纳米医学
深度学习
分布(数学)
纳米颗粒
个性化医疗
计算机科学
胶体金
纳米技术
人工智能
材料科学
生物医学工程
癌症
药物输送
医学影像学
成纤维细胞
肿瘤微环境
光学(聚焦)
精密医学
癌症治疗
血管网
预测值
癌细胞
癌症研究
靶向给药
免疫染色
作者
Xin Pan,Linwen Lv,Jiayi Wang,Hui Liang,Jiaxin Wan,Junhui Zhang,Ruyu Yan,Juan Li,Yanan Chang,Xue Bai,Liqun Zhang,Gengmei Xing,Kui Chen
出处
期刊:ACS Nano
[American Chemical Society]
日期:2026-03-27
卷期号:20 (14): 11409-11421
标识
DOI:10.1021/acsnano.6c01365
摘要
The efficient accumulation and uniform distribution of nanomedicine within tumors are critical for achieving therapeutic outcomes. However, conventional medical imaging technologies struggle to efficiently and accurately detect nanoparticles (NPs) distribution, especially in resolving their cellular-level spatial heterogeneity. Existing deep-learning-based predictive models focus on tumor cell density and vascular distribution but do not address the complex spatial relationship between cancer-associated fibroblasts (CAFs) and drug distribution. This study presents NanoNet, a deep-learning framework that leverages fibroblast activation protein (FAP) immunostaining to spatially characterize CAFs and predict NPs distribution at high resolution. NanoNet achieved high predictive accuracy (ICC = 0.963, R2 = 0.9849) by transforming tumor section images into pixel-level NPs distribution maps. The FAP channel contributed substantially to predictive accuracy, indicating its important role in guiding NPs behavior. This study provides a spatially resolved predictive framework that enables pixel-level predictions of NPs distribution from conventional histological sections, with potential applications for optimizing nanomedicine design and personalized nanomedicine.
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