Personalized Predictions of Glioblastoma Infiltration: Mathematical Models, Physics-Informed Neural Networks and Multimodal Scans.

ArXiv Pub Date : 2024-08-16
Ray Zirui Zhang, Ivan Ezhov, Michal Balcerak, Andy Zhu, Benedikt Wiestler, Bjoern Menze, John S Lowengrub
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Abstract

Predicting the infiltration of Glioblastoma (GBM) from medical MRI scans is crucial for understanding tumor growth dynamics and designing personalized radiotherapy treatment plans.Mathematical models of GBM growth can complement the data in the prediction of spatial distributions of tumor cells. However, this requires estimating patient-specific parameters of the model from clinical data, which is a challenging inverse problem due to limited temporal data and the limited time between imaging and diagnosis. This work proposes a method that uses Physics-Informed Neural Networks (PINNs) to estimate patient-specific parameters of a reaction-diffusion PDE model of GBM growth from a single 3D structural MRI snapshot. PINNs embed both the data and the PDE into a loss function, thus integrating theory and data. Key innovations include the identification and estimation of characteristic non-dimensional parameters, a pre-training step that utilizes the non-dimensional parameters and a fine-tuning step to determine the patient specific parameters. Additionally, the diffuse domain method is employed to handle the complex brain geometry within the PINN framework. Our method is validated both on synthetic and patient datasets, and shows promise for real-time parametric inference in the clinical setting for personalized GBM treatment.

胶质母细胞瘤浸润的个性化预测:数学模型、物理信息神经网络和多模态扫描。
从医学磁共振成像扫描中预测胶质母细胞瘤(GBM)的浸润情况,对于了解肿瘤生长动态和设计个性化放疗方案至关重要。然而,这需要从临床数据中估算出患者特定的模型参数,而由于时间数据有限以及成像和诊断之间的时间有限,这是一个具有挑战性的逆问题。这项研究提出了一种方法,利用物理信息神经网络(PINNs)从单个三维结构磁共振成像快照中估算 GBM 生长的反应-扩散 PDE 模型的患者特异性参数。PINNs 将数据和 PDE 嵌入到一个损失函数中,从而整合了理论和数据。主要创新包括识别和估算特征非维度参数、利用非维度参数的预训练步骤以及确定患者特定参数的微调步骤。此外,在 PINN 框架内还采用了扩散域方法来处理复杂的大脑几何结构。我们的方法在合成数据集和患者数据集上都得到了验证,并显示了在临床环境中进行实时参数推断以实现个性化 GBM 治疗的前景。
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