首页> 美国卫生研究院文献>Molecular Oncology >Establishment of a human 3D lung cancer model based on a biological tissue matrix combined with a Boolean in silico model
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Establishment of a human 3D lung cancer model based on a biological tissue matrix combined with a Boolean in silico model

机译:基于生物组织矩阵结合布尔计算机模型的人类3D肺癌模型的建立

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摘要

For the development of new treatment strategies against cancer, understanding signaling networks and their changes upon drug response is a promising approach to identify new drug targets and biomarker profiles. Pre‐requisites are tumor models with multiple read‐out options that accurately reflect the clinical situation. Tissue engineering technologies offer the integration of components of the tumor microenvironment which are known to impair drug response of cancer cells. We established three‐dimensional (3D) lung carcinoma models on a decellularized tissue matrix, providing a complex microenvironment for cell growth. For model generation, we used two cell lines with (HCC827) or without (A549) an activating mutation of the epidermal growth factor receptor (EGFR), exhibiting different sensitivities to the EGFR inhibitor gefitinib. EGFR activation in HCC827 was inhibited by gefitinib, resulting in a significant reduction of proliferation (Ki‐67 proliferation index) and in the induction of apoptosis (TUNEL staining, M30‐ELISA). No significant effect was observed in conventional cell culture. Results from the 3D model correlated with the results of an in silico model that integrates the EGFR signaling network according to clinical data. The application of TGFβ1 induced tumor cell invasion, accompanied by epithelial–mesenchymal transition (EMT) both in vitro and in silico. This was confirmed in the 3D model by acquisition of mesenchymal cell morphology and modified expression of fibronectin, E‐cadherin, β‐catenin and mucin‐1. Quantitative read‐outs for proliferation, apoptosis and invasion were established in the complex 3D tumor model. The combined in vitro and in silico model represents a powerful tool for systems analysis.
机译:为了开发针对癌症的新治疗策略,了解信号网络及其在药物反应后的变化是确定新药物靶标和生物标志物概况的一种有前途的方法。前提条件是具有多种读出选项的肿瘤模型,可以准确反映临床情况。组织工程技术提供了已知的可削弱癌细胞药物反应能力的肿瘤微环境组分的整合。我们在脱细胞的组织基质上建立了三维(3D)肺癌模型,为细胞生长提供了复杂的微环境。对于模型生成,我们使用了具有(HCC827)或不具有(A549)表皮生长因子受体(EGFR)激活突变的两种细胞系,表现出对EGFR抑制剂吉非替尼的不同敏感性。吉非替尼抑制HCC827中的EGFR激活,从而导致增殖显着降低(Ki-67增殖指数)并诱导凋亡(TUNEL染色,M30-ELISA)。在常规细胞培养中未观察到明显的作用。 3D模型的结果与计算机模拟模型的结果相关,该计算机模型根据临床数据整合了EGFR信号网络。 TGFβ1的应用在体外和计算机上均诱导肿瘤细胞侵袭,并伴有上皮-间质转化(EMT)。这在3D模型中通过获取间充质细胞形态和纤连蛋白,E-钙黏着蛋白,β-连环蛋白和粘蛋白-1的修饰表达得到了证实。在复杂的3D肿瘤模型中建立了增殖,凋亡和侵袭的定量读数。体外和计算机模拟相结合的模型代表了用于系统分析的强大工具。

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