Marchevsky A M, Shah S, Patel S
Department of Pathology and Laboratory Medicine, Cedars-Sinai Medical Center, Los Angeles, California 90048, USA.
Mod Pathol. 1999 May;12(5):505-13.
Axillary lymph node status is an important prognostic feature for patients with breast cancer, but the therapeutic value of axillary lymphadenectomy is controversial. It would be useful to be able to predict the status of axillary lymph nodes before lymphadenectomy from prognostic features evaluated in a previous breast biopsy. This prediction would be useful to optimize the treatment of patients with breast cancer who are unlikely to have nodal metastases. We studied 279 patients with invasive breast carcinoma treated with modified radical mastectomy or with lumpectomy combined with axillary lymph node dissection. Prognostic factors evaluated were age, histologic type of invasive tumor, presence of associated ductal and/or lobular carcinoma in situ, lesion size, histologic and nuclear grades, DNA index, presence of multiploidy by flow cytometric analysis, and immunocytochemical expression of estrogen and progesterone receptors, proliferating nuclear cell antigen, and HER-2/neu oncogene. Several probabilistic neural networks (NNs) with genetic algorithms were developed using prognostic features as input neurons and lymph node status (positive or negative) as output neurons. The data were also studied with multiple regression and logistic regression analysis. The best NN model trained with 224 cases using 19 input neurons. It classified correctly 49 (89.0%) of 55 unknown cases (specificity, 97.2%; sensitivity, 80.0%; positive predictive value, 93.8%; negative predictive value, 87.5%). Several statistically significant models could be fitted with both multiple regression and logistic regression. The logistic regression model fitted with 240 cases using 6 independent variables estimated correctly 26 (66%) of 39 holdout cases. NNs and logistic regression models offer potentially useful tools to estimate the status of axillary lymph nodes of breast cancer patients before axillary lymphadenectomy. Future prospective studies with larger groups of patients and perhaps better prognostic markers are needed before these predictive multivariate models become ready for clinical use.
腋窝淋巴结状态是乳腺癌患者重要的预后特征,但腋窝淋巴结清扫术的治疗价值存在争议。若能根据先前乳腺活检评估的预后特征在淋巴结清扫术前预测腋窝淋巴结状态,将很有帮助。这种预测对于优化不太可能发生淋巴结转移的乳腺癌患者的治疗很有用。我们研究了279例接受改良根治性乳房切除术或乳房肿瘤切除术联合腋窝淋巴结清扫术治疗的浸润性乳腺癌患者。评估的预后因素包括年龄、浸润性肿瘤的组织学类型、是否存在相关的导管原位癌和/或小叶原位癌、病变大小、组织学和核分级、DNA指数、流式细胞术分析显示的多倍体情况以及雌激素和孕激素受体、增殖细胞核抗原和HER-2/neu癌基因的免疫细胞化学表达。使用遗传算法开发了几个概率神经网络(NNs),将预后特征作为输入神经元,淋巴结状态(阳性或阴性)作为输出神经元。还采用多元回归和逻辑回归分析对数据进行了研究。使用19个输入神经元对224例病例进行训练的最佳NN模型,在55例未知病例中正确分类了49例(89.0%)(特异性为97.2%;敏感性为80.0%;阳性预测值为93.8%;阴性预测值为87.5%)。多元回归和逻辑回归都能拟合出几个具有统计学意义的模型。使用6个自变量对240例病例进行拟合的逻辑回归模型,在39例保留病例中正确估计了26例(66%)。神经网络和逻辑回归模型为在腋窝淋巴结清扫术前估计乳腺癌患者腋窝淋巴结状态提供了潜在有用的工具。在这些预测性多变量模型准备好用于临床之前,需要对更大规模的患者群体进行未来前瞻性研究,或许还需要更好的预后标志物。