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口腔颌面部鳞状细胞癌中淋巴结密度与不良预后预测因素的相关性

Correlation of Lymph Node Density With Negative Outcome Predictors in Oral and Maxillofacial Squamous Cell Carcinoma.

作者信息

Kim Roderick Youngdo, Ward Brent Benson, Brockhoff Hans C, Helman Joseph I, Braun Thomas M, Skouteris Christos A

机构信息

Resident, Department of Surgery, Section of Oral and Maxillofacial Surgery, University of Michigan, University of Michigan School of Dentistry, University of Michigan Medical School, Ann Arbor, MI.

Associate Professor and Chair, Department of Surgery, Section of Oral and Maxillofacial Surgery, University of Michigan, University of Michigan School of Dentistry, Ann Arbor, MI.

出版信息

J Oral Maxillofac Surg. 2016 Oct;74(10):2081-4. doi: 10.1016/j.joms.2016.03.023. Epub 2016 Mar 28.

Abstract

PURPOSE

Lymph node density is defined as the number of positive lymph nodes per total number of excised lymph nodes. In oral and maxillofacial cancer, there are recent data showing that increased lymph node density leads to worse outcomes for patients. However, data correlating lymph node density with other known risk parameters are lacking. This study investigated whether a direct correlation exists among cervical lymph node density, depth of invasion, perineural invasion, and extracapsular tumor spread.

MATERIALS AND METHODS

A retrospective chart review was undertaken to include all patients who underwent neck dissection with resection of primary oral and maxillofacial squamous cell carcinoma from January 2009 through July 2014. After applying the exclusion criteria, 286 patients were identified. Primary tumor depth of invasion, perineural invasion, and lymph node status, including extracapsular spread, were obtained from the standard pathology report. Descriptive statistics were applied. The association between 2 continuous tumor characteristics was summarized with the Pearson correlation coefficient, and the association between a continuous and a binary tumor characteristic was summarized with 2-sample t test. Statistical significance for the study was set at a P value less than .05.

RESULTS

Mean age at time of surgery was 63.9 ± 12.5 years. The final study included 169 men and 117 women (N = 286). The mean depth of invasion was 12.3 ± 11 mm (range, 1 to 69 mm). Mean lymph node density was 0.04 ± 0.1 (range, 0 to 0.81). There was a positive association between lymph node density and depth of tumor invasion (Pearson correlation coefficient, r = 0.21; P < .001). Tumors with perineural invasion had a statistically significant difference in mean lymph node density (0.074 for positive vs 0.024 for negative; P < .001). There also was a significant association in mean lymph node density with the presence of extracapsular spread (0.143 for positive and 0.010 for negative; P < .001).

CONCLUSIONS

Statistically relevant positive linear relations among lymph node density, depth of invasion, perineural invasion, and extracapsular spread were identified. Lymph node density could have prognostic implications, because it is statistically correlated with other known prognostic features that lead to poor outcomes. Lymph node density could be an important feature to capture in future prospective trials. Pathology standards would be crucial in this endeavor.

摘要

目的

淋巴结密度定义为切除的淋巴结总数中阳性淋巴结的数量。在口腔颌面癌中,最近有数据表明淋巴结密度增加会导致患者预后更差。然而,缺乏将淋巴结密度与其他已知风险参数相关联的数据。本研究调查了颈部淋巴结密度、浸润深度、神经周围浸润和包膜外肿瘤扩散之间是否存在直接关联。

材料与方法

进行一项回顾性病历审查,纳入2009年1月至2014年7月期间接受颈部清扫术并切除原发性口腔颌面鳞状细胞癌的所有患者。应用排除标准后,确定了286例患者。从标准病理报告中获取原发肿瘤的浸润深度、神经周围浸润和淋巴结状态,包括包膜外扩散情况。应用描述性统计方法。用Pearson相关系数总结两个连续肿瘤特征之间的关联,用两样本t检验总结一个连续肿瘤特征与一个二元肿瘤特征之间的关联。本研究的统计学显著性设定为P值小于0.05。

结果

手术时的平均年龄为63.9±12.5岁。最终研究纳入169名男性和117名女性(N = 286)。平均浸润深度为12.3±11毫米(范围为1至69毫米)。平均淋巴结密度为0.04±0.1(范围为0至0.81)。淋巴结密度与肿瘤浸润深度之间存在正相关(Pearson相关系数,r = 0.21;P < 0.001)。有神经周围浸润的肿瘤在平均淋巴结密度上有统计学显著差异(阳性为0.074,阴性为0.024;P < 0.001)。平均淋巴结密度与包膜外扩散的存在也有显著关联(阳性为0.143,阴性为0.010;P < 0.001)。

结论

确定了淋巴结密度、浸润深度、神经周围浸润和包膜外扩散之间存在具有统计学相关性的正线性关系。淋巴结密度可能具有预后意义,因为它与其他已知的导致不良预后的预后特征在统计学上相关。淋巴结密度可能是未来前瞻性试验中需要关注的一个重要特征。病理标准在这项工作中至关重要。

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