放射性核素治疗
化学
背景(考古学)
镥
正电子发射断层摄影术
放射化学
分子成像
核医学
放射治疗
医学物理学
癌症研究
体内
医学
放射科
钇
生物
氧化物
古生物学
生物技术
有机化学
作者
Katherine A. Morgan,Stacey E. Rudd,Asif Noor,Paul S. Donnelly
出处
期刊:Chemical Reviews
[American Chemical Society]
日期:2023-10-05
卷期号:123 (20): 12004-12035
被引量:25
标识
DOI:10.1021/acs.chemrev.3c00456
摘要
Molecular changes in malignant tissue can lead to an increase in the expression levels of various proteins or receptors that can be used to target the disease. In oncology, diagnostic imaging and radiotherapy of tumors is possible by attaching an appropriate radionuclide to molecules that selectively bind to these target proteins. The term “theranostics” describes the use of a diagnostic tool to predict the efficacy of a therapeutic option. Molecules radiolabeled with γ-emitting or β+-emitting radionuclides can be used for diagnostic imaging using single photon emission computed tomography or positron emission tomography. Radionuclide therapy of disease sites is possible with either α-, β-, or Auger-emitting radionuclides that induce irreversible damage to DNA. This Focus Review centers on the chemistry of theranostic approaches using metal radionuclides for imaging and therapy. The use of tracers that contain β+-emitting gallium-68 and β-emitting lutetium-177 will be discussed in the context of agents in clinical use for the diagnostic imaging and therapy of neuroendocrine tumors and prostate cancer. A particular emphasis is then placed on the chemistry involved in the development of theranostic approaches that use copper-64 for imaging and copper-67 for therapy with functionalized sarcophagine cage amine ligands. Targeted therapy with radionuclides that emit α particles has potential to be of particular use in late-stage disease where there are limited options, and the role of actinium-225 and lead-212 in this area is also discussed. Finally, we highlight the challenges that impede further adoption of radiotheranostic concepts while highlighting exciting opportunities and prospects.
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