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Robust multi-atlas label propagation by deep sparse representation

Authors
Zu, ChenWang, ZhengxiaZhang, DaoqiangLiang, PeipengShi, YonghongShen, DinggangWu, Guorong
Issue Date
3월-2017
Publisher
ELSEVIER SCI LTD
Keywords
Hierarchical sparse representation; Multi-atlas segmentation; Patch-based label fusion
Citation
PATTERN RECOGNITION, v.63, pp.511 - 517
Indexed
SCIE
SCOPUS
Journal Title
PATTERN RECOGNITION
Volume
63
Start Page
511
End Page
517
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/84288
DOI
10.1016/j.patcog.2016.09.028
ISSN
0031-3203
Abstract
Recently, multi-atlas patch-based label fusion has achieved many successes in medical imaging area. The basic assumption in the current state-of-the-art approaches is that the image patch at the target image point can be represented by a patch dictionary consisting of atlas patches from registered atlas images. Therefore, the label at the target image point can be determined by fusing labels of atlas image patches with similar anatomical structures. However, such assumption on image patch representation does not always hold in label fusion since (1) the image content within the patch may be corrupted due to noise and artifact; and (2) the distribution of morphometric patterns among atlas patches might be unbalanced such that the majority patterns can dominate label fusion result over other minority patterns. The violation of the above basic assumptions could significantly undermine the label fusion accuracy. To overcome these issues, we first consider forming label-specific group for the atlas patches with the same label. Then, we alter the conventional flat and shallow dictionary to a deep multi-layer structure, where the top layer (label-specific dictionaries) consists of groups of representative atlas patches and the subsequent layers (residual dictionaries) hierarchically encode the patchwise residual information in different scales. Thus, the label fusion follows the representation consensus across representative dictionaries. However, the representation of target patch in each group is iteratively optimized by using the representative atlas patches in each label-specific dictionary exclusively to match the principal patterns and also using all residual patterns across groups collaboratively to overcome the issue that some groups might be absent of certain variation patterns presented in the target image patch. Promising segmentation results have been achieved in labeling hippocampus on ADNI dataset, as well as basal ganglia and brainstem structures, compared to other counterpart label fusion methods. (C) 2016 Elsevier Ltd. All rights reserved.
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