TY - JOUR
T1 - Segmentation by retrieval with guided random walks
T2 - Application to left ventricle segmentation in MRI
AU - Eslami, Abouzar
AU - Karamalis, Athanasios
AU - Katouzian, Amin
AU - Navab, Nassir
N1 - Funding Information:
The authors would like to thank Dr. Leo Grady for theoretical discussions and Prof. Dr. Med. Ahmad Mohebbi for delineation of the cardiac boundaries and medical consults. This work has been partially funded by European Union project Sim-e-Chield (FP7-248421).
PY - 2013/2
Y1 - 2013/2
N2 - In this paper, a new segmentation framework with prior knowledge is proposed and applied to the left ventricles in cardiac Cine MRI sequences. We introduce a new formulation of the random walks method, coined as guided random walks, in which prior knowledge is integrated seamlessly. In comparison with existing approaches that incorporate statistical shape models, our method does not extract any principal model of the shape or appearance of the left ventricle. Instead, segmentation is accompanied by retrieving the closest subject in the database that guides the segmentation the best. Using this techniques, rare cases can also effectively exploit prior knowledge from few samples in training set. These cases are usually disregarded in statistical shape models as they are outnumbered by frequent cases (effect of class population). In the worst-case scenario, if there is no matching case in the database to guide the segmentation, performance of the proposed method reaches to the conventional random walks, which is shown to be accurate if sufficient number of seeds is provided. There is a fast solution to the proposed guided random walks by using sparse linear matrix operations and the whole framework can be seamlessly implemented in a parallel architecture. The method has been validated on a comprehensive clinical dataset of 3D+t short axis MR images of 104 subjects from 5 categories (normal, dilated left ventricle, ventricular hypertrophy, recent myocardial infarction, and heart failure). The average segmentation errors were found to be 1.54. mm for the endocardium and 1.48. mm for the epicardium. The method was validated by measuring different algorithmic and physiologic indices and quantified with manual segmentation ground truths, provided by a cardiologist.
AB - In this paper, a new segmentation framework with prior knowledge is proposed and applied to the left ventricles in cardiac Cine MRI sequences. We introduce a new formulation of the random walks method, coined as guided random walks, in which prior knowledge is integrated seamlessly. In comparison with existing approaches that incorporate statistical shape models, our method does not extract any principal model of the shape or appearance of the left ventricle. Instead, segmentation is accompanied by retrieving the closest subject in the database that guides the segmentation the best. Using this techniques, rare cases can also effectively exploit prior knowledge from few samples in training set. These cases are usually disregarded in statistical shape models as they are outnumbered by frequent cases (effect of class population). In the worst-case scenario, if there is no matching case in the database to guide the segmentation, performance of the proposed method reaches to the conventional random walks, which is shown to be accurate if sufficient number of seeds is provided. There is a fast solution to the proposed guided random walks by using sparse linear matrix operations and the whole framework can be seamlessly implemented in a parallel architecture. The method has been validated on a comprehensive clinical dataset of 3D+t short axis MR images of 104 subjects from 5 categories (normal, dilated left ventricle, ventricular hypertrophy, recent myocardial infarction, and heart failure). The average segmentation errors were found to be 1.54. mm for the endocardium and 1.48. mm for the epicardium. The method was validated by measuring different algorithmic and physiologic indices and quantified with manual segmentation ground truths, provided by a cardiologist.
KW - Cardiac Cine MRI
KW - Guided random walks
KW - Left ventricle segmentation
KW - Random walks
KW - Segmentation by retrieval
UR - http://www.scopus.com/inward/record.url?scp=84883852822&partnerID=8YFLogxK
U2 - 10.1016/j.media.2012.10.005
DO - 10.1016/j.media.2012.10.005
M3 - Article
C2 - 23313331
AN - SCOPUS:84883852822
SN - 1361-8415
VL - 17
SP - 236
EP - 253
JO - Medical Image Analysis
JF - Medical Image Analysis
IS - 2
ER -