Reid James F, Lusa Lara, De Cecco Loris, Coradini Danila, Veneroni Silvia, Daidone Maria Grazia, Gariboldi Manuela, Pierotti Marco A
Department of Experimental Oncology, Istituto Nazionale per lo Studio e la Cura dei Tumori, Milan, Italy.
J Natl Cancer Inst. 2005 Jun 15;97(12):927-30. doi: 10.1093/jnci/dji153.
Data from microarray studies have been used to develop predictive models for treatment outcome in breast cancer, such as a recently proposed predictive model for antiestrogen response after tamoxifen treatment that was based on the expression ratio of two genes. We attempted to validate this model on an independent cohort of 58 patients with resectable estrogen receptor-positive breast cancer. We measured expression of the genes HOXB13 and IL17BR with real time-quantitative polymerase chain reaction and assessed the association between their expression and outcome by use of univariate logistic regression, area under the receiver-operating-characteristic curve (AUC), a two-sample t test, and a Mann-Whitney test. We also applied standard supervised methods to the original microarray dataset and to another independent dataset from similar patients to estimate the classification accuracy obtainable by using more than two genes in a microarray-based predictive model. We could not validate the performance of the two-gene predictor on our cohort of samples (relation between outcome and the following genes estimated by logistic regression: for HOXB13, odds ratio [OR] = 1.04, 95% confidence interval [CI] = 0.92 to 1.16, P = .54; for IL17BR, OR = 0.69, 95% CI = 0.40 to 1.20, P = .18; and for HOXB13/IL17BR, OR = 1.30, 95% CI = 0.88 to 1.93, P = .18). Similar results were obtained with the AUC, a two-sample two-sided t test, and a Mann-Whitney test. In addition, estimates of classification accuracies applied to two independent microarray datasets highlighted the poor performance of treatment-response predictive models that can be achieved with the sample sizes of patients and informative genes to date.
来自微阵列研究的数据已被用于开发乳腺癌治疗结果的预测模型,例如最近提出的一种基于两个基因表达比率的他莫昔芬治疗后抗雌激素反应的预测模型。我们试图在一个由58例可切除的雌激素受体阳性乳腺癌患者组成的独立队列中验证该模型。我们采用实时定量聚合酶链反应测量了HOXB13和IL17BR基因的表达,并通过单变量逻辑回归、受试者操作特征曲线下面积(AUC)、两样本t检验和曼-惠特尼检验评估了它们的表达与结果之间的关联。我们还将标准监督方法应用于原始微阵列数据集以及来自相似患者的另一个独立数据集,以估计在基于微阵列的预测模型中使用两个以上基因可获得的分类准确性。我们无法在我们的样本队列中验证双基因预测指标的性能(通过逻辑回归估计的结果与以下基因之间的关系:对于HOXB13,比值比[OR]=1.04,95%置信区间[CI]=0.92至1.16,P=0.54;对于IL17BR,OR=0.69,95%CI=0.40至1.20,P=0.18;对于HOXB13/IL17BR,OR=1.30,95%CI=0.88至1.93,P=0.18)。使用AUC、两样本双侧t检验和曼-惠特尼检验也得到了类似结果。此外,应用于两个独立微阵列数据集的分类准确性估计突出了就目前患者样本量和信息基因而言,治疗反应预测模型的性能较差。