Stowers Institute for Medical Research, Kansas City, MO 64110, USA.
Department of Molecular & Integrative Physiology, University of Michigan, Ann Arbor, MI 48109, USA.
Biophys Chem. 2018 Jul;238:30-38. doi: 10.1016/j.bpc.2018.04.004. Epub 2018 Apr 30.
Genomic information from human patient samples of pediatric neuroblastoma cancers and known outcomes have led to specific gene lists put forward as high risk for disease progression. However, the reliance on gene expression correlations rather than mechanistic insight has shown limited potential and suggests a critical need for molecular network models that better predict neuroblastoma progression. In this study, we construct and simulate a molecular network of developmental genes and downstream signals in a 6-gene input logic model that predicts a favorable/unfavorable outcome based on the outcome of the four cell states including cell differentiation, proliferation, apoptosis, and angiogenesis. We simulate the mis-expression of the tyrosine receptor kinases, trkA and trkB, two prognostic indicators of neuroblastoma, and find differences in the number and probability distribution of steady state outcomes. We validate the mechanistic model assumptions using RNAseq of the SHSY5Y human neuroblastoma cell line to define the input states and confirm the predicted outcome with antibody staining. Lastly, we apply input gene signatures from 77 published human patient samples and show that our model makes more accurate disease outcome predictions for early stage disease than any current neuroblastoma gene list. These findings highlight the predictive strength of a logic-based model based on developmental genes and offer a better understanding of the molecular network interactions during neuroblastoma disease progression.
从儿科神经母细胞瘤癌症患者样本中获取的基因组信息和已知结果导致了特定的基因列表被提出作为疾病进展的高风险因素。然而,对基因表达相关性的依赖而不是对机制的深入了解显示出有限的潜力,这表明需要更好地预测神经母细胞瘤进展的分子网络模型。在这项研究中,我们构建并模拟了一个发育基因的分子网络和下游信号,在一个 6 个基因输入逻辑模型中,根据包括细胞分化、增殖、凋亡和血管生成在内的四个细胞状态的结果来预测有利/不利的结果。我们模拟了酪氨酸受体激酶 trkA 和 trkB 的错误表达,这是神经母细胞瘤的两个预后指标,发现了在稳定状态结果的数量和概率分布上的差异。我们使用 SHSY5Y 人神经母细胞瘤细胞系的 RNAseq 来验证机制模型假设,定义输入状态,并通过抗体染色来确认预测结果。最后,我们应用了来自 77 个已发表的人类患者样本的输入基因特征,并表明我们的模型比任何现有的神经母细胞瘤基因列表更能准确地预测早期疾病的结果。这些发现突出了基于发育基因的逻辑模型的预测能力,并提供了对神经母细胞瘤疾病进展过程中分子网络相互作用的更好理解。