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Prediction the clinical EPR effect of nanoparticles in patient-derived xenograft models

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Abstract
Many preclinically tested nanoparticles in existing animal models fail to be directly translated into clinical applications because of their poor resemblance to human cancer. Herein, the enhanced permeation and retention (EPR) effect of glycol chitosan nanoparticles (CNPs) in different tumor microenvironments (TMEs) was compared using different pancreatic tumor models, including pancreatic cancer cell line (BxPC3), patient-derived cancer cell (PDC), and patient-derived xenograft (PDX) models. CNPs were intravenously injected into different tumor models, and their accumulation efficiency was evaluated using non-invasive near-infrared fluorescence (NIRF) imaging. In particular, differences in angiogenic vessel density, collagen matrix, and hyaluronic acid content in tumor tissues of the BxPC3, PDC, and PDX models greatly affected the tumor-targeting efficiency of CNPs. In addition, different PDX models were established using different tumor tissues of patients to predict the clinical EPR effect of CNPs in inter-patient TMEs, wherein the gene expression levels of PECAM1, COL4A1, and HAS1 in human tumor tissues were observed to be closely related to the EPR effect of CNPs in PDX models. The results suggested that the PDX models could mimic inter-patient TMEs with different blood vessel structures and extracellular matrix (ECM) content that critically affect the tumor-targeting ability of CNPs in different pancreatic PDX models. This study provides a better understanding of the heterogeneity and complexity of inter-patient TMEs that can predict the response of various nanoparticles in individual tumors for personalized cancer therapy.
Author(s)
Sangmin JeonEunsung JunHyeyoun ChangJi Young YheeEun-Young KohYeounhee KimJae Yun JungEun Ji JeongJong Won LeeMan Kyu ShimHong Yeol YoonSuhwan ChangKwangmeyung KimSong Cheol Kim
Issued Date
2022
Type
Article
Keyword
EPR effectNanoparticlesPatient-derived xenograft modelTumor heterogeneityTumor microenvironment
DOI
10.1016/j.jconrel.2022.09.007
URI
https://oak.ulsan.ac.kr/handle/2021.oak/13797
Publisher
JOURNAL OF CONTROLLED RELEASE
Language
영어
ISSN
0168-3659
Citation Volume
351
Citation Start Page
37
Citation End Page
49
Appears in Collections:
Medicine > Nursing
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