Segmentation of fascias, fat and muscle from magnetic resonance images in humans: the DISPIMAG software

被引:0
|
作者
J. P. Mattei
Y. Le. Fur
N. Cuge
S. Guis
P. J. Cozzone
D. Bendahan
机构
[1] Université de la Méditerranée,CRMBM – UMR CNRS 6612 Faculté de Médecine
关键词
Image processing; Muscle; Fat; MRI; Cross sectional area;
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学科分类号
摘要
Segmentation of human limb MR images into muscle, fat and fascias remains a cumbersome task. We have developed a new software (DISPIMAG) that allows automatic and highly reproducible segmentation of lower-limb MR images. Based on a pixel intensity analysis, this software does not need any previous mathematical or statistical assumptions. It displays a histogram with two main signals corresponding to fat and muscle, and permits an accurate quantification of their relative spatial distribution. To allow a systematic discrimination between muscle and fat in any subject, fixed boundaries were first determined manually in a group of 24 patients. Secondly, an entirely automatic process using these boundaries was tested by three operators on four patients and compared to the manual approach, showing a high concordance.
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页码:275 / 279
页数:4
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