放射治疗
结直肠癌
癌症研究
医学
体内
癌症
肿瘤科
内科学
生物
生物技术
作者
Kyoung Jin Lee,Eun Jung Ko,Yun‐Yong Park,Seok Soon Park,Eun Jin Ju,Jin Hyoung Park,Seol Hwa Shin,Young‐Ah Suh,Seung‐Mo Hong,In Ja Park,Kyu‐pyo Kim,Jung Jin Hwang,Se Jin Jang,Jung Shin Lee,Si Yeol Song,Seong‐Yun Jeong,Eun Kyung Choi
出处
期刊:Biomaterials
[Elsevier]
日期:2020-05-27
卷期号:255: 120151-120151
被引量:30
标识
DOI:10.1016/j.biomaterials.2020.120151
摘要
Neoadjuvant radiotherapy has become an important therapeutic option for colorectal cancer (CRC) patients, whereas complete tumor response is observed only in 20–30% patients. Therefore, the development of diagnostic probe for radio-resistance is important to decide an optimal treatment timing and strategy for radiotherapy-resistant CRC patients. In this study, using the patient-derived xenograft (PDX) mouse model established with a radio-resistant CRC tumor tissue, we found low-density lipoprotein receptor-related protein-1 (LRP-1) as a radio-resistant marker protein induced by initial-dose radiation in radio-resistant CRC tumors. Simultaneously, we discovered a LRP-1 targeting peptide in a radio-resistant CRC PDX through in vivo peptide screening. We next engineered the theranostic agent made of human serum albumin nanoparticles (HSA NPs) containing 5-FU for chemo-radiotherapy and decorating LRP-1-targeting peptide for tumor localization, Cy7 fluorophore for diagnostic imaging. The nanoparticle-based theranostic agent accurately targeted the tumor designated by LRP-1 responding radiation and showed dramatically improved therapeutic efficacy in the radio-resistant PDX model. In conclusion, we have identified LRP-1 as a signature protein of radio-resistant CRC and successfully developed LRP-1-targeting HSA-NP containing 5-FU that is a novel theranostic tool for both diagnostic imaging and neoadjuvant therapy of CRC patients. This approach is clinically applicable to improve the effectiveness of neo-adjuvant radiotherapy and increase the ratio of complete tumor response in radio-resistant CRC.
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