Semin Cancer Biol. 2013 Aug;23(4):209-12. doi: 10.1016/j.semcancer.2013.06.011. Epub 2013 Jul 2.
Cancer is increasingly described as a systems-level, network phenomenon. Genetic methods, such as next generation sequencing and RNA interference uncovered the complexity tumor-specific mutation-induced effects and the identification of multiple target sets. Network analysis of cancer-specific metabolic and signaling pathways highlighted the structural features of cancer-related proteins and their complexes to develop next-generation protein kinase inhibitors, as well as the modulation of inflammatory and autophagic pathways in anti-cancer therapies. Importantly, malignant transformation can be described as a two-phase process, where an initial increase of system plasticity is followed by a decrease of plasticity at late stages of tumor development. Late-stage tumors should be attacked by an indirect network influence strategy. On the contrary, the attack of early-stage tumors may target central network nodes. Cancer stem cells need special diagnosis and targeting, since they potentially have an extremely high ability to change the rigidity/plasticity of their networks. The early warning signals of the activation of fast growing tumor cell clones are important in personalized diagnosis and therapy. Multi-target attacks are needed to perturb cancer-specific networks to exit from cancer attractors and re-enter a normal attractor. However, the dynamic non-genetic heterogeneity of cancer cell population induces the replenishment of the cancer attractor with surviving, non-responsive cells from neighboring abnormal attractors. The development of drug resistance is further complicated by interactions of tumor clones and their microenvironment. Network analysis of intercellular cooperation using game theory approaches may open new areas of understanding tumor complexity. In conclusion, the above applications of the network approach open up new, and highly promising avenues in anti-cancer drug design.
癌症越来越被描述为一种系统级、网络现象。遗传方法,如下一代测序和 RNA 干扰,揭示了肿瘤特异性突变诱导效应的复杂性和多个靶集的识别。对癌症特异性代谢和信号通路的网络分析突出了癌症相关蛋白及其复合物的结构特征,以开发下一代蛋白激酶抑制剂,并调节抗炎和自噬途径的抗癌治疗。重要的是,恶性转化可以被描述为一个两阶段的过程,其中系统可塑性的初始增加伴随着肿瘤发展后期可塑性的降低。晚期肿瘤应该通过间接网络影响策略进行攻击。相反,早期肿瘤的攻击可能针对中央网络节点。癌症干细胞需要特殊的诊断和靶向治疗,因为它们具有改变其网络刚性/可塑性的潜在极高能力。快速生长肿瘤细胞克隆激活的早期预警信号在个性化诊断和治疗中非常重要。需要多目标攻击来扰乱癌症特异性网络,以从癌症吸引子中退出并重新进入正常吸引子。然而,癌细胞群体的动态非遗传异质性导致具有存活能力、无反应性的细胞从邻近的异常吸引子中补充癌症吸引子。肿瘤克隆及其微环境的相互作用进一步使药物耐药性的发展复杂化。使用博弈论方法对细胞间合作的网络分析可能会开辟理解肿瘤复杂性的新领域。总之,网络方法的上述应用为抗癌药物设计开辟了新的、极具前景的途径。