Quantum Computing for Molecular Biology

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Standard

Quantum Computing for Molecular Biology. / Baiardi, Alberto; Christandl, Matthias; Reiher, Markus.

I: ChemBioChem, Bind 24, Nr. 13, e202300120, 2023.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Baiardi, A, Christandl, M & Reiher, M 2023, 'Quantum Computing for Molecular Biology', ChemBioChem, bind 24, nr. 13, e202300120. https://doi.org/10.1002/cbic.202300120

APA

Baiardi, A., Christandl, M., & Reiher, M. (2023). Quantum Computing for Molecular Biology. ChemBioChem, 24(13), [e202300120]. https://doi.org/10.1002/cbic.202300120

Vancouver

Baiardi A, Christandl M, Reiher M. Quantum Computing for Molecular Biology. ChemBioChem. 2023;24(13). e202300120. https://doi.org/10.1002/cbic.202300120

Author

Baiardi, Alberto ; Christandl, Matthias ; Reiher, Markus. / Quantum Computing for Molecular Biology. I: ChemBioChem. 2023 ; Bind 24, Nr. 13.

Bibtex

@article{6758fda47f6440f78a4386a73734c332,
title = "Quantum Computing for Molecular Biology",
abstract = "Molecular biology and biochemistry interpret microscopic processes in the living world in terms of molecular structures and their interactions, which are quantum mechanical by their very nature. Whereas the theoretical foundations of these interactions are well established, the computational solution of the relevant quantum mechanical equations is very hard. However, much of molecular function in biology can be understood in terms of classical mechanics, where the interactions of electrons and nuclei have been mapped onto effective surrogate potentials that model the interaction of atoms or even larger entities. The simple mathematical structure of these potentials offers huge computational advantages; however, this comes at the cost that all quantum correlations and the rigorous many-particle nature of the interactions are omitted. In this work, we discuss how quantum computation may advance the practical usefulness of the quantum foundations of molecular biology by offering computational advantages for simulations of biomolecules. We not only discuss typical quantum mechanical problems of the electronic structure of biomolecules in this context, but also consider the dominating classical problems (such as protein folding and drug design) as well as data-driven approaches of bioinformatics and the degree to which they might become amenable to quantum simulation and quantum computation.",
author = "Alberto Baiardi and Matthias Christandl and Markus Reiher",
year = "2023",
doi = "10.1002/cbic.202300120",
language = "English",
volume = "24",
journal = "ChemBioChem",
issn = "1439-4227",
publisher = "Wiley - V C H Verlag GmbH & Co. KGaA",
number = "13",

}

RIS

TY - JOUR

T1 - Quantum Computing for Molecular Biology

AU - Baiardi, Alberto

AU - Christandl, Matthias

AU - Reiher, Markus

PY - 2023

Y1 - 2023

N2 - Molecular biology and biochemistry interpret microscopic processes in the living world in terms of molecular structures and their interactions, which are quantum mechanical by their very nature. Whereas the theoretical foundations of these interactions are well established, the computational solution of the relevant quantum mechanical equations is very hard. However, much of molecular function in biology can be understood in terms of classical mechanics, where the interactions of electrons and nuclei have been mapped onto effective surrogate potentials that model the interaction of atoms or even larger entities. The simple mathematical structure of these potentials offers huge computational advantages; however, this comes at the cost that all quantum correlations and the rigorous many-particle nature of the interactions are omitted. In this work, we discuss how quantum computation may advance the practical usefulness of the quantum foundations of molecular biology by offering computational advantages for simulations of biomolecules. We not only discuss typical quantum mechanical problems of the electronic structure of biomolecules in this context, but also consider the dominating classical problems (such as protein folding and drug design) as well as data-driven approaches of bioinformatics and the degree to which they might become amenable to quantum simulation and quantum computation.

AB - Molecular biology and biochemistry interpret microscopic processes in the living world in terms of molecular structures and their interactions, which are quantum mechanical by their very nature. Whereas the theoretical foundations of these interactions are well established, the computational solution of the relevant quantum mechanical equations is very hard. However, much of molecular function in biology can be understood in terms of classical mechanics, where the interactions of electrons and nuclei have been mapped onto effective surrogate potentials that model the interaction of atoms or even larger entities. The simple mathematical structure of these potentials offers huge computational advantages; however, this comes at the cost that all quantum correlations and the rigorous many-particle nature of the interactions are omitted. In this work, we discuss how quantum computation may advance the practical usefulness of the quantum foundations of molecular biology by offering computational advantages for simulations of biomolecules. We not only discuss typical quantum mechanical problems of the electronic structure of biomolecules in this context, but also consider the dominating classical problems (such as protein folding and drug design) as well as data-driven approaches of bioinformatics and the degree to which they might become amenable to quantum simulation and quantum computation.

U2 - 10.1002/cbic.202300120

DO - 10.1002/cbic.202300120

M3 - Journal article

C2 - 37151197

VL - 24

JO - ChemBioChem

JF - ChemBioChem

SN - 1439-4227

IS - 13

M1 - e202300120

ER -

ID: 346145204