Reversal of pancreatic desmoplasia by re-educating stellate cells with a tumour microenvironment-activated nanosystem

Xuexiang Han(National Center for Nanoscience and Technology), Yiye Li(National Center for Nanoscience and Technology), Ying Xu(National Center for Nanoscience and Technology), Xiao Zhao(National Center for Nanoscience and Technology), Yinlong Zhang(National Center for Nanoscience and Technology), Xiao Yang(National Center for Nanoscience and Technology), Yongwei Wang(Chinese Academy of Sciences), Ruifang Zhao(National Center for Nanoscience and Technology), Gregory J. Anderson(QIMR Berghofer Medical Research Institute), Yuliang Zhao(National Center for Nanoscience and Technology), Guangjun Nie(National Center for Nanoscience and Technology)
Nature Communications
August 17, 2018
Cited by 332Open Access
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Abstract

Pancreatic ductal adenocarcinoma is characterised by a dense desmoplastic stroma composed of stromal cells and extracellular matrix (ECM). This barrier severely impairs drug delivery and penetration. Activated pancreatic stellate cells (PSCs) play a key role in establishing this unique pathological obstacle, but also offer a potential target for anti-tumour therapy. Here, we construct a tumour microenvironment-responsive nanosystem, based on PEGylated polyethylenimine-coated gold nanoparticles, and utilise it to co-deliver all-trans retinoic acid (ATRA, an inducer of PSC quiescence) and siRNA targeting heat shock protein 47 (HSP47, a collagen-specific molecular chaperone) to re-educate PSCs. The nanosystem simultaneously induces PSC quiescence and inhibits ECM hyperplasia, thereby promoting drug delivery to pancreatic tumours and significantly enhancing the anti-tumour efficacy of chemotherapeutics. Our combination strategy to restore homoeostatic stromal function by targeting activated PSCs represents a promising approach to improving the efficacy of chemotherapy and other therapeutic modalities in a wide range of stroma-rich tumours.


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