分子成像
肿瘤细胞
功能成像
计算生物学
癌症研究
医学
体内
神经科学
生物
生物技术
作者
Tianshu Chen,Siwei Mao,Ji Ma,Xiaochen Tang,Ruixin Zhu,Dali Mao,Xiaoli Zhu,Qiuhui Pan
标识
DOI:10.1002/anie.202319117
摘要
Functional imaging (FI) techniques have revolutionized tumor imaging by providing information on specific tumor functions, such as glycometabolism. However, tumor cells lack unique molecular characteristics at the molecular level and metabolic pathways, resulting in limited metabolic differences compared to normal cells and increased background signals from FI. To address this limitation, we developed a novel imaging technique termed proximity-enhanced functional imaging (PEFI) for accurate visualization of tumors. By using "two adjacent chemically labeled glycoproteins" as output signals, we significantly enhance the metabolic differences between tumor and normal cells by PEFI, thereby reducing the background signals for analysis and improving the accuracy of tumor functional imaging. Our results demonstrate that PEFI can accurately identify tumors at the cellular, tissue, and animal level, and has potential value in clinical identification and analysis of tumor cells and tissues, as well as in the guidance of clinical tumor resection surgery.
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