How to use quantum computers for biomolecular free energies
- URL: http://arxiv.org/abs/2506.20587v1
- Date: Wed, 25 Jun 2025 16:27:36 GMT
- Title: How to use quantum computers for biomolecular free energies
- Authors: Jakob Günther, Thomas Weymuth, Moritz Bensberg, Freek Witteveen, Matthew S. Teynor, F. Emil Thomasen, Valentina Sora, William Bro-Jørgensen, Raphael T. Husistein, Mihael Erakovic, Marek Miller, Leah Weisburn, Minsik Cho, Marco Eckhoff, Aram W. Harrow, Anders Krogh, Troy Van Voorhis, Kresten Lindorff-Larsen, Gemma Solomon, Markus Reiher, Matthias Christandl,
- Abstract summary: Free energy calculations are at the heart of physics-based analyses of biochemical processes.<n>We show how to consistently link accurate quantum-mechanical data obtained for substructures to the overall potential energy of biomolecular complexes by machine learning.
- Score: 2.7113856644674037
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Free energy calculations are at the heart of physics-based analyses of biochemical processes. They allow us to quantify molecular recognition mechanisms, which determine a wide range of biological phenomena from how cells send and receive signals to how pharmaceutical compounds can be used to treat diseases. Quantitative and predictive free energy calculations require computational models that accurately capture both the varied and intricate electronic interactions between molecules as well as the entropic contributions from motions of these molecules and their aqueous environment. However, accurate quantum-mechanical energies and forces can only be obtained for small atomistic models, not for large biomacromolecules. Here, we demonstrate how to consistently link accurate quantum-mechanical data obtained for substructures to the overall potential energy of biomolecular complexes by machine learning in an integrated algorithm. We do so using a two-fold quantum embedding strategy where the innermost quantum cores are treated at a very high level of accuracy. We demonstrate the viability of this approach for the molecular recognition of a ruthenium-based anticancer drug by its protein target, applying traditional quantum chemical methods. As such methods scale unfavorable with system size, we analyze requirements for quantum computers to provide highly accurate energies that impact the resulting free energies. Once the requirements are met, our computational pipeline FreeQuantum is able to make efficient use of the quantum computed energies, thereby enabling quantum computing enhanced modeling of biochemical processes. This approach combines the exponential speedups of quantum computers for simulating interacting electrons with modern classical simulation techniques that incorporate machine learning to model large molecules.
Related papers
- Are Molecules Magical? Non-Stabilizerness in Molecular Bonding [50.24983453990065]
Isolated atoms as well as molecules at equilibrium are presumed to be simple from the point of view of quantum computational complexity.<n>We show that the process of chemical bond formation is accompanied by a marked increase in the quantum complexity of the electronic ground state.
arXiv Detail & Related papers (2025-04-09T08:14:27Z) - Molecular Quantum Transformer [0.0]
The Molecular Quantum Transformer (MQT) can efficiently calculate ground-state energies for all configurations.<n>Our method offers an alternative to existing quantum algorithms for estimating ground-state energies.
arXiv Detail & Related papers (2025-03-27T16:54:15Z) - Proof-of-concept Quantum Simulator based on Molecular Spin Qudits [39.28601213393797]
We show the first prototype quantum simulator based on an ensemble of molecular qudits and a radiofrequency broadband spectrometer.
Results represent an important step towards the actual use of molecular spin qudits in quantum technologies.
arXiv Detail & Related papers (2023-09-11T16:33:02Z) - Machine-learned molecular mechanics force field for the simulation of
protein-ligand systems and beyond [33.54862439531144]
Development of reliable and molecular mechanics (MM) force fields is indispensable for biomolecular simulation and computer-aided drug design.
We introduce a generalized and machine-learned MM force field, ttexttespaloma-0.3, and an end-to-end differentiable framework using graph neural networks.
The force field reproduces quantum chemical energetic properties of chemical domains highly relevant to drug discovery, including small molecules, peptides, and nucleic acids.
arXiv Detail & Related papers (2023-07-13T23:00:22Z) - Quantum Computing for Molecular Biology [2.1839191255085995]
We discuss how quantum computation may advance the practical usefulness of the quantum foundations of molecular biology.
We discuss typical quantum mechanical problems of the electronic structure of biomolecules.
arXiv Detail & Related papers (2022-12-23T09:23:04Z) - Accurate Machine Learned Quantum-Mechanical Force Fields for
Biomolecular Simulations [51.68332623405432]
Molecular dynamics (MD) simulations allow atomistic insights into chemical and biological processes.
Recently, machine learned force fields (MLFFs) emerged as an alternative means to execute MD simulations.
This work proposes a general approach to constructing accurate MLFFs for large-scale molecular simulations.
arXiv Detail & Related papers (2022-05-17T13:08:28Z) - A Scalable Approach to Quantum Simulation via Projection-based Embedding [0.0]
We describe a new and chemically intuitive approach that permits a subdomain of the electronic structure of a molecule to be calculated accurately on a quantum device.
We demonstrate that our method produces improved results for molecules that cannot be simulated fully on quantum computers but which can be resolved classically at a lower level of approximation.
arXiv Detail & Related papers (2022-03-02T14:27:44Z) - Recompilation-enhanced simulation of electron-phonon dynamics on IBM
Quantum computers [62.997667081978825]
We consider the absolute resource cost for gate-based quantum simulation of small electron-phonon systems.
We perform experiments on IBM quantum hardware for both weak and strong electron-phonon coupling.
Despite significant device noise, through the use of approximate circuit recompilation we obtain electron-phonon dynamics on current quantum computers comparable to exact diagonalisation.
arXiv Detail & Related papers (2022-02-16T19:00:00Z) - Coarse grained intermolecular interactions on quantum processors [0.0]
We develop a coarse-grained representation of the electronic response that is ideally suited for determining the ground state of weakly interacting molecules.
We demonstrate our method on IBM superconducting quantum processors.
We conclude that current-generation quantum hardware is capable of probing energies in this weakly bound but nevertheless chemically ubiquitous and biologically important regime.
arXiv Detail & Related papers (2021-10-03T09:56:47Z) - Computing molecular excited states on a D-Wave quantum annealer [52.5289706853773]
We demonstrate the use of a D-Wave quantum annealer for the calculation of excited electronic states of molecular systems.
These simulations play an important role in a number of areas, such as photovoltaics, semiconductor technology and nanoscience.
arXiv Detail & Related papers (2021-07-01T01:02:17Z) - Optimizing Electronic Structure Simulations on a Trapped-ion Quantum
Computer using Problem Decomposition [41.760443413408915]
We experimentally demonstrate an end-to-end pipeline that focuses on minimizing quantum resources while maintaining accuracy.
Using density matrix embedding theory as a problem decomposition technique, and an ion-trap quantum computer, we simulate a ring of 10 hydrogen atoms without freezing any electrons.
Our experimental results are an early demonstration of the potential for problem decomposition to accurately simulate large molecules on quantum hardware.
arXiv Detail & Related papers (2021-02-14T01:47:52Z) - Information Scrambling in Computationally Complex Quantum Circuits [56.22772134614514]
We experimentally investigate the dynamics of quantum scrambling on a 53-qubit quantum processor.
We show that while operator spreading is captured by an efficient classical model, operator entanglement requires exponentially scaled computational resources to simulate.
arXiv Detail & Related papers (2021-01-21T22:18:49Z) - Simulating Energy Transfer in Molecular Systems with Digital Quantum
Computers [8.271013526496906]
Quantum computers have the potential to simulate chemical systems beyond the capability of classical computers.
We extend near-term quantum simulations of chemistry to time-dependent processes by simulating energy transfer in organic semiconducting molecules.
Our approach opens up new opportunities for modeling quantum dynamics in chemical, biological and material systems with quantum computers.
arXiv Detail & Related papers (2021-01-18T05:08:05Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.