Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)

Abstract In this paper, we present an original multiple atlases level set framework (MALSF) for automatic, accurate and robust thalamus segmentation in magnetic resonance images (MRI). The contributions of the MALSF method are twofold. First, the main technical contribution is a novel label fusion s...

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Main Authors: Minghui Zhang, Zhentai Lu, Qianjin Feng, Yu Zhang
Format: Article
Language:English
Published: Nature Publishing Group 2017-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-017-04276-6
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spelling doaj-08dcd9bf2dba4f949fe3233d2c39b03c2020-12-08T01:32:06ZengNature Publishing GroupScientific Reports2045-23222017-06-017111210.1038/s41598-017-04276-6Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)Minghui Zhang0Zhentai Lu1Qianjin Feng2Yu Zhang3Guangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical UniversityGuangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical UniversityGuangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical UniversityGuangdong Provincial Key Laboratory of Medical Image Processing, Southern Medical UniversityAbstract In this paper, we present an original multiple atlases level set framework (MALSF) for automatic, accurate and robust thalamus segmentation in magnetic resonance images (MRI). The contributions of the MALSF method are twofold. First, the main technical contribution is a novel label fusion strategy in the level set framework. Label fusion is achieved by seeking an optimal level set function that minimizes energy functional with three terms: label fusion term, image based term, and regularization term. This strategy integrates shape prior, image information and the regularity of the thalamus. Second, we use propagated labels from multiple registration methods with different parameters to take full advantage of the complementary information of different registration methods. Since different registration methods and different atlases can yield complementary information, multiple registration and multiple atlases can be incorporated into the level set framework to improve the segmentation performance. Experiments have shown that the MALSF method can improve the segmentation accuracy for the thalamus. Compared to ground truth segmentation, the mean Dice metrics of our method are 0.9239 and 0.9200 for left and right thalamus.https://doi.org/10.1038/s41598-017-04276-6
collection DOAJ
language English
format Article
sources DOAJ
author Minghui Zhang
Zhentai Lu
Qianjin Feng
Yu Zhang
spellingShingle Minghui Zhang
Zhentai Lu
Qianjin Feng
Yu Zhang
Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
Scientific Reports
author_facet Minghui Zhang
Zhentai Lu
Qianjin Feng
Yu Zhang
author_sort Minghui Zhang
title Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
title_short Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
title_full Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
title_fullStr Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
title_full_unstemmed Automatic Thalamus Segmentation from Magnetic Resonance Images Using Multiple Atlases Level Set Framework (MALSF)
title_sort automatic thalamus segmentation from magnetic resonance images using multiple atlases level set framework (malsf)
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2017-06-01
description Abstract In this paper, we present an original multiple atlases level set framework (MALSF) for automatic, accurate and robust thalamus segmentation in magnetic resonance images (MRI). The contributions of the MALSF method are twofold. First, the main technical contribution is a novel label fusion strategy in the level set framework. Label fusion is achieved by seeking an optimal level set function that minimizes energy functional with three terms: label fusion term, image based term, and regularization term. This strategy integrates shape prior, image information and the regularity of the thalamus. Second, we use propagated labels from multiple registration methods with different parameters to take full advantage of the complementary information of different registration methods. Since different registration methods and different atlases can yield complementary information, multiple registration and multiple atlases can be incorporated into the level set framework to improve the segmentation performance. Experiments have shown that the MALSF method can improve the segmentation accuracy for the thalamus. Compared to ground truth segmentation, the mean Dice metrics of our method are 0.9239 and 0.9200 for left and right thalamus.
url https://doi.org/10.1038/s41598-017-04276-6
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AT qianjinfeng automaticthalamussegmentationfrommagneticresonanceimagesusingmultipleatlaseslevelsetframeworkmalsf
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