University of Michigan Health System, 1910 Taubman Center, 1500 E Medical Center Dr, Ann Arbor, MI 48109-0314, USA.
J Clin Oncol. 2011 Mar 10;29(8):1036-41. doi: 10.1200/JCO.2010.33.4136. Epub 2011 Feb 7.
Merkel cell carcinoma (MCC) is a relatively rare, potentially aggressive cutaneous malignancy. We examined the clinical and histologic features of primary MCC that may correlate with the probability of a positive sentinel lymph node (SLN).
Ninety-five patients with MCC who underwent SLN biopsy at the University of Michigan were identified. SLN biopsy was performed on 97 primary tumors, and an SLN was identified in 93 instances. These were reviewed for clinical and histologic features and associated SLN positivity. Univariate associations between these characteristics and a positive SLN were tested for by using either the χ(2) or the Fisher's exact test. A backward elimination algorithm was used to help create a best multiple variable model to explain a positive SLN.
SLN positivity was significantly associated with the clinical size of the lesion, greatest horizontal histologic dimension, tumor thickness, mitotic rate, and histologic growth pattern. Two competing multivariate models were generated to predict a positive SLN. The histologic growth pattern was present in both models and combined with either tumor thickness or mitotic rate.
Increasing clinical size, increasing tumor thickness, increasing mitotic rate, and infiltrative tumor growth pattern were significantly associated with a greater likelihood of a positive SLN. By using the growth pattern and tumor thickness model, no subgroup of patients was predicted to have a lower than 15% to 20% likelihood of a positive SLN. This suggests that all patients presenting with MCC without clinical evidence of regional lymph node disease should be considered for SLN biopsy.
默克尔细胞癌(MCC)是一种相对罕见的、具有潜在侵袭性的皮肤恶性肿瘤。我们研究了可能与前哨淋巴结(SLN)阳性相关的原发性 MCC 的临床和组织学特征。
在密歇根大学,我们确定了 95 例接受 SLN 活检的 MCC 患者。对 97 例原发性肿瘤进行了 SLN 活检,其中 93 例发现了 SLN。对这些肿瘤的临床和组织学特征以及相关的 SLN 阳性率进行了回顾性分析。使用卡方检验或 Fisher 确切检验对这些特征与 SLN 阳性之间的单变量关系进行了测试。使用向后消除算法来帮助创建最佳多变量模型,以解释 SLN 阳性。
SLN 阳性与病变的临床大小、最大水平组织学维度、肿瘤厚度、有丝分裂率和组织学生长模式显著相关。生成了两个竞争性的多变量模型来预测 SLN 阳性。组织学生长模式存在于两个模型中,并与肿瘤厚度或有丝分裂率相结合。
临床大小增加、肿瘤厚度增加、有丝分裂率增加和浸润性肿瘤生长模式与 SLN 阳性的可能性显著相关。使用生长模式和肿瘤厚度模型,没有预测到任何亚组患者的 SLN 阳性率低于 15%至 20%。这表明,所有出现 MCC 且无局部淋巴结疾病临床证据的患者都应考虑进行 SLN 活检。