非手术性胶质母细胞瘤:基于图像的孔隙力学模型对患者特异性预测的命题

Q3 Engineering
Stéphane Urcun , Davide Baroli , Pierre-Yves Rohan , Wafa Skalli , Vincent Lubrano , Stéphane P.A. Bordas , Giuseppe Sciumè
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引用次数: 0

摘要

我们提出了一种新的基于图像的胶质母细胞瘤数学模型,该模型在反应性多相孔隙力学框架内。Poromechanics以耦合的方式对组织变形和压力驱动的流体流动之间的相互作用进行建模,这些现象同时存在于癌症疾病中。该模型还依赖于导致GBM异质性的两个机械生物学假设:缺氧信号级联和细胞外基质与肿瘤细胞之间的相互作用。该模型属于患者特定图像知情模型的类别,因为它是通过患者成像数据进行初始化、校准和评估的。该模型在6个周期的放疗-化疗后用患者数据进行了校准,并与化疗维持后3个月的治疗反应显示出良好的一致性。提供了解对参数和边界条件的敏感性。由于这项工作只是将多孔力学框架纳入图像知情的胶质母细胞瘤数学模型的第一步,因此在结论中提供了改进的线索。意义陈述:在这项研究中,我们使用反应性多孔介质的力学来有效地模拟胶质母细胞瘤的动态进展。传统上,胶质母细胞瘤是在诊断后几周通过手术切除的。为了解决这一问题,我们将重点放在一个不可操作的临床场景上,这使我们能够有足够的时间点来校准和随后验证我们的数学模型。需要强调的是,肿瘤的演变受到化疗和放疗的显著影响。这些治疗效果被纳入我们的数学框架。值得注意的是,我们提出的方法之所以与众不同,有两个关键原因:首先,数学模型固有地捕捉到了脑组织复杂的多相和层次性质。其次,我们的组成定律影响了细胞和组织不断变化的特性,反映了在肿瘤内观察到的局部表型变化。这项工作构成了将多相孔隙力学系统地整合到患者特异性胶质母细胞瘤生长模型中的初步步骤。展望未来,我们认识到在追求这一充满希望的方向的过程中可能需要加强的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-operable glioblastoma: Proposition of patient-specific forecasting by image-informed poromechanical model

We propose a novel image-informed glioblastoma mathematical model within a reactive multiphase poromechanical framework. Poromechanics offers to model in a coupled manner the interplay between tissue deformation and pressure-driven fluid flows, these phenomena existing simultaneously in cancer disease. The model also relies on two mechano-biological hypotheses responsible for the heterogeneity of the GBM: hypoxia signaling cascade and interaction between extra-cellular matrix and tumor cells. The model belongs to the category of patient-specific image-informed models as it is initialized, calibrated and evaluated by the means of patient imaging data. The model is calibrated with patient data after 6 cycles of concomitant radiotherapy chemotherapy and shows good agreement with treatment response 3 months after chemotherapy maintenance. Sensitivity of the solution to parameters and to boundary conditions is provided. As this work is only a first step of the inclusion of poromechanical framework in image-informed glioblastoma mathematical models, leads of improvement are provided in the conclusion.

Statement of Significance: In this study, we employ mechanics of reactive porous media to effectively model the dynamic progression of a glioblastoma. Traditionally, glioblastoma tumors are surgically removed a few weeks post-diagnosis. To address this, we focus on a non-operable clinical scenario which allows us to have sufficient time points for the calibration and subsequent validation of our mathematical model. It is paramount to underscore that the tumor’s evolution is significantly influenced by chemotherapy and radiotherapy. These therapeutic effects find incorporation within our mathematical framework. Notably, the approach we present is distinctive for two key reasons: Firstly, the mathematical model inherently captures the complex multiphase and hierarchical nature of brain tissue. Secondly, our constitutive laws factor in the ever-changing properties of cells and tissues, mirroring the local phenotypic alterations observed within the tumor. This work constitutes an initial stride towards systematically integrating multiphase poromechanics into patient-specific glioblastoma growth modeling. As we look ahead, we acknowledge areas for potential enhancement in pursuit of advancing this promising direction.

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来源期刊
Brain multiphysics
Brain multiphysics Physics and Astronomy (General), Modelling and Simulation, Neuroscience (General), Biomedical Engineering
CiteScore
4.80
自引率
0.00%
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0
审稿时长
68 days
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