Author/Authors :
Zhang, Xiaodong Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Xueyuan Boulevard - Shenzhen, China , Jing, Shasha Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Xueyuan Boulevard - Shenzhen, China , Gao, Peiyi Beijing Tiantan Hospital - Capital Medical University - 6 Tiantan Xili - Beijing, China , Xue, Jing Beijing Tiantan Hospital - Capital Medical University - 6 Tiantan Xili - Beijing, China , Su, Lu Beijing Tiantan Hospital - Capital Medical University - 6 Tiantan Xili - Beijing, China , Li, Weiping Shenzhen Second People’s Hospital - 3002 West Sungang Road - Shenzhen, China , Ren, Lijie Shenzhen Second People’s Hospital - 3002 West Sungang Road - Shenzhen, China , Hu, Qingmao Shenzhen Institutes of Advanced Technology - Chinese Academy of Sciences - Xueyuan Boulevard - Shenzhen, China
Abstract :
Segmentation of infarcts at hyperacute stage is challenging as they exhibit substantial variability which may even be hard for
experts to delineate manually. In this paper, a sparse representation based classification method is explored. For each patient,
four volumetric data items including three volumes of diffusion weighted imaging and a computed asymmetry map are employed
to extract patch features which are then fed to dictionary learning and classification based on sparse representation. Elastic net
is adopted to replace the traditional 𝐿0-norm/𝐿1-norm constraints on sparse representation to stabilize sparse code. To decrease
computation cost and to reduce false positives, regions-of-interest are determined to confine candidate infarct voxels. The proposed
method has been validated on 98 consecutive patients recruited within 6 hours from onset. It is shown that the proposed method
could handle well infarcts with intensity variability and ill-defined edges to yield significantly higher Dice coefficient (0.755 ± 0.118)
than the other two methods and their enhanced versions by confining their segmentations within the regions-of-interest (average
Dice coefficient less than 0.610). The proposed method could provide a potential tool to quantify infarcts from diffusion weighted
imaging at hyperacute stage with accuracy and speed to assist the decision making especially for thrombolytic therapy.