Amgen Inc, Thousand Oaks, CA 91320, USA.
Neoplasia. 2013 Feb;15(2):125-32. doi: 10.1593/neo.121038.
Epidermal growth factor receptor (EGFR)-targeted agents have demonstrated clinical benefit in patients with cancer. Identifying tissue-of-origin-independent predictive biomarkers is important to optimally treat patients. We sought to identify a gene array profile that could predict responsiveness to panitumumab, a fully human EGFR-binding antibody, using preclinical models of human cancer.
Mice bearing 25 different xenograft models were treated twice weekly with panitumumab or immunoglobulin G2 control to determine their responsiveness to panitumumab. Samples from these xenografts and untreated xenografts were arrayed on the Affymetrix human U133A gene chip to identify gene sets predicting responsiveness to panitumumab using univariate and multivariate analyses. The predictive models were validated using the leave-one-group-out (LOO) method.
Of the 25 xenograft models tested, 12 were responsive and 13 were resistant to panitumumab. Unsupervised analysis demonstrated that the xenograft models clustered by tissue type rather than responsiveness to panitumumab. After normalizing for tissue effects, samples clustered by responsiveness using an unsupervised multidimensional scaling. A multivariate selection algorithm was used to select 13 genes that could stratify xenograft models based on responsiveness after adjustment for tissue effects. The method was validated using the LOO method on a training set of 22 models and confirmed independently on three new models. In contrast, a univariate gene selection method resulted in higher misclassification rates.
A model was constructed from microarray data that prospectively predict responsiveness to panitumumab in xenograft models. This approach may help identify patients, independent of disease origin, likely to benefit from panitumumab.
表皮生长因子受体 (EGFR)-靶向药物已在癌症患者中显示出临床获益。确定与组织起源无关的预测性生物标志物对于优化患者治疗非常重要。我们试图使用人类癌症的临床前模型来确定可预测对 panitumumab(一种完全人源 EGFR 结合抗体)反应的基因阵列谱。
用 panitumumab 或免疫球蛋白 G2 对照每周两次处理 25 种不同异种移植模型的小鼠,以确定它们对 panitumumab 的反应。从这些异种移植和未经处理的异种移植中提取样本,排列在 Affymetrix 人类 U133A 基因芯片上,使用单变量和多变量分析确定预测对 panitumumab 反应的基因集。使用留一法(LOO)验证预测模型。
在测试的 25 种异种移植模型中,有 12 种对 panitumumab 有反应,13 种无反应。非监督分析表明,异种移植模型按组织类型而不是对 panitumumab 的反应聚类。在对组织效应进行归一化后,使用非监督多维缩放对响应进行聚类。使用多变量选择算法选择了 13 个基因,这些基因可以在调整组织效应后基于反应对异种移植模型进行分层。该方法在 22 个模型的训练集上使用 LOO 法进行验证,并在三个新模型上独立验证。相比之下,单变量基因选择方法导致更高的错误分类率。
从微阵列数据构建了一个模型,可以前瞻性地预测异种移植模型对 panitumumab 的反应。这种方法可能有助于确定独立于疾病起源的可能从 panitumumab 中受益的患者。