Standard

Exploring the role of density functional theory in the design of gold nanoparticles for targeted drug delivery: a systematic review. / Obijiofor, Obiekezie C.; Novikov, Alexander S.

в: Journal of Molecular Modeling, Том 31, № 7, 186, 01.07.2025.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

Harvard

APA

Vancouver

Author

BibTeX

@article{4adee4eee9fa4c38bd75bb4fbba94ebf,
title = "Exploring the role of density functional theory in the design of gold nanoparticles for targeted drug delivery: a systematic review",
abstract = "Context: Targeted drug delivery systems leveraging gold nanoparticles (AuNPs) demand precise atomic-level design to overcome current limitations in drug-loading efficiency and controlled release. Unlike previous focused reviews, this systematic analysis compares density functional theory{\textquoteright}s (DFT) performance across multiple AuNP design challenges, including drug interactions, surface functionalization, and stimuli-responsive behaviors. DFT predicts binding energies with ~ 0.1 eV accuracy and elucidates electronic properties of AuNP-drug complexes, critical for optimizing drug delivery. For example, B3LYP-D3/LANL2DZ calculations predict a − 0.58 eV binding energy for thioabiraterone, ensuring stable chemisorption via sulfur-Au bonds, as validated by experimental binding assays. However, high computational costs restrict its application to large biomolecular systems. Emerging hybrid machine learning (ML)/DFT approaches address scalability while preserving quantum–mechanical accuracy, reducing computational costs from ~ 106 to ~ 103 CPU h for a 50 nm AuNP, positioning hybrid ML/DFT as a transformative approach for next-generation nanomedicine. Methods: This systematic evaluation covers DFT approaches including gradient-corrected (PBE), hybrid (B3LYP), and meta-GGA (M06-L) functionals, using relativistic basis sets (e.g., LANL2DZ) for Au atoms and polarized sets (e.g., 6-31G(d)) for organic ligands. Solvent effects are modeled via implicit (SMD) or explicit approaches. Time-dependent DFT (TD-DFT) analyzes localized surface plasmon resonance and frontier molecular orbitals. Multiscale approaches integrate DFT with molecular dynamics (MD) and machine learning interatomic potentials (MLIPs) to model extended systems, enabling simulations of AuNP-protein interactions for systems up to 105 atoms with ~ 0.2 eV accuracy.",
keywords = "Controlled drug release, Density functional theory (DFT), Gold nanoparticles (AuNPs), ML-driven design, Targeted drug delivery",
author = "Obijiofor, {Obiekezie C.} and Novikov, {Alexander S.}",
year = "2025",
month = jul,
day = "1",
doi = "10.1007/s00894-025-06405-9",
language = "English",
volume = "31",
journal = "Journal of Molecular Modeling",
issn = "1610-2940",
publisher = "Springer Nature",
number = "7",

}

RIS

TY - JOUR

T1 - Exploring the role of density functional theory in the design of gold nanoparticles for targeted drug delivery: a systematic review

AU - Obijiofor, Obiekezie C.

AU - Novikov, Alexander S.

PY - 2025/7/1

Y1 - 2025/7/1

N2 - Context: Targeted drug delivery systems leveraging gold nanoparticles (AuNPs) demand precise atomic-level design to overcome current limitations in drug-loading efficiency and controlled release. Unlike previous focused reviews, this systematic analysis compares density functional theory’s (DFT) performance across multiple AuNP design challenges, including drug interactions, surface functionalization, and stimuli-responsive behaviors. DFT predicts binding energies with ~ 0.1 eV accuracy and elucidates electronic properties of AuNP-drug complexes, critical for optimizing drug delivery. For example, B3LYP-D3/LANL2DZ calculations predict a − 0.58 eV binding energy for thioabiraterone, ensuring stable chemisorption via sulfur-Au bonds, as validated by experimental binding assays. However, high computational costs restrict its application to large biomolecular systems. Emerging hybrid machine learning (ML)/DFT approaches address scalability while preserving quantum–mechanical accuracy, reducing computational costs from ~ 106 to ~ 103 CPU h for a 50 nm AuNP, positioning hybrid ML/DFT as a transformative approach for next-generation nanomedicine. Methods: This systematic evaluation covers DFT approaches including gradient-corrected (PBE), hybrid (B3LYP), and meta-GGA (M06-L) functionals, using relativistic basis sets (e.g., LANL2DZ) for Au atoms and polarized sets (e.g., 6-31G(d)) for organic ligands. Solvent effects are modeled via implicit (SMD) or explicit approaches. Time-dependent DFT (TD-DFT) analyzes localized surface plasmon resonance and frontier molecular orbitals. Multiscale approaches integrate DFT with molecular dynamics (MD) and machine learning interatomic potentials (MLIPs) to model extended systems, enabling simulations of AuNP-protein interactions for systems up to 105 atoms with ~ 0.2 eV accuracy.

AB - Context: Targeted drug delivery systems leveraging gold nanoparticles (AuNPs) demand precise atomic-level design to overcome current limitations in drug-loading efficiency and controlled release. Unlike previous focused reviews, this systematic analysis compares density functional theory’s (DFT) performance across multiple AuNP design challenges, including drug interactions, surface functionalization, and stimuli-responsive behaviors. DFT predicts binding energies with ~ 0.1 eV accuracy and elucidates electronic properties of AuNP-drug complexes, critical for optimizing drug delivery. For example, B3LYP-D3/LANL2DZ calculations predict a − 0.58 eV binding energy for thioabiraterone, ensuring stable chemisorption via sulfur-Au bonds, as validated by experimental binding assays. However, high computational costs restrict its application to large biomolecular systems. Emerging hybrid machine learning (ML)/DFT approaches address scalability while preserving quantum–mechanical accuracy, reducing computational costs from ~ 106 to ~ 103 CPU h for a 50 nm AuNP, positioning hybrid ML/DFT as a transformative approach for next-generation nanomedicine. Methods: This systematic evaluation covers DFT approaches including gradient-corrected (PBE), hybrid (B3LYP), and meta-GGA (M06-L) functionals, using relativistic basis sets (e.g., LANL2DZ) for Au atoms and polarized sets (e.g., 6-31G(d)) for organic ligands. Solvent effects are modeled via implicit (SMD) or explicit approaches. Time-dependent DFT (TD-DFT) analyzes localized surface plasmon resonance and frontier molecular orbitals. Multiscale approaches integrate DFT with molecular dynamics (MD) and machine learning interatomic potentials (MLIPs) to model extended systems, enabling simulations of AuNP-protein interactions for systems up to 105 atoms with ~ 0.2 eV accuracy.

KW - Controlled drug release

KW - Density functional theory (DFT)

KW - Gold nanoparticles (AuNPs)

KW - ML-driven design

KW - Targeted drug delivery

UR - https://www.mendeley.com/catalogue/27a8d626-ff43-3e83-81e0-556d73923106/

U2 - 10.1007/s00894-025-06405-9

DO - 10.1007/s00894-025-06405-9

M3 - Article

VL - 31

JO - Journal of Molecular Modeling

JF - Journal of Molecular Modeling

SN - 1610-2940

IS - 7

M1 - 186

ER -

ID: 136975672