Pijnappel E N, Bhoo-Pathy N, Suniza J, See M H, Tan G H, Yip C H, Hartman M, Taib N A, Verkooijen H M
Imaging Division, University Medical Center Utrecht, Utrecht, The Netherlands,
World J Surg. 2014 Dec;38(12):3133-7. doi: 10.1007/s00268-014-2752-3.
In settings with limited resources, sentinel lymph node biopsy (SNB) is only offered to breast cancer patients with small tumors and a low a priori risk of axillary metastases.
We investigated whether CancerMath, a free online prediction tool for axillary lymph node involvement, is able to identify women at low risk of axillary lymph node metastases in Malaysian women with 3-5 cm tumors, with the aim to offer SNB in a targeted, cost-effective way.
Women with non-metastatic breast cancers, measuring 3-5 cm were identified within the University Malaya Medical Centre (UMMC) breast cancer registry. We compared CancerMath-predicted probabilities of lymph node involvement between women with versus without lymph node metastases. The discriminative performance of CancerMath was tested using receiver operating characteristic (ROC) analysis.
Out of 1,017 patients, 520 (51 %) had axillary involvement. Tumors of women with axillary involvement were more often estrogen-receptor positive, progesterone-receptor positive, and human epidermal growth factor receptor (HER)-2 positive. The mean CancerMath score was higher in women with axillary involvement than in those without (53.5 vs. 51.3, p = 0.001). In terms of discrimination, CancerMath performed poorly, with an area under the ROC curve of 0.553 (95 % confidence interval CI 0.518-0.588). Attempts to optimize the CancerMath model by adding ethnicity and HER2 to the model did not improve discriminatory performance.
For Malaysian women with tumors measuring 3-5 cm, CancerMath is unable to accurately predict lymph node involvement and is therefore not helpful in the identification of women at low risk of node-positive disease who could benefit from SNB.
在资源有限的情况下,前哨淋巴结活检(SNB)仅适用于肿瘤较小且腋窝转移的先验风险较低的乳腺癌患者。
我们调查了一种用于预测腋窝淋巴结受累情况的免费在线工具CancerMath能否识别出肿瘤大小为3 - 5厘米的马来西亚女性中腋窝淋巴结转移风险较低的女性,旨在以有针对性、具有成本效益的方式提供SNB。
在马来亚大学医学中心(UMMC)乳腺癌登记处中识别出患有3 - 5厘米非转移性乳腺癌的女性。我们比较了有或无淋巴结转移的女性中CancerMath预测的淋巴结受累概率。使用受试者工作特征(ROC)分析来测试CancerMath的鉴别性能。
在1017例患者中,520例(51%)有腋窝受累。有腋窝受累的女性的肿瘤更常为雌激素受体阳性、孕激素受体阳性和人表皮生长因子受体(HER)-2阳性。有腋窝受累的女性的CancerMath平均得分高于无腋窝受累的女性(53.5对51.3,p = 0.001)。在鉴别方面,CancerMath表现不佳,ROC曲线下面积为0.553(95%置信区间CI 0.518 - 0.588)。通过在模型中添加种族和HER2来优化CancerMath模型的尝试并未改善鉴别性能。
对于肿瘤大小为3 - 5厘米的马来西亚女性,CancerMath无法准确预测淋巴结受累情况,因此对于识别可能从SNB中获益的淋巴结阳性疾病低风险女性并无帮助。