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Brain tissue classification in MR images based on a 3D MRF model

机译:基于3D MRF模型的MR图像中的脑组织分类

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摘要

Intensity-based classification of MR images has proven problematic, even when advanced techniques are used. The partial volume effect and the inhomogeneity are usually sources of difficulties. Here, the authors propose a new classification method using 3D MRF models and the multifractal dimension measure for segmenting CSF, gray matter and white matter in MR T1-weighted images. Mixclasses (mixture of two pure tissue classes) result from the partial volume effect, are taken into account in the authors' tissue class model. Results are described with two acquisition sequences: IR-FGRE and SPGR. The accuracy of the classification is found by the way of a phantom validation study.
机译:事实证明,即使使用高级技术,MR图像的基于强度的分类也存在问题。局部体积效应和不均匀性通常是困难的根源。在这里,作者提出了一种新的分类方法,该方法使用3D MRF模型和多分形维度量对MR T1加权图像中的CSF,灰质和白质进行分割。作者的组织类别模型考虑了部分体积效应产生的混合类别(两个纯组织类别的混合物)。用两个采集序列描述结果:IR-FGRE和SPGR。通过幻像验证研究可以找到分类的准确性。

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