Integrated Mathematical Oncology, Moffitt Cancer Center, Tampa, Florida, United States of America.
Precision NeuroTherapeutics Innovation Program, Mathematical NeuroOncology Lab, Mayo Clinic, Phoenix, Arizona, United States of America.
PLoS Comput Biol. 2020 Feb 26;16(2):e1007672. doi: 10.1371/journal.pcbi.1007672. eCollection 2020 Feb.
Glioblastomas are aggressive primary brain tumors known for their inter- and intratumor heterogeneity. This disease is uniformly fatal, with intratumor heterogeneity the major reason for treatment failure and recurrence. Just like the nature vs nurture debate, heterogeneity can arise from intrinsic or environmental influences. Whilst it is impossible to clinically separate observed behavior of cells from their environmental context, using a mathematical framework combined with multiscale data gives us insight into the relative roles of variation from different sources. To better understand the implications of intratumor heterogeneity on therapeutic outcomes, we created a hybrid agent-based mathematical model that captures both the overall tumor kinetics and the individual cellular behavior. We track single cells as agents, cell density on a coarser scale, and growth factor diffusion and dynamics on a finer scale over time and space. Our model parameters were fit utilizing serial MRI imaging and cell tracking data from ex vivo tissue slices acquired from a growth-factor driven glioblastoma murine model. When fitting our model to serial imaging only, there was a spectrum of equally-good parameter fits corresponding to a wide range of phenotypic behaviors. When fitting our model using imaging and cell scale data, we determined that environmental heterogeneity alone is insufficient to match the single cell data, and intrinsic heterogeneity is required to fully capture the migration behavior. The wide spectrum of in silico tumors also had a wide variety of responses to an application of an anti-proliferative treatment. Recurrent tumors were generally less proliferative than pre-treatment tumors as measured via the model simulations and validated from human GBM patient histology. Further, we found that all tumors continued to grow with an anti-migratory treatment alone, but the anti-proliferative/anti-migratory combination generally showed improvement over an anti-proliferative treatment alone. Together our results emphasize the need to better understand the underlying phenotypes and tumor heterogeneity present in a tumor when designing therapeutic regimens.
胶质母细胞瘤是一种侵袭性原发性脑肿瘤,以其肿瘤内和肿瘤间异质性而闻名。这种疾病是普遍致命的,肿瘤内异质性是治疗失败和复发的主要原因。就像先天与后天的争论一样,异质性可以来自内在或环境的影响。虽然从临床上不可能将细胞的观察到的行为与其环境背景分开,但使用数学框架结合多尺度数据可以让我们深入了解来自不同来源的变异的相对作用。为了更好地了解肿瘤内异质性对治疗结果的影响,我们创建了一个混合基于代理的数学模型,该模型既可以捕获肿瘤的整体动力学,也可以捕获单个细胞的行为。我们以代理的形式跟踪单个细胞,在较粗的尺度上跟踪细胞密度,并随时间和空间跟踪生长因子的扩散和动态。我们的模型参数是利用来自生长因子驱动的胶质母细胞瘤小鼠模型的体外组织切片的连续 MRI 成像和细胞跟踪数据拟合得到的。当仅使用序列成像拟合我们的模型时,有一系列同样好的参数拟合对应于广泛的表型行为范围。当使用成像和细胞尺度数据拟合我们的模型时,我们确定仅环境异质性不足以匹配单细胞数据,需要内在异质性来完全捕获迁移行为。在计算机中模拟的广泛的肿瘤也对应用抗增殖治疗有广泛的反应。通过模型模拟测量,复发肿瘤的增殖性一般低于治疗前肿瘤,并且通过人类 GBM 患者的组织学得到验证。此外,我们发现所有肿瘤在用单独的抗迁移治疗时仍继续生长,但抗增殖/抗迁移联合治疗通常比单独的抗增殖治疗效果更好。总的来说,我们的结果强调了在设计治疗方案时,需要更好地了解肿瘤中存在的潜在表型和肿瘤异质性。