Automatic segmentation of white matter lesions on magnetic resonance images of the brain by using an outlier detection strategy |
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Authors: | Rui Wang Chao Li Jie Wang Xiaoer Wei Yuehua Li Chun Hui Yuemin Zhu Su Zhang |
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Affiliation: | 1. School of Biomedical Engineering and Med-X Research Institute, Shanghai Jiao Tong University, Shanghai, China;2. Institute of Diagnostic and Interventional Radiology, Sixth Affiliated People''s Hospital, Shanghai Jiao Tong University, Shanghai, China;3. CREATICS; CNRS UMR 5220; Inserm 1044; INSA Lyon; Villeurbanne, France |
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Abstract: | White matter lesions (WMLs) are commonly observed on the magnetic resonance (MR) images of normal elderly in association with vascular risk factors, such as hypertension or stroke. An accurate WML detection provides significant information for disease tracking, therapy evaluation, and normal aging research. In this article, we present an unsupervised WML segmentation method that uses Gaussian mixture model to describe the intensity distribution of the normal brain tissues and detects the WMLs as outliers to the normal brain tissue model based on extreme value theory. The detection of WMLs is performed by comparing the probability distribution function of a one-sided normal distribution and a Gumbel distribution, which is a specific extreme value distribution. The performance of the automatic segmentation is validated on synthetic and clinical MR images with regard to different imaging sequences and lesion loads. Results indicate that the segmentation method has a favorable accuracy competitive with other state-of-the-art WML segmentation methods. |
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Keywords: | White matter lesions Gaussian mixture model Extreme value theory Outlier detection |
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