosed in pregnancy: management and outcome of 87 patients reported to the European LeukemiaNet international registry
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Chelysheva, Ekaterina, Apperley, Jane, Turkina, Anna, Yassin, Mohamed A., Rea, Delphine, Nicolini, Franck E., Barraco, Daniela, Kazakbaeva, Khamida, Saliev, Sukhrob, Abulafia, Adi Shacham, Al-Kindi, Salam, Byrne, Jennifer, Robertson, Harry F., Cerrano, Marco, Shmakov, Roman, Polushkina, Evgenia, de Fabritiis, Paolo, Trawinska, Malgorzata Monika, and Abruzzese, Elisabetta
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- 2024
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28. Primary membranous nephropathy in the Italian region of Emilia Romagna: results of a multicenter study with extended follow-up
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Albertazzi, Vittorio, Fontana, Francesco, Giberti, Stefania, Aiello, Valeria, Battistoni, Sara, Catapano, Fausta, Graziani, Romina, Cimino, Simonetta, Scichilone, Laura, Forcellini, Silvia, De Fabritiis, Marco, Sara, Signorotti, Delsante, Marco, Fiaccadori, Enrico, Mosconi, Giovanni, Storari, Alda, Mandreoli, Marcora, Bonucchi, Decenzio, Buscaroli, Andrea, Mancini, Elena, Rigotti, Angelo, La Manna, Gaetano, Gregorini, Mariacristina, Donati, Gabriele, Cappelli, Gianni, and Scarpioni, Roberto
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- 2024
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29. Entangled coherent states and violations of Bell-CHSH inequalities
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De Fabritiis, Philipe, Guedes, Fillipe M., Peruzzo, Giovani, and Sorella, Silvio P.
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Quantum Physics - Abstract
Three classes of entangled coherent states are employed to study the Bell-CHSH inequality. By using pseudospin operators in infinite dimensional Hilbert spaces, four dichotomic operators $(A,A',B,B')$ entering the inequality are constructed. For each class of coherent states, we compute the correlator $\langle \psi \vert A B + A' B + A B' - A' B' \vert \psi \rangle$, analyzing the set of parameters that leads to a Bell-CHSH inequality violation and, particularly, to the saturation of Tsirelson's bound., Comment: 12 pages, 14 figures. Published in PLA
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- 2023
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30. BRST invariant formulation of the Bell-CHSH inequality in gauge field theories
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Dudal, David, De Fabritiis, Philipe, Guimaraes, Marcelo S., Peruzzo, Giovani, and Sorella, Silvio P.
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High Energy Physics - Theory ,High Energy Physics - Phenomenology ,Quantum Physics - Abstract
A study of the Bell-CHSH inequality in gauge field theories is presented. By using the Kugo-Ojima analysis of the BRST charge cohomology in Fock space, the Bell-CHSH inequality is formulated in a manifestly BRST invariant way. The examples of the free four-dimensional Maxwell theory and the Abelian Higgs model are scrutinized. The inequality is probed by using BRST invariant squeezed states, allowing for large Bell-CHSH inequality violations, close to Tsirelson's bound. An illustrative comparison with the entangled state of two $1/2$ spin particles in Quantum Mechanics is provided., Comment: 12 pages. Revised version. Accepted for publication in SciPost Physics
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- 2023
31. Mermin's inequalities in Quantum Field Theory
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De Fabritiis, Philipe, Roditi, Itzhak, and Sorella, Silvio Paolo
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High Energy Physics - Theory ,Quantum Physics - Abstract
A relativistic Quantum Field Theory framework is devised for Mermin's inequalities. By employing smeared Dirac spinor fields, we are able to introduce unitary operators which create, out of the Minkowski vacuum $| 0 \rangle$, GHZ-type states. In this way, we are able to obtain a relation between the expectation value of Mermin's operators in the vacuum and in the GHZ-type states. We show that Mermin's inequalities turn out to be maximally violated when evaluated on these states., Comment: 8 pages, published in PLB
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- 2023
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32. Validation of the Alchemical Transfer Method for the Estimation of Relative Binding Affinities of Molecular Series
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Zariquiey, Francesc Sabanés, Pérez, Adrià, Majewski, Maciej, Gallicchio, Emilio, and De Fabritiis, Gianni
- Subjects
Physics - Chemical Physics ,Quantitative Biology - Quantitative Methods - Abstract
The accurate prediction of protein-ligand binding affinities is crucial for drug discovery. Alchemical free energy calculations have become a popular tool for this purpose. However, the accuracy and reliability of these methods can vary depending on the methodology. In this study, we evaluate the performance of a relative binding free energy protocol based on the alchemical transfer method (ATM), a novel approach based on a coordinate transformation that swaps the positions of two ligands. The results show that ATM matches the performance of more complex free energy perturbation (FEP) methods in terms of Pearson correlation, but with marginally higher mean absolute errors. This study shows that the ATM method is competitive compared to more traditional methods in speed and accuracy and offers the advantage of being applicable with any potential energy function., Comment: Code: https://github.com/compsciencelab/ATM_benchmark
- Published
- 2023
33. PromptSMILES: prompting for scaffold decoration and fragment linking in chemical language models
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Morgan Thomas, Mazen Ahmad, Gary Tresadern, and Gianni de Fabritiis
- Subjects
Chemical language models ,Scaffold hopping ,Scaffold decoration ,Fragment linking ,Reinforcement learning ,De novo molecule generation ,Information technology ,T58.5-58.64 ,Chemistry ,QD1-999 - Abstract
Abstract SMILES-based generative models are amongst the most robust and successful recent methods used to augment drug design. They are typically used for complete de novo generation, however, scaffold decoration and fragment linking applications are sometimes desirable which requires a different grammar, architecture, training dataset and therefore, re-training of a new model. In this work, we describe a simple procedure to conduct constrained molecule generation with a SMILES-based generative model to extend applicability to scaffold decoration and fragment linking by providing SMILES prompts, without the need for re-training. In combination with reinforcement learning, we show that pre-trained, decoder-only models adapt to these applications quickly and can further optimize molecule generation towards a specified objective. We compare the performance of this approach to a variety of orthogonal approaches and show that performance is comparable or better. For convenience, we provide an easy-to-use python package to facilitate model sampling which can be found on GitHub and the Python Package Index. Scientific contribution This novel method extends an autoregressive chemical language model to scaffold decoration and fragment linking scenarios. This doesn’t require re-training, the use of a bespoke grammar, or curation of a custom dataset, as commonly required by other approaches.
- Published
- 2024
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34. Correction: Chronic myeloid leukemia diagnosed in pregnancy: management and outcome of 87 patients reported to the European LeukemiaNet international registry
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Chelysheva, Ekaterina, Apperley, Jane, Turkina, Anna, Yassin, Mohamed A., Rea, Delphine, Nicolini, Franck E., Barraco, Daniela, Kazakbaeva, Khamida, Saliev, Sukhrob, Abulafia, Adi Shacham, Al-Kindi, Salam, Byrne, Jennifer, Robertson, Harry F., Cerrano, Marco, Shmakov, Roman, Polushkina, Evgenia, de Fabritiis, Paolo, Trawinska, Malgorzata Monika, and Abruzzese, Elisabetta
- Published
- 2024
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35. Binding-and-folding recognition of an intrinsically disordered protein using online learning molecular dynamics
- Author
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Herrera-Nieto, Pablo, Pérez, Adrià, and De Fabritiis, Gianni
- Subjects
Quantitative Biology - Biomolecules ,Computer Science - Machine Learning ,Physics - Computational Physics - Abstract
Intrinsically disordered proteins participate in many biological processes by folding upon binding with other proteins. However, coupled folding and binding processes are not well understood from an atomistic point of view. One of the main questions is whether folding occurs prior to or after binding. Here we use a novel unbiased high-throughput adaptive sampling approach to reconstruct the binding and folding between the disordered transactivation domain of \mbox{c-Myb} and the KIX domain of the CREB-binding protein. The reconstructed long-term dynamical process highlights the binding of a short stretch of amino acids on \mbox{c-Myb} as a folded $\alpha$-helix. Leucine residues, specially Leu298 to Leu302, establish initial native contacts that prime the binding and folding of the rest of the peptide, with a mixture of conformational selection on the N-terminal region with an induced fit of the C-terminal.
- Published
- 2023
36. Refined Gribov-Zwanziger theory coupled to scalar fields in the Landau gauge
- Author
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de Brito, Gustavo P., De Fabritiis, Philipe, and Pereira, Antonio D.
- Subjects
High Energy Physics - Theory ,High Energy Physics - Lattice ,High Energy Physics - Phenomenology - Abstract
The Refined Gribov-Zwanziger (RGZ) action in the Landau gauge accounts for the existence of infinitesimal Gribov copies as well as the dynamical formation of condensates in the infrared of Euclidean Yang-Mills theories. We couple scalar fields to the RGZ action and compute the one-loop scalar propagator in the adjoint representation of the gauge group. We compare our findings with existing lattice data. The fate of BRST symmetry in this model is discussed, and we provide a comparison to a previous proposal for a non-minimal coupling between matter and the RGZ action. We find good agreement with the lattice data of the scalar propagator for the values of the mass parameters that fit the RGZ gluon propagator to the lattice. This suggests that the non-perturbative information carried by the gluon propagator in the RGZ framework provides a suitable mechanism to reproduce the behavior of correlation functions of colored matter fields in the infrared., Comment: 18 pages + refs.; 6 figures; Matches the journal version
- Published
- 2023
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37. Machine Learning Coarse-Grained Potentials of Protein Thermodynamics
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Majewski, Maciej, Pérez, Adrià, Thölke, Philipp, Doerr, Stefan, Charron, Nicholas E., Giorgino, Toni, Husic, Brooke E., Clementi, Cecilia, Noé, Frank, and De Fabritiis, Gianni
- Subjects
Quantitative Biology - Biomolecules ,Computer Science - Machine Learning - Abstract
A generalized understanding of protein dynamics is an unsolved scientific problem, the solution of which is critical to the interpretation of the structure-function relationships that govern essential biological processes. Here, we approach this problem by constructing coarse-grained molecular potentials based on artificial neural networks and grounded in statistical mechanics. For training, we build a unique dataset of unbiased all-atom molecular dynamics simulations of approximately 9 ms for twelve different proteins with multiple secondary structure arrangements. The coarse-grained models are capable of accelerating the dynamics by more than three orders of magnitude while preserving the thermodynamics of the systems. Coarse-grained simulations identify relevant structural states in the ensemble with comparable energetics to the all-atom systems. Furthermore, we show that a single coarse-grained potential can integrate all twelve proteins and can capture experimental structural features of mutated proteins. These results indicate that machine learning coarse-grained potentials could provide a feasible approach to simulate and understand protein dynamics.
- Published
- 2022
38. SPICE, A Dataset of Drug-like Molecules and Peptides for Training Machine Learning Potentials
- Author
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Eastman, Peter, Behara, Pavan Kumar, Dotson, David L., Galvelis, Raimondas, Herr, John E., Horton, Josh T., Mao, Yuezhi, Chodera, John D., Pritchard, Benjamin P., Wang, Yuanqing, De Fabritiis, Gianni, and Markland, Thomas E.
- Subjects
Physics - Chemical Physics ,Computer Science - Machine Learning ,Quantitative Biology - Biomolecules - Abstract
Machine learning potentials are an important tool for molecular simulation, but their development is held back by a shortage of high quality datasets to train them on. We describe the SPICE dataset, a new quantum chemistry dataset for training potentials relevant to simulating drug-like small molecules interacting with proteins. It contains over 1.1 million conformations for a diverse set of small molecules, dimers, dipeptides, and solvated amino acids. It includes 15 elements, charged and uncharged molecules, and a wide range of covalent and non-covalent interactions. It provides both forces and energies calculated at the {\omega}B97M-D3(BJ)/def2-TZVPPD level of theory, along with other useful quantities such as multipole moments and bond orders. We train a set of machine learning potentials on it and demonstrate that they can achieve chemical accuracy across a broad region of chemical space. It can serve as a valuable resource for the creation of transferable, ready to use potential functions for use in molecular simulations., Comment: 19 pages, 6 figures
- Published
- 2022
39. Self-dual Maxwell-Chern-Simons solitons in a parity-invariant scenario
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De Lima, W. B. and De Fabritiis, P.
- Subjects
High Energy Physics - Theory ,Condensed Matter - Other Condensed Matter - Abstract
We present a self-dual parity-invariant $U(1) \times U(1)$ Maxwell-Chern-Simons scalar $\text{QED}_3$. We show that the energy functional admits a Bogomol'nyi-type lower bound, whose saturation gives rise to first order self-duality equations. We perform a detailed analysis of this system, discussing its main features and exhibiting explicit numerical solutions corresponding to finite-energy topological vortices and non-topological solitons. The mixed Chern-Simons term plays an important role here, ensuring the main properties of the model and suggesting possible applications in condensed matter., Comment: 9 pages, 8 figures. Published in PLB
- Published
- 2022
- Full Text
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40. Vortices in a parity-invariant Maxwell-Chern-Simons model
- Author
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De Lima, W. B. and De Fabritiis, P.
- Subjects
High Energy Physics - Theory ,Condensed Matter - Other Condensed Matter - Abstract
In this work we propose a parity-invariant Maxwell-Chern-Simons $U(1) \times U(1)$ model coupled with two charged scalar fields in $2+1$ dimensions, and show that it admits finite-energy topological vortices. We describe the main features of the model and find explicit numerical solutions for the equations of motion, considering different sets of parameters and analyzing some interesting particular regimes. We remark that the structure of the theory follows naturally from the requirement of parity invariance, a symmetry that is rarely envisaged in the context of Chern-Simons theories. Another distinctive aspect is that the vortices found here are characterized by two integer numbers., Comment: 15 pages, 18 figures. Revised version. Accepted for publication in MPLA
- Published
- 2022
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41. TorchMD-NET: Equivariant Transformers for Neural Network based Molecular Potentials
- Author
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Thölke, Philipp and De Fabritiis, Gianni
- Subjects
Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Physics - Chemical Physics - Abstract
The prediction of quantum mechanical properties is historically plagued by a trade-off between accuracy and speed. Machine learning potentials have previously shown great success in this domain, reaching increasingly better accuracy while maintaining computational efficiency comparable with classical force fields. In this work we propose TorchMD-NET, a novel equivariant transformer (ET) architecture, outperforming state-of-the-art on MD17, ANI-1, and many QM9 targets in both accuracy and computational efficiency. Through an extensive attention weight analysis, we gain valuable insights into the black box predictor and show differences in the learned representation of conformers versus conformations sampled from molecular dynamics or normal modes. Furthermore, we highlight the importance of datasets including off-equilibrium conformations for the evaluation of molecular potentials.
- Published
- 2022
42. NNP/MM: Accelerating molecular dynamics simulations with machine learning potentials and molecular mechanic
- Author
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Galvelis, Raimondas, Varela-Rial, Alejandro, Doerr, Stefan, Fino, Roberto, Eastman, Peter, Markland, Thomas E., Chodera, John D., and De Fabritiis, Gianni
- Subjects
Quantitative Biology - Biomolecules ,Computer Science - Machine Learning ,Physics - Biological Physics ,Physics - Computational Physics - Abstract
Machine learning potentials have emerged as a means to enhance the accuracy of biomolecular simulations. However, their application is constrained by the significant computational cost arising from the vast number of parameters compared to traditional molecular mechanics. To tackle this issue, we introduce an optimized implementation of the hybrid method (NNP/MM), which combines neural network potentials (NNP) and molecular mechanics (MM). This approach models a portion of the system, such as a small molecule, using NNP while employing MM for the remaining system to boost efficiency. By conducting molecular dynamics (MD) simulations on various protein-ligand complexes and metadynamics (MTD) simulations on a ligand, we showcase the capabilities of our implementation of NNP/MM. It has enabled us to increase the simulation speed by 5 times and achieve a combined sampling of one microsecond for each complex, marking the longest simulations ever reported for this class of simulation.
- Published
- 2022
43. Phenomenology of a Born-Infeld extension of the $U(1)_{\rm Y}$ sector at lepton colliders
- Author
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De Fabritiis, P., Malta, P. C., and Helayël-Neto, J. A.
- Subjects
High Energy Physics - Phenomenology ,High Energy Physics - Theory - Abstract
In this work we perform a non-linear extension of the $U(1)_{\rm Y}$ sector of the Standard Model leading to novel quartic effective interactions between the neutral gauge bosons. We study the induced effects through high-energy processes resulting in three photons, namely, Z-boson decay and electron-positron annihilation. Available experimental data on these processes do not yield viable lower bounds on the mass parameter $\sqrt{\beta}$, but we estimate that the range $\sqrt{\beta} \lesssim m_Z$ could be reliably excluded with better statistics in future $e^- e^+$ colliders. We also discuss neutral gauge-boson scatterings, contextualizing our findings with recent results on anomalous quartic gauge couplings., Comment: 16 pages, 5 figures. The title has been changed, section 3C improved, results unchanged. Matches published version
- Published
- 2021
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- View/download PDF
44. Machine learning coarse-grained potentials of protein thermodynamics
- Author
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Majewski, Maciej, Pérez, Adrià, Thölke, Philipp, Doerr, Stefan, Charron, Nicholas E., Giorgino, Toni, Husic, Brooke E., Clementi, Cecilia, Noé, Frank, and De Fabritiis, Gianni
- Published
- 2023
- Full Text
- View/download PDF
45. Targeted metabolomics detects a putatively diagnostic signature in plasma and dried blood spots from head and neck paraganglioma patients
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De Fabritiis, Simone, Valentinuzzi, Silvia, Piras, Gianluca, Cicalini, Ilaria, Pieragostino, Damiana, Pagotto, Sara, Perconti, Silvia, Zucchelli, Mirco, Schena, Alberto, Taschin, Elisa, Berteşteanu, Gloria Simona, Esposito, Diana Liberata, Stigliano, Antonio, De Laurenzi, Vincenzo, Schiavi, Francesca, Sanna, Mario, Del Boccio, Piero, Verginelli, Fabio, and Mariani-Costantini, Renato
- Published
- 2023
- Full Text
- View/download PDF
46. SPICE, A Dataset of Drug-like Molecules and Peptides for Training Machine Learning Potentials
- Author
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Eastman, Peter, Behara, Pavan Kumar, Dotson, David L., Galvelis, Raimondas, Herr, John E., Horton, Josh T., Mao, Yuezhi, Chodera, John D., Pritchard, Benjamin P., Wang, Yuanqing, De Fabritiis, Gianni, and Markland, Thomas E.
- Published
- 2023
- Full Text
- View/download PDF
47. A Preprocessing and Modeling Approach for Gearbox Pitting Severity Prediction under Unseen Operating Conditions and Fault Severities
- Author
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Rik Vaerenberg, Douw Marx, Seyed Ali Hosseinli, Fabrizio De Fabritiis, Hao Wen, Rui Zhu, and Konstantinos Gryllias
- Subjects
preprocessing ,pitting ,unseen conditions ,cnn ,gearbox ,Engineering machinery, tools, and implements ,TA213-215 ,Systems engineering ,TA168 - Abstract
Gear pitting is a common gearbox failure mode that can lead to unplanned machine downtime, inefficient power transmission and a higher risk of sudden catastrophic failure. Consequently, there is strong incentive to create machine learning models that are capable of detecting and quantifying the severity of gearbox pitting faults. The performance of machine learning models is however highly dependent on the availability of training data and since training data for a wide variety of different operating conditions and fault severities is rarely available in practice, machine learning models must be designed to be robust to unseen operating conditions and fault severities. Furthermore, models should be capable of identifying data outside of the training data distribution and adjusting the confidence in a prediction accordingly. This work presents a strategy for pitting severity estimation in gearboxes under unseen operating conditions and fault severities in response to the PHM North America 2023 Conference Data Challenge. The strategy includes the design of dedicated validation sets for quantifying model performance on unseen data, an investigation into the most appropriate preprocessing methods, and a specialized convolutional neural network with an integrated out of distribution detection model for identifying samples from foreign operating conditions and fault severities. The results show that the best models are capable of some generalization to unseen operating conditions, but the generalization to unseen pitting severities is more challenging.
- Published
- 2024
- Full Text
- View/download PDF
48. PURA syndrome-causing mutations impair PUR-domain integrity and affect P-body association
- Author
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Marcel Proske, Robert Janowski, Sabrina Bacher, Hyun-Seo Kang, Thomas Monecke, Tony Koehler, Saskia Hutten, Jana Tretter, Anna Crois, Lena Molitor, Alejandro Varela-Rial, Roberto Fino, Elisa Donati, Gianni De Fabritiis, Dorothee Dormann, Michael Sattler, and Dierk Niessing
- Subjects
PURA ,PURA syndrome ,RNA binding ,X-ray crystallography ,protein folding stability ,Medicine ,Science ,Biology (General) ,QH301-705.5 - Abstract
Mutations in the human PURA gene cause the neurodevelopmental PURA syndrome. In contrast to several other monogenetic disorders, almost all reported mutations in this nucleic acid-binding protein result in the full disease penetrance. In this study, we observed that patient mutations across PURA impair its previously reported co-localization with processing bodies. These mutations either destroyed the folding integrity, RNA binding, or dimerization of PURA. We also solved the crystal structures of the N- and C-terminal PUR domains of human PURA and combined them with molecular dynamics simulations and nuclear magnetic resonance measurements. The observed unusually high dynamics and structural promiscuity of PURA indicated that this protein is particularly susceptible to mutations impairing its structural integrity. It offers an explanation why even conservative mutations across PURA result in the full penetrance of symptoms in patients with PURA syndrome.
- Published
- 2024
- Full Text
- View/download PDF
49. Lorentz-symmetry violation in the electroweak sector: scattering processes in future $e^+ \, e^-$ colliders
- Author
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De Fabritiis, P., Malta, P. C., and Neves, M. J.
- Subjects
High Energy Physics - Phenomenology ,High Energy Physics - Theory - Abstract
We study CPT-odd non-minimal Lorentz-symmetry violating couplings in the electroweak sector modifying the interactions between leptons, gauge mediators and the Higgs boson. The tree-level (differential) cross sections for three important electroweak processes are discussed: $e^+ \, e^- \rightarrow Z \, H$, $e^+ \, e^- \rightarrow Z \, Z$ and $\gamma \, \gamma \rightarrow W^+ \, W^-$. By considering next-generation $e^+ \, e^-$ colliders reaching center-of-mass energies at the TeV scale and the estimated improved precision for the measurements of the respective cross sections, we are able to project upper bounds on the purely time-like background 4-vector as strict as $\lesssim 10^{-5} \, \mbox{GeV}^{-1}$, in agreement with previous work on similar Lorentz-violating couplings., Comment: 15 pages, published in NPB
- Published
- 2021
- Full Text
- View/download PDF
50. Electroweak monopoles with a non-linearly realized weak hypercharge
- Author
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De Fabritiis, P. and Helayël-Neto, J. A.
- Subjects
High Energy Physics - Theory ,High Energy Physics - Phenomenology - Abstract
We present a finite-energy electroweak-monopole solution obtained by considering non-linear extensions of the hypercharge sector of the Electroweak Theory, based on logarithmic and exponential versions of electrodynamics. We find constraints for a class of non-linear extensions and also work out an estimate for the monopole mass in this scenario. We finally derive a lower bound for the energy of the monopole and discuss the simpler case of a Dirac magnetic charge., Comment: 8 pages, published in EPJC
- Published
- 2021
- Full Text
- View/download PDF
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