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Mathematical Modeling of PDGF-Driven Glioblastoma Reveals Optimized Radiation Dosing Schedules

机译:PDGF驱动的胶质母细胞瘤的数学模型揭示了优化的放射剂量时间表

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摘要

Glioblastomas (GBMs) are the most common and malignant primary brain tumors and are aggressively treated with surgery, chemotherapy, and radiotherapy. Despite this treatment, recurrence is inevitable and survival has improved minimally over the last 50 years. Recent studies have suggested that GBMs exhibit both heterogeneity and instability of differentiation states and varying sensitivities of these states to radiation. Here, we employed an iterative combined theoretical and experimental strategy that takes into account tumor cellular heterogeneity and dynamically acquired radioresistance to predict the effectiveness of different radiation schedules. Using this model, we identified two delivery schedules predicted to significantly improve efficacy by taking advantage of the dynamic instability of radioresistance. These schedules led to superior survival inmice. Our interdisciplinary approach may also be applicable to other human cancer types treated with radiotherapy and, hence, may lay the foundation for significantly increasing the effectiveness of a mainstay of oncologic therapy.
机译:胶质母细胞瘤(GBM)是最常见和恶性的原发性脑肿瘤,并通过手术,化学疗法和放射疗法积极治疗。尽管采取了这种治疗方法,但在过去的50年中,复发不可避免,并且生存率仅有最低程度的提高。最近的研究表明,GBMs既表现出分化状态的异质性和不稳定性,又表现出这些状态对辐射的敏感性。在这里,我们采用了一种迭代的理论和实验相结合的策略,该策略考虑了肿瘤细胞的异质性和动态获得的放射抗性,以预测不同放射时间表的有效性。使用该模型,我们确定了两个预计通过利用放射抗药性的动态不稳定性显着提高疗效的给药方案。这些时间表导致了优越的生存率。我们的跨学科方法也可能适用于其他放射治疗的人类癌症,因此可能为显着提高肿瘤治疗主流疗法的有效性奠定基础。

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