医学
乳腺癌
腋窝淋巴结清扫术
前哨淋巴结
腋窝解剖
外科
放射科
腋窝淋巴结
腋窝
外科肿瘤学
淋巴
随机对照试验
癌症
内科学
病理
作者
Corrado Tinterri,Damiano Gentile,Wolfgang Gatzemeier,Andrea Sagona,E. Barbieri,Alberto Testori,Valentina Errico,Alberto Bottini,Emilia Marrazzo,Carla Dani,Béatrice Dozin,Luca Boni,Paolo Bruzzi,Bethania Fernandes,Davide Franceschini,Ruggero Spoto,Rosalba Torrisi,Marta Scorsetti,Armando Santoro,Giuseppe Canavese
标识
DOI:10.1245/s10434-022-11866-w
摘要
BackgroundThe SINODAR-ONE trial is a prospective noninferiority multicenter randomized study aimed at assessing the role of axillary lymph node dissection (ALND) in patients undergoing either breast-conserving surgery or mastectomy for T1–2 breast cancer (BC) and presenting one or two macrometastatic sentinel lymph nodes (SLNs). The endpoints were to evaluate whether SLN biopsy (SLNB) only was associated with worsening of the prognosis compared with ALND in terms of overall survival (OS) and relapse.MethodsPatients were randomly assigned (1:1 ratio) to either removal of ≥ 10 axillary level I/II non-SLNs followed by adjuvant therapy (standard arm) or no further axillary treatment (experimental arm).ResultsThe trial started in April 2015 and ceased in April 2020, involving 889 patients. Median follow-up was 34.0 months. There were eight deaths (ALND, 4; SNLB only, 4), with 5-year cumulative mortality of 5.8% and 2.1% in the standard and experimental arm, respectively (p = 0.984). There were 26 recurrences (ALND 11; SNLB only, 15), with 5-year cumulative incidence of recurrence of 6.9% and 3.3% in the standard and experimental arm, respectively (p = 0.444). Only one axillary lymph node recurrence was observed in each arm. The 5-year OS rates were 98.9% and 98.8%, in the ALND and SNLB-only arm, respectively (p = 0.936).ConclusionsThe 3-year survival and relapse rates of T1–2 BC patients with one or two macrometastatic SLNs treated with SLNB only, and adjuvant therapy, were not inferior to those of patients treated with ALND. These results do not support the use of routine ALND.
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