Learning from nature to improve the heat generation of iron-oxide nanoparticles for magnetic hyperthermia applications

C. Martínez-Boubeta(Universitat de Barcelona), K. Simeonidis(University of Thessaly), Antonios Makridis(Aristotle University of Thessaloniki), Angelakeris, Makis(Aristotle University of Thessaloniki), Òscar Iglesias(Universitat de Barcelona), Pablo Guardia(Institut de Recerca en Energia de Catalunya), Andreu Cabot(Universitat de Barcelona), Lluís Yedra(Universitat de Barcelona), Sònia Estradé(Universitat de Barcelona), F. Peiró(Universitat de Barcelona), Zineb Saghi(University of Cambridge), Paul A. Midgley(University of Cambridge), Iván Conde‐Leborán(Universidade de Santiago de Compostela), David Serantes(Universidade de Santiago de Compostela), D. Baldomir(Universidade de Santiago de Compostela)
Dipòsit Digital de la Universitat de Barcelona (Universitat de Barcelona)
January 1, 2020
Cited by 387Open Access
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Abstract

The performance of magnetic nanoparticles is intimately entwined with their structure, mean size and magnetic anisotropy. Besides, ensembles offer a unique way of engineering the magnetic response by modifying the strength of the dipolar interactions between particles. Here we report on an experimental and theoretical analysis of magnetic hyperthermia, a rapidly developing technique in medical research and oncology. Experimentally, we demonstrate that single-domain cubic iron oxide particles resembling bacterial magnetosomes have superior magnetic heating efficiency compared to spherical particles of similar sizes. Monte Carlo simulations at the atomic level corroborate the larger anisotropy of the cubic particles in comparison with the spherical ones, thus evidencing the beneficial role of surface anisotropy in the improved heating power. Moreover we establish a quantitative link between the particle assembling, the interactions and the heating properties. This knowledge opens new perspectives for improved hyperthermia, an alternative to conventional cancer therapies


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