A classification-based glioma diffusion model using MRI data

Canadian Conference on AI(2006)

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摘要
Gliomas are diffuse, invasive brain tumors. We propose a 3D classification-based diffusion model, CDM, that predicts how a glioma will grow at a voxel-level, on the basis of features specific to the patient, properties of the tumor, and attributes of that voxel. We use Supervised Learning algorithms to learn this general model, by observing the growth patterns of gliomas from other patients. Our empirical results on clinical data demonstrate that our learned CDM model can, in most cases, predict glioma growth more effectively than two standard models: uniform radial growth across all tissue types, and another that assumes faster diffusion in white matter.
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关键词
general model,classification-based diffusion model,empirical result,growth pattern,faster diffusion,cdm model,uniform radial growth,classification-based glioma diffusion model,clinical data,standard model,mri data,glioma growth,diffusion model,supervised learning,machine learning
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