Hass Helge, Masson Kristina, Wohlgemuth Sibylle, Paragas Violette, Allen John E, Sevecka Mark, Pace Emily, Timmer Jens, Stelling Joerg, MacBeath Gavin, Schoeberl Birgit, Raue Andreas
Merrimack Pharmaceuticals, Inc., Cambridge, MA 02139 USA.
Institute of Physics, University of Freiburg, Freiburg, Germany.
NPJ Syst Biol Appl. 2017 Sep 20;3:27. doi: 10.1038/s41540-017-0030-3. eCollection 2017.
Targeted therapies have shown significant patient benefit in about 5-10% of solid tumors that are addicted to a single oncogene. Here, we explore the idea of ligand addiction as a driver of tumor growth. High ligand levels in tumors have been shown to be associated with impaired patient survival, but targeted therapies have not yet shown great benefit in unselected patient populations. Using an approach of applying Bagged Decision Trees (BDT) to high-dimensional signaling features derived from a computational model, we can predict ligand dependent proliferation across a set of 58 cell lines. This mechanistic, multi-pathway model that features receptor heterodimerization, was trained on seven cancer cell lines and can predict signaling across two independent cell lines by adjusting only the receptor expression levels for each cell line. Interestingly, for patient samples the predicted tumor growth response correlates with high growth factor expression in the tumor microenvironment, which argues for a co-evolution of both factors in vivo.
靶向治疗已在约5%至10%对单一癌基因成瘾的实体瘤患者中显示出显著疗效。在此,我们探讨配体成瘾作为肿瘤生长驱动因素的观点。肿瘤中高配体水平已被证明与患者生存率受损有关,但靶向治疗在未筛选的患者群体中尚未显示出显著疗效。通过将袋装决策树(BDT)应用于从计算模型得出的高维信号特征的方法,我们可以预测58种细胞系中的配体依赖性增殖。这个以受体异二聚化为特征的多途径机制模型在七种癌细胞系上进行了训练,并且通过仅调整每个细胞系的受体表达水平,就可以预测两个独立细胞系中的信号传导。有趣的是,对于患者样本,预测的肿瘤生长反应与肿瘤微环境中的高生长因子表达相关,这表明这两个因素在体内共同进化。