Ryu Jin-Sun, Sim Sung Hoon, Park In Hae, Lee Eun Gyeong, Lee Eun Sook, Kim Yun-Hee, Kwon Youngmee, Kong Sun-Young, Lee Keun Seok
Center for Breast cancer, National Cancer Center, Goyang 10408, Korea.
Division of Translational Science, National Cancer Center, Goyang 10408, Korea.
Cancers (Basel). 2019 Apr 23;11(4):574. doi: 10.3390/cancers11040574.
Patient-derived xenografts (PDXs) are powerful tools for translational cancer research. Here, we established PDX models from different molecular subtypes of breast cancer for in vivo drug tests and compared the histopathologic features of PDX model tumors with those of patient tumors. Predictive biomarkers were identified by gene expression analysis of PDX samples using Nanostring nCount cancer panels. Validation of predictive biomarkers for treatment response was conducted in established PDX models by in vivo drug testing. Twenty breast cancer PDX models were generated from different molecular subtypes (overall success rate, 17.5%; 3.6% for HR/HER2, 21.4% for HR/HER2, 21.9% for HR/HER2 and 22.5% for triple-negative breast cancer (TNBC)). The histopathologic features of original tumors were retained in the PDX models. We detected upregulated HIF1A, RAF1, AKT2 and VEGFA in TNBC cases and demonstrated the efficacy of combined treatment with sorafenib and everolimus or docetaxel and bevacizumab in each TNBC model. Additionally, we identified upregulated HIF1A in two cases of trastuzumab-exposed HR/HER2 PDX models and validated the efficacy of the HIF1A inhibitor, PX-478, alone or in combination with neratinib. Our results demonstrate that PDX models can be used as effective tools for predicting therapeutic markers and evaluating personalized treatment strategies in breast cancer patients with resistance to standard chemotherapy regimens.
患者来源的异种移植瘤(PDXs)是转化癌症研究的有力工具。在此,我们从乳腺癌的不同分子亚型建立了PDX模型用于体内药物测试,并将PDX模型肿瘤的组织病理学特征与患者肿瘤的组织病理学特征进行了比较。使用Nanostring nCount癌症检测板通过对PDX样本进行基因表达分析来鉴定预测性生物标志物。通过体内药物测试在已建立的PDX模型中对治疗反应的预测性生物标志物进行验证。从不同分子亚型生成了20个乳腺癌PDX模型(总体成功率为17.5%;激素受体阳性/人表皮生长因子受体2阴性(HR/HER2)为3.6%,激素受体阳性/人表皮生长因子受体2阳性(HR/HER2)为21.4%,激素受体阴性/人表皮生长因子受体2阳性(HR/HER2)为21.9%,三阴性乳腺癌(TNBC)为22.5%)。原始肿瘤的组织病理学特征在PDX模型中得以保留。我们在TNBC病例中检测到缺氧诱导因子1α(HIF1A)、丝裂原活化蛋白激酶1(RAF1)、蛋白激酶B2(AKT2)和血管内皮生长因子A(VEGFA)上调,并证明了索拉非尼与依维莫司联合治疗或多西他赛与贝伐单抗联合治疗在每个TNBC模型中的疗效。此外,我们在两例接受曲妥珠单抗治疗的HR/HER2 PDX模型中检测到HIF1A上调,并验证了HIF1A抑制剂PX - 478单独或与来那替尼联合使用的疗效。我们的结果表明,PDX模型可作为预测治疗标志物和评估对标准化疗方案耐药的乳腺癌患者个性化治疗策略的有效工具。