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预测个体胶质母细胞瘤患者体内放疗疗效的数学建模方法。

Predicting the efficacy of radiotherapy in individual glioblastoma patients in vivo: a mathematical modeling approach.

机构信息

Department of Pathology, University of Washington, 1959 NE Pacific St, Seattle, WA 98195, USA.

出版信息

Phys Med Biol. 2010 Jun 21;55(12):3271-85. doi: 10.1088/0031-9155/55/12/001. Epub 2010 May 18.

Abstract

Glioblastoma multiforme (GBM) is the most malignant form of primary brain tumors known as gliomas. They proliferate and invade extensively and yield short life expectancies despite aggressive treatment. Response to treatment is usually measured in terms of the survival of groups of patients treated similarly, but this statistical approach misses the subgroups that may have responded to or may have been injured by treatment. Such statistics offer scant reassurance to individual patients who have suffered through these treatments. Furthermore, current imaging-based treatment response metrics in individual patients ignore patient-specific differences in tumor growth kinetics, which have been shown to vary widely across patients even within the same histological diagnosis and, unfortunately, these metrics have shown only minimal success in predicting patient outcome. We consider nine newly diagnosed GBM patients receiving diagnostic biopsy followed by standard-of-care external beam radiation therapy (XRT). We present and apply a patient-specific, biologically based mathematical model for glioma growth that quantifies response to XRT in individual patients in vivo. The mathematical model uses net rates of proliferation and migration of malignant tumor cells to characterize the tumor's growth and invasion along with the linear-quadratic model for the response to radiation therapy. Using only routinely available pre-treatment MRIs to inform the patient-specific bio-mathematical model simulations, we find that radiation response in these patients, quantified by both clinical and model-generated measures, could have been predicted prior to treatment with high accuracy. Specifically, we find that the net proliferation rate is correlated with the radiation response parameter (r = 0.89, p = 0.0007), resulting in a predictive relationship that is tested with a leave-one-out cross-validation technique. This relationship predicts the tumor size post-therapy to within inter-observer tumor volume uncertainty. The results of this study suggest that a mathematical model can create a virtual in silico tumor with the same growth kinetics as a particular patient and can not only predict treatment response in individual patients in vivo but also provide a basis for evaluation of response in each patient to any given therapy.

摘要

多形性胶质母细胞瘤(GBM)是最恶性的原发性脑肿瘤,称为胶质瘤。尽管进行了积极的治疗,它们仍广泛增殖和侵袭,导致预期寿命短。治疗反应通常以类似方式治疗的患者群体的生存率来衡量,但这种统计方法忽略了可能对治疗有反应或可能受到治疗损伤的亚组。这些统计数据几乎不能为经历过这些治疗的个别患者提供保证。此外,目前基于影像学的个体患者治疗反应指标忽略了肿瘤生长动力学的个体差异,即使在同一组织学诊断中,患者之间的肿瘤生长动力学也存在很大差异,不幸的是,这些指标在预测患者预后方面仅取得了最小的成功。我们考虑了 9 名新诊断的 GBM 患者,他们接受了诊断性活检,然后接受了标准的外照射放射治疗(XRT)。我们提出并应用了一种针对个体患者的、基于生物学的胶质瘤生长数学模型,该模型可在体内量化个体患者对 XRT 的反应。该数学模型使用恶性肿瘤细胞的净增殖和迁移率来描述肿瘤的生长和侵袭,以及线性二次模型对放射治疗的反应。仅使用常规的术前 MRI 来为基于患者的生物数学模型模拟提供信息,我们发现这些患者的放射反应(通过临床和模型生成的测量值进行量化)可以在治疗前以高精度进行预测。具体来说,我们发现净增殖率与放射反应参数相关(r = 0.89,p = 0.0007),从而产生了一种可以通过留一法交叉验证技术进行测试的预测关系。这种关系可以预测治疗后肿瘤的大小,其误差与观察者之间的肿瘤体积不确定性相同。这项研究的结果表明,数学模型可以创建一个与特定患者具有相同生长动力学的虚拟计算机肿瘤,不仅可以预测个体患者的体内治疗反应,还可以为评估每个患者对任何给定治疗的反应提供基础。

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