Predicting a multi-parametric probability map of active tumor extent using random forests.

EMBC(2013)

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摘要
Glioblastoma Mulitforme is highly infiltrative, making precise delineation of tumor margin difficult. Multimodality or multi-parametric MR imaging sequences promise an advantage over anatomic sequences such as post contrast enhancement as methods for determining the spatial extent of tumor involvement. In considering multi-parametric imaging sequences however, manual image segmentation and classification is time-consuming and prone to error. As a preliminary step toward integration of multi-parametric imaging into clinical assessments of primary brain tumors, we propose a machine-learning based multi-parametric approach that uses radiologist generated labels to train a classifier that is able to classify tissue on a voxel-wise basis and automatically generate a tumor segmentation. A random forests classifier was trained using a leave-one-out experimental paradigm. A simple linear classifier was also trained for comparison. The random forests classifier accurately predicted radiologist generated segmentations and tumor extent.
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关键词
multimodality mr imaging sequences,glioblastoma mulitforme,primary brain tumors,post contrast enhancement,medical disorders,leave-one-out experimental paradigm,high infiltration,anatomic sequences,image segmentation,tumor segmentation,multiparametric probability map,biomedical mri,image classification,image sequences,brain,tumours,random forests classifier,machine-learning,simple linear classifier,medical image processing,multiparametric mr imaging sequences,probability,biomedical research,machine learning,radiology,magnetic resonance imaging,biomedical imaging,bioinformatics
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