前列腺切除术
淋巴结
医学
吲哚青绿
解剖(医学)
前列腺癌
放射科
淋巴结切除术
泌尿科
核医学
外科
癌症
内科学
作者
Francesco Claps,Pedro de Pablos‐Rodríguez,Á. Gómez-Ferrer,J.M. Mascarós,José Luis Marenco,Argimiro Collado Serra,Juán Casanova Ramón-Borja,Ana Calatrava Fons,Carlo Trombetta,J. Rubio‐Briones,M. Backhaus
标识
DOI:10.1016/j.urolonc.2022.08.005
摘要
Extended Pelvic Lymph Node Dissection (ePLND) remains the most accurate technique for the detection of occult lymph node metastases (LNMs) in prostate cancer (CaP) patients. Here we aim to examine whether free-Indocyanine Green (F-ICG) could accurately assess the pathological nodal (pN) status in CaP patients during real-time lymphangiography as a potential replacement for ePLND.219 consecutive patients undergoing F-ICG-guided PLND, ePLND and radical prostatectomy (RP) for clinical-localized CaPwere included in this prospective single-center study. The pathological outcomes of F-ICG-guided PLND were compared to confirmatory ePLND. Parameters of a binary diagnostic test for the proper classification of the pN status of patients ('per-patient' analysis) and for the probability of detecting all the metastatic LNs ('per-node' analysis) were calculated. Outcome measures were prevalence, accuracy (Acc), sensitivity (Se), negative predictive value (NPV), and likelihood ratio of a negative F-ICG-guided PLND test result [LR(-)].F-ICG-guided PLND successfully visualized LNs in all procedures with no adverse events. The overall per-patient F-ICG staging Acc was 97.7%, Se was 91.4%, with a NPV of 97.0%, and LR(-) of 8.6%. At the overall per-node level, 4,780 LNs were removed and 1,535 (32.1%) were fluorescent in vivo. F-ICG-guided PLND identified LNMs with a Se of 63.4%.This study confirms that F-ICG-guided lymphangiography correctly staged almost 98% of patients. The high per-patient NPV suggested that avoiding ePLND is safe for most patients when F-ICG stained nodes were pN0. Thus, more conservative approaches might minimise perioperative morbidity during LNMs diagnosis in selected patients.
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