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Local label learning (LLL) for subcortical structure segmentation: Application to hippocampus segmentation
Author(s) -
Hao Yongfu,
Wang Tianyao,
Zhang Xinqing,
Duan Yunyun,
Yu Chunshui,
Jiang Tianzi,
Fan Yong
Publication year - 2014
Publication title -
human brain mapping
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.005
H-Index - 191
eISSN - 1097-0193
pISSN - 1065-9471
DOI - 10.1002/hbm.22359
Subject(s) - artificial intelligence , computer science , segmentation , pattern recognition (psychology) , voxel , support vector machine , weighting , scale space segmentation , image segmentation , computer vision , medicine , radiology
Automatic and reliable segmentation of subcortical structures is an important but difficult task in quantitative brain image analysis. Multi‐atlas based segmentation methods have attracted great interest due to their promising performance. Under the multi‐atlas based segmentation framework, using deformation fields generated for registering atlas images onto a target image to be segmented, labels of the atlases are first propagated to the target image space and then fused to get the target image segmentation based on a label fusion strategy. While many label fusion strategies have been developed, most of these methods adopt predefined weighting models that are not necessarily optimal. In this study, we propose a novel local label learning strategy to estimate the target image's segmentation label using statistical machine learning techniques. In particular, we use a L1‐regularized support vector machine (SVM) with a k nearest neighbor ( k NN) based training sample selection strategy to learn a classifier for each of the target image voxel from its neighboring voxels in the atlases based on both image intensity and texture features. Our method has produced segmentation results consistently better than state‐of‐the‐art label fusion methods in validation experiments on hippocampal segmentation of over 100 MR images obtained from publicly available and in‐house datasets. Volumetric analysis has also demonstrated the capability of our method in detecting hippocampal volume changes due to Alzheimer's disease. Hum Brain Mapp 35:2674–2697, 2014 . © 2013 Wiley Periodicals, Inc .

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