放射性核素治疗
医学
分子成像
正电子发射断层摄影术
医学物理学
副神经节瘤
核医学
发射计算机断层扫描
指南
核成像
神经内分泌肿瘤
放射科
内科学
病理
生物技术
体内
生物
作者
David Taïeb,Rodney J. Hicks,Elif Hindié,Benjamin Guillet,Anca M. Avram,Pietro Ghedini,Henri Timmers,Aaron T. Scott,Saeed Elojeimy,Domenico Rubello,Irene Virgolini,Stefano Fanti,Soňa Balogová,Neeta Pandit‐Taskar,Karel Pacák
标识
DOI:10.1007/s00259-019-04398-1
摘要
Diverse radionuclide imaging techniques are available for the diagnosis, staging, and follow-up of phaeochromocytoma and paraganglioma (PPGL). Beyond their ability to detect and localise the disease, these imaging approaches variably characterise these tumours at the cellular and molecular levels and can guide therapy. Here we present updated guidelines jointly approved by the EANM and SNMMI for assisting nuclear medicine practitioners in not only the selection and performance of currently available single-photon emission computed tomography and positron emission tomography procedures, but also the interpretation and reporting of the results. Guidelines from related fields and relevant literature have been considered in consultation with leading experts involved in the management of PPGL. The provided information should be applied according to local laws and regulations as well as the availability of various radiopharmaceuticals. Since the European Association of Nuclear Medicine 2012 guidelines, the excellent results obtained with gallium-68 (68Ga)-labelled somatostatin analogues (SSAs) in recent years have simplified the imaging approach for PPGL patients that can also be used for selecting patients for peptide receptor radionuclide therapy as a potential alternative or complement to the traditional theranostic approach with iodine-123 (123I)/iodine-131 (131I)-labelled meta-iodobenzylguanidine. Genomic characterisation of subgroups with differing risk of lesion development and subsequent metastatic spread is refining the use of molecular imaging in the personalised approach to hereditary PPGL patients for detection, staging, and follow-up surveillance.
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