磁共振成像
癌细胞
体内
转移
癌症
生物发光成像
淋巴结
背景(考古学)
癌症研究
临床前影像学
报告基因
病理
原发性肿瘤
医学
生物
基因
放射科
转染
内科学
基因表达
荧光素酶
古生物学
生物技术
生物化学
作者
Nivin N. Nyström,Sean W. McRae,Francisco Martínez,John J. Kelly,Timothy J. Scholl,John A. Ronald
出处
期刊:Cancer Research
[American Association for Cancer Research]
日期:2022-12-13
卷期号:83 (5): 673-685
被引量:18
标识
DOI:10.1158/0008-5472.can-22-2770
摘要
Abstract Metastasis is the leading cause of cancer-related death. However, it remains a poorly understood aspect of cancer biology, and most preclinical cancer studies do not examine metastasis, focusing solely on the primary tumor. One major factor contributing to this paradox is a gap in available tools for accurate spatiotemporal measurements of metastatic spread in vivo. Here, our objective was to develop an imaging reporter system that offers sensitive three-dimensional (3D) detection of cancer cells at high resolutions in live mice. An organic anion-transporting polypeptide 1b3 (oatp1b3) was used as an MRI reporter gene, and its sensitivity was systematically optimized for in vivo tracking of viable cancer cells in a spontaneous metastasis model. Metastases with oatp1b3-MRI could be observed at the single lymph node level and tracked over time as cancer cells spread to multiple lymph nodes and different organ systems in individual animals. While initial single lesions were successfully imaged in parallel via bioluminescence, later metastases were largely obscured by light scatter from the initial node. Importantly, MRI could detect micrometastases in lung tissue comprised on the order of 1,000 cancer cells. In summary, oatp1b3-MRI enables longitudinal tracking of cancer cells with combined high resolution and high sensitivity that provides 3D spatial information and the surrounding anatomical context. Significance: An MRI reporter gene system optimized for tracking metastasis in deep tissues at high resolutions and able to detect spontaneous micrometastases in lungs of mice provides a useful tool for metastasis research.
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