Versele Matthias, Talloen Willem, Rockx Cindy, Geerts Tamara, Janssen Boud, Lavrijssen Tom, King Peter, Göhlmann Hinrich W H, Page Martin, Perera Tim
Ortho Biotech Oncology Research and Development, Janssen Pharmaceutica, Beerse, Belgium.
Mol Cancer Ther. 2009 Jul;8(7):1846-55. doi: 10.1158/1535-7163.MCT-08-1029. Epub 2009 Jul 7.
Multitargeted kinase inhibitors have shown clinical efficacy in a range of cancer types. However, two major problems associated with these drugs are the low fraction of patients for which these treatments provide initial clinical benefit and the occurrence of resistance during prolonged therapy. Several types of predictive biomarkers have been suggested, such as expression level and phosphorylation status of the major targeted kinase(s), mutational status of the kinases involved and of key components of the downstream signaling cascades, and gene expression signatures. In this work, we describe the development of a response prediction platform that does not require prior knowledge of the relevant kinases targeted by the inhibitor; instead, a phosphotyrosine peptide profile using peptide arrays with a kinetic readout is derived in lysates in the presence and absence of a kinase inhibitor. We show in a range of cell lines and in xenograft tumors that this approach allows for the stratification of responders and nonresponders to a multitargeted kinase inhibitor.
多靶点激酶抑制剂已在多种癌症类型中显示出临床疗效。然而,与这些药物相关的两个主要问题是,接受这些治疗能获得初始临床益处的患者比例较低,以及在长期治疗过程中会出现耐药性。已经提出了几种类型的预测性生物标志物,例如主要靶向激酶的表达水平和磷酸化状态、所涉及激酶以及下游信号级联反应关键组分的突变状态,以及基因表达特征。在这项研究中,我们描述了一种反应预测平台的开发,该平台不需要事先了解抑制剂所靶向的相关激酶;相反,在存在和不存在激酶抑制剂的情况下,利用具有动力学读数的肽阵列从裂解物中获得磷酸酪氨酸肽谱。我们在一系列细胞系和异种移植肿瘤中表明,这种方法能够区分对多靶点激酶抑制剂有反应者和无反应者。