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A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature

Vascular targeting of malignant tissues with systemically injected nanoparticles (NPs) holds promise in molecular imaging and anti-angiogenic therapies. Here, a computational model is presented to predict the development of tumor neovasculature over time and the specific, vascular accumulation of bl...

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Autores principales: Frieboes, Hermann B., Wu, Min, Lowengrub, John, Decuzzi, Paolo, Cristini, Vittorio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3585411/
https://www.ncbi.nlm.nih.gov/pubmed/23468887
http://dx.doi.org/10.1371/journal.pone.0056876
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author Frieboes, Hermann B.
Wu, Min
Lowengrub, John
Decuzzi, Paolo
Cristini, Vittorio
author_facet Frieboes, Hermann B.
Wu, Min
Lowengrub, John
Decuzzi, Paolo
Cristini, Vittorio
author_sort Frieboes, Hermann B.
collection PubMed
description Vascular targeting of malignant tissues with systemically injected nanoparticles (NPs) holds promise in molecular imaging and anti-angiogenic therapies. Here, a computational model is presented to predict the development of tumor neovasculature over time and the specific, vascular accumulation of blood-borne NPs. A multidimensional tumor-growth model is integrated with a mesoscale formulation for the NP adhesion to blood vessel walls. The fraction of injected NPs depositing within the diseased vasculature and their spatial distribution is computed as a function of tumor stage, from 0 to day 24 post-tumor inception. As the malignant mass grows in size, average blood flow and shear rates increase within the tumor neovasculature, reaching values comparable with those measured in healthy, pre-existing vessels already at 10 days. The NP vascular affinity, interpreted as the likelihood for a blood-borne NP to firmly adhere to the vessel walls, is a fundamental parameter in this analysis and depends on NP size and ligand density, and vascular receptor expression. For high vascular affinities, NPs tend to accumulate mostly at the inlet tumor vessels leaving the inner and outer vasculature depleted of NPs. For low vascular affinities, NPs distribute quite uniformly intra-tumorally but exhibit low accumulation doses. It is shown that an optimal vascular affinity can be identified providing the proper balance between accumulation dose and uniform spatial distribution of the NPs. This balance depends on the stage of tumor development (vascularity and endothelial receptor expression) and the NP properties (size, ligand density and ligand-receptor molecular affinity). Also, it is demonstrated that for insufficiently developed vascular networks, NPs are transported preferentially through the healthy, pre-existing vessels, thus bypassing the tumor mass. The computational tool described here can effectively select an optimal NP formulation presenting high accumulation doses and uniform spatial intra-tumor distributions as a function of the development stage of the malignancy.
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spelling pubmed-35854112013-03-06 A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature Frieboes, Hermann B. Wu, Min Lowengrub, John Decuzzi, Paolo Cristini, Vittorio PLoS One Research Article Vascular targeting of malignant tissues with systemically injected nanoparticles (NPs) holds promise in molecular imaging and anti-angiogenic therapies. Here, a computational model is presented to predict the development of tumor neovasculature over time and the specific, vascular accumulation of blood-borne NPs. A multidimensional tumor-growth model is integrated with a mesoscale formulation for the NP adhesion to blood vessel walls. The fraction of injected NPs depositing within the diseased vasculature and their spatial distribution is computed as a function of tumor stage, from 0 to day 24 post-tumor inception. As the malignant mass grows in size, average blood flow and shear rates increase within the tumor neovasculature, reaching values comparable with those measured in healthy, pre-existing vessels already at 10 days. The NP vascular affinity, interpreted as the likelihood for a blood-borne NP to firmly adhere to the vessel walls, is a fundamental parameter in this analysis and depends on NP size and ligand density, and vascular receptor expression. For high vascular affinities, NPs tend to accumulate mostly at the inlet tumor vessels leaving the inner and outer vasculature depleted of NPs. For low vascular affinities, NPs distribute quite uniformly intra-tumorally but exhibit low accumulation doses. It is shown that an optimal vascular affinity can be identified providing the proper balance between accumulation dose and uniform spatial distribution of the NPs. This balance depends on the stage of tumor development (vascularity and endothelial receptor expression) and the NP properties (size, ligand density and ligand-receptor molecular affinity). Also, it is demonstrated that for insufficiently developed vascular networks, NPs are transported preferentially through the healthy, pre-existing vessels, thus bypassing the tumor mass. The computational tool described here can effectively select an optimal NP formulation presenting high accumulation doses and uniform spatial intra-tumor distributions as a function of the development stage of the malignancy. Public Library of Science 2013-02-28 /pmc/articles/PMC3585411/ /pubmed/23468887 http://dx.doi.org/10.1371/journal.pone.0056876 Text en © 2013 Frieboes et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Frieboes, Hermann B.
Wu, Min
Lowengrub, John
Decuzzi, Paolo
Cristini, Vittorio
A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title_full A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title_fullStr A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title_full_unstemmed A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title_short A Computational Model for Predicting Nanoparticle Accumulation in Tumor Vasculature
title_sort computational model for predicting nanoparticle accumulation in tumor vasculature
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3585411/
https://www.ncbi.nlm.nih.gov/pubmed/23468887
http://dx.doi.org/10.1371/journal.pone.0056876
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