Faculty of Life Sciences, University of Manchester, Manchester, United Kingdom ; School of Environment and Life Sciences, University of Salford, Salford, United Kingdom.
PLoS One. 2013 Sep 4;8(9):e72303. doi: 10.1371/journal.pone.0072303. eCollection 2013.
Chemotherapy is commonly used in cancer treatments, however only 25% of cancers are responsive and a significant proportion develops resistance. The p53 tumour suppressor is crucial for cancer development and therapy, but has been less amenable to therapeutic applications due to the complexity of its action, reflected in 66,000 papers describing its function. Here we provide a systematic approach to integrate this information by constructing a large-scale logical model of the p53 interactome using extensive database and literature integration. The model contains 206 nodes representing genes or proteins, DNA damage input, apoptosis and cellular senescence outputs, connected by 738 logical interactions. Predictions from in silico knock-outs and steady state model analysis were validated using literature searches and in vitro based experiments. We identify an upregulation of Chk1, ATM and ATR pathways in p53 negative cells and 61 other predictions obtained by knockout tests mimicking mutations. The comparison of model simulations with microarray data demonstrated a significant rate of successful predictions ranging between 52% and 71% depending on the cancer type. Growth factors and receptors FGF2, IGF1R, PDGFRB and TGFA were identified as factors contributing selectively to the control of U2OS osteosarcoma and HCT116 colon cancer cell growth. In summary, we provide the proof of principle that this versatile and predictive model has vast potential for use in cancer treatment by identifying pathways in individual patients that contribute to tumour growth, defining a sub population of "high" responders and identification of shifts in pathways leading to chemotherapy resistance.
化疗通常用于癌症治疗,但只有 25%的癌症有反应,相当一部分会产生耐药性。p53 肿瘤抑制因子对癌症的发生和治疗至关重要,但由于其作用的复杂性,使其在治疗应用方面的效果较差,这反映在描述其功能的 66000 篇论文中。在这里,我们通过使用广泛的数据库和文献整合构建了一个大规模的 p53 相互作用体逻辑模型,为整合这些信息提供了一种系统的方法。该模型包含 206 个节点,代表基因或蛋白质、DNA 损伤输入、细胞凋亡和衰老输出,通过 738 个逻辑相互作用连接。使用文献搜索和基于体外的实验验证了计算机模拟敲除和稳态模型分析的预测。我们发现,在 p53 阴性细胞中,Chk1、ATM 和 ATR 途径被上调,而在模拟突变的 61 个敲除测试中获得了其他预测。模型模拟与微阵列数据的比较表明,成功预测的比例在 52%到 71%之间,具体取决于癌症类型。生长因子和受体 FGF2、IGF1R、PDGFRB 和 TGFA 被确定为选择性控制 U2OS 骨肉瘤和 HCT116 结肠癌细胞生长的因素。总之,我们提供了一个原则性的证据,即通过识别导致肿瘤生长的个体患者的途径、定义“高”反应者亚群以及确定导致化疗耐药性的途径变化,这个多功能和可预测的模型具有在癌症治疗中广泛应用的潜力。