Author/Authors :
Ghelich Oghli، Mostafa نويسنده Department of Biomedical Engineering, Faculty of Advanced Medical Technology, Isfahan University of Medical Sciences , , Dehlaghi، Vahab نويسنده Department of Biomedical Engineering, Kermanshah University of Medical Sciences, Kermanshah, Iran , , Mohammad Zadeh، Ali نويسنده Department of Radiology, Shaheed Rajaei Cardiovascular, Medical and Research Center, Tehran, Iran , , Fallahi Arezoodar، Alireza نويسنده , , Pooyan، Mohammad نويسنده Department of Biomedical Engineering, Shahed University, Tehran, Iran ,
Abstract :
Assessment of cardiac right ventricle functions plays an essential role in diagnosis of arrhythmogenic right ventricular dysplasia (ARVD).
Among clinical tests, cardiac magnetic resonance imaging (MRI) is now becoming the most valid imaging technique to diagnose
ARVD. Fatty infiltration of the right ventricular free wall can be visible on cardiac MRI. Finding right ventricle functional parameters from cardiac MRI images contains segmentation of right ventricle in each slice of end diastole and end systole phases of cardiac cycle and calculation of end diastolic and end systolic volume and furthermore other functional parameters. The main problem of this task is the segmentation part. We used a robust method based on deformable model that uses shape information for segmentation of right ventricle in short axis MRI images. After segmentation of right ventricle from base to apex in end diastole and end systole phases of cardiac cycle, volume of right?ventricle in these phases calculated and then, ejection fraction calculated. We performed a quantitative evaluation of clinical cardiac parameters derived from the automatic segmentation by comparison against a manual delineation of the ventricles. The manually and automatically determined quantitative clinical parameters were statistically compared by means of linear regression. This fits a line to the data such that the root?mean?square error (RMSE) of the residuals is minimized. The results show low RMSE for Right Ventricle Ejection Fraction and Volume ( less than 0.06 for RV EF, and more than 10 mL for RV volume). Evaluation of segmentation results is also done by means of four statistical measures including sensitivity, specificity, similarity index and Jaccard index. The average value of similarity index is 86.87%. The Jaccard index mean value is 83.85% which shows a good accuracy of segmentation.
The average of sensitivity is 93.9% and mean value of the specificity is 89.45%. These results show the reliability of proposed method in these cases that manual segmentation is inapplicable. Huge shape variety of right ventricle led us to use a shape prior based method and this work can develop by four dimensional processing for determining the first ventricular slices.