Dual‐time‐point 64Cu‐PSMA‐617‐PET/CT in patients suffering from prostate cancer

前列腺癌 前列腺 核医学 淋巴 正电子发射断层摄影术 医学 癌症 代谢活性 薄壁组织 化学 病理 内科学 生理学
作者
Sebastian Hoberück,Gerd Wunderlich,Enrico Michler,Tobias Hölscher,Martin Walther,Danilo Seppelt,Ivan Platzek,Klaus Zöphel,Jörg Kotzerke
出处
期刊:Journal of Labelled Compounds and Radiopharmaceuticals [Wiley]
卷期号:62 (8): 523-532 被引量:29
标识
DOI:10.1002/jlcr.3745
摘要

Regardless of its high positron energy, 68 Ga‐labeled PSMA ligands have become standard of care in metabolic prostate cancer imaging. 64 Cu, a radionuclide with a much longer half‐life (12.7 h), is available for PSMA labeling allowing imaging much later than 68 Ga. In this study, the diagnostic performance of 64 Cu‐labeled PSMA was compared between early and late scans. Sixteen men (median age: 70 y) with prostate cancer in different stages underwent 64 Cu‐PSMA‐617‐PET/CT 2 and 22 hours post tracer injection. Pathologic and physiologic uptakes were analyzed for both points of time. Pathologic tracer accumulations occurred in 12 patients. Five patients presented with pathologic uptake in 17 different lymph nodes, two patients showed pathologic bone uptake in nine lesions, and seven patients had pathologic PSMA uptake in eight prostatic lesions. Physiologic uptake of the renal parenchyma, urine bladder, and salivary glands decreased over time, while the physiologic uptake of liver and bowel increased. In the present study, 64 Cu‐PSMA‐617‐PET demonstrated to be feasible for imaging prostate cancer for both the primary tumor site and metastases. Later imaging showed no additional, clinically relevant benefit compared with the early scans. At least the investigated time points we chose did not vindicate the additional expenditure.
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