Title :
Nonsupervised Ranking of Different Segmentation Approaches: Application to the Estimation of the Left Ventricular Ejection Fraction From Cardiac Cine MRI Sequences
Author :
Lebenberg, J. ; Buvat, I. ; Lalande, A. ; Clarysse, P. ; Casta, C. ; Cochet, A. ; Constantinides, C. ; Cousty, J. ; De Cesare, A. ; Jehan-Besson, S. ; Lefort, M. ; Najman, L. ; Roullot, E. ; Sarry, L. ; Tilmant, C. ; Garreau, M. ; Frouin, F.
Author_Institution :
LIF, Univ. Pierre et Marie Curie, Paris, France
Abstract :
A statistical methodology is proposed to rank several estimation methods of a relevant clinical parameter when no gold standard is available. Based on a regression without truth method, the proposed approach was applied to rank eight methods without using any a priori information regarding the reliability of each method and its degree of automation. It was only based on a prior concerning the statistical distribution of the parameter of interest in the database. The ranking of the methods relies on figures of merit derived from the regression and computed using a bootstrap process. The methodology was applied to the estimation of the left ventricular ejection fraction derived from cardiac magnetic resonance images segmented using eight approaches with different degrees of automation: three segmentations were entirely manually performed and the others were variously automated. The ranking of methods was consistent with the expected performance of the estimation methods: the most accurate estimates of the ejection fraction were obtained using manual segmentations. The robustness of the ranking was demonstrated when at least three methods were compared. These results suggest that the proposed statistical approach might be helpful to assess the performance of estimation methods on clinical data for which no gold standard is available.
Keywords :
biomedical MRI; cardiology; image sequences; medical image processing; regression analysis; bootstrap process; cardiac cine MRI sequences; cardiac magnetic resonance images; left ventricular ejection fraction; manual segmentation; nonsupervised ranking; regression without truth method; reliability; segmentation approach; statistical distribution; statistical methodology; Databases; Equations; Estimation; Image segmentation; Mathematical model; Probability density function; Robustness; Bootstrap process; cardiac image analysis; left ventricular ejection fraction; nonsupervised segmentation methods ranking; regression without truth; Cluster Analysis; Heart; Humans; Image Processing, Computer-Assisted; Magnetic Resonance Imaging, Cine; Regression Analysis; Stroke Volume; Ventricular Function, Left;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2012.2201737