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首页> 外文期刊>Cancer research: The official organ of the American Association for Cancer Research, Inc >Prognostic significance of growth kinetics in newly diagnosed glioblastomas revealed by combining serial imaging with a novel biomathematical model.
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Prognostic significance of growth kinetics in newly diagnosed glioblastomas revealed by combining serial imaging with a novel biomathematical model.

机译:通过将串行成像与新型生物数学模型相结合,揭示了新诊断的胶质母细胞瘤中生长动力学的预后意义。

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Glioblastomas are the most aggressive primary brain tumors, characterized by their rapid proliferation and diffuse infiltration of the brain tissue. Survival patterns in patients with glioblastoma have been associated with a number of clinicopathologic factors including age and neurologic status, yet a significant quantitative link to in vivo growth kinetics of each glioma has remained elusive. Exploiting a recently developed tool for quantifying glioma net proliferation and invasion rates in individual patients using routinely available magnetic resonance images (MRI), we propose to link these patient-specific kinetic rates of biological aggressiveness to prognostic significance. Using our biologically based mathematical model for glioma growth and invasion, examination of serial pretreatment MRIs of 32 glioblastoma patients allowed quantification of these rates for each patient's tumor. Survival analyses revealed that even when controlling for standard clinical parameters (e.g., age and Karnofsky performance status), these model-defined parameters quantifying biological aggressiveness (net proliferation and invasion rates) were significantly associated with prognosis. One hypothesis generated was that the ratio of the actual survival time after whatever therapies were used to the duration of survival predicted (by the model) without any therapy would provide a therapeutic response index (TRI) of the overall effectiveness of the therapies. The TRI may provide important information, not otherwise available, about the effectiveness of the treatments in individual patients. To our knowledge, this is the first report indicating that dynamic insight from routinely obtained pretreatment imaging may be quantitatively useful in characterizing the survival of individual patients with glioblastoma. Such a hybrid tool bridging mathematical modeling and clinical imaging may allow for stratifying patients for clinical studies relative to their pretreatment biological aggressiveness.
机译:胶质母细胞瘤是最具侵略性的原发性脑肿瘤,其特征是它们迅速扩散并扩散到脑组织。胶质母细胞瘤患者的生存模式与许多临床病理因素有关,包括年龄和神经系统状态,但与每种胶质瘤的体内生长动力学的重要定量联系仍然难以捉摸。利用最近开发的工具,可以使用常规可用的磁共​​振图像(MRI)量化单个患者的神经胶质瘤净增殖和侵袭率,我们建议将这些患者特定的生物攻击动力学速率与预后意义联系起来。使用我们基于生物学的神经胶质瘤生长和侵袭的数学模型,对32例胶质母细胞瘤患者进行的连续预处理MRI检查可以量化每个患者肿瘤的这些比率。生存分析表明,即使在控制标准临床参数(例如年龄和Karnofsky行为状态)时,这些模型定义的参数也可以量化生物学攻击性(净增殖和侵袭率)与预后显着相关。产生的一种假设是,无论采用何种疗法,实际存活时间与未经任何疗法预测的(模型预测的)存活时间之比将提供该疗法总体有效性的治疗反应指数(TRI)。 TRI可能会提供有关个别患者治疗效果的重要信息,而其他方式则无法获得。据我们所知,这是第一份报告,表明从常规获得的治疗前影像获得的动态见解在定量表征单个胶质母细胞瘤患者的生存中可能有用。桥接数学建模和临床成像的这种混合工具可以允许对患者进行分层以用于相对于他们的预处理生物攻击性的临床研究。

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