Automated detection of the left ventricular region in gated nuclear cardiac imaging

被引:14
作者
Boudraa, AEO
Arzi, M
Sau, J
Champier, J
HadjMoussa, S
Besson, JE
SappeyMarinier, D
Itti, R
Mallet, JJ
机构
[1] INSERM U94,F-69500 BRON,FRANCE
[2] UNIV LYON 1,CTR MECAN,F-69622 VILLEURBANNE,FRANCE
[3] CMC,CONSTANTINE 25002,ALGERIA
[4] FAC MED LYON SUD,BIOPHYS LAB,F-69921 OULLINS,FRANCE
[5] HOP NEUROCARDIOL,CTR MED NUCL,F-69394 LYON 03,FRANCE
关键词
D O I
10.1109/10.486264
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
An approach to automated outlining the left ventricular contour and its bounded area in gated isotopic ventriculography is proposed. Its purpose is to determine the ejection fraction (EF), an important parameter for measuring cardiac function. The method uses a modified version of the fuzzy C-means (MFCM) algorithm and a labeling technique. The MFCM algorithm Is applied to the end diastolic (ED) frame and then the (FCM) is applied to the remaining images in a ''box'' of interest. The MFCM generates a number of fuzzy clusters. Each cluster is a substructure of the heart (left ventricle,...). A cluster validity index to estimate the optimum clusters number present in image data point is used. This index takes account of the homogeneity in each cluster and is connected to the geometrical property of data set. The labeling is only performed to achieve the detection process in the ED frame. Since the left ventricle (LV) cluster has the greatest area of the cardiac images sequence in ED phase, a framing operation is performed to obtain, automatically, the ''box'' enclosing the LV cluster. The EF assessed in 50 patients by the proposed method and a semi-automatic one, routinely used, are presented. A good correlation between the two methods EF values is obtained (R = 0.93). The LV contour found has been judged very satisfactory by a team of trained clinicians.
引用
收藏
页码:430 / 437
页数:8
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