磁共振弥散成像
概率逻辑
扩散
计算机科学
人工智能
胶质瘤
磁共振成像
模式识别(心理学)
放射科
医学
物理
热力学
癌症研究
作者
Qinghui Liu,Elies Fuster‐García,Ivar Thokle Hovden,Bradley J. MacIntosh,Edvard Grødem,Petter Brandal,Carles Lopez-Mateu,Donatas Sederevičius,Karoline Skogen,Till Schellhorn,Atle Bjørnerud,Kyrre E. Emblem
标识
DOI:10.1109/tmi.2025.3533038
摘要
Diffuse gliomas are malignant brain tumors that grow widespread through the brain. The complex interactions between neoplastic cells and normal tissue, as well as the treatment-induced changes often encountered, make glioma tumor growth modeling challenging. In this paper, we present a novel end-to-end network capable of future predictions of tumor masks and multi-parametric magnetic resonance images (MRI) of how the tumor will look at any future time points for different treatment plans. Our approach is based on cutting-edge diffusion probabilistic models and deep-segmentation neural networks. We included sequential multi-parametric MRI and treatment information as conditioning inputs to guide the generative diffusion process as well as a joint segmentation process. This allows for tumor growth estimates and realistic MRI generation at any given treatment and time point. We trained the model using real-world postoperative longitudinal MRI data with glioma tumor growth trajectories represented as tumor segmentation maps over time. The model demonstrates promising performance across various tasks, including generating high-quality multi-parametric MRI with tumor masks, performing time-series tumor segmentations, and providing uncertainty estimates. Combined with the treatment-aware generated MRI, the tumor growth predictions with uncertainty estimates can provide useful information for clinical decision-making.
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