Title
Automatic Brain Tissue Segmentation In Mr Images Using Hybrid Atlas Forest Based On Confidence-Weighted Probability Matrix
Abstract
The segmentation of specific tissues in an MR brain image for quantitative analysis can assist the disease diagnosis and medical research. Therefore, a robust and accurate method for automatic segmentation is necessary. Atlas-based-method is a common and effective method of automatic segmentation where an atlas refers to a pair of image consist of an intensity image and its corresponding label image. Apart from the general multi-atlas-based methods, which propagate labels through the single atlas then fuse them, we proposed a hybrid atlas forest based on confidence-weighted probability matrix to consider the atlases set as a whole and treat each voxel differently. In the framework, we first register the atlas to the image space of target and calculate the confidence of voxels in the registered atlas. Then, a confidence-weighted probability matrix is generated and it augments to the intensity image of the atlas or target for providing spatial information of the target tissue. Third, a hybrid atlas forest is trained to gather the features and correlation information among the atlases in the dataset. Finally, the segmentation of the target tissues is predicted by the trained hybrid atlas forest. The segment performance and the components efficiency of the proposed method are evaluated on the two public datasets. Based on the experiment results and quantitative comparisons, our method can gather spatial information and correlation among the atlases to obtain an accurate segmentation.
Year
DOI
Venue
2019
10.1002/ima.22301
INTERNATIONAL JOURNAL OF IMAGING SYSTEMS AND TECHNOLOGY
Keywords
Field
DocType
brain segmentation, label fusion, magnetic resonance imaging, probability matrix, random forest
Brain segmentation,Computer vision,Stochastic matrix,Segmentation,Computer science,Atlas (anatomy),Artificial intelligence,Random forest,Brain tissue,Magnetic resonance imaging
Journal
Volume
Issue
ISSN
29
2
0899-9457
Citations 
PageRank 
References 
0
0.34
14
Authors
5
Name
Order
Citations
PageRank
Lijun Xu18544.81
Hong Liu29618.53
Enmin Song317624.53
Renchao Jin4308.83
Chih-Cheng Hung54613.39