纳米医学
血管通透性
合理设计
纳米技术
纳米颗粒
磁导率
材料科学
血管组织
跨细胞
血管网
化学
药物输送
生物医学工程
肿瘤微环境
肿瘤细胞
生物物理学
组织重塑
癌症研究
血管移植
重编程
作者
Jingwei Tian,Mingsheng Zhu,Zhenyu Guan,Jianxin Liu,Yuanke Li,Qiqi Liu,Yingqi Miao,Jin Wu,Che Zhou,Xiangyang Wang,Jie Zhuang,Xinglu Huang
出处
期刊:ACS Nano
[American Chemical Society]
日期:2026-02-09
卷期号:20 (7): 5613-5628
标识
DOI:10.1021/acsnano.5c16558
摘要
Low-permeability (LP) tumor vasculature constitutes a major barrier to efficient nanomedicine delivery, making quantitative assessment and mechanistic understanding of vascular permeability essential for the rational design of delivery strategies. Here, we introduce a deep learning-guided microneedle (MN) delivery platform that enables localized and spatiotemporally precise modulation of tumor vasculature to enhance nanoparticle extravasation. By integrating the MN system with an upgraded single-vessel analysis framework (nano-ISML 1.1), we quantitatively mapped vascular remodeling and nanoparticle transport across diverse tumor types and particle sizes. Localized histamine delivery via MNs selectively expanded endothelial junctions through VE-cadherin-mediated regulation, significantly increasing the frequency and length of interendothelial gaps, and thereby reprogramming LP tumors toward a high-permeability phenotype. This controlled vascular remodeling established a pronounced size-dependent permeability window, defined by locally induced gap dimensions that varied across tumor types, permitting efficient penetration of nanoparticles ≤200 nm while largely excluding particles >500 nm. By uniting nanotechnology, vascular biology, and artificial intelligence, this interdisciplinary framework provides a mechanistic and predictive paradigm for overcoming vascular barriers and advancing the rational design of tumor-targeted nanomedicines.
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