首页> 外文期刊>Annals of surgical oncology >Older age independently predicts a lower risk of sentinel lymph node metastasis in breast cancer.
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Older age independently predicts a lower risk of sentinel lymph node metastasis in breast cancer.

机译:老年人独立预测乳腺癌前哨淋巴结转移的风险较低。

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BACKGROUND: The influence of patient age on the risk of sentinel lymph node (SLN) metastasis in breast cancer has not been defined. METHODS: A breast cancer SLN database was analyzed. Factors associated with SLN metastasis were assessed by multiple logistic regression modeling. Age, T stage, estrogen receptor status, HER-2eu status, grade, angiolymphatic invasion, lobular histology, tubular/mucinous histology, and the number of SLNs resected were assessed. RESULTS: Data were available for 810 patients with invasive breast cancer. SLN metastasis was observed in 22% of the patients. The factors most strongly associated with SLN metastasis were angiolymphatic invasion, T stage, and age. Age ranged from 29 to 95 years. The median age was 66 years. Overall, SLN metastasis was more common in younger patients (< or =66 years) than in older patients (>66 years; P < .001). Among patients without angiolymphatic invasion, SLN metastasis was nearly twice as common in the younger patients as in the older patients. The effect of angiolymphatic invasion as a risk for SLN metastasis was much greater in the older age group. CONCLUSIONS: In addition to known risk factors, age independently predicts the risk of SLN metastasis in breast cancer. Angiolymphatic invasion seems to be a more powerful predictor of SLN metastasis in older patients.
机译:背景:患者年龄对乳腺癌前哨淋巴结(SLN)转移风险的影响尚未确定。方法:分析乳腺癌SLN数据库。通过多重逻辑回归模型评估与SLN转移相关的因素。评估年龄,T期,雌激素受体状态,HER-2 / neu状态,等级,血管淋巴管浸润,小叶组织学,肾小管/粘液组织学以及切除的SLN数量。结果:810例浸润性乳腺癌患者可获得数据。在22%的患者中观察到SLN转移。与SLN转移最密切相关的因素是血管淋巴管浸润,T期和年龄。年龄从29岁到95岁不等。中位年龄为66岁。总体而言,年轻患者(<或= 66岁)的SLN转移比年长患者(> 66岁; P <.001)更常见。在没有血管淋巴管浸润的患者中,年轻患者的SLN转移几乎是老年患者的两倍。在年龄较大的人群中,血管淋巴管浸润作为SLN转移风险的影响更大。结论:除已知的危险因素外,年龄独立预测乳腺癌中SLN转移的风险。血管淋巴管浸润似乎是老年患者SLN转移的更有效预测指标。

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