Faratian Dana, Goltsov Alexey, Lebedeva Galina, Sorokin Anatoly, Moodie Stuart, Mullen Peter, Kay Charlene, Um In Hwa, Langdon Simon, Goryanin Igor, Harrison David J
University of Edinburgh, Scotland, United Kingdom.
Cancer Res. 2009 Aug 15;69(16):6713-20. doi: 10.1158/0008-5472.CAN-09-0777. Epub 2009 Jul 28.
Resistance to targeted cancer therapies such as trastuzumab is a frequent clinical problem not solely because of insufficient expression of HER2 receptor but also because of the overriding activation states of cell signaling pathways. Systems biology approaches lend themselves to rapid in silico testing of factors, which may confer resistance to targeted therapies. Inthis study, we aimed to develop a new kinetic model that could be interrogated to predict resistance to receptor tyrosine kinase (RTK) inhibitor therapies and directly test predictions in vitro and in clinical samples. The new mathematical model included RTK inhibitor antibody binding, HER2/HER3 dimerization and inhibition, AKT/mitogen-activated protein kinase cross-talk, and the regulatory properties of PTEN. The model was parameterized using quantitative phosphoprotein expression data from cancer cell lines using reverse-phase protein microarrays. Quantitative PTEN protein expression was found to be the key determinant of resistance to anti-HER2 therapy in silico, which was predictive of unseen experiments in vitro using the PTEN inhibitor bp(V). When measured in cancer cell lines, PTEN expression predicts sensitivity to anti-HER2 therapy; furthermore, this quantitative measurement is more predictive of response (relative risk, 3.0; 95% confidence interval, 1.6-5.5; P < 0.0001) than other pathway components taken in isolation and when tested by multivariate analysis in a cohort of 122 breast cancers treated with trastuzumab. For the first time, a systems biology approach has successfully been used to stratify patients for personalized therapy in cancer and is further compelling evidence that PTEN, appropriately measured in the clinical setting, refines clinical decision making in patients treated with anti-HER2 therapies.
对曲妥珠单抗等靶向癌症治疗的耐药性是一个常见的临床问题,这不仅是因为HER2受体表达不足,还因为细胞信号通路的过度激活状态。系统生物学方法有助于对可能导致靶向治疗耐药的因素进行快速的计算机模拟测试。在本研究中,我们旨在开发一种新的动力学模型,该模型可用于预测对受体酪氨酸激酶(RTK)抑制剂治疗的耐药性,并在体外和临床样本中直接验证预测结果。新的数学模型包括RTK抑制剂抗体结合、HER2/HER3二聚化及抑制、AKT/丝裂原活化蛋白激酶的相互作用以及PTEN的调节特性。该模型使用来自癌细胞系的定量磷酸化蛋白表达数据通过反相蛋白质微阵列进行参数化。定量PTEN蛋白表达被发现是计算机模拟中抗HER2治疗耐药性的关键决定因素,这可预测使用PTEN抑制剂bp(V)进行的体外未进行的实验。在癌细胞系中进行测量时,PTEN表达可预测对抗HER2治疗的敏感性;此外,与单独考虑的其他信号通路成分相比,这种定量测量在对122例接受曲妥珠单抗治疗的乳腺癌患者进行多变量分析测试时,对反应的预测性更强(相对风险,3.0;95%置信区间,1.6 - 5.5;P < 0.0001)。系统生物学方法首次成功用于对癌症患者进行个性化治疗分层,并且进一步有力证明,在临床环境中适当测量PTEN可优化接受抗HER2治疗患者的临床决策。